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I am conducting a study that analyzes speakers' production and measures their average F2 values. What I need is an R function that allows me to find a relationship for these F2 values with 3 other variables, and if there is, which one is the most significant. These variables have been coded as 1, 2, or 3 for things like "yes" "no" answers or whether responses are positive, neutral or negative (1, 2, 3 respectively).

Is there a particular technique or R function/test that we can use to approach this problem? I've considered using ANOVA or a T-Test but am unsure if this will give me what I need.

  • Unless I'm misunderstanding the questions, you can use the cor() function and loop through with each of the variables to find the pair with the highest correlation. Can you provide sample data? – tim Sep 16 at 21:09
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A quick solution might look like this. Here, the cor function is used. Read its help page (?cor) to understand what is calculated. By default, the Pearson correlation coefficient is used. The function below return the variable with the highest Pearson correlation with respect to the reference variable.

set.seed(111)

x <- rnorm(100)
y <- rnorm(100)
z <- rnorm(100)

ref <- 0.5*x + 0.5*rnorm(100)

find_max_corr <- function(vars, ref){
  val <- sapply(vars, cor, y = ref)
  val[which.max(val)]
}

find_max_corr(list('x' = x, 'y' = y, 'z' = z), ref)

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