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The debkeepr
package provides an interface for working
with non-decimal currencies that use tripartite or tetrapartite systems
such as that of pounds, shillings, and pence. debkeepr
makes it easier to perform arithmetic operations on non-decimal values
and facilitates the analysis and visualization of larger sets of
non-decimal values such as those found in historical account books. This
is accomplished through the implementation of the deb_lsd
,
deb_tetra
, and deb_decimal
vector types, which
are based on the infrastructure provided by the vctrs package. deb_lsd
,
deb_tetra
, and deb_decimal
vectors possess
additional metadata to allow them to behave like numeric vectors in many
circumstances, while also conforming to the workings of non-decimal
currencies.
This vignette lays out the behavior of deb_lsd
,
deb_tetra
, and deb_decimal
vectors, showing
where they overlap, how they can work together, and where they diverge.
After a short discussion of the historical background of non-decimal
currencies, the basic behavior of the three vector types is laid out.
The vignette then covers the workings of the three classes as columns in
data frames, including visualizing a small set of example accounts with
ggplot2. The overview
presented here is extended in two other vignettes that use the data sets
included in the debkeepr
package. For more in depth
examples on performing financial calculations in a variety of
non-decimal currencies, see the Transactions
in Richard Dafforne’s Journal vignette. For a deeper dive into an
analysis of a historical account book using debkeepr
, see
the Analysis
of Richard Dafforne’s Journal and Ledger vignette.
debkeepr
begin with the prefix
deb_
, which is short for double-entry
bookkeeping.debkeepr
contains two data sets from the practice
journal and ledger in the third edition of Richard Dafforne’s
Merchant’s Mirrour from 1660. Dafforne’s text taught the
practices of double-entry bookkeeping and provided a full set of account
books to be used for educational purposes.
dafforne_transactions
is a transactions data frame with
177 transactions.dafforne_accounts
possesses information about the 46
accounts in the journal and ledger.The tripartite non-decimal system of pounds, shillings, and pence dates back to the Carolingian Empire of Charlemagne. The primary coin used in the Late Roman Empire was the golden solidus, introduced by Constantine in 309. However, the shrinking of the economy and the political splintering that occurred after the fall of the western Roman Empire diminished the need for gold coins. In the 6th century, the Frankish rulers who took over the Roman mints reacted by creating triens or tremissis, smaller gold coins worth one-third of a solidus. From this point, the solidus was no longer produced as a coin in the western kingdoms. Instead, it continued as a unit of account equivalent to three trientes. In the 7th century even devalued golden trientes proved to be too valuable for the economic needs of the time. Frankish rulers began to produce silver coins based on the size and weight of the triens. The new silver penny was called a denarius, linking it to the old silver coin used in the Roman Republic. The silver penny provided the basis for the monetary system of Western Europe until the revival of gold coins in the 14th century.
As the silver denarius overtook the golden triens, the triens became a unit of account equivalent to four denarii. In this way the solidus transformed into a unit of account representing 12 denarii, even if 12 silver denarii of the 8th century would not have been equivalent to the pure gold solidus of the Late Roman Empire. The use of the libra as a third unit of account derived from the number of silver denarii struck from a pound, or libra, of silver. Though the actual number of coins made from a pound of silver differed over time, the rate of 240 coins struck from a libra lasted long enough to become fossilized in much of Europe.1 The custom of counting coins in dozens (solidi) and scores of dozens (librae) spread throughout the Carolingian Empire and became ingrained in much of Europe. However, by the time that Richard Dafforne wrote on the practice of double-entry bookkeeping in the middle of the seventeenth century, a huge variety of monies of accounts had developed across Europe and beyond, and though many used the 1:20:240 ratios, others used a diversity of bases to represent the solidus and denarius units.2 The addition of multiple larger and smaller coins also led some currencies to adopt a fourth unit, creating tetrapartite values.
debkeepr
vector typesdebkeepr
introduces three vector types to help deal with
two interrelated problems inherent in historical currencies. Firstly,
historical currencies consisted of three or four separate non-decimal
units: pounds, shillings, pence, and optionally a fourth unit such as
the farthing. Secondly, the bases of the
shillings, pence, and optional farthings units differed by region,
coinage, and era. In other words, the actual value represented by say £3
13s. 4d. cannot be determined without knowing the bases of the shillings
and pence units.3 The deb_lsd
type maintains the
tripartite structure of non-decimal currencies and provides a
bases
attribute to record the bases for the shillings and
pence units. The deb_tetra
type extends the concept of the
deb_lsd
type to incorporate currencies and other types of
values that consist of four units. The deb_decimal
type
represents both tripartite and tetrapartite currencies in decimalized
form. However, it differs from simply converting the value to a
numeric
vector by tracking the bases of the units and the
unit represented in decimalized form (libra, solidus,
denarius, and farthing in tetrapartite values) through the
bases
and unit
attributes. Thus, though
deb_lsd
, deb_tetra
, and
deb_decimal
vectors will be nominally different, they can
represent the same values and currency if the bases
are
equivalent.4 The print methods for both types show the
bases
attribute, and deb_decimal
vectors
include the unit
.
debkeepr
vectors can be created with the
deb_lsd()
, deb_tetra()
, and
deb_decimal()
functions. In addition to arguments for the
pounds, shillings, and pence values, deb_lsd()
has an
argument for the bases
of the shillings and pence units,
which defaults to the most common bases of 20 shillings to the pound and
12 pence to the shilling: c(20, 12)
.
deb_tetra()
works similarly but adds a farthings argument
and calls for bases
of length three with a default of
c(20, 12, 4)
. deb_decimal()
has the same
argument and default for the bases
and an additional
argument to choose the unit
for the decimalized values that
defaults to the pounds unit: "l"
. To create a tetrapartite
deb_decimal
vector the bases
argument should
be a numeric vector of length three. Tetrapartite
deb_decimal
vectors can also be represented by the
"f"
unit.
