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arxiv 2104.02061 v1 pith:Q77XYGYL submitted 2021-04-02 cs.IR cs.LG

Query2Prod2Vec Grounded Word Embeddings for eCommerce

classification cs.IR cs.LG
keywords modelproductquery2prod2vecembeddingslexicalsearchspaceaccurate
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present Query2Prod2Vec, a model that grounds lexical representations for product search in product embeddings: in our model, meaning is a mapping between words and a latent space of products in a digital shop. We leverage shopping sessions to learn the underlying space and use merchandising annotations to build lexical analogies for evaluation: our experiments show that our model is more accurate than known techniques from the NLP and IR literature. Finally, we stress the importance of data efficiency for product search outside of retail giants, and highlight how Query2Prod2Vec fits with practical constraints faced by most practitioners.

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