I'm using R's built-in correlation matrix and hierarchical clustering methods to segment daily sales data into 10 clusters. Then, I'd like to create agglomerated daily sales data by cluster. I've got as far as creating a
cutree() object, but am stumped on extracting only the column names in the
cutree object where the cluster number is 1, for example.
For simplicity's sake, I'll use the
EuStockMarkets data set and cut the tree into 2 segments; bear in mind that I'm working with thousands of columns here so the needs to be scalable:
data=as.data.frame(EuStockMarkets) corrMatrix<-cor(data) dissimilarity<-round(((1-corrMatrix)/2), 3) distSimilarity<-as.dist(dissimilarity) hirearchicalCluster<-hclust(distSimilarity) treecuts<-cutree(hirearchicalCluster, k=2)
now, I get stuck. I want to extract only the column names from
treecuts where the cluster number is equal to 1, for example. But, the object that
cutree() makes is not a DataFrame, making sub-setting difficult. I've tried to convert
treecuts into a data frame, but R does not create a column for the row names, all it does is coerce the numbers into a row with the name
I would want to do the following operations:
....Code that converts treecuts into a data frame called "treeIDs" with the columns "Index" and "Cluster"...... cluster1Columns<-colnames(treeIDs[Cluster==1, ]) cluster1DF<-data[ , (colnames(data) %in% cluster1Columns)] rowSums(cluster1DF)
...and voila, I'm done.