library(debkeepr)
# Create deb_lsd vector of length 3 with default bases
# representing £17 13s. 11d., £32 11s. 8d., and £18 10s. 5d.
<- deb_lsd(l = c(17, 32, 18),
(lsd s = c(13, 11, 10),
d = c(11, 8, 5)))
#> <deb_lsd[3]>
#> [1] 17:13s:11d 32:11s:8d 18:10s:5d
#> # Bases: 20s 12d
# Create deb_tetra vector of length 3 with default bases
# representing £17 13s. 11d. 3f., £32 11s. 8d. 2f., and £18 10s. 5d. 1f.
<- deb_tetra(l = c(17, 32, 18),
(tetra s = c(13, 11, 10),
d = c(11, 8, 5),
f = c(3, 2, 1)))
#> <deb_tetra[3]>
#> [1] 17:13s:11d:3f 32:11s:8d:2f 18:10s:5d:1f
#> # Bases: 20s 12d 4f
# Create deb_decimal vector of length 3 with default bases and unit
# representing £15 16s. 6d., £19 5s., and £9 12s. 3d. in decimal form
<- deb_decimal(x = c(15.825, 19.25, 9.6125)))
(dec #> <deb_decimal[3]>
#> [1] 15.8250 19.2500 9.6125
#> # Unit: libra
#> # Bases: 20s 12d
# Express the same values in solidus and denarius units
<- deb_decimal(x = c(316.5, 385, 192.25), unit = "s"))
(dec_s #> <deb_decimal[3]>
#> [1] 316.50 385.00 192.25
#> # Unit: solidus
#> # Bases: 20s 12d
<- deb_decimal(x = c(3798, 4620, 2307), unit = "d"))
(dec_d #> <deb_decimal[3]>
#> [1] 3798 4620 2307
#> # Unit: denarius
#> # Bases: 20s 12d
# The same value as a tetrapartite value
<- deb_decimal(x = c(15.825, 19.25, 9.6125),
(dec_tetra bases = c(20, 12, 4)))
#> <deb_decimal[3]>
#> [1] 15.8250 19.2500 9.6125
#> # Unit: libra
#> # Bases: 20s 12d 4f
The bases
argument makes it possible to create
debkeepr
vectors that represent currencies that use
non-standard bases for the shillings, pence, and optionally farthings
units such as the Polish florin found in Dafforne’s practice journal of
30 gros of 18 denars.
# Create deb_lsd vector of length 3 with bases of Polish florin
<- deb_lsd(l = c(32, 12, 26),
(lsd_polish s = c(15, 1, 20),
d = c(5, 13, 8),
bases = c(30, 18)))
#> <deb_lsd[3]>
#> [1] 32:15s:5d 12:1s:13d 26:20s:8d
#> # Bases: 30s 18d
# Create deb_decimal vector of length 3 with bases of Polish florin
<- deb_decimal(x = c(15.825, 19.25, 9.6125),
(dec_polish bases = c(30, 18)))
#> <deb_decimal[3]>
#> [1] 15.8250 19.2500 9.6125
#> # Unit: libra
#> # Bases: 30s 18d
Or you might want to record a set of avoirdupois weights recorded in the tetrapartite system of the ton of twenty hundredweight, the hundredweight of four quarters, and the quarter of 28 pounds.
# Create a deb_tetra vector to represent avoirdupois weight
deb_tetra(l = c(1, 0, 1),
s = c(11, 18, 3),
d = c(1, 0, 3),
f = c(12, 20, 17),
bases = c(20, 4, 28))
#> <deb_tetra[3]>
#> [1] 1:11s:1d:12f 0:18s:0d:20f 1:3s:3d:17f
#> # Bases: 20s 4d 28f
debkeepr
typesWhy three different classes to represent the same basic information?
The goal of debkeepr
is to integrate tripartite and
tetrapartite non-decimal currencies into the decimalized world of R. The
deb_lsd
and deb_tetra
types do this while
maintaining the multipartite structure of historical non-decimal
currencies, but there remain certain limitations to such an approach.
The deb_decimal
class helps to minimize these limitations.
The following list provides an overview of the differences of the three
classes that are discussed in further detail in the rest of the
vignette.
deb_lsd
and deb_tetra
types have the
advantage of maintaining the structure and values used by non-decimal
currencies, making it easier to identify and present such values.deb_decimal
implements a wider array of mathematical
functions and arithmetic operations than deb_lsd
and
deb_tetra
.deb_as_lsd()
, deb_as_tetra
, and
deb_as_decimal()
casting methods.deb_lsd
, deb_tetra
, and
deb_decimal
are based on the vctrs package, all act as expected
in data frames or tibbles
columns. From dplyr
1.0.0 — which is the minimal version used by debkeepr — all dplyr
functions work on both debkeepr
types.deb_lsd
or deb_tetra
vectors. In contrast, deb_decimal
vectors work properly
with ggplot2
, though explicitly identifying the scale as
continuous — with scale_y_continuous()
or
scale_x_continuous()
— is needed to avoid the appearance of
a message.deb_lsd
, deb_tetra
, and
deb_decimal
vectors cannot be combined in a single function
if their bases
differ. Tripartite and tetrapartite values
can be combined if the bases of their solidus and
denarius bases match. The only way to transform the bases of
deb_lsd
, deb_tetra
, and
deb_decimal
vectors is explicitly with
deb_convert_bases()
. This prevents mistakenly combining two
different currencies together without properly converting their
values.One of the most basic activities when working with vectors is
combining vectors of the same or similar classes or converting a vector
from one class to another. Coercion occurs when vectors are converted
implicitly, such as with c()
. Casting denotes explicit
conversion with functions that usually begin with as
, such
as as.numeric()
or as.character()
. The
debkeepr
classes follow a hierarchy in which
numeric()
coerces to deb_decimal()
coerces to
deb_tetra()
coerces to deb_lsd()
. Coercion
with any other type of vector fails.5 debkeepr
also implements
casting methods between deb_lsd
and
deb_decimal
vectors, to and from numeric
vectors and lists of numeric
vectors, and to
character
vectors.
Coercion hierarchy: numeric()
->
deb_decimal()
-> deb_tetra()
->
deb_lsd()
.
