I have a data frame (500,000 obs. of 4 variables) and want to compare the distribution of two observations (date and value) for subsets of a third observation (group.id). To do that, I want to run a statistical test on date and value for each group.id (in total, there's ~2000 group.ids) against the entire data set. My goal is to identify group.id distributions that differ significantly from the data set as a whole. From the test, I want to output the group id and p-value in a new data frame.
I though a chi square test would work, but based on the comments below, am looking at a Wilcoxon test. However, I still had a problem with the dates, so I converted them to numeric values (df$date<-as.numeric(df$date)). Here's a sample of the data I'm starting with:
mat <- as.matrix(df[,c("group.id", "indiv.id", "date", "value")], ncol = 4) head(mat,4) group.id indiv.id date value 1 000001 1111110 1014658560 0.3710000 2 000001 1111111 1015110060 0.3670000 3 000001 1111112 1018737120 0.4100000 4 000002 1111113 1113588600 0.4570000
I've converted my data frame to a matrix because, in my attempts to get this working with small subsets of date, I get the error "Error in wilcox.test.default(df1, df2) : 'x' must be numeric").
I can get the test to work if I create two small test sets.
> df2.mat <- data.matrix(df2) > df3.mat <- data.matrix(df3) > head(df2.mat) group.id indiv.id date value 1 123545 75 1014658560 0.371 2 123586 75 1015110060 0.367 3 125558 75 1018737120 0.410 4 856333 75 1048962600 0.457 > wilcox.test(df2.mat,df3.mat) Wilcoxon rank sum test with continuity correction data: df2.mat and df3.mat W = 3855662, p-value = 7.677e-06 alternative hypothesis: true location shift is not equal to 0
However, I don't know how to iterate this across thousands of subsets. Is a function the best way to approach this? Can I use aaply? I'd appreciate any pointers/suggestions.