多阶段推荐系统的神经重排序

Weiwen Liu, Jiarui Qin, Ruiming Tang, Bo Chen
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引用次数: 1

摘要

重新排序是多阶段推荐系统的关键环节之一,多阶段推荐系统通过建立跨项目交互模型,对输入排序列表进行重新排序。由于深度学习的重大进展,最近的重新排序方法已经演变成深度神经架构。因此,神经重新排序已经成为一个热门话题,许多改进的算法已经在工业应用中得到了应用,并取得了巨大的商业成功。本教程的目的是探索神经重新排序的一些最新工作,将它们整合到更广泛的图景中,并为未来的研究提供更全面的解决方案。特别是,我们根据目标和训练信号提供了当前方法的分类。我们对这些方法进行定性和定量的检查和比较,并确定一些开放的挑战和未来的前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural Re-ranking for Multi-stage Recommender Systems
Re-ranking is one of the most critical stages for multi-stage recommender systems (MRS), which re-orders the input ranking lists by modeling the cross-item interaction. Recent re-ranking methods have evolved into deep neural architectures due to the significant advances in deep learning. Neural re-ranking, therefore, has become a trending topic and many of the improved algorithms have demonstrated their use in industrial applications, enjoying great commercial success. The purpose of this tutorial is to explore some of the recent work on neural re-ranking, integrating them into a broader picture and paving ways for more comprehensive solutions for future research. In particular, we provide a taxonomy of current methods according to the objectives and training signals. We examine and compare these methods qualitatively and quantitatively, and identify some open challenges and future prospects.
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