# Combine deb_lsd and deb_lsd
c(lsd, deb_lsd(l = 5, s = 13, d = 4))
#> <deb_lsd[4]>
#> [1] 17:13s:11d 32:11s:8d 18:10s:5d 5:13s:4d
#> # Bases: 20s 12d
# Combine deb_decimal and deb_decimal
<- 17 / 3
num c(dec, deb_decimal(num))
#> <deb_decimal[4]>
#> [1] 15.825000 19.250000 9.612500 5.666667
#> # Unit: libra
#> # Bases: 20s 12d
c(dec_s, deb_decimal(num, unit = "s"))
#> <deb_decimal[4]>
#> [1] 316.500000 385.000000 192.250000 5.666667
#> # Unit: solidus
#> # Bases: 20s 12d
# Combine deb_lsd, deb_tetra, deb_decimal, and numeric
c(lsd, tetra, dec, num)
#> <deb_lsd[10]>
#> [1] 17:13s:11d 32:11s:8d 18:10s:5d 17:13s:11.75d 32:11s:8.5d
#> [6] 18:10s:5.25d 15:16s:6d 19:5s:0d 9:12s:3d 5:13s:4d
#> # Bases: 20s 12d
Tripartite and tetrapartite vectors can be combined so long as the
solidus and denarius bases are equivalent. Otherwise
and error is thrown. Tetrapartite values are always coerced to
tripartite. Thus, deb_tetra
coerces to deb_lsd
and tetrapartite deb_decimal
coerces to tripartite
deb_decimal
. This is because the equivalency of the
farthings unit is only implied.
# deb_lsd and deb_tetra with same s and d units
c(lsd, tetra)
#> <deb_lsd[6]>
#> [1] 17:13s:11d 32:11s:8d 18:10s:5d 17:13s:11.75d 32:11s:8.5d
#> [6] 18:10s:5.25d
#> # Bases: 20s 12d
# Tetrapartite deb_decimal coerces to tripartite deb_decimal
c(dec_tetra, dec)
#> <deb_decimal[6]>
#> [1] 15.8250 19.2500 9.6125 15.8250 19.2500 9.6125
#> # Unit: libra
#> # Bases: 20s 12d
It is also possible to combine deb_decimal
vectors that
have a different unit
so long as their bases
are equivalent.6 This follows a set hierarchy that moves
towards the higher unit: farthing ("f"
) ->
denarius ("d"
) -> solidus
("s"
) -> libra ("l"
).
# farthing -> denarius
c(deb_decimal(x = 5440, unit = "f", bases = c(20, 12, 4)), dec_d)
#> <deb_decimal[4]>
#> [1] 1360 3798 4620 2307
#> # Unit: denarius
#> # Bases: 20s 12d
# denarius -> solidus
c(deb_decimal(x = 1360, unit = "d"), dec_s)
#> <deb_decimal[4]>
#> [1] 113.3333 316.5000 385.0000 192.2500
#> # Unit: solidus
#> # Bases: 20s 12d
# denarius -> libra
c(deb_decimal(x = 1360, unit = "d"), dec)
#> <deb_decimal[4]>
#> [1] 5.666667 15.825000 19.250000 9.612500
#> # Unit: libra
#> # Bases: 20s 12d
# solidus -> libra
c(deb_decimal(x = 340 / 3, unit = "s"), dec)
#> <deb_decimal[4]>
#> [1] 5.666667 15.825000 19.250000 9.612500
#> # Unit: libra
#> # Bases: 20s 12d
Care needs to be taken when combining deb_lsd
,
deb_tetra
, and/or deb_decimal
vectors with a
base R class using c()
;
c(deb_lsd(), numeric())
is not equal to
c(numeric(), deb_lsd())
. c()
does not find the
common class for the vectors if the first element is a base class.
Instead, it forces vectors to conform to its internal hierarchy by
stripping attributes. Thus, c(numeric(), deb_lsd())
results
in a list with the underlying data of deb_lsd()
, and
c(numeric(), deb_decimal())
produces a numeric vector. This
can be avoided with the use of vec_c()
from the
vctrs
package, which first finds the common class for all
elements.7
# Incorrect results with base class as first element
c(num, lsd)
#> [[1]]
#> [1] 5.666667
#>
#> $l
#> [1] 17 32 18
#>
#> $s
#> [1] 13 11 10
#>
#> $d
#> [1] 11 8 5
c(num, dec)
#> [1] 5.666667 15.825000 19.250000 9.612500
# Consistent with vec_c()
library(vctrs)
vec_c(num, lsd)
#> <deb_lsd[4]>
#> [1] 5:13s:4d 17:13s:11d 32:11s:8d 18:10s:5d
#> # Bases: 20s 12d
vec_c(num, dec)
#> <deb_decimal[4]>
#> [1] 5.666667 15.825000 19.250000 9.612500
#> # Unit: libra
#> # Bases: 20s 12d
An important aspect of debkeepr
vectors is that they
cannot be combined in a single function call if they have incompatible
bases
. Vectors with mismatched bases represent different
currencies or value systems and so cannot be combined without the user
performing an exchange between the two systems Tripartite and
tetrapartite values can be combined if the bases of their
solidus and denarius bases match, since the addition
of another unit does not affect the underlying value. The only way to
transform the bases of debkeepr
vectors is explicitly with
deb_convert_bases()
, as shown in greater detail below.
# Cannot combine vectors with incompatible bases
c(lsd, lsd_polish)
#> Error:
#> ! Incompatible `bases`.
#> ℹ `bases` must be compatible to combine <deb_lsd>, <deb_tetra>, or
#> <deb_decimal> vectors.
#> ✖ Cannot combine: `..1` <deb_lsd> vector with `bases` s = 20 and d = 12.
#> ✖ Cannot combine: `..2` <deb_lsd> vector with `bases` s = 30 and d = 18.
#> ℹ Use `deb_convert_bases()` to convert one or more of the vectors to compatible
#> `bases`.
c(tetra, lsd_polish)
#> Error:
#> ! Incompatible `bases`.
