Sequence Separation-Based Modeling of Denoised Implicit Feedback Behavior

Shibo Ji, Bo Yang
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Abstract

This paper analyzes Click-through rate prediction (CTR), a critical component within recommender systems aiming to forecast the personalized probability of user-item click events. Recent advancements have shown that incorporating user behavior sequences into CTR prediction models can yield significant performance improvements. However, CTR prediction models primarily rely on implicit positive feedback, such as clicks, from user-item interactions while overlooking the negative feedback, such as unclicks. Moreover, the implicit feedback obtained from users often contains noisy data, which hampers the accuracy of user interest modeling. As a solution, we propose a novel framework for estimating click-through rates, leveraging the modeling of Denoised Implicit feedback Behavior (DIB). DIB integrates the complete implicit feedback behavior of users into the click-through rate estimation task and aims to mitigate the influence of noise in implicit feedback on the model’s accuracy. Through extensive experiments conducted on real-world, largescale datasets, we demonstrate that DIB outperforms state-of-the-art models by a substantial margin, resulting in an approximate 5% improvement in Area Under the Curve (AUC).
基于序列分离的去噪隐式反馈行为建模
本文分析了点击率预测(CTR),这是推荐系统中的一个关键组成部分,旨在预测用户项目点击事件的个性化概率。最近的进展表明,将用户行为序列纳入点击率预测模型可以产生显着的性能改进。然而,点击率预测模型主要依赖于隐含的积极反馈,如点击,来自用户与物品的交互,而忽略了消极反馈,如未点击。此外,用户的隐式反馈往往含有噪声数据,影响了用户兴趣建模的准确性。作为解决方案,我们提出了一个新的框架来估计点击率,利用去噪隐式反馈行为(DIB)的建模。DIB将用户的完整隐式反馈行为集成到点击率估计任务中,旨在减轻隐式反馈中的噪声对模型精度的影响。通过在真实世界的大规模数据集上进行的大量实验,我们证明DIB在很大程度上优于最先进的模型,从而使曲线下面积(AUC)提高了约5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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