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Efficient User Profiling Based Intelligent Travel Recommender System for Individual and Group of Users

机译:基于用户的智能旅行推荐系统提供了高效的用户智能旅行推荐系统

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摘要

In recent times, Recommender Systems (RSs) are gaining immense popularity with the wider adaptation to deal information overload problem in various application domains such as e-commerce, entertainment, e-tourism, etc. RSs are developed as information filtering systems to make personalized predictions based on the priorities and preferences for the suggestion of relevant items to users. Travel Recommender Systems (TRSs) generates a list of best matching locations or Point of Interests (POIs) to the users based their preferences. Predicting interesting locations for the generation recommendations from Location Based Social Network (LBSN) is crucial due to variety, size, and dimensions of data. The growing demand for effective TRS extends the scope for the development of user behavior based recommendation approach. In the literature, several research works are conducted to generate location recommendations by focusing on location attributes and failed to incorporate user behavior. As a significant solution to the existing limitations of TRSs, we propose Activity and Behavior induced Personalized Recommender System (ABiPRS) as a hybrid approach to predict persuasive POI recommendations. The proposed ABiPRS is designed to support travelling user by providing effective list of POIs as recommendations. As an extension, we have designed a new group recommendation model to meet the requirements of the group of users by exploiting relationships between them. Further, we have developed a novel hybridization approach for aggregating recommendations from multiple RSs to improve the effectiveness of recommendations. The proposed approaches are evaluated on the real-time large-scale datasets of Yelp and TripAdvisor. The experimental results depict the improved performance of the proposed hybrid recommendation approach over standalone and baseline hybrid approaches.
机译:近来,推荐系统(RSS)在各种应用领域的诸如电子商务,娱乐,电子旅游等各种应用领域的信息过载问题中获得了巨大的受欢迎程度.RSS是作为信息过滤系统制作个性化的信息基于对用户建议相关项目的优先级和偏好的预测。旅行推荐系统(TRS)以基于用户的偏好生成最佳匹配位置或兴趣点(POI)的列表。由于数据的种类,大小和维度,预测来自基于位置的社交网络(LBSN)的生成建议的有趣位置是至关重要的。对有效TRS的日益增长的需求扩展了基于用户行为的发展的范围。在文献中,通过专注于位置属性并未结合用户行为来进行几项研究工作以生成位置建议。作为对TRS的现有限制的重要解决方案,我们提出了活动和行为诱导个性化推荐系统(ABIPR)作为一种混合方法来预测说服性POI建议。拟议的ABIPRS旨在通过提供有效的POI列表作为推荐来支持旅行用户。作为一个扩展,我们设计了一个新的组推荐模型,以通过利用它们之间的关系来满足一组用户的要求。此外,我们开发了一种新的杂交方法,用于从多个RSS汇总建议以提高建议的有效性。拟议的方法是在Yelp和TripAdvisor的实时大规模数据集上进行评估。实验结果描绘了拟议的混合推荐方法对独立和基线混合方法的提高性能。

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