#> ℹ `bases` of the 's' and 'd' units must be equal to combine <deb_lsd>,
#> <deb_tetra>, or <deb_decimal> vectors.
#> ✖ Cannot combine: <deb_lsd> vector with `bases` s = 30 and d = 18.
#> ✖ Cannot combine: <deb_tetra> vector with `bases` s = 20 and d = 12.
#> ℹ Use `deb_convert_bases()` to convert one or more of the vectors to compatible
#> `bases`.
c(dec, dec_polish)
#> Error:
#> ! Incompatible `bases`.
#> ℹ `bases` must be compatible to combine <deb_lsd>, <deb_tetra>, or
#> <deb_decimal> vectors.
#> ✖ Cannot combine: `..1` <deb_decimal> vector with `bases` s = 20 and d = 12.
#> ✖ Cannot combine: `..2` <deb_decimal> vector with `bases` s = 30 and d = 18.
#> ℹ Use `deb_convert_bases()` to convert one or more of the vectors to compatible
#> `bases`.
Whereas coercion occurs implicitly, casting explicitly changes the
class of a vector. debkeepr
vectors can be cast to and from
each other, to and from numeric
vectors, and to
character
vectors. A list
of
numeric
vectors of length three or four can also be cast to
deb_lsd
, deb_tetra
, and
deb_decimal
, while deb_lsd
and
deb_tetra
vectors can be cast back to a list of
numeric
vectors. Because the deb_lsd
and
deb_tetra
types have different capabilities from their
equivalent deb_decimal
type, casting between the classes
without any loss of metadata is important. The ability to cast
debkeepr
vectors to and from numeric
vectors,
or lists of numeric
vectors provides an outlet for any
missing functionality in the three debkeepr
types. The
drawback to casting between debkeepr
types and
numeric
is that the user needs to keep track of the
bases
and unit
on their own. Finally, casting
to a character vector provides a simple outlet to print values, but, for
presentation of the data, deb_text()
provides a more
flexible manner to nicely format debkeepr
vectors.
deb_lsd()
to …
deb_tetra()
: deb_as_tetra()
deb_decimal()
: deb_as_decimal()
numeric()
: as.numeric()
and
as.double()
list()
: deb_as_list()
character()
: as.character()
deb_tetra()
to …
deb_tetra()
: deb_as_tetra()
deb_decimal()
: deb_as_decimal()
numeric()
: as.numeric()
and
as.double()
list()
: deb_as_list()
character()
: as.character()
deb_decimal()
to …
deb_lsd()
: deb_as_lsd()
deb_tetra()
: deb_as_tetra()
numeric()
: as.numeric()
and
as.double()
character()
: as.character()
numeric()
to …
deb_lsd()
: deb_as_lsd()
deb_tetra()
: deb_as_tetra()
deb_decimal()
: deb_as_decimal()
list()
of numeric()
vectors of length 3 or
4 to …
deb_lsd()
: deb_as_lsd()
deb_tetra()
: deb_as_tetra()
deb_decimal()
: deb_as_decimal()
# Cast between deb_lsd, deb_tetra, and deb_decimal
deb_as_lsd(tetra)
#> <deb_lsd[3]>
#> [1] 17:13s:11.75d 32:11s:8.5d 18:10s:5.25d
#> # Bases: 20s 12d
deb_as_tetra(lsd, f = 4)
#> <deb_tetra[3]>
#> [1] 17:13s:11d:0f 32:11s:8d:0f 18:10s:5d:0f
#> # Bases: 20s 12d 4f
deb_as_decimal(lsd)
#> <deb_decimal[3]>
#> [1] 17.69583 32.58333 18.52083
#> # Unit: libra
#> # Bases: 20s 12d
deb_as_decimal(tetra)
#> <deb_decimal[3]>
#> [1] 17.69896 32.58542 18.52187
#> # Unit: libra
#> # Bases: 20s 12d 4f
# unit is automatically taken into account
deb_as_lsd(dec_s)
#> <deb_lsd[3]>
#> [1] 15:16s:6d 19:5s:0d 9:12s:3d
#> # Bases: 20s 12d
# Can cast to any unit of deb_decimal
deb_as_decimal(lsd, unit = "s")
#> <deb_decimal[3]>
#> [1] 353.9167 651.6667 370.4167
#> # Unit: solidus
#> # Bases: 20s 12d
deb_as_decimal(tetra, unit = "f")
#> <deb_decimal[3]>
#> [1] 16991 31282 17781
#> # Unit: farthing
#> # Bases: 20s 12d 4f
# Cast to and from numeric
deb_as_lsd(c(15.825, 19.25, 9.6125))
#> <deb_lsd[3]>
#> [1] 15:16s:6d 19:5s:0d 9:12s:3d
#> # Bases: 20s 12d
deb_as_tetra(c(15.825, 19.25, 9.6125))
#> <deb_tetra[3]>
#> [1] 15:16s:6d:0f 19:5s:0d:0f 9:12s:3d:0f
#> # Bases: 20s 12d 4f
deb_as_decimal(c(15.825, 19.25, 9.6125))
#> <deb_decimal[3]>
#> [1] 15.8250 19.2500 9.6125
#> # Unit: libra
#> # Bases: 20s 12d
as.numeric(lsd)
#> [1] 17.69583 32.58333 18.52083
as.numeric(tetra)
#> [1] 17.69896 32.58542 18.52187
as.numeric(dec)
#> [1] 15.8250 19.2500 9.6125
# Cast to character
as.character(lsd)
#> [1] "17:13s:11d" "32:11s:8d" "18:10s:5d"
as.character(tetra)
#> [1] "17:13s:11d:3f" "32:11s:8d:2f" "18:10s:5d:1f"
as.character(dec)
#> [1] "15.825" "19.25" "9.6125"
Casting to and from lists of numeric
vectors of length
three or four provides an alternate method to creating
debkeepr
vectors that might be more readable. Think of the
difference between tibble::tibble()
and tibble::tribble()
.
Whereas deb_lsd()
and deb_tetra()
is
structured in terms of units, using a list
of
numeric
vectors keeps the units of a single value together.
