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Getting started with the ebnm package
The empirical Bayes normal means problem
Given \(n\) observations \(x_i\) with known standard deviations \(s_i\), \(i = 1,
\dots, n\), the normal means model (Robbins 1951; Efron and Morris 1972; Stephens 2017;
Bhadra et al. 2019; Johnstone 2019; Sun 2020) is \[\begin{equation}
x_i \overset{\text{ind.}}{\sim} \mathcal{N}(\theta_i, s_i^2),
\end{equation}\] with the unknown (true) means \(\theta_i\) to be estimated. Here and
throughout, we use \(\mathcal{N}(\mu,
\sigma^2)\) to denote the normal distribution with mean \(\mu\) and variance \(\sigma^2\). The maximum-likelihood estimate
of \(\theta_i\) is, of course, \(x_i\). The empirical Bayes (EB) approach to
inferring \(\theta_i\) attempts to
improve upon the maximum-likelihood estimate by “borrowing information”
across observations, exploiting the fact that each observation contains
information not only about its respective mean, but also about how the
means are collectively distributed (Robbins 1956;
Morris 1983; Efron 2010; Stephens 2017). Specifically, the EB
approach assumes that \[\begin{equation}
\theta_i \overset{\text{ind.}}{\sim} g \in \mathcal{G},
\end{equation}\] where \(g\) is
a distribution to be estimated from the data, typically chosen from
among some family of distributions \(\mathcal{G}\) that is specified in advance.
(Note that although \(\mathcal{G}\)
must be specified in advance, it can be arbitrarily flexible.)
The empirical Bayes normal means model is therefore fit by first
using all of the observations to estimate \(g
\in \mathcal{G}\), then using the estimated distribution \(\hat{g}\) to compute posteriors for each
mean \(\theta_i\). Commonly, \(g\) is estimated via maximum-likelihood, in
which case the EB approach consists of the following:
Find \(\hat{g} := \rm{argmax}_{g
\,\in\, \mathcal{G}} L(g)\), where \(L(g)\) denotes the marginal likelihood,
\[\begin{equation}
L(g) := p({\mathbf x} \mid g, {\mathbf s}) =
\prod_{i=1}^n \textstyle
\int p(x_i \mid \theta_i, s_i) \, g(\theta_i) \, d\theta_i,
\end{equation}\] and we define \({\mathbf x} := (x_1, \ldots, x_n)\), \({\mathbf s} := (s_1, \ldots,
s_n)\).
Compute posterior distributions \[\begin{equation}
p(\theta_i \mid x_i, s_i, \hat{g}) \propto
\hat{g}(\theta_i) \, p(x_i \mid \theta_i, s_i),
\end{equation}\] and/or summaries (posterior means, variances,
etc.).
We refer to this two-step process as “solving the EBNM problem.” The
ebnm
package provides a unified interface for efficiently
solving the EBNM problem using a wide variety of prior families \(\mathcal{G}\). For some prior families, it
leverages code from existing packages; for others, it implements new
model fitting algorithms with a mind toward speed and robustness. In
this vignette, we demonstrate usage of the ebnm
package in
an analysis of weighted on-base averages for Major League Baseball
players.
Application: Weighted on-base averages
A longstanding tradition in empirical Bayes research is to include an
analysis of batting averages using data from Major League Baseball (see, for example, Brown 2008; Jiang and Zhang 2010;
and Gu and Koenker 2017). Until recently, batting averages were
the most important measurement of a hitter’s performance, with the
prestigious yearly “batting title” going to the hitter with the highest
average. However, with the rise of baseball analytics, metrics that
better correlate to teams’ overall run production have become
increasingly preferred. One such metric is wOBA (“weighted on-base
average”), which is both an excellent measure of a hitter’s offensive
production and, unlike competing metrics such as MLB’s xwOBA (Sharpe 2019) or Baseball Prospectus’s DRC+
(Judge 2019), can be calculated using
publicly available data and methods.
Initially proposed by Tango, Lichtman, and
Dolphin (2006), wOBA assigns values (“weights”) to hitting
outcomes according to how much the outcome contributes on average to run
production. For example, while batting average treats singles
identically to home runs, wOBA gives a hitter more than twice as much
credit for a home run.
Given a vector of wOBA weights \(\mathbf{w}\), hitter \(i\)’s wOBA is the weighted average \[\begin{equation}
x_i := \mathbf{w}^T \mathbf{z}^{(i)} / n_i,
\end{equation}\] where \(\mathbf{z}^{(i)} = (z_1^{(i)}, \ldots,
z_7^{(i)})\) tallies outcomes (singles, doubles, triples, home
runs, walks, hit-by-pitches, and outs) over the hitter’s \(n_i\) plate appearances (PAs). Modeling
hitting outcomes as i.i.d. \[\begin{equation}
\mathbf{z}^{(i)} \sim \text{Multinomial}(n_i, {\boldsymbol\pi}^{(i)}),
\end{equation}\] where \({\boldsymbol\pi}^{(i)} = (\pi_1^{(i)}, \ldots,
\pi_7^{(i)})\) is the vector of “true” outcome probabilities for
hitter \(i\), we can regard \(x_i\) as a point estimate for the hitter’s
“true wOBA skill” \[\begin{equation}
\theta_i := \mathbf{w}^T {\boldsymbol\pi}^{(i)}.
\end{equation}\] Standard errors for the \(x_i\)’s can be estimated as \[\begin{equation}
s_i^2 = \mathbf{w}^T \hat{\mathbf\Sigma}^{(i)} \mathbf{w}/n_i,
\end{equation}\] where \(\hat{\mathbf\Sigma}^{(i)}\) is the estimate
of the multinomial covariance matrix obtained by setting \({\boldsymbol\pi} = \hat{\boldsymbol\pi}\),
where \[\begin{equation}
\hat{\boldsymbol\pi}^{(i)} = \mathbf{z}^{(i)}/n_i.
\end{equation}\] (To deal with small sample sizes, we
conservatively lower bound each standard error by the standard error
that would be obtained by plugging in league-average event probabilities
\(\hat{\boldsymbol\pi}_{\mathrm{lg}} =
\sum_{i=1}^N \mathbf{z}^{(i)}/ \sum_{i=1}^N n_i\), where \(N\) is the number of hitters in the
dataset.)
The relative complexity of wOBA makes it well suited for analysis via
ebnm
. With batting average, a common approach is to obtain
empirical Bayes estimates using a beta-binomial model (see, for example,
Robinson (2017)). With wOBA, one can
estimate hitting outcome probabilities by way of a Dirichlet-multinomial
model; alternatively, one can approximate the likelihood as normal and
fit an EBNM model directly to the observed wOBAs. In the following, we
take the latter approach.
The wOBA
data set
We begin by loading and inspecting the wOBA
data set,
which consists of wOBAs and standard errors for the 2022 MLB regular
season:
library(ebnm)
data(wOBA)
nrow(wOBA)
#> [1] 688
head(wOBA)
#> FanGraphsID Name Team PA x s
#> 1 19952 Khalil Lee NYM 2 1.036 0.733
#> 2 16953 Chadwick Tromp ATL 4 0.852 0.258
#> 3 19608 Otto Lopez TOR 10 0.599 0.162
#> 4 24770 James Outman LAD 16 0.584 0.151
#> 5 8090 Matt Carpenter NYY 154 0.472 0.054
#> 6 15640 Aaron Judge NYY 696 0.458 0.024
Column “x” contains each player’s wOBA for the 2022 season, which we
regard as an estimate of the player’s “true” wOBA skill. Column “s”
provides standard errors.
Next, we visualize the overall distribution of wOBAs:
library(ggplot2)
ggplot(wOBA, aes(x = x)) +
geom_histogram(bins = 64, color = "white",fill = "black") +
theme_classic()
![](data:image/png;base64,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)
As the histogram shows, most players finished the season with a wOBA
between .200 and .400. A few had very high wOBAs (\(>\).500), while others had wOBAs at or
near zero. A casual inspection of the data suggests that players with
these very high (or very low) wOBAs were simply lucky (or unlucky). For
example, the 4 players with the highest wOBAs each had 16 PAs or fewer.
It is very unlikely that they would have sustained this high level of
production over a full season’s worth of PAs.
In contrast, Aaron Judge’s production — which included a
record-breaking number of home runs — appears to be “real,” since it was
sustained over nearly 700 PAs. Other cases are more ambiguous: how, for
example, are we to assess Matt Carpenter, who had several exceptional
seasons between 2013 and 2018 but whose output steeply declined in
2019–2021 before his surprising “comeback” in 2022? An empirical Bayes
analysis can help to answer this and other questions.
Main ebnm
methods and the normal prior family
Function ebnm()
is the main interface for fitting the
empirical Bayes normal means model; it is a “Swiss army knife” that
allows for various choices of prior family \(\mathcal{G}\) as well as providing multiple
options for fitting and tuning models. For example, we can fit a normal
means model with the prior family \(\mathcal{G}\) taken to be the family of
normal distributions:
x <- wOBA$x
s <- wOBA$s
names(x) <- wOBA$Name
names(s) <- wOBA$Name
fit_normal <- ebnm(x, s, prior_family = "normal", mode = "estimate")
(The default behavior is to fix the prior mode at zero. Since we
certainly do not expect the distribution of true wOBA skill to have a
mode at zero, we set mode = "estimate"
.)
We note in passing that the ebnm
package has a second
model-fitting interface, in which each prior family gets its own
function:
fit_normal <- ebnm_normal(x, s, mode = "estimate")
Textual and graphical overviews of results can be obtained using,
respectively, methods summary()
and plot()
.
The summary method appears as follows:
summary(fit_normal)
#>
#> Call:
#> ebnm_normal(x = x, s = s, mode = "estimate")
#>
#> EBNM model was fitted to 688 observations with _heteroskedastic_ standard errors.
#>
#> The fitted prior belongs to the _normal_ prior family.
#>
#> 2 degrees of freedom were used to estimate the model.
#> The log likelihood is 989.64.
#>
#> Available posterior summaries: _mean_, _sd_.
#> Use method fitted() to access available summaries.
#>
#> A posterior sampler is _not_ available.
#> One can be added via function ebnm_add_sampler().
