不变协作过滤的改进研究

Luyang Yu, Shanglin Han, Muheng He, Zekai Yang, Xinyue Hu
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摘要

电子商务的迅猛发展导致了在线平台上产品的过度饱和。为了帮助用户更高效、更准确地找到自己喜欢的产品,许多电子商务平台都推出了个性化推荐系统。协作过滤是最成功的技术之一,而它的改进版--不变协作过滤(Inv-CF)--旨在通过捕捉在流行度分布变化时保持不变的无偏偏好,解决传统协作过滤模型的流行度偏差问题。然而,Inv-CF 模型仍存在一些问题,如忽略了注意力的影响,导致在分析隐式反馈表示时性能不佳。本文探讨了 Inv-CF 模型的增强问题,这是一个旨在减轻流行度偏差影响的推荐系统模型。我们定义了实验框架,并在雅虎 R3 和 COAT 这两个基准数据集上评估了改进后的 Inv-CF 的性能。结果表明,与原始 Inv-CF 相比,性能有了显著提高,凸显了所提改进的有效性。总之,本文提出了对 Inv-CF 模型损失函数的改进,解决了协同过滤中与流行度偏差相关的问题。
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Improvement research of Invariant Collaborative Filtering
The rapid expansion of e-commerce has led to product oversaturation on online platforms. To help users find their preferred products in a more efficient and accurate way, many e-commerce platforms have introduced personalized recommendation systems. Collaborative filtering is one of the most successful techniques, while its improvement, Invariant Collaborative Filtering (Inv-CF), aims to address the popularity bias problem of traditional CF models by capturing unbiased preferences that remain constant despite the change in popularity distributions. However, Inv-CF model still experiences some problems such as ignoring the influence of attention, causing performance less effective when analyzing the representation of implicit feedback. This paper explores the enhancement of Inv-CF, a recommendation system model designed to mitigate the influence of popularity bias. We defined the experimental framework and evaluated the performance of the improved Inv-CF on two benchmark datasets, Yahoo! R3 and COAT. And the results demonstrate significant performance gains over the original Inv-CF, highlighting the effectiveness of the proposed enhancements. In conclusion, this paper presents improvements to the Inv-CF model's loss functions, addressing issues related to popularity bias in collaborative filtering.
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