Joint Modeling of a Matrix with Associated Text via Latent Binary Features
Zhang, Xianxing, Carin, Lawrence
–Neural Information Processing Systems
A new methodology is developed for joint analysis of a matrix and accompanying documents, with the documents associated with the matrix rows/columns. The documents are modeled with a focused topic model, inferring latent binary features (topics) for each document. A new matrix decomposition is developed, with latent binary features associated with the rows/columns, and with imposition of a low-rank constraint. The matrix decomposition and topic model are coupled by sharing the latent binary feature vectors associated with each. The model is applied to roll-call data, with the associated documents defined by the legislation.
Neural Information Processing Systems
Feb-14-2020, 22:58:38 GMT