Compare:
# deb_lsd()
deb_lsd(l = c(17, 32, 18),
s = c(13, 11, 10),
d = c(11, 8, 5))
#> <deb_lsd[3]>
#> [1] 17:13s:11d 32:11s:8d 18:10s:5d
#> # Bases: 20s 12d
# Cast from list to deb_lsd()
list(c(17, 13, 11),
c(32, 11, 8),
c(18, 10, 5)) %>%
deb_as_lsd()
#> <deb_lsd[3]>
#> [1] 17:13s:11d 32:11s:8d 18:10s:5d
#> # Bases: 20s 12d
Notice that the input structure of the list
more closely
aligns with the output. This makes casting lists
of
numeric
vectors to debkeepr
types a nice
alternative if you need to input data manually.
At the heart of debkeepr
’s attempt to simplify
calculations of non-decimal currencies and integrate them into the
structure of R is the concept of normalization. Normalization
is the process of converting a set of compound units to a standard form
consistent with the bases for each unit in a manner similar to “carrying
over” digits in decimal arithmetic. Even the simplest arithmetic
operations can be tricky with non-decimal currencies, especially for
those schooled in decimal arithmetic. For example, adding together a set
of values by hand might result in the non-standard form of £132 53s.
35d. in a tripartite currency with the standard bases of 20 shillings
per pound and 12 pence per shilling. Normalizing the value by performing
integer division on the shillings and pence values by their respective
bases, keeping the remainder, and carrying over the quotient to the next
unit results in the standardized value of £134 15s. 11d. The process is
not difficult, but it is cumbersome and error prone.
debkeepr
simplifies the procedure with the
deb_normalize()
function and implements normalization on
all mathematical operations with deb_lsd
and
deb_tetra
vectors, ensuring that normalized values are
always returned. For one off calculations, deb_normalize()
also accepts numeric
vectors of length three or four, which
is essentially a short cut for
deb_normalize(deb_lsd(l, s, d))
and
deb_normalize(deb_tetra(l, s, d, f))
.
# Normalize tripartite value: £132 53s. 35d.
<- deb_lsd(132, 53, 35)
x deb_normalize(x)
#> <deb_lsd[1]>
#> [1] 134:15s:11d
#> # Bases: 20s 12d
# Normalize tetrapartite value: £132 53s. 35d. 21f.
<- deb_tetra(132, 53, 35, 21)
y deb_normalize(y)
#> <deb_tetra[1]>
#> [1] 134:16s:4d:1f
#> # Bases: 20s 12d 4f
# Normalize numeric vector
deb_normalize(c(132, 53, 35))
#> <deb_lsd[1]>
#> [1] 134:15s:11d
#> # Bases: 20s 12d
# The process is the same for non-standard bases such as Polish florin
# Compare this to deb_normalize(x)
deb_lsd(132, 53, 35, bases = c(30, 18)) %>%
deb_normalize()
#> <deb_lsd[1]>
#> [1] 133:24s:17d
#> # Bases: 30s 18d
debkeepr
implements a wide array of mathematical
functions and arithmetic operations for the deb_lsd
,
deb_tetra
, and deb_decimal
types. The
deb_decimal
type implements methods for the full range of
the Summary and Math group generics, while deb_lsd
and
deb_tetra
does so for a select subset of these functions.
The primary functions that are not implemented for either class include
median()
, quantile()
, and
summary()
. deb_lsd
, deb_tetra
,
deb_decimal
, and numeric
vectors can be
combined in mathematical functions and follow the same coercion
hierarchy: numeric()
-> deb_decimal()
->
deb_tetra()
-> deb_lsd()
. Most of the
mathematical functions act as expected with deb_lsd
and
deb_tetra
vectors. One exception is the round family of
functions, which act on the denarius unit in
deb_lsd
vectors and the farthings unit in
deb_tetra
vectors. As always, debkeepr
vectors
with incompatible bases
cannot be combined in either
mathematical functions or arithmetic operations.
deb_lsd
and
deb_tetra
vectorssum()
, any()
, and
all()
.abs()
, round()
,
signif()
, ceiling()
, floor()
,
trunc()
, cummax()
, cummin()
, and
cumsum()
.mean()
, is.nan()
,
is.finite()
, and is.infinite()
.# Mathematical functions
sum(lsd)
#> <deb_lsd[1]>
#> [1] 68:16s:0d
#> # Bases: 20s 12d
sum(tetra)
#> <deb_tetra[1]>
#> [1] 68:16s:1d:2f
#> # Bases: 20s 12d 4f
sum(dec)
#> <deb_decimal[1]>
#> [1] 44.6875
#> # Unit: libra
#> # Bases: 20s 12d
sum(lsd, tetra, dec)
#> <deb_lsd[1]>
#> [1] 182:5s:10.5d
#> # Bases: 20s 12d
mean(lsd)
#> <deb_lsd[1]>
#> [1] 22:18s:8d
#> # Bases: 20s 12d
# Round works on denarius unit of deb_lsd vector and is normalized
round(deb_lsd(9, 19, 11.825))
#> <deb_lsd[1]>
#> [1] 10:0s:0d
#> # Bases: 20s 12d
debkeepr
vectorsdeb_lsd
, deb_tetra
,
deb_decimal
, and numeric
vectors can be
combined in various ways in arithmetic operations, producing different
results depending on the input types and the operation performed. Note
in particular that a wider range of operators can be used with
deb_decimal
and numeric
vectors than
deb_lsd
and numeric
or deb_tetra
and numeric
vectors.8
deb_lsd()
deb_lsd()
and deb_lsd()
: +
