Tourism Recommendation System using complex network approaches

A. P. S. Alves, Lucas G. S. Félix, C. M. Barbosa, V. D. F. Vieira, C. R. Xavier
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Abstract

The amount of available data on the web has grown exponentially, mostly due to the emergence of the Collaborative Internet, in mid-2006, which turns the process of obtaining information into a hard task. This way, several computational techniques have been used in order to automate the exploitation and analysis of data, such as Text Mining techniques, Topic Modeling (TM), which establishes relationships between text documents and discussion topics through the present words, and Sentiment Analysis (SA), whose objective is to identify sentences' polarity; Complex Networks modeling, which seek to capture the dynamics of complex systems, present in social networks; and Recommendation Systems, which assist with decision making and whose operation resides in the suggestion of items that have not yet been evaluated by a user, such as traveling to a new place or trying another meal from a menu. The Tourism scenario is also included in the context of massive data generation and advances in techniques to deal with them. In this case, specialized travel platforms, like Tripadvisor, have a major role since they concentrate a large amount of data about users and their experience in Points-of-Interest (POI). Therefore, this work proposes a new approach to a predictive model for POI recommendation systems based on the construction of a Complex Network and the use of specific techniques for its structural analysis. The city chosen to validate these objectives was the city of Tiradentes, Minas Gerais, whose geographic proximity and tourism-oriented economy make it a good choice. The results obtained show that a predictive model based on Complex Networks does not overcome the error obtained by baseline algorithms, however, it brings a good ranking correlation between what was predicted and the real result, which makes it a good option for recommendation systems.
基于复杂网络方法的旅游推荐系统
网络上的可用数据量呈指数级增长,这主要是由于2006年中期协作互联网的出现,它将获取信息的过程变成了一项艰巨的任务。通过这种方式,已经使用了几种计算技术来自动化数据的开发和分析,例如文本挖掘技术,主题建模(TM),它通过当前单词建立文本文档和讨论主题之间的关系,以及情感分析(SA),其目的是识别句子的极性;复杂网络建模,旨在捕捉社会网络中存在的复杂系统的动态;推荐系统(Recommendation Systems),帮助用户做出决策,其运作方式是对用户尚未评估过的项目提出建议,比如去一个新地方旅行,或者尝试菜单上的另一道菜。旅游业情景也包括在大量数据产生和处理这些数据的技术进步的背景下。在这种情况下,像Tripadvisor这样的专业旅游平台发挥了重要作用,因为它们集中了大量关于用户和他们在兴趣点(POI)体验的数据。因此,这项工作提出了一种基于复杂网络构建和使用特定技术进行结构分析的POI推荐系统预测模型的新方法。米纳斯吉拉斯州的蒂拉滕斯市被选为验证这些目标的城市,其地理位置接近,以旅游为导向的经济使其成为一个不错的选择。结果表明,基于复杂网络的预测模型并没有克服基线算法的误差,但它在预测结果和实际结果之间带来了很好的排序相关性,这使其成为推荐系统的一个很好的选择。
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