The plot()
method visualizes results, comparing the
“observed” values \(x_i\) (the initial
wOBA estimates) against the empirical Bayes posterior mean estimates
\(\hat{\theta}_i\):
![](data:image/png;base64,iVBORw0KGgoAAAANSUhEUgAAAVAAAAEgCAYAAADiyisYAAAEGWlDQ1BrQ0dDb2xvclNwYWNlR2VuZXJpY1JHQgAAOI2NVV1oHFUUPrtzZyMkzlNsNIV0qD8NJQ2TVjShtLp/3d02bpZJNtoi6GT27s6Yyc44M7v9oU9FUHwx6psUxL+3gCAo9Q/bPrQvlQol2tQgKD60+INQ6Ium65k7M5lpurHeZe58853vnnvuuWfvBei5qliWkRQBFpquLRcy4nOHj4g9K5CEh6AXBqFXUR0rXalMAjZPC3e1W99Dwntf2dXd/p+tt0YdFSBxH2Kz5qgLiI8B8KdVy3YBevqRHz/qWh72Yui3MUDEL3q44WPXw3M+fo1pZuQs4tOIBVVTaoiXEI/MxfhGDPsxsNZfoE1q66ro5aJim3XdoLFw72H+n23BaIXzbcOnz5mfPoTvYVz7KzUl5+FRxEuqkp9G/Ajia219thzg25abkRE/BpDc3pqvphHvRFys2weqvp+krbWKIX7nhDbzLOItiM8358pTwdirqpPFnMF2xLc1WvLyOwTAibpbmvHHcvttU57y5+XqNZrLe3lE/Pq8eUj2fXKfOe3pfOjzhJYtB/yll5SDFcSDiH+hRkH25+L+sdxKEAMZahrlSX8ukqMOWy/jXW2m6M9LDBc31B9LFuv6gVKg/0Szi3KAr1kGq1GMjU/aLbnq6/lRxc4XfJ98hTargX++DbMJBSiYMIe9Ck1YAxFkKEAG3xbYaKmDDgYyFK0UGYpfoWYXG+fAPPI6tJnNwb7ClP7IyF+D+bjOtCpkhz6CFrIa/I6sFtNl8auFXGMTP34sNwI/JhkgEtmDz14ySfaRcTIBInmKPE32kxyyE2Tv+thKbEVePDfW/byMM1Kmm0XdObS7oGD/MypMXFPXrCwOtoYjyyn7BV29/MZfsVzpLDdRtuIZnbpXzvlf+ev8MvYr/Gqk4H/kV/G3csdazLuyTMPsbFhzd1UabQbjFvDRmcWJxR3zcfHkVw9GfpbJmeev9F08WW8uDkaslwX6avlWGU6NRKz0g/SHtCy9J30o/ca9zX3Kfc19zn3BXQKRO8ud477hLnAfc1/G9mrzGlrfexZ5GLdn6ZZrrEohI2wVHhZywjbhUWEy8icMCGNCUdiBlq3r+xafL549HQ5jH+an+1y+LlYBifuxAvRN/lVVVOlwlCkdVm9NOL5BE4wkQ2SMlDZU97hX86EilU/lUmkQUztTE6mx1EEPh7OmdqBtAvv8HdWpbrJS6tJj3n0CWdM6busNzRV3S9KTYhqvNiqWmuroiKgYhshMjmhTh9ptWhsF7970j/SbMrsPE1suR5z7DMC+P/Hs+y7ijrQAlhyAgccjbhjPygfeBTjzhNqy28EdkUh8C+DU9+z2v/oyeH791OncxHOs5y2AtTc7nb/f73TWPkD/qwBnjX8BoJ98VQNcC+8AAAA4ZVhJZk1NACoAAAAIAAGHaQAEAAAAAQAAABoAAAAAAAKgAgAEAAAAAQAAAVCgAwAEAAAAAQAAASAAAAAAz/Tr/gAAQABJREFUeAHtXQe81EQTn/foHaSK9N6lCKiIAoKoiKCgYkdUREQsKFg+FRAV7IACYgEFewURUBEQEFRQmnQUlN57571889+w93L15e7dy+XuZn6/uySbzZZ/ksnszOxsisFEQoKAICAICAJhI5Aa9hVygSAgCAgCgoBCQBioPAiCgCAgCESIgDDQCIGTywQBQUAQEAYqz4AgIAgIAhEiIAw0QuDkMkFAEBAEhIHKMyAICAKCQIQIJCwD3bhxI91zzz30448/RghN9C578skn6a233vIUOGjQIBo5cmTQY8+JMHcWLFig+rx161Z15Z9//qmON2zYoI4HDhxIb7zxRpilZk/2SZMmqbalp6eHrOCzzz6ja6+9llq2bEmTJ08OmTeeTqalpan+A4dwyPceh3Mt8s6bN4/wPD7yyCP0008/0cmTJ/2KOH78OI0ZM4buvfdeevTRR+n777/3y4OEQ4cOqecJ+UaPHk3//fdfwHyBEnft2qWu6dWrFz3xxBO0dOnSQNm80l577TV6/fXXvdJifgA/0ESk33//Hf6txksvvRTz7lWqVMno0qWLpx1169Y1Lr/88qDHnhNh7owfP171efny5erKzz//XB3/+uuv6rh27dpGhw4dwiw1e7LzS6PadurUqaAV/Pbbb0ZqaqpRsWJF4+abbzbmz58fNG+8nWDGpfrPzCyspvve43AuBuYpKSlG9erVjbZt2ypsGzdubBw9etRTzP79+41atWqptrVo0cKoXLmy2mcm6cmDnbVr16pzefLkUc/yOeeco/J98sknXvkCHSxcuNBA/sKFCxtXXHGFUbBgQdUWFnYCZVdp/PFU5V966aVB88TiRM6Yc/AkbMBXX31FuXLlyvaet2vXTn3Z+YXJ9rqyowJ+0QgS6hdffEHnnXdedlSRNGXOnj2bnn/+ebruuuvoo48+opw5cxIzQWKGRHfccQcx41NYIM/q1avpu+++oyuvvJKYKVHv3r2VtHjjjTeqkQAy9uzZU0mcLKgQM2HiDyFhZIWyatSoQY0aNQqK7Z133qnqxyixWLFidODAAbrssssIIyRm7H7X7dixg3ANM3+/c7FOSNghfLjAYiizePFimjZtGuHGhiIMNzCUOnHiBPHXW+XHkMwu8ReX8ufPHzL7zp07VbkoXxPqWLlyJU2fPj3TNuIaMGn+ylOOHDl0EZ7t33//TT/88APh4QxG27ZtUyoQlgTpyJEjwbKRnXx4EaFSWLRoEZ0+fTpoWfrEli1bPENC9APHVsqsTuTft28fHT58mGbNmqWGm9br9T76tZHvN9qHoeucOXMUA9HnsV2zZg2BUQQju88O2jNjxgzCvQ1Fe/fuVW3mkYN6vkLlxblNmzb54eN7DVQhoIceekgxL+yD0d1www306aef0rp165CkPrhlypRRzBPHYFp33XUXdumPP/5QW7QfDBnMF8wThHvUr18/dW9ffvlllRboD+/XsmXL6IMPPlDME3mKFClCL774Il1wwQXqnvleB+ZZp04dql+/vu+p2B/HQux1os5whvDMSAwMs/luGMxs1BZDHH4wvZrKjMsoW7asOo+hJfYff/xxdeyb13phuEN41jkZefPmNa666iqDX2pVFD+8nqGVbiPUANu3b/dUNd7GEP6iiy4yOnfurNqM/uLHL4jBkp6nHAzpevTooYZ7uq5ChQoZY8eO9eTBjt186A+/lB7c+MU1+MVVx8GG8FA36PZhW7NmTVW33TqrVatm3HfffYYup1SpUkaguph5qHow9OSPmqdO1rkau3fvNi6++GJPWpUqVQxmAF4Y2Hl2UC/rcdWzpfH83//+p8q1DuExrH/sscfUcBbPF4bbGOYys/HU6XuPcaJ06dIGMA1FPBoxgIEvTZ06VbUD5YJ0u5jJebIyQ1R5+OOi0n755Rd1/Oabb3ry6J1mzZqpd0kf+24ffPBB9SzodP4QGvwR04d+21GjRikM+CNnNGzY0HDbEB5f3oQkuwz033//VTcI+h6WNNRLBkaJh42HjQZLfQof/kIbRYsWVUwNN50lG4OHO+pBwgseLQbKEoqRL18+9cLhhQLt2bPHKF68uNGgQQODjQ4G0vEwQ49kfaB8X65AOlC0FYz5r7/+Unqsbt26qT588803qi78PfDAAwZLFAYbEhSTZInD6N69u8qH+jXZybd+/XqDh2lK9wpmz4YHA0xDM8dATA3ls7RmPPXUUyofysAxyE6dyAcGmjt3buPqq682Pv74Y2PChAlI9iPNQPGB+Prrrw02wBkDBgxQ9eJ+40OyatUqAx+ws88+24D+WpPdZ6dv376KOX/55Zfq+WIp3AAzBgZWBspDYJWGjzLKRp/79Omj0jTz8r3HaAvysLFHNyvgVt8/YGklLQBoWwHuEYSHEiVKGPfff7/BQ371MX/44Yc97wKYGdp+6623WosyeChuQCdaoEABr3TrAcq78MILDTznGgN8VPBBZcnbmlXhjndBM3dhoF7wZO+BXQbKVkB1030ZIF44PCSsf1MNxYsLacD3JrOeSOXzvd7aO7sSKA811YsGpmZlLFoqgCRnJbZIqrp//vlnlez7cgVioDxc8jIarFixQpUxZMgQVQYYCCQfSG9W4mG3kgLr1asXVj682HgJwISt1LRpU1WvtZ/W89h/4YUXVB6Nud224VowUNyvUNIN8mkG+txzz+FQERgXJEC023o9e3WoD4v+qNp5dvDBAJ5s9dbFqy3rGFXfNAMF80F9PIz1ygd8wMxat26t0n3vsVfmEAf4iOB55uGw+oghK5ipHnmx/lFdjfv8yiuvqP7jowIcSpYsafCQ3VM6RiuQ7MEo8TEA4aM+ePBgVQf6G4zQP3yI8FEFnjAOwUCIDzbrQT2XobwmTZooQUInupGBJr0OlC3WxJIdlStXjp+vDGJrtTrQ7hXQ30ExDqW3laD8jgZBcc+SodKrDh061KOnQtmom4f0xMxOuXHAlQM/6AFB0CnZJbawEr+onuzQLUEfq3WMqIMfWI8OTGdkKYHat29PLI0p1xe7+YAfS23EL6EuSm1RVrhkt05dLg/7M9U167z8YdC7xJInscRPbdq08boefWCG5tHh2nl2kAd4tmrVylM+dmDgY+bkSYOe9dixY8QjH697DLczHmmEdY89hVp2+KOs3MHeffddVd4ll1xCMC6yOkflgl4ehHxwKxo3bpzSj7MkrNKABQsVKg8zSHr77bdV+2Hc42E7sacEvffee6o8ZqwqX6A/4IfnlqV85SrVsWNHmjhxIt12221KJ8+eFuqyZ555Rj2TVve/QOXFOi3prfCbN28m68ujbwgYJSyVPHxWSfCl1ApznQfbs846y3oY8T4MGV27dlVGLPjGQdmuCW3EQ/vOO+/oJM8WDBDGLLvE0oxfVrzIeMlBqAuEF9mXwEBgyDp48KDtfOgXu8L4FkWst/NLyyzBbtt0H1nSyaxIz3kYTnwJTNRKuAdWsvPsoP8g37JgdLF+jHXflixZ4jHoqAvP/KF9MHJlheDNAOMNDFksXSomhnuDjzHaB79O+NriOQRDA0GwYIlUGZrAVHnYrtJZ5UVoK/xF8W5cf/31xJIksY7Tr6/qgjN/KA8CwS233GJNVsYsMHd8cGH4HDZsGLH6hT788ENPPviOwqg6fPhwwgeAJVLPuVjtJD0DLV++PPHQ0A9/WKdhLdaWvwoVKniYhjUzD92thxHvN2/enGApxcMBSykeJlgfQXjo8JDCrScz633EDThzIfAABcIEUioYHxiU3Xxg8P/888+Z0jM2bKDJOLC5Z7dOXZwvw9PpgbZWaTDQ+UBpdp4d9B+kRwu6HDxb7HOpDz0jINxz1v160qO5A5ew22+/Xf10uXBpAkGShLTMQ2c/VyIwezameX3UcQ2kTljPrQRPllAuZ3iW0Q7rKAjXa/whkAArHE+ZMkX9dPnADPcUkwDA1N3AQDPGELqVSbZlXZwaHmEIbSW4doC0PxtbvJWbk3W4DGkMw49oEKQRPBxscCAwU1baK/cUlI02QjpgI4dXVZAIqlatGtLFxusCGwf4YLAhQDFza3ZIP5BONB5286HtGHpjiGol