Personalized Ranking in eCommerce Search

We address the problem of personalization in the context of eCommerce search. Specifically, we develop personalization ranking features that use in-session context to augment a generic ranker optimized for conversion and relevance. We use a combination of latent features learned from item co-clicks...

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Hauptverfasser: Aslanyan, Grigor, Mandal, Aritra, Kumar, Prathyusha Senthil, Jaiswal, Amit, Kannadasan, Manojkumar Rangasamy
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creator Aslanyan, Grigor
Mandal, Aritra
Kumar, Prathyusha Senthil
Jaiswal, Amit
Kannadasan, Manojkumar Rangasamy
description We address the problem of personalization in the context of eCommerce search. Specifically, we develop personalization ranking features that use in-session context to augment a generic ranker optimized for conversion and relevance. We use a combination of latent features learned from item co-clicks in historic sessions and content-based features that use item title and price. Personalization in search has been discussed extensively in the existing literature. The novelty of our work is combining and comparing content-based and content-agnostic features and showing that they complement each other to result in a significant improvement of the ranker. Moreover, our technique does not require an explicit re-ranking step, does not rely on learning user profiles from long term search behavior, and does not involve complex modeling of query-item-user features. Our approach captures item co-click propensity using lightweight item embeddings. We experimentally show that our technique significantly outperforms a generic ranker in terms of Mean Reciprocal Rank (MRR). We also provide anecdotal evidence for the semantic similarity captured by the item embeddings on the eBay search engine.
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Computer Science - Information Retrieval
Computer Science - Learning
title Personalized Ranking in eCommerce Search
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