Improving incremental recommenders with online bagging
November 02, 2016 Β· Declared Dead Β· π STREAMEVOLV@ECML-PKDD
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Authors
JoΓ£o Vinagre, AlΓpio MΓ‘rio Jorge, JoΓ£o Gama
arXiv ID
1611.00558
Category
cs.IR: Information Retrieval
Citations
1
Venue
STREAMEVOLV@ECML-PKDD
Last Checked
4 months ago
Abstract
Online recommender systems often deal with continuous, potentially fast and unbounded flows of data. Ensemble methods for recommender systems have been used in the past in batch algorithms, however they have never been studied with incremental algorithms that learn from data streams. We evaluate online bagging with an incremental matrix factorization algorithm for top-N recommendation with positive-only -- binary -- ratings. Our results show that online bagging is able to improve accuracy up to 35% over the baseline, with small computational overhead.
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