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Evaluation of Partitioning Clustering Algorithms for Processing Social Media Data in Tourism Domain

机译:旅游领域社交媒体数据分区聚类算法的评价

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Recommender systems are evolving as an essential part of every industry with no exception to travel and tourism segment. Considering the exponential increase in social media usage and huge volume of data being generated through this channel, it can be considered as a vital source of input data for modern recommender systems. This in turn resulted in the need of efficient and effective mechanisms for contextualized information retrieval. Traditional recommender systems adopt collaborative filtering techniques to deal with social context. However they turn out to be computational intensive and thereby less scalable with internet and social media as input channel. A possible solution is to adopt clustering techniques to limit the data to be considered for recommendation process. In tourism context, based on social media interactions like reviews, forums, blogs, feedbacks, etc. travelers can be clustered to form different interest groups. This experimental analysis aims at comparing key clustering algorithms with the aim of finding an optimal option that can be adopted in tourism domain by applying social media datasets from travel and tourism context.
机译:推荐系统正在发展成为每个行业的重要组成部分,旅行和旅游领域也不例外。考虑到社交媒体使用量的指数级增长和通过此渠道生成的大量数据,可以将其视为现代推荐系统输入数据的重要来源。反过来,这导致需要用于上下文信息检索的有效机制。传统的推荐系统采用协作过滤技术来处理社交环境。然而,事实证明它们是计算密集型的,因此以互联网和社交媒体作为输入通道的可伸缩性较差。一种可能的解决方案是采用聚类技术来限制推荐过程要考虑的数据。在旅游环境中,可以基于评论,论坛,博客,反馈等社交媒体互动,将旅行者聚集在一起,形成不同的兴趣群体。本实验分析旨在比较关键聚类算法,以期通过应用来自旅行和旅游环境的社交媒体数据集来找到可在旅游领域采用的最佳选择。

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