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t tests cover mean differences, matched pairs, point-biserial correlations, regression slopes, and generic noncentrality.
\[d = \frac{\mu_1 - \mu_0}{\sigma}, \quad \delta = d\sqrt{n}\]
power_compute("t_one_sample", "a_priori", d = 0.625, alpha = 0.05,
power = 0.95, tails = "one")
#> ggpower result
#> Test: t test: Means - difference from constant (one sample case)
#> Analysis: a_priori
#>
#> Input parameters
#> tails: greater
#> effect_size_d: 0.625
#> alpha: 0.05
#> total_sample_size: 30
#> target_power: 0.95
#>
#>
#> Output parameters
#> noncentrality_parameter: 3.423266
#> critical_t: 1.699127
#> df: 29
#> actual_power: 0.9551444
#>
#>
#> Notes
#> - A priori sample sizes are rounded up to integer values and actual power is recomputed.power_compute("t_two_sample", "a_priori", d = 0.5, alpha = 0.05,
power = 0.8, tails = "two", allocation_ratio = 1)
#> ggpower result
#> Test: t test: Means - difference between two independent means (two groups)
#> Analysis: a_priori
#>
#> Input parameters
#> tails: two
#> effect_size_d: 0.5
#> alpha: 0.05
#> sample_size_group_1: 64
#> sample_size_group_2: 64
#> target_power: 0.8
#>
#>
#> Output parameters
#> noncentrality_parameter: 2.828427
#> critical_t: -1.978971, 1.978971
#> df: 126
#> total_sample_size: 128
#> actual_power: 0.8014596
#>
#>
#> Notes
#> - A priori sample sizes are rounded up to integer values and actual power is recomputed.power_compute("t_paired", "post_hoc", d = 0.42, n = 50, alpha = 0.05)
#> ggpower result
#> Test: t test: Means - difference between two dependent means (matched pairs)
#> Analysis: post_hoc
#>
#> Input parameters
#> tails: two
#> effect_size_dz: 0.42
#> alpha: 0.05
#> total_sample_size: 50
#>
#>
#> Output parameters
#> noncentrality_parameter: 2.969848
#> critical_t: -2.009575, 2.009575
#> df: 49
#> power: 0.8292517power_compute("t_point_biserial", "a_priori", rho = 0.3, alpha = 0.05, power = 0.8)
#> ggpower result
#> Test: t test: Correlation - point biserial model
#> Analysis: a_priori
#>
#> Input parameters
#> tails: two
#> effect_size_rho: 0.3
#> alpha: 0.05
#> total_sample_size: 82
#> target_power: 0.8
#>
#>
#> Output parameters
#> noncentrality_parameter: 2.847787
#> critical_t: -1.990063, 1.990063
#> df: 80
#> actual_power: 0.8033045
#>
#>
#> Notes
#> - A priori sample sizes are rounded up to integer values and actual power is recomputed.power_compute("t_linear_regression", "post_hoc", slope_h1 = -0.0667,
slope_h0 = 0, sd_x = 7.5, sd_y = 4, n = 100)
#> ggpower result
#> Test: t test: Linear Regression (size of slope, one group)
#> Analysis: post_hoc
#>
#> Input parameters
#> tails: two
#> slope_h1: -0.0667
#> slope_h0: 0
#> sd_x: 7.5
#> sd_y: 4
#> alpha: 0.05
#> total_sample_size: 100
#>
#>
#> Output parameters
#> noncentrality_parameter: -1.250625
#> critical_t: -1.984467, 1.984467
#> df: 98
#> power: 0.2359684power_compute("t_linear_regression_two_groups", "a_priori", delta_slope = 0.1,
sd_x1 = 1, sd_x2 = 1, residual_sd = 1, alpha = 0.05, power = 0.8)
#> ggpower result
#> Test: t test: Linear Regression (two groups)
#> Analysis: a_priori
#>
#> Input parameters
#> tails: two
#> delta_slope: 0.1
#> residual_sd: 1
#> sd_x1: 1
#> sd_x2: 1
#> alpha: 0.05
#> sample_size_group_1: 1571
#> sample_size_group_2: 1571
#> target_power: 0.8
#>
#>
#> Output parameters
#> noncentrality_parameter: 2.802677
#> critical_t: -1.96072, 1.96072
#> df: 3138
#> total_sample_size: 3142
#> actual_power: 0.8000665
#>
#>
#> Notes
#> - A priori sample sizes are rounded up to integer values and actual power is recomputed.No a_priori mode — supply NCP and df directly.
power_compute("t_generic", "post_hoc", ncp = 3, df = 29, alpha = 0.05, tails = "two")
#> ggpower result
#> Test: t test: Generic case
#> Analysis: post_hoc
#>
#> Input parameters
#> tails: two
#> noncentrality_parameter: 3
#> alpha: 0.05
#> df: 29
#>
#>
#> Output parameters
#> critical_t: -2.04523, 2.04523
#> power: 0.8262306
#>
#>
#> Notes
#> - Generic t tests do not have a unique sample-size definition, so a priori mode is not available.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.