I have a dataset I would like to analyze and plot It consists of 100 binary variables (0/1) for about 2,000,000 observations There is absolutely no quantitative variable, nor anything I could use as an explained variable for a regression analysis.
Actually, the dataset represents the patronage of 2 billion customers for 100 stores. It equals 1 if the consumer go to the store, 0 if he doesn't. With no further information. Consumers can of course visit several stores.
As the variable look like factors (0/1), I thought I could go for a Mutliple Correspondence Analysis (MCA). However, the resulting plot consists of 2 points for each variable (one for 1 and one for 0) which is not easily interpretable. (or is there a method for not plotting certain points in MCA? - in R)
I also tried to consider my dataset as a bipartite network (consumer-store). However, the plot is not really insightful, as I am especially looking for links between stores. (kind of "if a consumer go to that store, he probably also goes to this one...")
So, I have a simple question: which method you would choose for computing and plotting the links between a set of binary variable?