Two-Way Grouping by One-Way Topic Models (2009)
AUTHORS:
Savia Eerika
,
Puolamäki Kai,
Kaski Samuel
BOOKTITLE:
Proceedings of IDA 2009, The 8th International Symposium on Intelligent Data Analysis
SERIES:
Lecture Notes in Computer Science
PAGES:
178--189
URL:
http://www.cis.hut.fi/projects/mi/papers/ida09.pdf
@inproceedings{ Savia09ida, editor = "et. al., N. Adams", author = {Savia, Eerika and Puolam{\"a}ki, Kai and Kaski, Samuel}, publisher = "Springer Berlin / Heidelberg", doi = "10.1007/978-3-642-03915-7", title = "Two-Way Grouping by One-Way Topic Models", url = "http://www.cis.hut.fi/projects/mi/papers/ida09.pdf", series = "Lecture Notes in Computer Science", booktitle = "Proceedings of IDA 2009, The 8th International Symposium on Intelligent Data Analysis", abstract = "We tackle the problem of new users or documents in collaborative filtering. Generalization over users by grouping them into user groups is beneficial when a rating is to be predicted for a relatively new document having only few observed ratings. The same applies for documents in the case of new users. We have shown earlier that if there are both new users and new documents, two-way generalization becomes necessary, and introduced a probabilistic Two-Way Model for the task. The task of finding a two-way grouping is a non-trivial combinatorial problem, which makes it computationally difficult. We suggest approximating the Two-Way Model with two URP models; one that groups users and one that groups documents. Their two predictions are combined using a product of experts model. This combination of two one-way models achieves even better prediction performance than the original Two-Way Model.", flags = "AIRC copy", year = "2009", pages = "178--189" }