,
-
, and /
deb_lsd()
; the last returns
numeric()
.deb_lsd()
and numeric()
: *
and /
deb_lsd()
.numeric()
and deb_lsd()
: *
and /
deb_lsd()
.deb_tetra()
deb_tetra()
and deb_tetra()
:
+
, -
, and /
deb_tetra()
; the last returns
numeric()
.deb_tetra()
and numeric()
: *
and /
deb_tetra()
.numeric()
and deb_tetra()
: *
and /
deb_tetra()
.deb_decimal()
deb_decimal()
and deb_decimal()
:
+
, -
, and /
deb_lsd()
; the last returns
numeric()
.deb_decimal()
and numeric()
:
+
, -
, /
, *
,
^
, %%
, and %/%
deb_decimal()
.numeric()
and deb_decimal()
:
+
, -
, *
and /
deb_decimal()
.debkeepr
vectors
deb_lsd()
and deb_tetra()
: +
,
-
, and /
deb_lsd()
; the last returns
numeric()
.deb_lsd()
and deb_decimal()
:
+
, -
, and /
deb_lsd()
; the last returns
numeric()
.deb_tetra()
and deb_decimal()
:
+
, -
, and /
deb_tetra()
; the last returns
numeric()
.# deb_lsd and deb_lsd
deb_lsd(15, 15, 9) + deb_lsd(6, 13, 4)
#> <deb_lsd[1]>
#> [1] 22:9s:1d
#> # Bases: 20s 12d
deb_lsd(15, 15, 9) / deb_lsd(6, 13, 4)
#> [1] 2.368125
# deb_tetra and deb_tetra
deb_tetra(15, 15, 9, 3) + deb_tetra(6, 13, 4, 2)
#> <deb_tetra[1]>
#> [1] 22:9s:2d:1f
#> # Bases: 20s 12d 4f
# deb_decimal and deb_decimal
deb_decimal(15.7875) - deb_decimal(20 / 3)
#> <deb_decimal[1]>
#> [1] 9.120833
#> # Unit: libra
#> # Bases: 20s 12d
# deb_lsd, deb_tetra, deb_decimal, and numeric
deb_lsd(6, 13, 4) / 2
#> <deb_lsd[1]>
#> [1] 3:6s:8d
#> # Bases: 20s 12d
deb_tetra(15, 15, 9, 3) / 2
#> <deb_tetra[1]>
#> [1] 7:17s:10d:3.5f
#> # Bases: 20s 12d 4f
deb_decimal(15.7875) + 5.25
#> <deb_decimal[1]>
#> [1] 21.0375
#> # Unit: libra
#> # Bases: 20s 12d
18 - deb_decimal(20 / 3)
#> <deb_decimal[1]>
#> [1] 11.33333
#> # Unit: libra
#> # Bases: 20s 12d
deb_decimal(15.7875) * 3
#> <deb_decimal[1]>
#> [1] 47.3625
#> # Unit: libra
#> # Bases: 20s 12d
# deb_lsd, deb_tetra, and deb_decimal
deb_lsd(15, 15, 9) + deb_tetra(6, 13, 4, 2)
#> <deb_lsd[1]>
#> [1] 22:9s:1.5d
#> # Bases: 20s 12d
deb_lsd(15, 15, 9) + deb_decimal(20 / 3)
#> <deb_lsd[1]>
#> [1] 22:9s:1d
#> # Bases: 20s 12d
deb_lsd(15, 15, 9) / deb_decimal(15.7875)
#> [1] 1
Closely related to mathematical functions and arithmetic operations
is the task of testing equality and comparing different vectors.
debkeepr
permits testing equality and comparison between
deb_lsd
, deb_tetra
, deb_decimal
,
and numeric
vectors. It is possible to compare
deb_decimal
vectors with different unit
s, but
doing so with vectors of incompatible bases
will throw an
error.
# Comparison
deb_lsd(15, 15, 9) < deb_lsd(6, 13, 4)
#> [1] FALSE
deb_lsd(15, 15, 9) < deb_tetra(6, 13, 4, 2)
#> [1] FALSE
deb_lsd(15, 15, 9) == deb_decimal(15.7875)
#> [1] TRUE
deb_lsd(6, 13, 4) > 23.5
#> [1] FALSE
deb_decimal(15.7875) < deb_decimal(3390, unit = "d")
#> [1] FALSE
# Cannot compare vectors with different bases
deb_lsd(15, 15, 9) > lsd_polish
#> Error:
#> ! Incompatible `bases`.
#> ℹ `bases` must be compatible to combine <deb_lsd>, <deb_tetra>, or
#> <deb_decimal> vectors.
#> ✖ Cannot combine: `..1` <deb_lsd> vector with `bases` s = 20 and d = 12.
#> ✖ Cannot combine: `..2` <deb_lsd> vector with `bases` s = 30 and d = 18.
#> ℹ Use `deb_convert_bases()` to convert one or more of the vectors to compatible
#> `bases`.
# Maximum and minimum
max(lsd)
#> <deb_lsd[1]>
#> [1] 32:11s:8d
#> # Bases: 20s 12d
min(dec_polish)
#> <deb_decimal[1]>
#> [1] 9.6125
#> # Unit: libra
#> # Bases: 30s 18d
# Checking for unique values takes into account normalization
unique(c(deb_lsd(15, 15, 9), deb_lsd(12, 71, 57)))
#> <deb_lsd[1]>
#> [1] 15:15s:9d
#> # Bases: 20s 12d
As introduced above, all functions that take two
debkeepr
vectors check to ensure that the
bases
of the vectors are compatible. Any function call that
combines vectors with incompatible bases
throws an error.
debkeepr
is less strict with deb_decimal
vectors that have a different unit
since a
unit
is a nominal representation whose relationship to the
other units is known through the bases
. In contrast,
bases
directly affect the underlying value, and the
relationship between currencies of different bases cannot be determined
through the objects themselves.
With these constraints, debkeepr
has two ways to
explicitly convert the bases
and unit
of
debkeepr
vectors: deb_convert_bases()
and
deb_convert_unit()
. deb_convert_bases()
takes
a deb_lsd
, deb_tetra
, or
deb_decimal
vector and converts the value to the
bases
contained in the to
argument. This will
likely be done alongside multiplication of an exchange rate between the
two currencies. The Transactions
in Richard Dafforne’s Journal vignette has a number of examples of
this process. deb_convert_unit()
is simpler in that it uses
the bases
of a deb_decimal
vector to calculate
the conversion to a different unit
.
