PRECTR-V2:Unified Relevance-CTR Framework with Cross-User Preference Mining, Exposure Bias Correction, and LLM-Distilled Encoder Optimization
Shuzhi Cao, Rong Chen, Ailong He, Shuguang Han, Jufeng Chen

TL;DR
PRECTR-V2 enhances search relevance and CTR prediction by addressing data sparsity, bias, and model alignment issues through global preference mining, negative sampling, and LLM-based encoder distillation.
Contribution
It introduces a unified framework with novel methods for cold-start relevance modeling, exposure bias correction, and an LLM-distilled encoder for improved relevance-CTR integration.
Findings
Improved relevance modeling for low-activity users.
Effective exposure bias correction via negative sampling.
Enhanced model adaptation with LLM-distilled lightweight encoder.
Abstract
In search systems, effectively coordinating the two core objectives of search relevance matching and click-through rate (CTR) prediction is crucial for discovering users' interests and enhancing platform revenue. In our prior work PRECTR, we proposed a unified framework to integrate these two subtasks,thereby eliminating their inconsistency and leading to mutual benefit.However, our previous work still faces three main challenges. First, low-active users and new users have limited search behavioral data, making it difficult to achieve effective personalized relevance preference modeling. Second, training data for ranking models predominantly come from high-relevance exposures, creating a distribution mismatch with the broader candidate space in coarse-ranking, leading to generalization bias. Third, due to the latency constraint, the original model employs an Emb+MLP architecture with a…
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Taxonomy
TopicsInformation Retrieval and Search Behavior · Recommender Systems and Techniques · Advanced Image and Video Retrieval Techniques
