Modeling Dyadic Data with Binary Latent Factors
Abstract
We introduce binary matrix factorization, a novel model for unsupervised ma- trix decomposition. The decomposition is learned by fitting a non-parametric Bayesian probabilistic model with binary latent variables to a matrix of dyadic data. Unlike bi-clustering models, which assign each row or column to a single cluster based on a categorical hidden feature, our binary feature model reflects the prior belief that items and attributes can be associated with more than one latent cluster at a time. We provide simple learning and inference rules for this new model and show how to extend it to an infinite model in which the number of features is not a priori fixed but is allowed to grow with the size of the data.
Cite
Text
Meeds et al. "Modeling Dyadic Data with Binary Latent Factors." Neural Information Processing Systems, 2006.Markdown
[Meeds et al. "Modeling Dyadic Data with Binary Latent Factors." Neural Information Processing Systems, 2006.](https://mlanthology.org/neurips/2006/meeds2006neurips-modeling/)BibTeX
@inproceedings{meeds2006neurips-modeling,
title = {{Modeling Dyadic Data with Binary Latent Factors}},
author = {Meeds, Edward and Ghahramani, Zoubin and Neal, Radford M. and Roweis, Sam T.},
booktitle = {Neural Information Processing Systems},
year = {2006},
pages = {977-984},
url = {https://mlanthology.org/neurips/2006/meeds2006neurips-modeling/}
}