A fairly simple example is an exchange between pounds Flemish and guilders from Holland. The two currencies had different bases; guilders possessed the non-standard base of 16 for the denarius unit. However, the currencies were tied together at a rate of six guilders to £1 Flemish.
# Convert pounds Flemish to guilders
deb_convert_bases(lsd, to = c(20, 16)) * 6
#> <deb_lsd[3]>
#> [1] 106:3s:8d 195:10s:0d 111:2s:8d
#> # Bases: 20s 16d
# Convert units
deb_convert_unit(dec, to = "d")
#> <deb_decimal[3]>
#> [1] 3798 4620 2307
#> # Unit: denarius
#> # Bases: 20s 12d
# Converting units maintains equality; converting bases does not
== deb_convert_unit(dec, to = "d")
dec #> [1] TRUE TRUE TRUE
== deb_convert_bases(lsd, to = c(20, 16))
lsd #> Error:
#> ! Incompatible `bases`.
#> ℹ `bases` must be compatible to combine <deb_lsd>, <deb_tetra>, or
#> <deb_decimal> vectors.
#> ✖ Cannot combine: `..1` <deb_lsd> vector with `bases` s = 20 and d = 12.
#> ✖ Cannot combine: `..2` <deb_lsd> vector with `bases` s = 20 and d = 16.
#> ℹ Use `deb_convert_bases()` to convert one or more of the vectors to compatible
#> `bases`.
debkeepr
type columnsThus far this vignette has only dealt with debkeepr
types as vectors, but these vectors also work as columns in data frames
and tibbles. deb_lsd
, deb_tetra
, and
deb_decimal
columns are essential to achieve
debkeepr
’s goal of facilitating reproducible analysis and
visualization of larger sets of values found in account books. This
section discusses how to create and manipulate data frames with
debkeepr
columns and the process of visualizing the values
with ggplot2
. The below example uses a column of type
deb_lsd
, but all of the functionality works the same with
deb_tetra
columns.
# load packages
library(tibble)
library(dplyr)
library(ggplot2)
The first task is to create a deb_lsd
,
deb_tetra
, or deb_decimal
column. Such a
column can be created with a normal call to data.frame()
or
tibble()
and a debkeepr
vector. However,
larger sets of non-decimal values will often be created through the
process of transcribing historical data into a spreadsheet of some form.
It is recommended to enter the different units into separate columns.
The data can then be read into R and the separate variables transformed
into a deb_lsd
or deb_tetra
column with
deb_gather_lsd()
and deb_gather_tetra()
respectively. This is the process used to create the
dafforne_transactions
data that comes with the
debkeepr
package. To restore the data to its original form
in which the number of columns matching the number of units use the
deb_spread_lsd()
or deb_spread_tetra()
functions.
# Create data frame with deb_lsd vector
tibble(id = 1:3, lsd = lsd)
#> # A tibble: 3 × 2
#> id lsd
#> <int> <lsd[20s:12d]>
#> 1 1 17:13s:11d
#> 2 2 32:11s:8d
#> 3 3 18:10s:5d
# Cretae a data frame with a deb_tetra vector
tibble(id = 1:3, tetra = tetra)
#> # A tibble: 3 × 2
#> id tetra
#> <int> <tetra[20s:12d:4f]>
#> 1 1 17:13s:11d:3f
#> 2 2 32:11s:8d:2f
#> 3 3 18:10s:5d:1f
# Data frame from separate unit columns with randomly created data
set.seed(240)
<- tibble(id = 1:10,
raw_data group = rep(1:5, 2),
pounds = sample(20:100, 10, replace = TRUE),
shillings = sample(1:19, 10, replace = TRUE),
pence = sample(1:11, 10, replace = TRUE))
<- deb_gather_lsd(raw_data,
(lsd_tbl l = pounds, s = shillings, d = pence,
replace = TRUE))
#> # A tibble: 10 × 3
#> id group lsd
#> <int> <int> <lsd[20s:12d]>
#> 1 1 1 24:10s:9d
#> 2 2 2 34:14s:4d
#> 3 3 3 83:4s:4d
#> 4 4 4 41:13s:2d
#> 5 5 5 99:8s:11d
#> 6 6 1 92:14s:7d
#> 7 7 2 57:6s:5d
#> 8 8 3 48:12s:2d
#> 9 9 4 53:11s:2d
#> 10 10 5 56:9s:7d
Because debkeepr
types are based on the vctrs package, the types act as
expected in data frames. From dplyr
1.0.0 — which is the minimal version used by debkeepr
—
all dplyr
functions work with debkeepr
types.
# deb_lsd work in dplyr pipelines
%>%
lsd_tbl filter(lsd > 50) %>%
group_by(group) %>%
summarise(sum = sum(lsd), .groups = "drop") %>%
mutate(dec = deb_as_decimal(sum))
#> # A tibble: 5 × 3
#> group sum dec
#> <int> <lsd[20s:12d]> <l[20s:12d]>
#> 1 1 92:14s:7d 92.72917
#> 2 2 57:6s:5d 57.32083
#> 3 3 83:4s:4d 83.21667
#> 4 4 53:11s:2d 53.55833
#> 5 5 155:18s:6d 155.92500
debkeepr
has a family of functions designed to work with
a specific type of data frame that debkeepr
refers to as
transactions data frames that have a structure similar to an account
book. Transactions data frames possess at minimum “credit” and “debit”
columns to record the creditor and debtor accounts of each transaction —
the accounts from which a value is taken and to which it is given — and
the value of the transactions in a deb_lsd
,
deb_tetra
, or deb_decimal
column. For a full
explanation of how this family of functions work, see
?deb_account
and the Analysis
of Richard Dafforne’s Journal and Ledger vignette. It is possible to
create a simple transactions data frame from lsd_tbl
by
adding “credit” and “debit” variables. For instance, a merchant might
trade in three commodities that each have their own account (let’s say
wheat, silk, and linen) and a cash account.
