MatTrip: Multi-functional Attention-based Neural Network for Semantic Travel Route Recommendation

Chenxiao Yang, Jiale Zhang, Xiaofeng Gao, Guihai Chen
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引用次数: 1

Abstract

Travel route recommendation aims to recommend a sequence of point of interests (POIs) for visitors based on their personal interests. Previous studies utilize user interest features and POI spatial information to provide travel route recommendation service. However, most of them fail to consider the implicit information in user traveling patterns, which is the key to improve recommendation quality. Additionally, few deep learning based travel route recommendation systems provide comprehensive trip planning functionalities, which is critical to improve the user experience. To alleviate these two problems, we propose a multi-functional attention-based neural network for route recommendation (named MatTrip). We first introduce an encoder-decoder structure with a novel dual bi-directional LSTM encoder as the sequence generation model to learn other users' traveling records and generates a semantic travel route based on user preference and geographical features of start/end POI. Next, multiple user-specific functionalities are supported in MatTrip by grid beam search. The functionalities include weather dependency, POI opening hours, restricted sequence length, mandatory POIs, and dynamic route revision. In addition, MatTrip adopts an online learning approach to learn from user deviation behaviors to improve recommendation performance. Experiments on two real-world datasets show that our model achieves a 20.98% improvement in performance, compared with state-of-arts.
MatTrip:基于注意的多功能神经网络语义路线推荐
旅游路线推荐的目的是根据游客的个人兴趣为其推荐一系列的兴趣点。以往的研究利用用户兴趣特征和POI空间信息提供旅游路线推荐服务。然而,大多数推荐都没有考虑到用户旅行模式中的隐含信息,而隐含信息是提高推荐质量的关键。此外,很少有基于深度学习的旅行路线推荐系统提供全面的旅行计划功能,这对改善用户体验至关重要。为了解决这两个问题,我们提出了一种基于注意力的多功能神经网络(MatTrip)。首先,我们引入了一种基于新型双双向LSTM编码器的编码器-解码器结构作为序列生成模型来学习其他用户的旅行记录,并基于用户偏好和起点/终点地点的地理特征生成语义旅行路线。其次,在MatTrip中通过网格束搜索支持多个特定于用户的功能。功能包括天气依赖性、POI开放时间、限制序列长度、强制POI和动态路线修订。此外,MatTrip采用在线学习的方式,从用户偏差行为中学习,提高推荐性能。在两个真实数据集上的实验表明,我们的模型与目前的模型相比,性能提高了20.98%。
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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