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arxiv: 1507.08439 · v1 · pith:C2GGTFJHnew · submitted 2015-07-30 · 💻 cs.IR

Metadata Embeddings for User and Item Cold-start Recommendations

classification 💻 cs.IR
keywords modelcold-startcollaborativedataembeddingsfactorisationinteractionitem
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I present a hybrid matrix factorisation model representing users and items as linear combinations of their content features' latent factors. The model outperforms both collaborative and content-based models in cold-start or sparse interaction data scenarios (using both user and item metadata), and performs at least as well as a pure collaborative matrix factorisation model where interaction data is abundant. Additionally, feature embeddings produced by the model encode semantic information in a way reminiscent of word embedding approaches, making them useful for a range of related tasks such as tag recommendations.

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    cs.IR 2019-06 unverdicted novelty 4.0

    Integrates contextual constraints into embedding-based recommendation models by jointly learning constraint representations with user and item embeddings, reporting improved predictive performance on matrix factorizat...