增强推荐系统的反事实评估和学习

Nicolò Felicioni
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引用次数: 3

摘要

评价推荐系统是一个非常重要的任务,也是一个非常活跃的研究领域。虽然在线评估是最可靠的评估过程,但如果不是不可行的,它也可能过于昂贵而无法执行。因此,研究者和实践者都采用线下评价。离线评估的效率和可扩展性要高得多,但传统方法存在高偏差。这个问题导致了反事实技术的日益普及。这些技术用于推荐系统的评估和学习,并减少离线评估中的偏见。虽然反事实方法具有坚实的统计基础,但其在推荐系统中的应用仍处于初步研究阶段。在本文中,我们确定了应用于推荐系统的反事实技术的一些局限性,并提出了克服它们的可能方法。
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Enhancing Counterfactual Evaluation and Learning for Recommendation Systems
Evaluating recommendation systems is a task of utmost importance and a very active research field. While online evaluation is the most reliable evaluation procedure, it may also be too expensive to perform, if not unfeasible. Therefore, researchers and practitioners resort to offline evaluation. Offline evaluation is much more efficient and scalable, but traditional approaches suffer from high bias. This issue led to the increased popularity of counterfactual techniques. These techniques are used for evaluation and learning in recommender systems and reduce the bias in offline evaluation. While counterfactual approaches have a solid statistical basis, their application to recommendation systems is still in a preliminary research phase. In this paper, we identify some limitations of counterfactual techniques applied to recommender systems, and we propose possible ways to overcome them.
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