Deep and Broad Learning on Content-Aware POI Recommendation

Fengjiao Wang, Yongzhi Qu, Lei Zheng, Chun-Ta Lu, Philip S. Yu
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引用次数: 22

Abstract

POI recommendation has attracted lots of research attentions recently. There are several key factors that need to be modeled towards effective POI recommendation - POI properties, user preference and sequential momentum of check- ins. The challenge lies in how to synergistically learn multi-source heterogeneous data. Previous work tries to model multi-source information in a flat manner, using either embedding based methods or sequential prediction models in a cross-related space, which cannot generate mutually reinforce results. In this paper, a deep and broad learning approach based on a Deep Context- aware POI Recommendation (DCPR) model was proposed to structurally learn POI and user characteristics. The proposed DCPR model includes three collaborative layers, a CNN layer for POI feature mining, an RNN layer for sequential dependency and user preference modeling, and an interactive layer based on matrix factorization to jointly optimize the overall model. Experiments over three data sets demonstrate that DCPR model achieves significant improvement over state-of-the-art POI recommendation algorithms and other deep recommendation models.
基于内容感知的POI推荐的深度和广泛学习
POI推荐是近年来研究热点之一。要实现有效的POI推荐,有几个关键因素需要建模——POI属性、用户偏好和登记的顺序动量。挑战在于如何协同学习多源异构数据。以前的工作试图以一种扁平的方式对多源信息进行建模,要么使用基于嵌入的方法,要么使用交叉相关空间中的顺序预测模型,这些模型不能产生相互增强的结果。本文提出了一种基于深度上下文感知POI推荐(deep Context- aware POI Recommendation, DCPR)模型的深度学习方法,用于结构化地学习POI和用户特征。提出的DCPR模型包括三个协作层,一个用于POI特征挖掘的CNN层,一个用于顺序依赖和用户偏好建模的RNN层,以及一个基于矩阵分解的交互层,用于共同优化整个模型。在三个数据集上的实验表明,DCPR模型比最先进的POI推荐算法和其他深度推荐模型有了显著的改进。
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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