cancel
Showing results for 
Show  only  | Search instead for 
Did you mean: 
Choose Language Hide Translation Bar
A novel clustering JMP platform using non-negative matrix factorization

If the data is non-negative, Non-negative Matrix Factorization can be used to cluster the observations, the variables, or both. By its nature, NMF clustering is focused on the large values. Our idea is to normalize the data, e.g. by subtracting the row/column means, and split the matrix into positive and negative parts. NMF clustering applied to the concatenated data, “PosNegNMF”, gives equal weight to large and small values. The approach along with powerful visualizations tools is available in JMP through our platform: inferential & robust Matrix Factorization, irMF. A light automated demo is included with the slides.

Discovery Summit 2016 Resources

Discovery Summit 2016 is over, but it's not too late to participate in the conversation!

Below, you'll find papers, posters and selected video clips from Discovery Summit 2016.