# Tagged Questions

184 views

### R: Constructing correlated variables

I have a variable with a given distribution (normale in my below example). set.seed(32) var1 = rnorm(100,mean=0,sd=1) I want to create a variable (var2) that is correlated to var1 with a linear ...
436 views

### R: Calculating Pearson correlation coefficient in each cell along time line

I have two sets of rasters, both with same x,y,z extent. I've made two stacks: stacka and stackb. I want to calculate the Pearson correlation coefficient (PCC) in each grid cell between two stacks ...
523 views

### Approximate the distribution of a sum of binomial random variables in R

My goal is approximate the distribution of a sum of binomial variables. I use the following paper The Distribution of a Sum of Binomial Random Variables by Ken Butler and Michael Stephens. I want to ...
416 views

### chi square test in R when your data is a list of observations

Is it possible to calculate chi squared in R when your data is in the form of a list of observations? What I mean is, it is simple to get chi squared if you know the cross. For instance, if you have a ...
269 views

### Correlation matrix for different treatments in R

With the code below I have created a correlation matrix. The code below just creates a matrix for all of the data, regardless of treatment. However, a column in my data is treatment. I would like to ...
88 views

### Wrong correlation result for big numbers

The cor() function fails to compute the correlation value if there are extremely big numbers in the vector and returns just zero: foo <- c(1e154, 1, 0) bar <- c(0, 1, 2) cor(foo, bar) # ...
456 views

### How NaN in pearson corellation user-user similarity matrix in a recommender system is handled

I am generating a user-user similarity matrix from a user-rating data (particularly MovieLens100K data). Computing correlation leads to some NaN values. I have tested in a smaller dataset: User-Item ...
532 views

### “Correlation & Significance if more than 30 pairs” using R and ddply

Part of the solution to my problem I found here: How to calculate correlation In R set.seed(123) X <- data.frame(ID = rep(1:2, each=5), a = sample(1:10), b = sample(1:10)) ddply(X, .(ID), ...