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A Deep Recurrent Collaborative Filtering Framework for Venue Recommendation

机译:一个深入的经常性协作过滤框架,用于场地推荐

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摘要

Venue recommendation is an important application for Location-Based Social Networks (LBSNs), such as Yelp, and has been extensively studied in recent years. Matrix Factorisation (MF) is a popular Collaborative Filtering (CF) technique that can suggest relevant venues to users based on an assumption that similar users are likely to visit similar venues. In recent years, deep neural networks have been successfully applied to tasks such as speech recognition, computer vision and natural language processing. Building upon this momentum, various approaches for recommendation have been proposed in the literature to enhance the effectiveness of MF-based approaches by exploiting neural network models such as: word embeddings to incorporate auxiliary information (e.g. textual content of comments); and Recurrent Neural Networks (RNN) to capture sequential properties of observed user-venue interactions. However, such approaches rely on the traditional inner product of the latent factors of users and venues to capture the concept of collaborative filtering, which may not be sufficient to capture the complex structure of user-venue interactions. In this paper, we propose a Deep Recurrent Collaborative Filtering framework (DRCF) with a pairwise ranking function that aims to capture user-venue interactions in a CF manner from sequences of observed feedback by leveraging Multi-Layer Perception and Recurrent Neural Network architectures. Our proposed framework consists of two components: namely Generalised Recurrent Matrix Factorisation (GRMF) and Multi-Level Recurrent Perceptron (MLRP) models. In particular, GRMF and MLRP learn to model complex structures of user-venue interactions using element-wise and dot products as well as the concatenation of latent factors. In addition, we propose a novel sequence-based negative sampling approach that accounts for the sequential properties of observed feedback and geographical location of venues to enhance the quality of venue suggestions, as well as alleviate the cold-start users problem. Experiments on three large checkin and rating datasets show the effectiveness of our proposed framework by outperforming various state-of-the-art approaches.
机译:场所推荐是基于位置的社交网络(LBSN)(例如Yelp)的重要应用,并且近年来已得到广泛研究。矩阵分解(MF)是一种流行的协作过滤(CF)技术,它可以基于类似用户可能会访问类似场所的假设,向用户建议相关场所。近年来,深度神经网络已成功应用于语音识别,计算机视觉和自然语言处理等任务。在这种势头的基础上,文献中提出了各种推荐方法,以通过利用神经网络模型来增强基于MF的方法的有效性,例如:嵌入辅助信息(例如注释的文本内容)的词嵌入;和递归神经网络(RNN)来捕获观察到的用户与场地交互的顺序属性。但是,此类方法依赖于用户和场所的潜在因素的传统内部产品来捕获协作过滤的概念,这可能不足以捕获用户场地交互的复杂结构。在本文中,我们提出了一种具有成对排名功能的深度递归协作过滤框架(DRCF),旨在利用多层感知和递归神经网络架构以CF方式从观察到的反馈序列中捕获用户与场地之间的互动。我们提出的框架包括两个部分:即通用递归矩阵分解(GRMF)模型和多级递归感知器(MLRP)模型。特别是,GRMF和MLRP学会使用元素和点积以及潜在因素的串联来建模用户-场地交互的复杂结构。此外,我们提出了一种新颖的基于序列的负采样方法,该方法考虑了观察到的反馈和场所地理位置的顺序属性,以提高场所建议的质量,并缓解冷启动用户问题。在三个大型签入和评级数据集上进行的实验通过优于各种最新方法,证明了我们提出的框架的有效性。

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