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GlmSimulatoR

Overview

Understating statistical models is difficult. Experimentation on models should be a part of the learning process. This package provides functions that generate ideal data for generalized linear models. Model parameters, link functions, sample size, and more are adjustable. With data controlled, models can be experimented on.

Is a sample size of 200 enough to get close estimates of the true weights?

library(GlmSimulatoR)

set.seed(1)
simdata <- simulate_gaussian(N = 200, weights = c(1, 2, 3))

model <- lm(Y ~ X1 + X2 + X3, data = simdata)
summary(model)$coefficients
#>              Estimate Std. Error   t value     Pr(>|t|)
#> (Intercept) 2.9138043  0.7011699  4.155633 4.843103e-05
#> X1          0.9833586  0.2868396  3.428253 7.403616e-04
#> X2          1.7882468  0.2701817  6.618683 3.386406e-10
#> X3          3.2822020  0.2640478 12.430334 1.550439e-26

The estimates are close to the weights argument. The mathematics behind the linear model worked well.

Addititional Examples in Vignettes

  • Count data and over dispersion
  • Dealing with right skewed data
  • Exploring links for the Gaussian distribution
  • Stepwise Search
  • Tweedie distribution.

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Version

Install

install.packages('GlmSimulatoR')

Monthly Downloads

284

Version

1.0.0

License

GPL-3

Maintainer

Greg McMahan

Last Published

December 1st, 2023

Functions in GlmSimulatoR (1.0.0)

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Pipe operator
simulate_gaussian

Create ideal data for a generalized linear model.
GlmSimulatoR-package

GlmSimulatoR: Creates Ideal Data for Generalized Linear Models