Common Pitfalls in Training and Evaluating Recommender Systems

Hung-Hsuan Chen, Chu-An Chung, Hsin-Chien Huang, Wen Tsui
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引用次数: 20

Abstract

This paper formally presents four common pitfalls in training and evaluating recommendation algorithms for information systems. Specifically, we show that it could be problematic to separate the server logs into training and test data for model generation and model evaluation if the training and the test data are selected improperly. In addition, we show that click through rate { a common metric to measure and compare the performance of different recommendation algorithms -- may not be a good measurement of profitability { the income a recommendation module brings to a website. Moreover, we demonstrate that evaluating recommendation revenue may not be a straightforward task as it first looks. Unfortunately, these pitfalls appeared in many previous studies on recommender systems and information systems. We explicitly explain these problems and propose methods to address them. We conducted experiments to support our claims. Finally, we review previous papers and competitions that may suffer from these problems.
培训和评估推荐系统的常见缺陷
本文正式提出了信息系统推荐算法训练和评估中的四个常见陷阱。具体来说,我们表明,如果训练和测试数据选择不当,将服务器日志分离为模型生成和模型评估的训练和测试数据可能会出现问题。此外,我们还表明,点击率(衡量和比较不同推荐算法性能的常用指标)可能不是衡量盈利能力(推荐模块给网站带来的收入)的良好指标。此外,我们证明了评估推荐收入可能不是一项简单的任务,因为它最初看起来。不幸的是,这些缺陷出现在许多先前的推荐系统和信息系统的研究中。我们明确地解释了这些问题,并提出了解决这些问题的方法。我们进行了实验来支持我们的主张。最后,我们回顾了以前可能存在这些问题的论文和比赛。
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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