A Correlation Maximization Approach for Cross Domain Co-Embeddings
Although modern recommendation systems can exploit the structure in users' item feedback, most are powerless in the face of new users who provide no structure for them to exploit. In this paper we introduce ImplicitCE, an algorithm for recommending items to new users during their sign-up flow....
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Zusammenfassung: | Although modern recommendation systems can exploit the structure in users'
item feedback, most are powerless in the face of new users who provide no
structure for them to exploit. In this paper we introduce ImplicitCE, an
algorithm for recommending items to new users during their sign-up flow.
ImplicitCE works by transforming users' implicit feedback towards auxiliary
domain items into an embedding in the target domain item embedding space.
ImplicitCE learns these embedding spaces and transformation function in an
end-to-end fashion and can co-embed users and items with any differentiable
similarity function. To train ImplicitCE we explore methods for maximizing the
correlations between model predictions and users' affinities and introduce
Sample Correlation Update, a novel and extremely simple training strategy.
Finally, we show that ImplicitCE trained with Sample Correlation Update
outperforms a variety of state of the art algorithms and loss functions on both
a large scale Twitter dataset and the DBLP dataset. |
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DOI: | 10.48550/arxiv.1809.03497 |