Towards the Evaluation of Recommender Systems with Impressions

Fernando Benjamín Pérez Maurera, Maurizio Ferrari Dacrema, P. Cremonesi
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引用次数: 6

Abstract

In Recommender Systems, impressions are a relatively new type of information that records all products previously shown to the users. They are also a complex source of information, combining the effects of the recommender system that generated them, search results, or business rules that may select specific products for recommendations. The fact that the user interacted with a specific item given a list of recommended ones may benefit from a richer interaction signal, in which some items the user did not interact with may be considered negative interactions. This work presents a preliminary evaluation of recommendation models with impressions. First, impressions are characterized by describing their assumptions, signals, and challenges. Then, an evaluation study with impressions is described. The study’s goal is two-fold: to measure the effects of impressions data on properly-tuned recommendation models using current open-source datasets and disentangle the signals within impressions data. Preliminary results suggest that impressions data and signals are nuanced, complex, and effective at improving the recommendation quality of recommenders. This work publishes the source code, datasets, and scripts used in the evaluation to promote reproducibility in the domain.
基于印象的推荐系统评价研究
在推荐系统中,印象是一种相对较新的信息类型,它记录了之前向用户展示的所有产品。它们也是一个复杂的信息源,结合了生成它们的推荐系统、搜索结果或可能选择特定产品进行推荐的业务规则的影响。事实上,用户与给定的推荐列表中的特定项目进行交互可能受益于更丰富的交互信号,其中一些用户未与之交互的项目可能被认为是负面交互。这项工作提出了具有印象的推荐模型的初步评估。首先,印象的特点是描述其假设、信号和挑战。然后,描述了一个带有印象的评价研究。该研究的目标有两个:使用当前的开源数据集来测量印象数据对适当调整的推荐模型的影响,并解开印象数据中的信号。初步结果表明,印象数据和信号是微妙的、复杂的,并且在提高推荐质量方面是有效的。这项工作发布了评估中使用的源代码、数据集和脚本,以促进领域的可再现性。
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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