Modelling Contextual Information in Session-Aware Recommender Systems with Neural Networks

Bartlomiej Twardowski
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引用次数: 108

Abstract

Preparing recommendations for unknown users or such that correctly respond to the short-term needs of a particular user is one of the fundamental problems for e-commerce. Most of the common Recommender Systems assume that user identification must be explicit. In this paper a Session-Aware Recommender System approach is presented where no straightforward user information is required. The recommendation process is based only on user activity within a single session, defined as a sequence of events. This information is incorporated in the recommendation process by explicit context modeling with factorization methods and a novel approach with Recurrent Neural Network (RNN). Compared to the session modeling approach, RNN directly models the dependency of user observed sequential behavior throughout its recurrent structure. The evaluation discusses the results based on sessions from real-life system with ephemeral items (identified only by the set of their attributes) for the task of top-n best recommendations.
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会话感知推荐系统中上下文信息的神经网络建模
为未知用户准备推荐或正确响应特定用户的短期需求是电子商务的基本问题之一。大多数常见的推荐系统都假定用户标识必须是明确的。本文提出了一种会话感知推荐系统方法,该方法不需要直接的用户信息。推荐过程仅基于单个会话中的用户活动,定义为一系列事件。通过因式分解方法和递归神经网络(RNN)的显式上下文建模,将这些信息整合到推荐过程中。与会话建模方法相比,RNN在其循环结构中直接对用户观察到的顺序行为的依赖性进行建模。评估讨论了基于现实生活系统会话的结果,这些会话具有短暂的项目(仅通过其属性集识别),用于top-n最佳推荐任务。
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