Personalized Travel Recommendation System Using an Ontology

Hansika Gunasekara, Thushari P. Silva
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引用次数: 1

Abstract

The rapid growth of the web and its applications has created immense importance for recommender systems. Recommender systems were designed to generate suggestions for items or services based on user interests with the applications to different domains. However, the integration of multiple data sources while resolving semantic ambiguity of entities involved in the integration has been overlooked in many recommender systems developed for travel recommendation. This research proposes an ontology-based travel recommender system to overcome such deficiencies in the current travel recommender systems. The developed ontology facilitates the integration of multi-model data for personalized travel recommendations. The similarity analysis of entities to be interconnected is performed by using a semantic data classification technique that integrates a hybrid filtering approach to classify similar entities, including tours and visitors. The proposed ontology-based approach for travel recommendation outperforms other methods and with higher accuracies.
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基于本体的个性化旅游推荐系统
网络及其应用程序的快速发展为推荐系统创造了巨大的重要性。推荐系统的目的是根据用户对不同领域的应用程序的兴趣来生成对商品或服务的建议。然而,在许多为旅游推荐而开发的推荐系统中,在解决集成中涉及的实体语义歧义的同时集成多个数据源的问题被忽视了。本研究提出了一种基于本体的旅游推荐系统,以克服当前旅游推荐系统的这些不足。开发的本体便于多模型数据的集成,实现个性化旅游推荐。通过使用语义数据分类技术对要互联的实体进行相似性分析,该技术集成了一种混合过滤方法来对相似实体(包括旅游和游客)进行分类。本文提出的基于本体的旅行推荐方法优于其他推荐方法,具有更高的准确率。
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