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An Enhanced Approach towards Tourism Recommendation System with Hybrid Filtering and Association

机译:具有混合过滤和关联的旅游推荐系统的增强方法

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摘要

In the tourism recommendation system, the number of users and items is very large. But traditional recommendation system uses partial information for identifying similar characteristics of users. Collaborative filtering is the primary approach of any recommendation system. Content Filtering is used to study the behavior of the users. Content Filtering and Collaborative Filtering together refers as hybrid filtering. It provides a recommendation which is easy to understand. It is based on similarities of user opinions like rating or likes and dislikes. So the recommendation provided by only collaborative and content filtering cannot be considered as quality recommendation. Recommendation after association rule mining is having high support and confidence level. So that it will be considered as strong recommendation. The hybridization of both collaborative filtering with content filtering and association rule mining can produce strong and quality recommendation even when sufficient data are not available. This paper combines recommendation for tourism application by using a hybridization of traditional collaborative filtering technique and data mining techniques.
机译:在旅游推荐系统中,用户和项目的数量非常大。但是传统的推荐系统使用部分信息来识别用户的相似特征。协作过滤是任何推荐系统的主要方法。内容过滤用于研究用户的行为。内容过滤和协作过滤一起称为混合过滤。它提供了易于理解的建议。它基于用户意见的相似性,例如评分或喜欢和不喜欢。因此,仅协作过滤和内容过滤提供的推荐不能视为质量推荐。关联规则挖掘后的建议具有较高的支持度和置信度。因此,它将被视为强力推荐。即使没有足够的数据,协作过滤与内容过滤和关联规则挖掘的混合也可以产生强大而高质量的推荐。本文结合了传统协同过滤技术和数据挖掘技术的结合,为旅游业的应用提出了建议。

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