Feature-Level Attentive ICF for Recommendation

Zhiyong Cheng, Fan Liu, Shenghan Mei, Yangyang Guo, Lei Zhu, Liqiang Nie
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引用次数: 18

Abstract

Item-based collaborative filtering (ICF) enjoys the advantages of high recommendation accuracy and ease in online penalization and thus is favored by the industrial recommender systems. ICF recommends items to a target user based on their similarities to the previously interacted items of the user. Great progresses have been achieved for ICF in recent years by applying advanced machine learning techniques (e.g., deep neural networks) to learn the item similarity from data. The early methods simply treat all the historical items equally and recently proposed methods attempt to distinguish the different importance of historical items when recommending a target item. Despite the progress, we argue that those ICF models neglect the diverse intents of users on adopting items (e.g., watching a movie because of the director, leading actors, or the visual effects). As a result, they fail to estimate the item similarity on a finer-grained level to predict the user’s preference to an item, resulting in sub-optimal recommendation. In this work, we propose a general feature-level attention method for ICF models. The key of our method is to distinguish the importance of different factors when computing the item similarity for a prediction. To demonstrate the effectiveness of our method, we design a light attention neural network to integrate both item-level and feature-level attention for neural ICF models. It is model-agnostic and easy-to-implement. We apply it to two baseline ICF models and evaluate its effectiveness on six public datasets. Extensive experiments show the feature-level attention enhanced models consistently outperform their counterparts, demonstrating the potential of differentiating user intents on the feature-level for ICF recommendation models.
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功能级细心的ICF推荐
基于项目的协同过滤(ICF)具有推荐准确率高、易于在线惩罚等优点,受到了行业推荐系统的青睐。ICF根据与用户之前交互过的物品的相似性向目标用户推荐物品。近年来,通过应用先进的机器学习技术(如深度神经网络)从数据中学习项目相似度,ICF取得了很大的进展。早期的方法简单地平等对待所有的历史项目,最近提出的方法在推荐目标项目时试图区分历史项目的不同重要性。尽管取得了进展,但我们认为这些ICF模型忽略了用户在采用项目时的不同意图(例如,因为导演、主演或视觉效果而观看电影)。因此,它们无法在更细粒度的级别上估计商品的相似度,从而预测用户对商品的偏好,从而导致次优推荐。在这项工作中,我们提出了一种通用的ICF模型特征级关注方法。该方法的关键是在计算预测项目相似度时区分不同因素的重要性。为了证明我们的方法的有效性,我们设计了一个轻注意力神经网络来集成神经ICF模型的项目级和特征级注意力。它与模型无关,并且易于实现。我们将其应用于两个基线ICF模型,并评估了其在六个公共数据集上的有效性。大量的实验表明,特征级注意力增强模型的表现始终优于其他模型,这证明了ICF推荐模型在特征级上区分用户意图的潜力。
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