Mixed Membership Matrix Factorization
Abstract
Discrete mixed membership modeling and continuous latent factor modeling (also known as matrix factorization) are two popular, complementary approaches to dyadic data analysis. In this work, we develop a fully Bayesian framework for integrating the two approaches into unified Mixed Membership Matrix Factorization (M3F) models. We introduce two M3F models, derive Gibbs sampling inference procedures, and validate our methods on the Each Movie, Movie Lens, and Netflix Prize collaborative filtering datasets. We find that, even when fitting fewer parameters, the M3F models outperform state-of-the-art latent factor approaches on all benchmarks, yielding the greatest gains in accuracy on sparsely-rated, high-variance items.
Cite
Text
Mackey et al. "Mixed Membership Matrix Factorization." International Conference on Machine Learning, 2010. doi:10.1201/b17520-22Markdown
[Mackey et al. "Mixed Membership Matrix Factorization." International Conference on Machine Learning, 2010.](https://mlanthology.org/icml/2010/mackey2010icml-mixed/) doi:10.1201/b17520-22BibTeX
@inproceedings{mackey2010icml-mixed,
title = {{Mixed Membership Matrix Factorization}},
author = {Mackey, Lester W. and Weiss, David J. and Jordan, Michael I.},
booktitle = {International Conference on Machine Learning},
year = {2010},
pages = {711-718},
doi = {10.1201/b17520-22},
url = {https://mlanthology.org/icml/2010/mackey2010icml-mixed/}
}