+BmGS3brDLfcSPPbeXagvgCzYAOSVzWY3YPnRxNUKxhGQ0K0Eob1qAeMLysEZsRGNa9nBaMO9qxQjAjtRBvwDLJO3asquILBdQ7nNWHYDgnRSnAXgzsUJNFgBOkW5PssQzoGQbKFegNDfd8fGCZUCUjHe+IKYhATkrQRiXVtxrPPPuv3g0UUBOMGrK1wk8FMCB5yKXcdzI6A6wmU6iAethr8xVUuIyNGjDCYcRo8jFCWXr6RBg/BVL5Af5XCnIkECzksyFqpDgMD3IDgroK+wCoMYwKMJNaZRb4GhkBGJGt+3Vb0FQYRTTBs8IukXLTgfQBDAXCE0WDu3Lk6m7IgZ5YPBhlgC+s1rkV5mNWi3Xn4ZfCU57vja0TCebttgxGpU6dOvkX6HWsjEmbHWAmGEx7GWpM8XgGsMlHpdp8duOKwRGXAys7SuAEDEktiKk0bkVAgD1uVEQZeEjAYsq+xsoLjWj2bzPce4zp4GrCTO3aDEgxfMPzAiAOjI9yU2OldGa7Yt9hzHYyleJ5hncdz9u233xpwgUIaDD6aWHJVaa+++qrBPsXK2ArMYO23ElzmYBS1EgxiMJixztRgwcXADCm4kMHjIRS50YgE3VdCkmaguPGBfqyz8fSbJST1YOl8eBDAUGAJtBIP65W7Bfw/8YP7iHa10ZZia369Hy4DxXWsRFft1r6XsJjiwQPDQjvBUGFRtTJu35crUgaKjwZctMBYUReYHUtBBrwErGQ3H5gmG1EM1imr8ljC9vQvXAZqt04nGCiwsPvswMqvpzuCecBFDNZ1KwOFdZtVOOqDrnGHPyqPNDyw+95jnLDjB4p8sKSzKspzT+HjanVfQx58HOD1AT9k/T7gWfedogmGDGapn0dY1mFVh9eBlZDOoyRrknIBxMcJlnfUAUEAz3KoZwEFuJGBKn8D7oQQIwDjCEsValjMD4YXJgiUAOuirzEA+hiWSJUFFZbq7CYo0aGLZAahhlvZWR90VdC9wngExX4wspsPOj8MScMx7mS1zmDXRzs91LNjrQszwKBPh14xFMH6DUNPtIyUui6oDWDY0p4GOt13yx8qpbuGzh16y2CEaZjQWcLjwfedCXaNTofxE88XnmUYbOORhIHavGvs46bm+vLwmngopK6CoQW6I/ZXU5ZNm0VJNkFAEEgQBISB2ryRsLbDuoi506z7VG4/rNNT7j5Quof6StusQrIJAoJAnCEgDDSMG4bhM+uRVHxEWAJZIU+wzmOIKyQICALJh4Aw0OS759JjQUAQiBICSe8HGiUcpRhBQBBIQgSEgSbhTZcuCwKCQHQQcIyBYuoeZl/4zkgJ1A3MumGfQ69TcHngOISEYAPQPwoJAoKAIBBrBBxhoJgfi1D/WEKgf//+ftO4fEHg2Q3EDsOeZPgOstOuYqqYOoky2K/Wc152BAFBQBCIBQKOMFBEe+F4k8QBWtXcW4S9QtCCQIRlJuBEbCXMS8f8cJ4hQTwtTkVkwTITQoKAICAIxBKBbHf/x4wGhOpCzE0Qovno+JO+Yc4QAQnRYXiKpNeyvzyNUS06pYFCWDmsDXT++efrJL9tuBIq8oc7k8Kv0jhKSLb+xtGtkaZGiEB2PdOh+EK2M1BMjcQUSGsjsIgUzx33ihOJ6YA8X1jFE0Q0ICvxMgNeUwkxrVDHT7Tms+7jGiFBQBAQBLKCAKbTIkpWMMp2Bor54dawXWgIpFJEWLcSLzmgwmUhZBWinlvJtwxc7xtP0Jof+zqorm96oGOoEzCXGfODnZ6Ti7nE+KA4TTDq4cOWGY7RbhdmciGsWmZzwaNdL3DGRzzUnP5o14nyYPDEL7vjuPq2HZM+8AvnPfAtI9LjWDzT4AmItYB3KZrPlo5TGgyLbGegCL6BlwZWdC1ZQvrkCC9ebeLVAQkRpzk6jDIQIT+HIyNexEw9BLhGE/Z1cF2d5rsNB0RIvyBc4zQDxQ0Kp62+/czKMT5MTteNOoGx0/WCeeLndL0YVuL5crpe4Axyul7UGctn2ulnK9uNSOgQDEAIxgvCutsIHqyXM0BkGATrReh+GJDwQ3Qj6EfBPEEc0ktFw0Y+SE5wZdKBfVUG+RMEBAFBIAYIZDsDRZ969+5NiDh90003KSs8B2v1dJWD62bqG8rLrKrhJgeNJY45qNZs8TVAeQqUnbhDAC5r1mci7jogDU5aBBydCw8dBfSMkRIc7KGzi/YwG+oCqAUQFCTaZWfWV9Qb7ZiPmdWJ84jhCH0g9KBOEu4hVDnQg2rq0qWLWgFy3rx5OinqWywOiCG801hDv45fKENE1DvLBWIZDmAdjdir4bYvFs809MwYnUJlaH22wm17uPkdkUB1o7LCPFEGLGJOMzjddtlmHwJwSUNc1XBp6wGijxcSfbGYjTUZywuFW4zkFwQiRsBRBhpxK+XChEUA0hn8fPXqlXY7unAj0fm8IOSgqURPsqq8Mi9kue+o3aslnyAQHQSEgUYHRyklQgQwvRcuKOFIoPuPEV0zliidZ/MePkF0hCe1pfIKLL0/ibARcpkgECECwkAjBE4uiw4C8MKAy004EuganiNRNJ93/WCmkEqFBAEnEch2P1AnOyN1xR8CvISv8hPWPsJ2elA0f2Cd5ynTnddOEZJHEIgKAiKBRgVGKSQrCITDPFFPzdJEHesT5bF8/nOx3/gHt2elFXKtIBA+ApZHMPyL5QpBIFYIvNyFqEoJoi+XEBVgj6j+lxFdVDVWrZF6kxUBYaDJeucToN+9L2HDEf+EBIFYISBD+FghL/UKAoJA3CMgDDTub2H8dmDp0qU0btw4v2hd8dsjaXmyISAMNNnuuIv6i8hbDz74oHJjclGzpCmCgG0EhIHahkoyRhuBFStWhOX/Ge36pTxBIKsICAPNKoJyfcQIRDoHPuIK5UJBIMoICAONMqBSnD0EMH0T0zjDmYFkr2TJJQg4h4AwUOewlposCKxbt04tdRHOHHjL5bIrCLgCAfEDdcVtSL5GVKlShRYsWBBWEJHkQ0l67HYEhIG6/Q4laPswfTPUstQJ2m3pVoIhIEP4BLuh0h1BQBBwDgFhoM5hLTUJAoJAgiEgDDTBbqh0RxAQBJxDQBioc1hLTWcQOHDgAP31118qEr2AIgjEMwLCQOP57sVp22fOnEn169enrVu3xmkPpNmCgImAMFB5EhxHYNWqVWqZ3/Llyztet1QoCEQTAWGg0URTyrKFAKZw1q5dW63TbusCySQIuBQBYaAuvTGJ3CxIoDIDKZHvcPL0TRho8txrV/Q0LS1N5sC74k5II6KBgMxEigaKUoZtBE6dOkVDhw6ltm3b2r5GMgoCbkVAGKhb70yCtitv3rx03333Ue7cvBKckCAQ5wjIED7Ob6A0XxAQBGKHgDDQ2GEvNQsCgkCcI5CwQ/hDhw7ZvjUI7gs6cuQIpaY6+01B3eG01XanbGQ8fvw4paen28gZvSwnTpxQi8hhG4qmrsxJOw6lUMVi6dSmRlqorLbOwXgFchpr1IufYRi22hmtTCdPnlRFOd1fVBqLZ1rf36NHj1Jmz1Y4GCNqWCh1U8IyUHTcLqWkpBCYCYDKkSOH3cuikg83O5y2RqVSLuTw4cOUM2dOx+uGEQk4o+5g1HFMTtq4N4VO8HftdHoKtaqeTu/dbH7kgl2TWbp+qZzGGv0FOV0vPoxgok7Xi77G4pkG0z527BjlypVL/dCOaFBm/CD4UxyN2mNYRqivhm+ztHQA8EO92L7XReMYEm84bY1GnboM9NXJuhGFvkGDBjRlyhS69NJLdTO8tu/NJ1qx3SuJFmxIpamrclPnc73TwznCRxI/J/ur24fny+l6tQTqdL3ocyyeadxbEN5hJ/vs7HhVdVH+khUBzECCpF+uXLmgECzY4H8Kkuifm/zTJUUQiDUCwkBjfQeSqH4w0Hz58lGlSpWC9rpcUaLcPloUyBYbdgW9RE4IAjFDQBhozKBPvoqxDnyNGjVCzoF/iEf2J9nek8PyZML8MmsdUYuXkw8z6bG7EbA8pu5uqLQu/hHQQURC9aRwXqJ/BhNVKOafa/dhos//9E+XFEEgVggIA40V8klYb7NmzahVq1aZ9jw3mzbLFPbPdpx1oTvte6f5FyApgkCUEUhYK3yUcZLiooDAmDFjbPthNuJQoX/8Zw7nddVp7LJao5Q+kq0gEHsERAKN/T2QFgRAoF9bonRWfuY6Y1DKy5/6K+oStasdILMkCQIxQkAk0BgBL9WGRiAPP5kbniV6l/1C9xwhqleWqEO90NfIWUHAaQSEgTqNuNRnGwH4Rt/VwnZ2ySgIOI6ADOEdh1wqFAQEgURBQBhootxJF/cDUxkxdXPatGkubqU0TRAIHwFhoOFjJleEicCGDRsISxnr+dlhXi7ZBQHXIiA6UNfemsRpGBzoQb4LyX34O9HQHzgy1HGiKiWJpt3H0zjliUycG58EPREJNAlucqy7CAaKpTyqVKniacpnfxA9PYVo31GiU+zf+c9uoi5jieNmerLIjiDgegSEgbr+FsV/AzEHvmbNml7Bqgd+x3EjLSE+T/H89w17iH7bGP/9lR4kDwLCQJPnXsespwh027BhQ6/6rcFC9AkInyctTFWny1YQcCsCthkoIlxPnz7dYwh4+eWXqVOnTjRu3Di39k3a5RIEPvvsMxo/frxXazo14MC7ZgxcT/qBY0TnVfQcyo4g4HoEbDPQJ598kq666iratm0bffTRR/TYY4+pzvXt25c+/fRT13dUGuguBAZ2IKrGhiMrYZ67nrq5YhvR7xuJjppL+1izyb4g4BoEbDPQ0aNH09SpU6lixYo0YcIE6tChA02aNIkGDx5Mn3zyiWs6JA2JDwRy8hz3W5plMEy0GjrQm94j6vmhaVDqMYGDhww0DUzx0StpZbIhYIuB7t27V0XRQSgy6LNmz55N11xzjcKqatWqtHs3m1CFBIEwEXh+OlvgzcUy1ZXYX/Qf0Y+r2bWJF+3cz0N60FWjiDC8FxIE3IaALa+7YsWKUf78+Wnu3LlqCA+H6Msvv1wtX4rhe+vWrd3WL2lPHCAAKZR8jEZWhqq7AF3pwn+J2tbSKbIVBNyBgC0JFCveQQfavn17uu2226hPnz5UpkwZ6tq1q5phgq2QIBAIgVdeeYVmzZoV6JSKruRrSAqUEZZ533WSAuWTNEHAaQRsMVA0CkajP/74gxYsWECvv/66aucDDzxA69evV0vVOt1wqc/9CGAO/MCBA+mXX34J2NihnYnKFiHKyU9h0XxE5/CCcs9e5T0bCQz2KC+t3rJawCIkURCIKQK2hvC6hbVq1aIdO3Yopok0LE+7detWKliwIJ199tk6m2wFAYXAf//9R4cPH6Y6deoERAQW91/78zrwW9mpnvWfdcoQ5c1FVIjXRXr4S1PqbFWDaMT1xAvRBSxCEgWBmCJgm4F++eWXdNddd9H+/fv9GnzdddcRfP2EBAErAsHmwFvzYL8uB0u2UtfGRPgJCQJuR8A2A+3duzd17tyZ7r33XjrrrLO8+gUJVEgQ8EUADDR37twETw0hQSAREbDFQA8ePEg7d+6kYcOGUalSpRIRB+lTNiCg14HPmdPWY5YNLZAiBYHsRcCWEalw4cJUuXJlWrRoUfa2RkpPKARGjhypJlskVKekM4KABQHbosGQIUPooYceos2bNytmapUqIJX6xnq01CG7SYpAgQIFvELYJSkM0u0ERsA2A4UO9MCBA3TPPff4wSFGJD9IJEEQEASSAAHbDBTuS/DrC0Q5cmBKSWjCdE/4kVaqVEnFhgyWG3qz7du3U5MmTahoUXYMPEOLFy+mEyd4ft8ZqlGjhp8xS5+TrXsRwEyjsT+n0uqdRBXZFvl4e6JAoe3c2wNpmSCQgYBtBponTx41D37Pnj1qCieKSEtLU1IpmONll12WUarPHpjf008/rfKMGjWKunfv7plLb836yCOPqMjlpUuXprFjxxJmscDX9PTp0/Too48qpqrz33LLLcJANRhxsn17HtGgqd4eG2PmEq0bRJSP/T+FBIF4Q8A2A504cSL16tWLjhw54tfHu+++OyQDxcwl6FDPPfdcuv7665U/KaI5wcVFExYeO3XqFCHOKOjo0aM0Y8YMxWw3btyoGCm8AITiA4HffvuNihQpQph8AXr1J6Lhakant0c8jobP5JluLIkKCQLxhoBtBgoJEHPeb731ViU9/vjjj/T777/TCy+8oH7BOg7pEYanBg04gi4TpEsEJtmyZYsyRunrYOUfPny4OoSz/tKlSwmMGbRu3TrFQBHQGcP4du3aqTLUySB/hw4dCnLGPxltBOHjkJpqyzHBv5AIU1B3OG2NsJqAlx0/fpwQKDs76P7771f37P3331fFv/pToYDVQCk0fz1jcGH2hlvCaAnkNNaoF79g6i/VqGz40yugOt1fdCUWz7S+vxC8rKq+rEKLkbdV0PMtzxYDhfEIeklIkRhSlyxZUukn8ZKgsc8//7wabvsWjmP4j8Iai4AkmiCZIEQemKYv/fDDD8rfFJJLixYt1Om1a9fSmjVrlAQLSfXtt99WEc5LlCjhe7nnOJCk7Dnps6MfboBvbadPtmw5RN3htDWajcBLBqk/O2jVqlV08cUXe/qWmlKQ0o2MZyCjToOK5j3lyZeRHt09fY9jgTXqzi6cg6EU6/46jbPuL8JtRvMdRllZZqCQGHPlyqX0k7hhYG4IEIGFwpo3b06PP/54sPtIMDDpr4POhC8UVmkMRNClXnTRRTRixAjFsBGwGZIofmgHCEwb0ij0oMEI0aLsEsoDQ8eHweqeZff6rORDvb4zu7JSnt1rsbIA/HvxcYs2YcSBOfB4NvR9KMDamkMZNkBLlSn0eId8nI+jiWQjQXePl8FprPGRws/p2XrAH9Knxj8bofUrOhbPND5QsMUUL148JMPza2wWE2yNV8E8ob985pln1E3BAmGff/65+qoiSn0gSVK3Cx3C18gqVgPgsmW9J0DDyg8pEwRGiYDN2nEfw33r9RUqVFBxSXUdsnUXAoHmwJ9fJXAbb25KVNv+ty5wIZIqCMQIAVsMFG2D9RwBRSD5QRqE/hNf1ZdeeoluvPHGoM2HRAdJZPLkySrPnDlzCAGa8QPBQARdHIbPCJmHfRBiSFarVk3t45oxY8aofeSbOXOmBHFWaLjzDwwUH93q1at7Gvgih64DpZLpCocwdVgTaZi5sIF5Uv4FgThDwJYOFH1q2rQpITyZHo7ANQn6Shh0sE5SKIITfv/+/enrr79WRhq4NGlCcJKhQ4cqCbdLly7Us2dPNeyHVKsXroOjPizwd9xxB+3atUvV2bixhOvRGLpte8UVV6iYCWCimvay80Z5duvdfpCoSJ50erBNKvW4UJ+VrSAQnwiksPLVFAlstB8KWiwkB6MOQtshFigYmV3LNazrVuf4QFXCKgwpVOs7rXkgfUKnCstYNEl0oNFE07+sRf8SdX7Lmm5QLhZBNwyxpmXvfrLqQGMRpzeZdKC2JVBYVSFZwBoPJtexY0d66qmnlCP9V199ZUtZnRnzxCsEZhyIeeJcsHScE3InAvuO+jJPtDOFTrH31JOTiJ7r5M52S6sEATsI2NaB3nnnnXTBBRcot6Ty5curssePH68Y3scff2ynLsmThAi8+0vwTm/2j80dPLOcEQRciIAtBoqhM4xGcCmC64smOMVjXSRY4oUEAV8Efl5H9Pos39SM4yYVMvZlTxCIRwRsMVBY0jG0DuQci+AfdnWg8QiQtDk8BBB8G36/WNf95nHBry3CbsB9Wwc/L2cEgXhAwBYDhSc+HNwRD3ThwoWqX5BKP/roIxo9erRaIz4eOittzH4EEBAGhsU9h0PVZdCEO0Kdl3OCQHwgYNuIhOhIcG5v1qyZmtHRunVr5UjfrVs36tu3b3z0VlqZ7QjABxT+n18tCV1VY1ONHjqTnBUEXI6AbQaKmUO//vorzZ07l1avXq2mS2FGEn5CgoBGAAy0TZs2tGGPTvHdGlQgwz3U96QcCwJxhYBtBopeYS4xAkTgJyQI+CKA+fX79u1T68Bv4WDJgSmFHmyNACbR5aKf8nJdg9mWeeQkURm2c856SGKMBsZfUqOJQFgMFA7nsMbr6Za6IbDG63B1Ok22yYeAdQ78kRDRBD9fnIPubRU9fKavIHqCZwqfMKMS0rYDRB3eJPrhfqKcmS+WEL2GSElJh4BtBopYnXCcDxRfUNZESrrnJmCHEemoR48ehOVWrnk+YBaVuHZXKl09mmjyvcHzhHPm6SkZzBPXpfHcup3MwOf+TdS6RjglSV5BIDwEbFnhMfMIQUMQPFm7qcBVRf8+/fTT8GqV3AmJQKNGjejdd9+lXzbmoVNnpMFgHV21nWjK8mBnw0sPNBkZ85NPZE+o0/AaJ7kTGgFbDBQBRBBrr3PnzlSoUCHl9wnfT/2LZgDThEY7SToX2oXJBOEYM7dePIENUz2zStdxXBlLvG5V3AEOcH9BlayWLNcLAqERsMVAEfz45ptvptdee02FnQtdpJxNZgTSeI77Q1+aw2g7OLR6jejKN4h6TCAC04uEHm1H1LyieWVRjstcilcPmfMwR33K3hjNkTRVrkkwBGzrQBGCrm7duiouKAxG1tlHcFvBch9CgsBbvMpmLjbcYPliO7SHw9zht3wrUd1nieY/QlQhqAU/cImQPr/oSbR2hxn1HgGa8+cOnFdSBYFoImCbgV599dWE0Fjt27f3BEPWDalXr57elW2SI7DjoH3maYUKOkswwic4QtPECGcp1ShtLVH2BYHsR8AWA8X6KsuWLSO4qdSuXTv7WyU1xB0CMB6NGzeOY9exCMrh6iIhGIN2hHB/iqRMuUYQyE4EbDFQLN2BqPMIqCwkCARCAOtXbdqyk9L22mOeOc5kg8uRpjz8NF4ohh8Nh2zjAAFbDBT9GDRoEGHJDQSLqMzLbeTLl6GhL1WqlNKPxkF/pYnZhABGJ2Ur16VNNsvHbKHrmxC9NpMoN+tMc/OTiLSBHWwWINkEARcgYJuBIu4n1ofv06ePX7PFkd4PkqRLAANt1amnbQYKgPq1JbqkOtHCf4nO4tWVuzbyd0dKOiClw3GFgG0GimWHgy2fhHWKhJIXgZ07dyo/4SrV69ACnkaZORlUpaQ5hj+vIhF+QoJAPCJgm4FGeyG3eARL2hwYASzYVr9+fZqwvj6llgycxzs1hV7p4p0iR4JAPCJgy5E+HjsmbXYOAXhmTJm9jJlnAxuVGtS9eRqVLWIjq2QRBFyOgDBQl9+geGnePR9m3lI42MPFCe5K931C9OXizK+RHIKAmxGwPYRHQBHr7CM3d0ra5jwCy7eFrhPME9M8QRMWplI6M9FJy4h+WkM0qpuZrv8xP372Wl7imtWkbWsRFcijz8hWEHAXArYlUMw2mjx5srtaL61xBQJ/bcm8GZjaCaYJSjfOOIHy/kxmoPP/UcnqD5HsGz1vxvcc8A1RzUFEm/dlnJc9QcBNCNhioHCg//vvvwlSqJAg4IvA9JW+KeEdawZ5kkPgtXyF6DQ/ZoeOk1rZEyXdOj5Deg2vZMktCGQvAraG8HCaHzp0KPXv35+2bNmiFg2zOtKXKFFCpnhm731ybelLly6lKaPfofSKgyg1X5hRQLhXWP64UnGze5jGWYiH64c4zUpb2DUKkZrgKyokCLgJAVsMFA3GTCRxpHfTrXNHW+bPn09zvhlFZ/d7MewGQS/aiQ33zSqZlxZk5hkoitNRXucob66wi5cLBIFsR8A2A4XkGcyRPmdO28Vke4ekAmcRWLJsBaUWqUQpuTKm9mbeAoPOKZJCT11JdFX9jNzF8hP1aUX0xs9Ex89Ek8f8+MfbS3i6DJRkz00I2OZ8BQoUoP3799NHH31Ea9eupTJlyhCWcMD68LlzS/BFN91UJ9syf9FKylWibphVptAetrRbmacu4ME2RFVKEI2ZSwTm2eMCoo523Et1AbIVBBxEIIWlyjO20dC1IpzdZZddRpjSiYDKu3btIixje/nll9PXX39NiFrvJtq7d6/t5sA4durUKcqVK5fjrlq6XtuNjVJGrLCKkUNWp+GWq1ybctS5g4q0HhpGywwqkteguX32h3FN1rJiWRosPYN77CTh2cLP6VHa6dOn1ZplsZhBGItnOrveYdh6rPYe32fHtgTas2dPuuCCC2jkyJFUrlw5NZxfsmQJXXvttYQVOwcMGOBbdkyPsUKkXQIzAcMtWrSo4w866g2nrXb7lFk+fPzy589PGFlEShiRHDu0m4pFIIFO7J7iaL8x3RQM1GmswbjxQ0hIJwkxfLGCrtP9RR9j8UyDaWPdtsKFCzs6IrblxnT06FFCvMfnnntOMU+AhIcRQ/iHH36YZs6ciSShJEMAH5zKAw5Tvlpdw+p5y6rp1KhCWJdIZkHAlQjYkkAxAwkjfTBSXzpy5AhhuCCUnAicTMnHBqTw+n5LUyyYZOvbHV7BklsQcBgBW08x9JutWrVSw/SFCxcqZnr8+HGaNm0ajRgxgtq1a+dws6W6eEMgJz9p+ZnRdq5/itrVsqV2j7cuSnuTEAFbEihwGTNmDF1zzTXUrFkzKlmyJEHHghlKHTt2pH79+iUhdNLlW96zhwGs6e15Ka2bmhKdW5qnGJFMbreHnORyOwK2GWj16tXpjz/+oBkzZtDq1auV1b1hw4bUokULt/dR2pdNCMxeb6/gE6zheehSouqleJYRzzayQ/t55lGfT4kW/Yv4TUQf30nUsJydKyWPIOAcAiEZ6G+//aash1gP/ueff1a6TgznwThBGMb/9NNPVLp0aZKljZ27aW6oaebyQ3R0+deUp+qVlCM/O24GIax39CrbmMA87RJmI9V71ozGpAOQdB5D9NU9RI3L2y1F8gkC2Y9ASAZ65513Kp9POM936tRJTeUM1CRZEykQKomd9uZXS2nflNupZPeFARloYXYL7n+ZueZR5TNz3e0i8sWfRPlYX3rszGwkXIcAI89PI/qip91SJJ8gkP0IhGSgixcvVu5KaMb27duDOplLnNDsv1Fuq2H92pXcpBTKWZyVmwHoDp5B1P38ACdsJB3nIT+G7b7kG2TE97wcCwJOIxDSCo9ZG3oGRePGjWn69OnKSRVTN60/ncfpxkt9sUEAQ+y/166gHIUrUGruwI74Y+cRITxdJISVOo9apE+UAUNUF161U0gQcBMCIRmobqjEA9VIyBYIYGh9evdKylky+Bx4GI54rkVEhLnw428zL0WAEURpuqoeUc+LIipOLhIEsg2BkEN4XavEA9VIyBYI7DvCYeeYgeave1NQQGD8aciR5W9vTnR9E/LE/Ax6gc8JLOWx+HGiVdvNOKD1yvpkkENBwAUI2GKgaKfEA3XB3XJJE17+iZnaNZ9xAOXQaxgjCPKI2ebvGQ5dd3eYEmTJQkT4CQkCbkXANgOVeKBuvYXOt+tbXgwuT7nw/H8HTSWqwPFdLsyCGxJUBweZKcPCn08iKDp/46VGPwRs6UBxFaL2IPTZlClT6NVXX6WDBw8qh3pE9HFbKDu/XkpC1BCY8JvpUhRJgYO+878K0eYn/k707nwiLCgXjOb9TdR8GFGr19mndCCv5rk6WE5JFwScQ8C2BLpq1Sq64oorlDsTYu9hCudTTz2lfEO/+uorFWDZuWZLTbFCYOSsyGv+j1fXfGJKHnqah/MlWYLEEP+S18zo81jy+JkpPOOoBy8sV827jiWbiLq96512+wdE0/uww73oRr2BkSNHEbAtgcKpHvFAd+7cSeXLm+Ow8ePHK9/Qjz/+2NFGS2WxQ2DrwazV/fXy3NRoWG7q+rZpZNp92FxYTjvN38uP0h5O0wSXqatG6yPv7SeLvI+dOsI002E/8Mdgkrl+vVP1Sj3uQ8CWBIowdr///ju9//77KmCp7gamcD7wwAM0duxYeuihh3SybBMUgX1HzY6d2rOGchatQik5eLpQRGTQrxsC+zjB9WnNTtaVnok//PtGIkwHPcmM1JcidZPyLSecY0jNUCWAsaNNH7BK425WB2OqKnxVr+blR7BYnlByIGBLAoWjPGYbIfanL61YwYuK8TmhxEdg8lKi9OMHaOfYWnT0rwlZ6HBg5okCwaRLWHzzUzlrsBU54SLlNN00zvSDtTL0t38x1Q+Ps0Ra+SkiSKhCyYGALc6HWUdYDwlSJuKBgiCVYo786NGj1bpIyQFXcvcSC73B/xMU/kJymWMHtopljmuUzsjbpAK7TOX3n9rZtRFRNZb6nCaoHHSAE2vdUEHAIAaGDzWEUHIgYIuBAgoM08E0EQ90w4YNajXOm2++mdq0aUN9+/ZNDrSSvJebeQ2403tMBpqzRO2oolGTmeZzVxO92c272Nw8LP7uPiKEYMY+fve2JHr9Ou98Th1VKObPzK11g7kiBJ9QciDAj6M9Klu2LP366680d+5c5b4EqRRh7XRoO3ulSK54RYAdLxQTO7WLVTaFylFqnsJZ7gp0m2A4sMr3uDB4cUXyEW16zhwa45oCPLUzVvRaV6LzXyLKwZJmGrh6AIJ+NJHpGEvavVjKnrve1APf34powGWJ3OPgfbPNQLFsB5Yvvvjii9VPFwlL/A8//KCG8zpNtomHAPR8IMyBz/rw3aCqJVLoBp7i2aIqR6kvZ5Yd6h8GI8yLjzWVYwl05dNEL0w3GfouDhC9ZDO7Yp02W4alSyZ2j3Urs7f+OoPNj4dWZSBwDCY33Htx9tbrxtJDMlAEVP7xxx9Vu+fNm0dDhw71cppPS0ujb775hhCtXiixERj2vdm/fHW6UWoui5UnSLeZ3ykfTdgXlzKD8SZen50lyd6XeKfGyxGYxQudM1r75myiL5fwmk/s2/p4e/OjkHE2sfZwL3PyveNVhD2EwDHQjwsD9UBi7lSrVk0tW4x107Hu8nfffadmI+lsCHdXqVIleuKJJ3SSbBMUgZM8hAcVaNBdbTP7w0v2+d1EQ5nx+jNQgw4cB4tNDLqvFRF+yUAIbA2vCO23q/vse6zTE30bUgItXrw4/fKLOXa7+uqr1TC9YMEzDnqJjoz0z4PAAXYtCpegB8SyHFATglV6qwtTvFyVwi1b8scOAcz8ggSufYLREvi/tqgSuzbFsmYeYNkjDNUxjD95kjXITC+//LJa5mPcuHH2CpBccYvAh6bnWtjth7SijU++F1/b0DfF/vGKrRwvdAHRpKX2r5Gc0UEAzHJyL7MsxGktwGqLdrU4lsEt0Sk/3koJKYFaO/Pkk0/SSy+9RH///beSSh977DHq0KGDcmFCQJEbbrjBml32EwiB0XPsdQaSJnSbVidzSJ55+SmDkaUoW9NPsen6kmrpHNqOM0ZA7zPjHDjVrAdS7mOTWEXAGiS4Nwk5g0BxHoT+O4Ro/S5zOF+Ro2wlK9mWQOEwP3XqVKpYsSJNmDBBMc9JkybR4MGD6ZNPPklW/JKi3/tszqwBs6wWIESotlAfOk50hAcwK7an0LVjiewyZg0yJM8nvzWnUcJpHQz0OBsznj9j4NL5ZJv9CORgzgHf3WRmnkDZFgPdu3cvr+d9iFq1akVY3mP27Nl0zTXXqLtUtWpV2r17d/bfMakhJghYfRp3jK1Dh357JWQ7Vm4Pftr0m0yhf/emEOa4P8euQOVZesSv+YvmcF9fvZrLQei8Kct1Ckeo32xaujNSTCY6a401RfYFAX8E5q0nunQ4UbNhRI9+5X8+0hRbA59ixYoRhulwot+2bZvSg15++eVqnfhPP/1UzUqKtAFynbsRGHDmYUs/eZhnIa2OigO9dS6PNi5t4VlO5z5PtPx/RB+xzvV/kzPUAY99w8yTmWyRvKYDuy9iZ2XuVeV7iRwnEQILNxLdMj4jju1X7HK29QDRh3dkHQRbDDSFvZihA23fvj0bBdLp/vvvV/E/O3fuTPAVHTBgQNZbIiVkCwJYGXPNDlNHiCGXL8GaunKbGS2+fDHz7I+riH7baK7N/tliMw0O9LCl5yxR10zI5B+O74bmjpnk1afRFoSJGznbTNG61CMniIZMY91nB6JRc4jW7cxwXEc9Y2/SJchWEPBH4K4PM5gnzsJvdfEm4ohgPKussn/+cFJsMVAUCKMRAiofP35czYdHGkLZYW48otVnRhjm//HHH1SpUiWqWbNm0OyI7oQ16Js0aUJFixb15IMv6qJFi9Q69U2bNiX4oEaDXuIXdvhsNiVSGVXczL4czMLcjUbxMSkDlm98cRf+az4sMOKAGWEmz6/9+WHi/VfmFKJl2/PSSmaumrDyJSyr+EJr5qXPZQQRqaOTQm7DZZ66sLXcHlh2oSvVdIr7M2str8t1FdG0Pjz1k/Wgc/82ozZh/rysm6SRkm0gBBCs25cQ9AU6+aySbQaKis4991yv+lq3bu11HOxg8eLF9PTTT6uITqNGjaLu3bt7dKjWax555BE10wlxRhG85JVXXqFy5copvWuPHj2obt26tHXrVvr888/VsiKQjLNCs1l3Nny2LgFlGdRmBNEnPYguqqbT3bEd9TNHa19ktgULtLWtHbxdNQZmSGjIpddY38WRhC5+lQjD5ZypBeh0ujd+U/4KXubp3TwHvsDZlJo346MWPLfJ3F7oxLEyPzL9Bg/yw6qt8SkpBkun3nXrsi6sQjT/H32UsYXvoabBHfWebAWBzBFoXYPoW9alw61OE0IONiqvjyLfhsVA9+/fr5zp165dq4bwjRo1UvpPBBYJRa+//joNGTJEMeDrr7+e7rrrLmXFt16HCE+Y7QT/UhAiP82YMUMxW+hZmzdvTg8++KA6d8899yjVwfnnn6+OI/275X19pX6ZzS2kt41D9Dnntxh249sAlyAQAjdYjSk9+XgIM5Gbmprn8b+VmSLyw/Cird4ZZzP2wDxBvszTTA3+n1qgDOWr0Tl4BsuZwizF/jbAdLBeO9B0uob+Enqn48cO02+b8tK+YznVip24DKhjtP86B+ro0ohnMLHaAMN0DLVAOD/2ZrUrf4JA2Ai8eC37DC8zn0f4seK5mtidP/IFwy7K7wLbDHTZsmVKgtyxYwc1aNCAdu3apQxKMCYhyEiwheVOnz5NmzdvVtegdkiXMEhhlc/KlSt7GoT94cOHq2Mw6qVLl9Ldd9+tjtevX6/q1pkbN25MK1eupFAMdM+ePTp7iO1ZfA6vp5UM9aXas2evNTHb9vHR0G2FS86A7wrS/I25eQidQt0aHqPbzjvOzPOMcvJMK8BgB32XTu2r7KPDJ1Lo3i8L0T97cvCwN0UxXjObb7/sdgGszP/aQs37BSjAUDnxUNYqdZojxxvUsvJJuq3pCTrMzJIFXkUQHk8cISrO+dLyp1HnWsdUEO47mxC981teXhspla6tf5wqF08ndvigD28kevbHArRwUy6OBZpOT156hPKw3sHWLT1Tp+8GOIM01r7ns+sYNgOD9RlQQTlJiFMBcrq/qNP6TOPYCQLOoAMHDgQM8L74YVYDrc/Fbm8p1KT8KSpV0LD1PIFX5cuXL2gXbDPQnj17qjWRRo4cqYbVeCiWLFlC1157rWJ8wQxJWEMJOlLrcLtIkSL8ouz1YqC6hYjsNGzYMKpVqxa1aNFCJUMnWrhwYZ1F7YMphyI7UfJzsNyT5scsUqhInrSANyFUfZGeAy66rZeOKUJH+Abr4e3Xf+WlNB5mF86TTgdPpHpVgQcB17V4oxj3gIfEZ/qB+xKIAXpdHPLAn3n6Z0+n5hXS6OzC6dSyyilqUPY0lSmEejV5t1WnYosXG+3Wfe55gUXZafGqe6Y9j7EIP03By9Q5Qm3186frDZU32ufwcjtdr2YoTtcL7KzPdLSxzKw89DdYny+tYX5UzPfDznOeWW2sCss8izmchgEHUih0kiCAhCH8ww8/rJY6DsZAsRSy/hrquiCVBpNYEfn+oosuohEjRqhhPxz1fcvA9aG+CqgHrleZEjC0vvdnLjAoh73rM63AO8NhFkJg+cPwvFlFtip/x8GCl/OXMyWVHmpjhgizGl9OnE6h79fmVWugH7QIMOYyFyl068dgnuiC9WGw7nvX732EjtvN631lbn5Iv+ylGRqP18Mg+BPnyZOHrOqbMC6POCskMTyztp6LiGvxvxBTn/FzOobE4cOHle+20/0FAhCOnK4XUi8M1YUKFXL02bLFQMHRIdlAL+lLWCcJDC0YISAJ8mAIgxcHBIARoNlKUA1g6A4LPcRmOOrrhepKlCihrtH5cb1eGVSnRbINFhD3iDnai6TIoNds4yEtHHnB/FAvLIBgQSybqGuG/gDDjv/liHIzpbdp/IEhBcwXVmroExHlCGwwMoqMeaKuN26IrEa5ShBINAQCvLL+XYS02KpVK+XviTWRwEzhzjRt2jQlKSLYcjDCgnQwAE2ePFllmTNnjvo66S/Uxo0bVVlgznCVQrmgWbNmEcLpgVq2bKnqwjl8ZebPn6+kX3UyC39gZoEof3Q8pFTRr/1EVHcwUdNhRLBEw/qn3ScsRkHPKo/W9mC6HCRVSKUI1vBoW3Y/upaoDVsVQZEzT/P6SP+vrB/plXKdIJBYCNiSQNHlMWPGKKkQfp8lS5YkDBEwrbNjx47Ur18gA0MGUL1796b+/fsrYxOkWbg0abr33ntVoGa4SHXp0oWga8WQvXLlyoqhIl/btm1VAJMbb7xR6Te6desWUH+qy8zqNlqM6alvzVk12pqcWbtgjMEcb03Qi8Ol58o3TQviXh4APHUFWxAX6hzObA/MepxyFDybCjbtS1heQ0gQEARMBFJYmsyUX0C/sG/fPoLxB65Fq1evVjpMrIekDT12AMUQ3eocH+gaKL8haWIY70vQn0H3Cak2GlTuicClYN2df54NfC5Q6sfM0N782XT+xqqSA68y52hjiVu7hDqrliRatT3zKyA56+UUMs+d9RzbR1WhvNWuoqKXjaBLqxO9f0fkZcZaB3rWWfC8cI5irQM9++yznevsmZqgYnMaZ60DhcrQSf16SE6ERsH38r333lNMrUaNGmo/M4kz2B3LjHniOkiogZgnzkFBHE0Kxojg8G2XxswhemlGhs8ipMPDLEXCiVz7nAUqS9ddOG86m3JSqWYZos37AuX0T3OSeaafOkppBzbyFM46qiFZYZ7+PZEUQSC+EWAtW3B666231IwgMEyEs4P0h+FzIGNS8FLceybYcLRSCXtthj/mkOkZzBNXwZdz8jIiGI0urmYajQKVBiZYvRQHpu54mMbfRio6EQxDmRH0omC+TtHp3au4KoNylazrVJVSjyAQNwiEZKAw/GDWD2YR9erViyZOnKic4jGnPRGoeIHAvSgRJD1Q7lwBEMSSt3BZGnWjKYUGug5pm9lpfPuhVDWX247UC76Jeb11HRyVmUFE2EOgeB0qGQYuwfos6YJAIiEQ4PXP6B4s3hi2a6pXr54yIP377786Ka63TSv6Nx9Mqlkl//RAKYiCfh6X4SsRHmLmCX1mPrbm/9aft0FUAsdYgh05Lx+1Hxl8+iWk01KsuQCzb1LBLO+B1oFakz1paUe2U2rBspQjf3HCmuhCgoAgkIFASAYKBbivQhZK2kQZwj92mXYlz7CjYa9XywyAMtt7h92LMBxHFCMsWYGIR78z04T+E4RYlUHiZqjzuw6nekUeUomWvzsnEn1xt8k4659DdPv7RK+ya1RB9gV1ggqd/yiVue8/VVWrmk7UKHUIAvGDQBDZKH46kJWWTl6ufSkhd5qEIfmM1USX19UpobfQo2J9mF/+Zss7D6/Pr8SO7uZ8AXWhCu4R0jE/o+5ANWHIjvBt87h8ONEjQjyuyGD5ga6KblpKag6e5x7dMqU0QSAREMiUgWLdo02bNnn6iiAiWKHTOuwhGgUAABtbSURBVIyvX7++Mi55MsXJztz1/g0FE/x1o30GihJg2LmY3XsCEYIZByLoWXcfCXTGP232OnOWkl5ew0nmqVtjjfyk02QrCCQ7AiEZKOa9r1mzRv00UAjqAT9Q/DQhAgqs8/FGZTg+CaZPWuMEIiRcqSiEudJYVGC3Qx0HU6ehzra1OO5oGLY4axt1OcG2lYoT7Tzk7ZQfLK/d9Npl7OaUfIJA8iAQkoFOnz49oZF4tB3Rp8zEEMsIUY9ypRo8RE6hnhdFr9vdmxMNnupdHpjhi9dwCDhmSggoEspf1PtKe0fT72NVwkvMQO1lt5ULQWmFBAFBwBsBloWSl2Dw+espHq7XTqc6pU7SdY0NWvMMS6VR1Pch+LEvQZf5926iu1oQ3dbkmJrr7psn0mNI1a/NNOfcR1qGvu74+ql0dOWn6rBsUZ0qW0FAENAIhJRAdaZE3sLVaETX0yraE+b45wwUEikLAPy81v9iTJ695i2OdsnGpROn2QplkwawxDzsx9CZtx8kemte6Dx2zx5Z8halnzhI7TveYPcSyScIJBUCSS2BOnKngxjZEZUpWJAROOIHoldZsgw2eypQ/qymYSG5XDyF8/5WWS1JrhcEEhMBYaDZfF9hLAqXgsUpha4UU0WdIOP0cUrb94+aA9+kohM1Sh2CQPwhIAyU79lmXmht6bZcynId6S38egnR0O+Jxi3IKAELwWFxNE1asAwFOvIE87nE9FCnjDmn9qzmlqRTh5Z1PZMCdD9kKwgIAiYCSa8DxXLBI2blZnemYrT/eA4VsPiG88J7PKDP/GurqdOECvXlGWbczicmZayvDveo+mWJ7m9NdMcHwcuHj6fvmuzW3NNXWo+yb1/PgX+tpxmFKftqkpIFgfhFIJQwFL+9stnyH1cRPc9S42FezRLME9TvK6Ilm20WwNkgeS7812SeuAouShhmP8LlWBkhnODhVF+VIz19dpdZvrnWOVim+yhv9U7UZ8RvVKpUKfc1TlokCLgEgaRmoJ/96X8X4GI09S//9GApay1DdJ0HxiEuxo/gHoVlPS6swoGTn+b1z5mRVijGnNWFlJq7AFWv18yFLZMmCQLuQSCpGSgCgPgyOgzB87Jrk12C36XvGkooo0wR/yhNB9jyXvOMQFeIF4iry0P6cTfwlCEmSKOwsGOoH0wHardN0cq3cW+0SpJyBIHERCCpGWifS3yd5jETyXRwt3u7b2UhDQxXh7QD88MwflofM0oTVtAswswR/qazH+StTxSlkgUNWj+I9bDXE4HBnub6rUN/u+3IjnymiiE7SpYyBYHEQCCpjUiI2TmdGV3HUVhZ3aAqfDzmphQlDdq9vbwCCS37H8f1nMW60y1ElXjue7+2LJUyo9z4LNFPa0yGimE7Zj4FIjDgrewJACYL53q3UDhh/dzSZmmHIOAkAknNQAF0zdJEy584meWZSLCu+xJ0nu1tGrHBOJ1c68i3rdbj0wf+o5c77KcyhRtYk2VfEBAEfBBI6iG8DxYxPWxVg4fubHyyS9CzVmeJuQpb9aNNJ5e9TX1uDvBFiHZFUp4gEOcICAN1yQ2EJDyqm9kYRLaHgeuac3nJkAqBGwg9a8tqZp5gUz8DX5l56rGdK6hOHZsRpTMvTnIIAgmLQNIP4d10Zy9hKbTfpUT/7TNnHF3NI2isE99xdOApnO//yovMsRsppNFohqg/68RKalC/lZugkbYIAq5EQBioS27LvqMsUb5iBhiBJf7zP02jEhaSUwwyQDvBPOGGVZZdpsB0YfHPqi710mon6cPN61kC7R2gRkkSBAQBKwIyhLeiEaN9MM82r5kxPMEAsawI6MHPzWWM72N3q2DEPFQxTwz5776IBVEkZIHKp6yhtLQ0qltXhvBZgFEuTRIEhIHG+Eav2J5DSZ67jvg3BC5Sa3imU++LMWPJ/7w1BYFGXp+Z9ZF82TKlaOTIkdSoUSNr8bIvCAgCARCQIXwAUJxK2sWTkG6cyOPvIATJFOszYdE6OObXZb9SGIyChbsLUkxYyTdeUpqKXcGVCQkCgkCmCIgEmilE2ZdhwQaiQnnOjNd9qoFusxtHhcLsJKwDj3n7M3kmU3Yyz1E3BHf292meHAoCggAjkLASqBGGMlDnxVbvO/F0YOZRIMqT06DnruZljw8TdX3HzAFD0qDvUiiVze3pfjP4A5USTppBWC6kI1v9w4AtnAo8eTW+eus54dCO0/WiPv1zqIte1TjdX1Qei/7qfmZH3SmIMBSEEpaB7tvHZmmblJ5uSoFYnjkVikeHqFEpDjpSqBBbzlN4/rx5k3LyyqBjuh5iydTgkHgZw/s0biKYp30bEXIGv/HWLqKuKkUO0759YXjyWwsIY//06dN08uRJR3FG806dOkV4EcJ5LsLoVtCseLbwQ/1OEnAGOd1f1Im6na5Xv8OHDh2K6rOVL18+wi8YJSwDPessnpRuk06cOKGmchYtWpQXlXMWkk9u3Ut3f3GWihWKaEzPXZ1C7WoXpsnLzAhNCH+nKTzJ0x7zRNmHTqRShdKFqVChU5QjR46oPoC67XqLBzxPnjyUOzf7XDlIe/bsUQw0nOciGs3DxwK/ggVZme0gHT58mIC10/1FF/fu3et4vfhA7d69mwoXLuzos+WcuOXgwxNPVSF83eR72do+kOj3AcTM02x98QKB58YjIDMIw/+S/E4iGpQdwnpKoejasUTvffg1FShQgHbt2hUqq5wTBASBMwhk8loJTrFCoEVVouaVzGhOaAPUMAiZh2j2YK4YoCP4CBhjF/Y4AgMMFYzk7MIcHWovSgpMCKH33ZwVlDdvXsLyzkKCgCCQOQIigWaOUcxyvH870eCriM6vTHQFR3Wa8zARj7QJUZ4guWqp8ryKRHdeGLqZoZgnroQaeMuGlTwDyWb4qNDVyVlBICkQEAnU5be5BzNG/IIRpn1COkXwYzDUYGvNB7tep0OiPbRtJTVuGaIynVm2goAgoBAQCTQOHgRIhzN4lWEsYAfnexAY58NfmM71VZ4mWrzJlEp1ZHwzl/3/d248RRv/WScSqH3IJKcgkLh+oIlyb7HESIc3eXjNEeshJcIqP4WNTo9P5qWUt5hp6Osv/xBdWY+j428m+md3RrpdHBqUPkw33XQTXXihSKB2MZN8goAM4V3+DHR9m2gdG8XBSDXdNI6XYmZGCoaqCUN3SKhYfwk6UuTHtM9cfIexzHIwwhpOb/AMpLKlitH48eODZZN0QUAQCICADOEDgOKmJKwlb2WeaBvzRcrDbkyB6AAzVs08O51L9OdjgXKZadVLpNHEO0zJNXguOSMICALBEBAGGgwZl6RDovSlgxx5CYvXgZEGI8yZ/2GVuWJosGWS1+3OEdYSzsHqknRBIFkREAbq8jv/XCcehlvuEiIzYS2kb3qxXyjvI4gyYoEGWtYDfqG5eQgPn9LAZNDnfwQ+I6mCgCCQOQKWVzPzzJLDeQTa1jKd5xEP9GyeGn93C6If+zLjZKb57xBzH8fwFYVvqCYw1KevMI/eusl0ddLn9BYSLBiskCAgCESGgDDQyHBz9KqmlYjmP0q0kKd6/o+ZIqRQTRV4KF+emetHPTh2aCGdas5KemwS0eZ95hr1Pz/kzWCR02AlABjy2rVrqUWLFrRy5cqMAmRPEBAEMkXA8ipmmlcyuBiBDey6BFcnTbDQQ8J8kH1FQVj+eBIP+0EY9pcumEYf336MyjHzXb58Oc2fP5+DiVg4sJlV/gUBQSAEAjKACwFOPJ3axMwTyyHvP5bRajDRtWzF33HQnALa4Bz2ER1sSqc7d+yk4sV4XijTihUrFPMsX768OpY/QUAQsIeASKD2cHJ9rnNYP4q14n0Jy4I0Gcpz6r8zz0DnmZddoKz6UgzdZQ68L3JyLAhkjoAw0MwxioscNUqbBibfxkIKBY39heiTRea+778wUF9E5FgQsIeAMFB7OMVFrn5tiYZfF7yp7/8a+ByCSDds2DDwSUkVBASBoAiIDjQoNO498Rn7bq7cTnROUaK7eOq6dckW7GOIHmj6pnXYbu3dn3/+aT2UfUFAELCJgDBQm0C5JdsVbxCt57nxx3h+OxaaG/Y90apn+McMFdGZth7wn/qp2/5Ye70nW0FAEIgGAsJAo4GiQ2V8uZhdjrZmVAajEXxChzITfWteRnqgvXsuIrqwSqAzkiYICAKRIiAMNFLkYnAdwtT5EqIwfcGM1ZfgA4rhPBaqe+ZKXh65sW8OORYEBIGsIiAMNKsIOng9pnLmZyf4oyczKsUw3qoD1WcQral/O6KeLHkKCQKCQPYgwK+fULwgcHNTM94npEsQlvDAMP7OC0x9qJlq/sOIdFHQICJmnrS0NHrooYdo6dKl1ktlXxAQBGwiIAzUJlBuyAZJcyHH93zycqJODUzpct0goj6tiDDLCIQhO5Y8hjtTnbPNtGD///zzD73++uu0ZcuWYFkkXRAQBEIgIEP4EOC49VSvi/1bhrXlF/xDtOcIUX1mphU5yEhmtHr1apVFZiFlhpScFwQCIyAMNDAucZl6QZhW9lWrVlGBAgWoYsWKcdlfabQgEGsEZAgf6zsQw/ohgdauXZuNUFqrGsPGSNWCQBwiIAw0Dm9atJoMCVSG79FCU8pJRgRkCJ+Md/1Mn3/66ScyDB1uJImBkK4LAhEiIAw0QuAS4bL8+fMrHWgi9EX6IAjEAgEZwscCdalTEBAEEgKBFB7CyRguIW6ldEIQEAScRkAkUKcRl/oEAUEgYRAQBpowt1I6IggIAk4jIAzUacSlPkFAEEgYBISBJsytlI4IAoKA0wgIA3UacalPEBAEEgaBpPADXbNmDf3777/UuHFjKlGiRMCbd+LECVq0aJGa1ti0aVPKlYtDGp2h3bt30x9//EGVKlWimjVr6mTXbu30F41fv349bdq0ic4//3zKl4/DODEdPnyY/vrrL7Wv/3DezWTn/oTqV6h778Z+Z9ZenA+0zlWNGjWoePHi9N9//9HWrRlLGyCtevXqbuyqV5sw9Thv3rzqPfQ6ceYgFC52npFAZWaWlmMgU2aZ4vn8a6+9Rt988w2dPHmS3nzzTWrRogUVKcKRiS107NgxuuOOO+jIkSP0yy+/0KxZs6h9+/aKmS5evJgefPBBKlq0KL311lvqBmL+uFvJTn/R9ocffli9ZOnp6SqkHQKKnHPOOar/CHG3c+dOwgOLX7t27dzaXbJ7f3BfA/Ur1L13Y6fttBfP8dtvv+25f8uWLaP3339fPftlypShV155hebNm0cbN25UeU6fPk0NGnB8RBfThg0b1HtYpUqVgMw+FC52n5GIug8/0EQlBt245pprDA4crLr48ccfG88//7xfd8eNG2cw4/Gk9+zZ01iwYIE6vu2224wlS5ao/e3btxtXXXWVwV86T1437djt7/Lly41bbrnF0/SZM2caHFhZHfNHwhg/frznnNt37N6fYP0Kde/d2PdI2jtq1Cjj2Wef9XSnW7duBo/IPMdu32EByOjUqZNx4403GlOnTg3Y3FC42H1GAhacSWJC60ARMBhf1tRUs5sYwq9cudLvQ4OhLM5p0vnwZd68ebPn61y6dGnC9Ee3BiC2218EEBk7dqzuLh04cICOHz+ujtetW0cFCxakjz76iBYuXOjqufLh3J9g/Qp27z3guGwn3PauWLFCjaiw8gDo6NGjtHfvXtq1axdNnDhRPd8u66Jfc6Beevfdd5XkGSxyWDBcwnlG/Cq2kZDQDHTbtm1ew/XChQvTnj17/GBhyZJwTpPOh2Es4mVabxqG/3gA3Uh2+4sPitZ5oo8TJkwg/kqrLoHR/Prrr5QnTx764IMP6NFHH3VjV1Wbwrk/wfoV7N67tdPhtpclM7ruuus8MQ/+/vtvgq4QH0cs6QL11HfffefW7qp2XXbZZUp3iwMWCAO2NRgu4TwjAQvOJDGhjUg5cuRQD4nGAF8jzTh0GrbB8vmmIy/KgCLbjeTb3mD91W2HXmnAgAFK/6sNRe+9957S94LJduzYkXjopKSUcuXK6ctcs/XtLxoW7P4E65dvGZlhFuvOh9PeHTt2EPSfVjMH9Pdff/01FStWTHWlWrVqBGw6dOgQ665lqf5guPimo5Jgz0gkDUhoCbRkyZJe0iIkx7PP9l8oCJZ5q1SJ/bJly6qvHhTy+GJr0uf0sZu2dvuLNiMWKIZ19913H7FeV3UDhjZ4K2iVR+7cuQlqC3zd3UiwHtu5P6H6Fezeu7G/aFM47Z0+fTq1adNGqWR0f/bv30/79u3Th1ShQgUCo4UxMZ4pGC52n5FI+57QDBTuSHDJgasOvjrffvstNWvWTGEFtwb8QC1btqRp06YpPSDS5s+fT40aNaKcOXNS8+bNafLkySrfnDlz1Jdbf71Voov+QvUXVkowRxD62L9/f3rmmWfokksu8fQArluvvvqqGsIjEUwWKo+GDRt68rhpJ7P7AyszdLuh+hXs3rupn9a2hGqv9ZnGNbh/9evXt16u9N34cOJ5wHB4ypQp6hnQH02vzC4/sPY3GC6ZPSNZ7WLCR2PCAzJy5Eg666yz1No/Q4YMUYzxpZdeUi8WdEBgroMGDVLMFg8SWymV3gjggumA2WAogHNPP/00wZ/OrRSsv/BxHTx4sPoYsFWW2CPBS7cLfODuBX9XGJhOnTqlDA2PPfaYcn9xa39D3Z8rrriChg4dSueee27QfoW6927sc6j2Wp9ptJ2t1up59XW7g0vTjBkz1HMPfT9b6KlUqVJu7K5Xm/DBh6oJ9xVk7W8oXEI9I14VRHCQ8AwUmIAZYBgO63IoOnTokNKR4qvlSxj6wBc0Hshuf0P1BZZ5vFxWA1qo/LE+Z/f+BOtXqHsf674Fqj+r7cWQHZMLrMbTQPXEW1ooXOw+I+H0OSkYaDiASF5BQBAQBOwikNA6ULsgSD5BQBAQBCJBQBhoJKjJNYKAICAIMALCQOUxEAQEAUEgQgSEgUYInFwmCAgCgoC/uVkwEQSihADiDmCaIOZjI1xa27Zt6bzzzlMuYboKzLmHd8OVV16pk1y/PXjwoMd6/cknnyjvDj0ZwfWNlwZGFQGRQKMKpxSmERg2bJiajADfUrjKYBJCq1atlNM2nLg1gYFyhB196Pot2nr55Zd72vnZZ5/FVfs9DZedqCAgEmhUYJRCrAhMmjSJHn/8cRXt56abbvKcQhBfzOzq2rUrIU8gf1tPZpfuYGYbpo9q+uqrr/SubJMQAZFAk/CmZ3eX+/XrRxxvlKzME3UivgAYDqS4uXPnepqhgzpjhsk999xDiKhvJcyc6dy5sxrmgzFb4xYgH6JGXX/99XT11VcTAkpjVgoIkyfuvvtuFXmoS5cuakbZiBEjVLBhleHMH1QNqFeH9MOU3x49etCll16qolRhmi/o559/pi+//FIFV0G5mFOOIN0IC6cJ88oRwQoRhG699Vb6/vvv9Sk1oQPXIewgZnghaHefPn0IUbQ0IfgvgnujbuT9/fff9SnZuhABYaAuvCnx3CTEmUTINERxCkSYr48ADwiZp4kDOCsmiGvAPJEH8R1BYI6Yu425zjfccANx8GelS9XXPvDAAwSGDR3rhRdeSC+++KKScHEeM7LeeecdxcgRng8zURDPFUwY5zRh6irC3SHKFhgiGD8in99+++0qfib0swj/humOiEqFMhBTAcFWfvjhBxXdHWWBoSKWLD4QYOb4MCCi1ejRo1VVCB+H9qA8MFrk+emnnxSzRQakQc2BdoB5YhYYVlDAqgBCLkUgk4DLcloQCAsBXjoDARsNnlMf9LrWrVsb1157rTrPYdQMNiIZzNA8+TlCkIFVAUDY8pIiBjMjdczM2eCAJwZLiwYzW4PjExisR1Xn8MeMUNU/e/Zsg6f1qX2W9jzn2QBkMAM0OECMSkO9zBgNZtTqmGMdGIherwnn0T6WXFUS63YNDtKtTxvMBA2WXtUxS55GoUKFvFYsQBrrgA0OZGyw7le156mnnvJc/+OPP6o0Vm8YPD/dYLWGwYxUnUef0VeWkD35ZcddCIgO1KUftnhtFsKKgfRwOFA/oEO0BrjAUNaqD4W1HsFPQAjsgqE94lZCcoO1+/7771f5kYdfJyUdLl261FMVYh7gXJMmTVQa9K6amMEpCfXDDz9U0iGG2GgrhvggBJXBkBqqBkh+KBdGr1D90WVjITe0HZKpJkigCHoBybpWrVoqWUcEwwHCyYGACdpZtWpVJU1DBYB+I9A1JHYhdyIgQ3h33pe4bRUiVYGJ8jpSAfsARgRmguG2pvLly+tdtUUMUh2DlaVVVRYYKRZCgwUcjAbDcfzAeDE8R6Qs/QODrVu3rqdMXwYEHSNCFCLwBKLxQ3+KYTkIC89VrlyZXnjhBbWwHgxediMVIVAJFuazEvoCwvBdE1Y50IQ2g/AhAOOHzhN1Y+mN3r17K1UCFjkUcicCIoG6877Edaugy0QYOegQrcwCncKKkGCOF198saePvswWekUdMhASIqTG5557Tv1gZIEEh3RIpdBlQsrTDBmMCkYnfb2nEssOYqAisDZC+oGRIrQbCJImIvS//PLLSspFGsqDMQj6TFCo6FRoD4IYWwnHYPL16tULuhyFzr927VolTYNx4gd/U0iib7zxBuFDIuQ+BEQCdd89ifsW4YWvVKmSit3IOj5lXMFwGHFVEY8Vw2Or1AnJEkwTzBDL8WIojEj5IAyhwcBg5IGUhuj4sLJjqAumUrNmTRXzEs76kG4HDhyomGCoMG1ggt27d6cnnnhCtUMzXzA6SKuoAwwTUmDfvn0Vw9dDeMRNxRAfzE5b+/UN69WrlzJ+YcgO6Ra+r1gKG8YiSMl2CO364osvFOMGA4VhCn0VcikC7lLJSmsSBQF+8Q0eShvM4JSRBIYbGIN4ZpJXF2FEYgZpsPRm8HpVysDDDNiTB4YXLMPLjM1gaVYZaYYPH+45z4zZuOCCCwxmiuo89tntSJ3XRiRmZJ78eoeD7CoDFA+XdZLa8pDeYAu8qg8GIWb6qn6WqtV5ZpwGr62u+oSlr61GJGTg1SMNXrHAYIap2sMWfWU8wjltRMIy0pq00QvlgliFoDBDX5mhG6ybNVg1oLPL1mUISDxQl37YEqlZkNgg2VmNK4H6hyWkmTl5GZR0PkiEWE4abkSBhtHQP0Ii9NV36uvD3YZqC8oKFZyX33HlK4q+YDmRSAhSMKa4unUBw0j6lIjXCANNxLsqfRIEBAFHEBAdqCMwSyWCgCCQiAgIA03Euyp9EgQEAUcQEAbqCMxSiSAgCCQiAsJAE/GuSp8EAUHAEQSEgToCs1QiCAgCiYiAMNBEvKvSJ0FAEHAEAWGgjsAslQgCgkAiIiAMNBHvqvRJEBAEHEHg/4DbqbHwEZZsAAAAAElFTkSuQmCC)
The dashed line shows the diagonal \(x =
y\), which makes shrinkage effects clearly visible. In
particular, the most extreme wOBAs on either end of the spectrum are
strongly shrunk towards the league average (around .300).
Since plot()
returns a “ggplot” object (Wickham 2016), the plot can conveniently be
customized using ggplot2
syntax. For example, one can vary
the color of the points by the number of plate appearances:
plot(fit_normal) +
geom_point(aes(color = sqrt(wOBA$PA))) +
labs(x = "wOBA", y = "EB estimate of true wOBA skill",
color = expression(sqrt(PA))) +
scale_color_gradient(low = "blue", high = "red")
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)
By varying the color of points, we see that the wOBA estimates with
higher standard errors or fewer plate appearances (blue points) tend to
be shrunk toward the league average much more strongly than wOBAs from
hitters with many plate appearances (red points).
Above, we used head()
to view data for the first 6
hitters in the dataset. Let’s now see what the EBNM analysis suggests
might be their “true” wOBA skill. To examine the results more closely,
we use the fitted()
method, which returns a posterior
summary for each hitter:
print(head(fitted(fit_normal)), digits = 3)
#> mean sd
#> Khalil Lee 0.303 0.0287
#> Chadwick Tromp 0.308 0.0286
#> Otto Lopez 0.310 0.0283
#> James Outman 0.311 0.0282
#> Matt Carpenter 0.339 0.0254
#> Aaron Judge 0.394 0.0184
The wOBA estimates of the first four ballplayers are shrunk strongly
toward the league average, reflecting the fact that these players had
very few plate appearances (and indeed, we were not swayed by their very
high initial wOBA estimates).
Carpenter had many more plate appearances (154) than these other four
players, but according to this model we should remain skeptical about
his strong performance; after factoring in the prior, we judge his
“true” performance to be much closer to the league average, downgrading
an initial estimate of .472 to the final posterior mean estimate of
.339.
