Unbiased Learning to Rank with Biased Continuous Feedback

March 08, 2023 Β· Declared Dead Β· πŸ› International Conference on Information and Knowledge Management

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Authors Yi Ren, Hongyan Tang, Siwen Zhu arXiv ID 2303.04335 Category cs.IR: Information Retrieval Cross-listed cs.LG Citations 9 Venue International Conference on Information and Knowledge Management Last Checked 4 months ago
Abstract
It is a well-known challenge to learn an unbiased ranker with biased feedback. Unbiased learning-to-rank(LTR) algorithms, which are verified to model the relative relevance accurately based on noisy feedback, are appealing candidates and have already been applied in many applications with single categorical labels, such as user click signals. Nevertheless, the existing unbiased LTR methods cannot properly handle continuous feedback, which are essential for many industrial applications, such as content recommender systems. To provide personalized high-quality recommendation results, recommender systems need model both categorical and continuous biased feedback, such as click and dwell time. Accordingly, we design a novel unbiased LTR algorithm to tackle the challenges, which innovatively models position bias in the pairwise fashion and introduces the pairwise trust bias to separate the position bias, trust bias, and user relevance explicitly and can work for both continuous and categorical feedback. Experiment results on public benchmark datasets and internal live traffic of a large-scale recommender system at Tencent News show superior results for continuous labels and also competitive performance for categorical labels of the proposed method.
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