# Create transactions data frame
<- c("wheat", "silk", "linen", "cash")
accounts set.seed(24)
<- lsd_tbl %>%
(transactions add_column(credit = sample(accounts, 10, replace = TRUE),
debit = sample(accounts, 10, replace = TRUE),
.before = 3))
#> # A tibble: 10 × 5
#> id group credit debit lsd
#> <int> <int> <chr> <chr> <lsd[20s:12d]>
#> 1 1 1 linen silk 24:10s:9d
#> 2 2 2 linen wheat 34:14s:4d
#> 3 3 3 cash cash 83:4s:4d
#> 4 4 4 linen wheat 41:13s:2d
#> 5 5 5 silk cash 99:8s:11d
#> 6 6 1 linen linen 92:14s:7d
#> 7 7 2 wheat cash 57:6s:5d
#> 8 8 3 silk wheat 48:12s:2d
#> 9 9 4 cash wheat 53:11s:2d
#> 10 10 5 silk cash 56:9s:7d
With the properly structured data frame, debkeepr
makes
it easy to find information about the accounts. For example,
deb_account_summary()
finds the total credit, total debit,
and current value of each account. Note that the account family of
functions can take any debkeepr
type column.
<- deb_account_summary(transactions, lsd = lsd,
(trans_summary credit = credit, debit = debit))
#> # A tibble: 4 × 4
#> account_id credit debit current
#> <chr> <lsd[20s:12d]> <lsd[20s:12d]> <lsd[20s:12d]>
#> 1 cash 136:15s:6d 296:9s:3d -159:-13s:-9d
#> 2 linen 193:12s:10d 92:14s:7d 100:18s:3d
#> 3 silk 204:10s:8d 24:10s:9d 179:19s:11d
#> 4 wheat 57:6s:5d 178:10s:10d -121:-4s:-5d
ggplot2
deb_account_summary()
provides a good basis for a visual
overview of the accounts in a transactions data frame. However,
alterations to trans_summary
have to be made to prepare it
for plotting with ggplot()
. ggplot2
does not
know how to pick a scale for columns of type deb_lsd
or
deb_tetra
, but deb_decimal
columns work as
expected.9 It is therefore necessary to cast the
deb_lsd
columns to deb_decimal
, either before
or within the ggplot()
call. The only context in which
casting to deb_decimal
results in any loss of information
is in labeling the plotted values. However, this can be rectified
through the deb_text()
function, which provides a flexible
way to format debkeepr
vectors as text. The following
command makes these changes while also converting the “debit” column to
negative values for the purpose of distinguishing them from the credit
values.
<- trans_summary %>%
dec_summary mutate(across(where(deb_is_lsd), deb_as_decimal),
debit = -debit,
current_text = deb_text(deb_as_lsd(current)))
At this point, the data can be plotted as if the
deb_decimal
values are numeric
. The only
notable difference is the need to explicitly call
scale_y_continuous()
to avoid a message, but, in this case,
scale_y_continuous()
is also used to label the axis with
the pound symbol.
ggplot(data = dec_summary) +
geom_linerange(aes(x = account_id, ymin = debit, ymax = credit)) +
geom_point(aes(x = account_id, y = current)) +
geom_text(aes(x = account_id, y = current, label = current_text), nudge_x = 0.32) +
scale_y_continuous(labels = scales::label_dollar(prefix = "\u00a3")) +
geom_hline(yintercept = 0) +
labs(x = "Accounts",
y = "Value in pounds",
title = "Summary of Accounts",
subtitle = "Total credit, debit, and current values") +
theme_light()
This vignette has gone through the basic structures and workings of
the debkeepr
package and the deb_lsd
,
deb_tetra
, and deb_decimal
types. It has
outlined the difficulties inherent in working with non-decimal
currencies in decimalized computing environments and the ways that
debkeepr
seeks to overcome these problems to integrate the
study and analysis of historical non-decimal currencies into the
methodologies of Digital Humanities and the practices of reproducible
research. For further examples of the use cases for
debkeepr
and how the package promotes practices of
reproducible research, see the Transactions
in Richard Dafforne’s Journal and Analysis
of Richard Dafforne’s Journal and Ledger vignettes.
Using the bases of 20 and 12 also had certain arithmetic advantages.↩︎
For more information about the development of the system of pounds, shillings, and pence and medieval monetary systems more generally see Peter Spufford, Money and its Use in Medieval Europe (Cambridge: Cambridge University Press, 1988).↩︎
Does 13s. 4d. represent 2/3 of £1, as is the case with the standard bases of 20s. 12d.? Or 13s. 4d. might represent less than half of £1 with the Polish florin from Dafforne’s journal that used units of 30s. 18d.↩︎
It is for this reason that any function call that
combines debkeepr
vectors that have the same number of
units with different bases
throws an error. However, it is
possible to combine tripartite and tetrapartite debkeepr
vectors so long as the solidus and denarius units are
equal. The farthing unit simply acts as a way to present any decimal in
the denarius unit. In addition, deb_decimal
vectors with a different unit
can be safely combined. The
nominal difference between the three units is contained in the bases of
the solidus and denarius units.↩︎
See the S3
vectors vignette in the vctrs
package for a fuller
explanation of these terms. For a discussion of the goals of type
stability for coercion, see the Type and size
stability vignette in the same package.↩︎
Coercion of deb_decimal
vectors with
different unit
s is implemented because though
deb_decimal
vectors with different unit
s
differ nominally, so long as they have equivalent bases
,
they represent values of the same currency.↩︎
For further details on the issues with and
inconsistencies of c()
, as well as the reasoning behind the
the implementation of vctrs::vec_c()
, see the Type
and size stability vignette in the vctrs
package.↩︎
The difference between the behavior of
deb_lsd
and deb_tetra
types on the one hand
and the deb_decimal
type on the other with
numeric
vectors is primarily an implementation detail. It
is a recognition of the closer relationship of deb_decimal
to numeric vectors than deb_lsd
and deb_tetra
to numeric
vectors and of the relative ease of casting back
and forth between deb_lsd
or deb_tetra
and
deb_decimal
.↩︎
In contrast to ggplot2
, base R
plot()
correctly plots deb_lsd
and
deb_tetra
vectors without any modifications.↩︎
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.