Comparing normal and unimodal prior families
Judge’s “true” wOBA is also estimated to be much lower (.394) than
the initial estimate (.458) despite sustaining a high level of
production over a full season (696 PAs). For this reason, one might ask
whether a prior that is more flexible than the normal prior—that is, a
prior that can better adapt to “outliers” like Judge—might produce a
different result. The ebnm
package is very well suited to
answering this question. For example, to obtain results using the family
of all unimodal distributions rather than the family of normal
distributions, we only need to change prior_family
from
"normal"
to "unimodal"
:
fit_unimodal <- ebnm(x, s, prior_family = "unimodal", mode = "estimate")
It is straightforward to produce a side-by-side visualization of the
fitted models simply by including both models as arguments to the
plot()
method (we also use the subset
argument
to focus on the results for Judge and other players with the most plate
appearances):
top50 <- order(wOBA$PA, decreasing = TRUE)
top50 <- top50[1:50]
plot(fit_normal, fit_unimodal, subset = top50)
![](data:image/png;base64,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)
This plot illustrates the ability of the unimodal prior to better
adapt to the data: wOBA estimates for players with a lot of plate
appearances are not adjusted quite so strongly toward the league
average. To compare in more detail, we see for example that Judge’s wOBA
estimate from the model with the unimodal prior (the
"mean2"
column) remains much closer to the original wOBA
estimate:
dat <- cbind(wOBA[, c("PA","x")],
fitted(fit_normal),
fitted(fit_unimodal))
names(dat) <- c("PA", "x", "mean1", "sd1", "mean2", "sd2")
print(head(dat), digits = 3)
#> PA x mean1 sd1 mean2 sd2
#> Khalil Lee 2 1.036 0.303 0.0287 0.302 0.0277
#> Chadwick Tromp 4 0.852 0.308 0.0286 0.307 0.0306
#> Otto Lopez 10 0.599 0.310 0.0283 0.310 0.0315
#> James Outman 16 0.584 0.311 0.0282 0.311 0.0318
#> Matt Carpenter 154 0.472 0.339 0.0254 0.355 0.0430
#> Aaron Judge 696 0.458 0.394 0.0184 0.439 0.0155
Carpenter’s wOBA estimate is also higher under the more flexible
unimodal prior, but is still adjusted much more than Judge’s in light of
Carpenter’s smaller sample size. It is also interesting that the
unimodal prior assigns greater uncertainty (the "sd2"
column) to this estimate compared to the normal prior.
Recall that the two normal means models differ only in the priors
used, so we can understand the differences in the shrinkage behavior of
these models by inspecting the priors. Calling plot()
with
incl_cdf = TRUE
shows the cumulative distribution functions
(CDFs) of the fitted priors \(\hat{g}\). Since we are particularly
interested in understanding the differences in shrinkage behaviour for
the largest wOBAs such as Judge’s, we create a second plot that zooms in
on wOBAs over .350:
library(cowplot)
p1 <- plot(fit_normal, fit_unimodal, incl_cdf = TRUE, incl_pm = FALSE) +
xlim(c(.250, .350)) +
guides(color = "none")
p2 <- plot(fit_normal, fit_unimodal, incl_cdf = TRUE, incl_pm = FALSE) +
lims(x = c(.350, .450), y = c(0.95, 1))
plot_grid(p1, p2, nrow = 1, ncol = 2, rel_widths = c(3,5))
![](data:image/png;base64,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)
The plot on the right shows that the fitted normal prior has almost
no mass on wOBAs above .400, explaining why Judge’s wOBA estimate is
shrunk so strongly toward the league average, whereas the unimodal prior
is flexible enough to permit larger posterior estimates above .400.
The posterior means and standard errors returned from the
ebnm()
call cannot be used to obtain credible intervals
(except for the special case of the normal prior). Therefore, we provide
additional methods confint()
and quantile()
which return, respectively, credible intervals (or more precisely,
highest posterior density intervals: E.
P. Box and Tiao (1965), Chen and Shao
(1999)) and posterior quantiles for each observation. These are
implemented using Monte Carlo techniques, which can be slow for large
data sets, so credible intervals are not computed by default. The
following code computes 80% highest posterior density (HPD) intervals
for the EBNM model with unimodal prior. (We add a Monte Carlo sampler
using function ebnm_add_sampler()
; alternatively, we could
have added a sampler in our initial calls to ebnm()
by
specifying output = output_all()
.) We set a seed for
reproducibility:
fit_unimodal <- ebnm_add_sampler(fit_unimodal)
set.seed(1)
print(head(confint(fit_unimodal, level = 0.8)), digits = 3)
#> CI.lower CI.upper
#> Khalil Lee 0.277 0.328
#> Chadwick Tromp 0.277 0.334
#> Otto Lopez 0.277 0.336
#> James Outman 0.277 0.335
#> Matt Carpenter 0.277 0.389
#> Aaron Judge 0.428 0.458
Interestingly, the 80% credible interval for Carpenter is very wide,
and shares the same lower bound as the first four ballplayers with very
few plate appearances.
Nonparametric prior families and advanced usage
Above, we demonstrated how the ebnm
package makes it is
easy to perform EBNM analyses with different types of priors, then
compared results across two different choices of prior family. Each of
these families makes different assumptions about the data which, a
priori, may be more or less plausible. An alternative to prior
families that make specific assumptions about the data is to use the
prior family that contains all distributions \(\mathcal{G}_{\mathrm{npmle}}\), which is in
a sense “assumption free.” Here we re-analyze the wOBA data set to
illustrate the use of this prior family. Note that although
nonparametric priors require specialized computational techniques,
switching to a nonparametric prior is seamless in ebnm
, as
these implementation details are hidden. Similar to above, we need only
make a single change to the prior_family
argument:
fit_npmle <- ebnm(x, s, prior_family = "npmle")
(Note that because the family \(\mathcal{G}_{\mathrm{npmle}}\) is not
unimodal, the mode = "estimate"
option is not relevant
here.)
Although the implementation details are hidden by default, it can
sometimes be helpful to see what is going on “behind the scenes,”
particularly for flagging or diagnosing issues. By default,
ebnm
uses the mixsqp
package (Kim et al. 2020) to fit the NPMLE \(\hat{g} \in \mathcal{G}_{\mathrm{npmle}}\).
We can monitor convergence of the mix-SQP optimization algorithm by
setting the verbose
control argument to
TRUE
:
fit_npmle <- ebnm(x, s, prior_family = "npmle",
control = list(verbose = TRUE))
#> Running mix-SQP algorithm 0.3-48 on 688 x 95 matrix
#> convergence tol. (SQP): 1.0e-08
#> conv. tol. (active-set): 1.0e-10
#> zero threshold (solution): 1.0e-08
#> zero thresh. (search dir.): 1.0e-14
#> l.s. sufficient decrease: 1.0e-02
#> step size reduction factor: 7.5e-01
#> minimum step size: 1.0e-08
#> max. iter (SQP): 1000
#> max. iter (active-set): 20
#> number of EM iterations: 10
#> Computing SVD of 688 x 95 matrix.
#> Matrix is not low-rank; falling back to full matrix.
#> iter objective max(rdual) nnz stepsize max.diff nqp nls
#> 1 +9.583407733e-01 -- EM -- 95 1.00e+00 6.08e-02 -- --
#> 2 +8.298700300e-01 -- EM -- 95 1.00e+00 2.87e-02 -- --
#> 3 +7.955308369e-01 -- EM -- 95 1.00e+00 1.60e-02 -- --
#> 4 +7.819858634e-01 -- EM -- 68 1.00e+00 1.05e-02 -- --
#> 5 +7.753787534e-01 -- EM -- 53 1.00e+00 7.57e-03 -- --
#> 6 +7.717040208e-01 -- EM -- 49 1.00e+00 5.73e-03 -- --
#> 7 +7.694760705e-01 -- EM -- 47 1.00e+00 4.48e-03 -- --
#> 8 +7.680398878e-01 -- EM -- 47 1.00e+00 3.58e-03 -- --
#> 9 +7.670690681e-01 -- EM -- 44 1.00e+00 2.91e-03 -- --
#> 10 +7.663865515e-01 -- EM -- 42 1.00e+00 2.40e-03 -- --
#> 1 +7.658902386e-01 +6.493e-02 39 ------ ------ -- --
#> 2 +7.655151741e-01 +5.328e-02 19 1.00e+00 1.29e-01 20 1
#> 3 +7.627792563e-01 +6.432e-03 7 1.00e+00 1.74e-01 20 1
#> 4 +7.626270812e-01 +5.897e-05 7 1.00e+00 3.23e-01 7 1
#> 5 +7.626270755e-01 -1.335e-08 7 1.00e+00 4.67e-04 2 1
#> Optimization took 0.03 seconds.
#> Convergence criteria met---optimal solution found.
This output shows no issues with convergence of the optimization
algorithm; the mix-SQP algorithm converged to the solution (up to
numerical rounding error) in only six iterations. In some cases,
convergence issues can arise when fitting nonparametric models to large
or complex data sets, and revealing the details of the optimization can
help to pinpoint these issues.
Next, we visually compare the three fits obtained so far:
plot(fit_normal, fit_unimodal, fit_npmle, incl_cdf = TRUE, subset = top50)
![](data:image/png;base64,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)
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)
As before, estimates largely agree, differing primarily at the tails.
Both the unimodal prior family and the NPMLE are sufficiently flexible
to avoid the strong shrinkage behavior of the normal prior family.
Fits can be compared quantitatively using the logLik()
method, which, in addition to the log likelihood for each model,
usefully reports the number of free parameters (i.e., degrees of
freedom):
logLik(fit_unimodal)
#> 'log Lik.' 992.6578 (df=40)
logLik(fit_npmle)
#> 'log Lik.' 994.193 (df=94)
A nonparametric prior \(\mathcal{G}\) is approximated by \(K\) mixture components on a fixed grid,
with the mixture proportions to be estimated. We can infer from the
above output that \(\mathcal{G}_\text{npmle}\) has been
approximated as a family of mixtures over a grid of \(K = 95\) point masses spanning the range of
the data. (The number of degrees of freedom is one fewer than \(K\) because the mixture proportions must
always sum to 1, which removes one degree of freedom from the estimation
of \({\boldsymbol\pi}\).)
The default behaviour for nonparametric prior families is to choose
\(K\) such that the likelihood obtained
using estimate \(\hat{g}\) should be
(on average) within one log-likelihood unit of the optimal estimate from
among the entire nonparametric family \(\mathcal{G}\) (see
Willwerscheid 2021). Thus, a finer approximating grid should not
yield a large improvement in the log-likelihood. We can check this by
using ebnm_scale_npmle()
to create a finer grid:
scale_npmle <- ebnm_scale_npmle(x, s, KLdiv_target = 0.001/length(x),
max_K = 1000)
fit_npmle_finer <- ebnm_npmle(x, s, scale = scale_npmle)
logLik(fit_npmle)
#> 'log Lik.' 994.193 (df=94)
logLik(fit_npmle_finer)
#> 'log Lik.' 994.2703 (df=528)
As the theory predicts, a much finer grid, with \(K = 529\), results in only a modest
improvement in the log-likelihood. ebnm
provides similar
functions to customize grids for unimodal and normal scale mixture prior
families.
One potential issue with the NPMLE is that, since it is discrete (as
the above CDF plot makes apparent), observations are variously shrunk
towards one of the support points, which can result in poor interval
estimates. For illustration, we calculate 10% and 90% quantiles:
fit_npmle <- ebnm_add_sampler(fit_npmle)
print(head(quantile(fit_npmle, probs = c(0.1, 0.9))), digits = 3)
#> 10% 90%
#> Khalil Lee 0.276 0.342
#> Chadwick Tromp 0.276 0.342
#> Otto Lopez 0.276 0.342
#> James Outman 0.276 0.342
#> Matt Carpenter 0.309 0.430
#> Aaron Judge 0.419 0.430
Each credible interval bound is constrained to lie at one of the
support points of the NPMLE \(\hat{g}\). The interval estimate for Judge
strikes us as far too narrow. Indeed, the NPMLE can sometimes yield
degenerate interval estimates:
confint(fit_npmle, level = 0.8, parm = "Aaron Judge")
#> CI.lower CI.upper
#> Aaron Judge 0.4298298 0.4298298
To address this issue, the deconvolveR
package (Narasimhan and Efron 2020) uses a penalized
likelihood that encourages “smooth” priors \(\hat{g}\); that is, priors \(\hat{g}\) for which few of the mixture
proportions are zero:
fit_deconv <- ebnm_deconvolver(x / s, output = ebnm_output_all())
plot(fit_deconv, incl_cdf = TRUE, incl_pm = FALSE)
![](data:image/png;base64,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)
Note, however, that the “true” means \(\theta\) being estimated are \(z\)-scores rather than raw wOBA skill, as
package deconvolveR
fits a model to \(z\)-scores rather than observations and
associated standard errors. While this is reasonable in many settings,
it does not seem appropriate for the present analysis:
print(head(quantile(fit_deconv, probs = c(0.1, 0.9)) * s), digits = 3)
#> 10% 90%
#> Khalil Lee 0.400 2.000
#> Chadwick Tromp 0.563 1.127
#> Otto Lopez 0.354 0.796
#> James Outman 0.412 0.742
#> Matt Carpenter 0.413 0.531
#> Aaron Judge 0.406 0.459
These interval estimates do not match our basic intuitions; for
example, a wOBA over .600 has never been sustained over a full
season.
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These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.