Leveraging User Behavior History for Personalized Email Search
Keping Bi, Pavel Metrikov, Chunyuan Li, Byungki Byun

TL;DR
This paper introduces a novel context-aware neural ranking model for personalized email search that leverages users' search history features, improving ranking effectiveness while respecting privacy and enhancing generalization.
Contribution
It proposes a new neural ranking approach using search history features as context, and demonstrates improved personalization and performance over existing models.
Findings
CNRM significantly outperforms baseline neural models.
Query context vectors improve LambdaMart ranking results.
Clustering query vectors effectively characterizes user preferences.
Abstract
An effective email search engine can facilitate users' search tasks and improve their communication efficiency. Users could have varied preferences on various ranking signals of an email, such as relevance and recency based on their tasks at hand and even their jobs. Thus a uniform matching pattern is not optimal for all users. Instead, an effective email ranker should conduct personalized ranking by taking users' characteristics into account. Existing studies have explored user characteristics from various angles to make email search results personalized. However, little attention has been given to users' search history for characterizing users. Although users' historical behaviors have been shown to be beneficial as context in Web search, their effect in email search has not been studied and remains unknown. Given these observations, we propose to leverage user search history as query…
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