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arXiv:2404.09091

Semantic In-Domain Product Identification for Search Queries

Published on Apr 13, 2024
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Abstract

A novel product classifier trained from user behavior data improves click-through rates, reduces null rates, and increases product visibility.

AI-generated summary

Accurate explicit and implicit product identification in search queries is critical for enhancing user experiences, especially at a company like Adobe which has over 50 products and covers queries across hundreds of tools. In this work, we present a novel approach to training a product classifier from user behavioral data. Our semantic model led to >25% relative improvement in CTR (click through rate) across the deployed surfaces; a >50% decrease in null rate; a 2x increase in the app cards surfaced, which helps drive product visibility.

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