#Chay Bagan CIS 430 HW3 Universities = read.csv("Universities.csv", header = TRUE) Universities$State = NULL Universities$Public..1...Private..2. = NULL head(Universities) Universities = na.omit(Universities) Universities = princomp(Universities[2:18], cor=TRUE, score=TRUE) summary(Universities) plot(Universities) #biplot(Universities) #We should normalize the data because a PCA without normalization will always perform worse than one with #With that being said luckily in this dataset we can still see a great deal of information from PCA without normalization #The key components are clearly 1 and 2 as they account for atleast 4-5x the amount of variance compared to any other component