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arxiv:2411.16034

VisualLens: Personalization through Visual History

Published on Nov 25
· Submitted by deqing on Nov 26
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Abstract

We hypothesize that a user's visual history with images reflecting their daily life, offers valuable insights into their interests and preferences, and can be leveraged for personalization. Among the many challenges to achieve this goal, the foremost is the diversity and noises in the visual history, containing images not necessarily related to a recommendation task, not necessarily reflecting the user's interest, or even not necessarily preference-relevant. Existing recommendation systems either rely on task-specific user interaction logs, such as online shopping history for shopping recommendations, or focus on text signals. We propose a novel approach, VisualLens, that extracts, filters, and refines image representations, and leverages these signals for personalization. We created two new benchmarks with task-agnostic visual histories, and show that our method improves over state-of-the-art recommendations by 5-10% on Hit@3, and improves over GPT-4o by 2-5%. Our approach paves the way for personalized recommendations in scenarios where traditional methods fail.

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Meta researchers introduce VisualLens, a novel approach that leverages users' diverse and noisy visual histories for personalized recommendations, outperforming state-of-the-art methods by 5-10% on Hit@3 and GPT-4o by 2-5%, using task-agnostic visual benchmarks.

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