Using Exploration to Alleviate Closed Loop Effects in Recommender Systems

A. H. Jadidinejad, C. Macdonald, I. Ounis
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引用次数: 10

Abstract

Recommendation systems are often trained and evaluated based on users' interactions obtained through the use of an existing, already deployed, recommendation system. Hence the deployed recommendation systems will recommend some items and not others, and items will have varying levels of exposure to users. As a result, the collected feedback dataset (including most public datasets) can be skewed towards the particular items favored by the deployed model. In this manner, training new recommender systems from interaction data obtained from a previous model creates a feedback loop, i.e. a closed loop feedback. In this paper, we first introduce the closed loop feedback and then investigate the effect of closed loop feedback in both the training and offline evaluation of recommendation models, in contrast to a further exploration of the users' preferences (obtained from the randomly presented items). To achieve this, we make use of open loop datasets, where randomly selected items are presented to users for feedback. Our experiments using an open loop Yahoo! dataset reveal that there is a strong correlation between the deployed model and a new model that is trained based on the closed loop feedback. Moreover, with the aid of exploration we can decrease the effect of closed loop feedback and obtain new and better generalizable models.
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利用探索缓解推荐系统中的闭环效应
推荐系统通常是根据用户通过使用现有的、已经部署的推荐系统获得的交互来训练和评估的。因此,部署的推荐系统将推荐一些项目而不推荐其他项目,这些项目对用户的曝光程度也会有所不同。因此,收集到的反馈数据集(包括大多数公共数据集)可能会偏向于部署模型所青睐的特定项目。通过这种方式,从先前模型获得的交互数据中训练新的推荐系统创建了一个反馈回路,即闭环反馈。在本文中,我们首先引入了闭环反馈,然后研究了闭环反馈在推荐模型的训练和离线评估中的效果,而不是进一步探索用户的偏好(从随机呈现的项目中获得)。为了实现这一点,我们使用开环数据集,其中随机选择的项目呈现给用户反馈。我们的实验使用开环Yahoo!数据集显示,部署的模型与基于闭环反馈训练的新模型之间存在很强的相关性。此外,借助探索可以减少闭环反馈的影响,得到新的更好的可泛化模型。
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