R语言在不同样本量下的Little’s MCAR检验

我进行一个小型仿真,以在不同样本量下测试Little的MCAR检验

研究线性回归中的异方差。 能够找到一些使用Little’s MCAR检验的小样本研究人员的例子,因此我进行了仿真。

library(BaylorEdPsych)
library(simglm)
library(ggplot2)
library(dplyr)
library(mice)
fixed <- ~1 + age + income
fixed_param <- c(2, 0.3, 1.3)
cov_param <- list(dist_fun = c('rnorm', 'rnorm'),
                  var_type = c("single", "single"),
                  opts = list(list(mean = 0, sd = 4),
                              list(mean = 0, sd = 3)))
ggplot(little.mcar.p, aes(x = n, y = p)) + geom_boxplot() +
  geom_crossbar(aes(ymin = q025, y = q05, ymax = q075), data = summarise(
    group_by(little.mcar.p, n), q025 = quantile(p, .025, na.rm = TRUE),
    q05 = quantile(p, .05, na.rm = TRUE), q075 = quantile(p, .075, na.rm = TRUE)
  )) +
  geom_hline(yintercept = .05) +
  scale_y_continuous(breaks = seq(0, 1, .05), limits = c(0, 1)) +
  labs(x = "Sample size", y = "p-value",
       title = "Little's MCAR test for data that are MCAR",
       subtitle = "2000 replications",
       caption = paste(paste("For the narrow boxes, going from top to bottom, lines",
                             "represent 7.5th, 5th and 2.5th percentiles of p-values."),
                       "Test maintains nominal error rate across wide range of sample sizes.",
                       sep = "\n"))
数据是MCAR

ggplot(little.mcar.p.mar, aes(x = n, y = p)) + geom_boxplot() +
  geom_crossbar(aes(ymin = q925, y = q95, ymax = q975), data = summarise(
    group_by(little.mcar.p.mar, n), q925 = quantile(p, .925, na.rm = TRUE),
    q95 = quantile(p, .95, na.rm = TRUE), q975 = quantile(p, .975, na.rm = TRUE)
  ), linetype = 2) +
  geom_hline(yintercept = .05) +
  scale_y_continuous(breaks = seq(0, 1, .05), limits = c(0, 1)) +
  labs(x = "Sample size", y = "p-value",
       title = "Little's MCAR test for data that are MAR",
       subtitle = "2000 replications",
       caption = paste(paste("For the dashed boxes, going from top to bottom, lines",
                             "represent 97.5th, 95th and 92.5th percentiles of p-values."),
                       "Test only maintains nominal error rate around sample size of 120.",
                       sep = "\n"))
数据是MAR

回归接近完美(没有多重共线性)。


可下载资源

关于作者

Kaizong Ye拓端研究室(TRL)的研究员。在此对他对本文所作的贡献表示诚挚感谢,他在上海财经大学完成了统计学专业的硕士学位,专注人工智能领域。擅长Python.Matlab仿真、视觉处理、神经网络、数据分析。

本文借鉴了作者最近为《R语言数据分析挖掘必知必会 》课堂做的准备。

​非常感谢您阅读本文,如需帮助请联系我们!


 
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