Affiliation:
1. Shenzhen Tourism College of Jinan University
Abstract
When massive information brings people more channels to attain messages, there generates different types of new personalized recommendation systems. As the important sector for social development, tourism industry suffers the problem of information over-loading. In the construction of personalized recommender system mainly involves two problems: information acquisition and personalized recommender. This recommender system is able to form client’s databank after user’s login and assessment for various travel destination and products to support more accurate user’s information mining. The authors adopt improved hybrid recommender algorithm through combining collaborative filtering algorithm with content-based recommendation algorithm. The relationship of user and travel destination can be classified as the interested and disinterested. So it can predict the degree of new users’ enthusiasm towards different types of travel destination to realize personalized travel recommendation.
Publisher
Trans Tech Publications, Ltd.
Reference15 articles.
1. Liu J.G, Zhou T. and Wang B.L. Research Development on personalized recommendation. Journal of Progress in Natural Science, Vol.19, No.1 (2009), pp.1-15.
2. P. Resnick and H. R. Varian. Recommender systems. Communications of the ACM, 1997, Vol.40, No.3 (1997), pp.56-58.
3. Konston J. Group Lens: applying collaborative filtering to use net news. Communication of the ACM, Vol.40, No.3 (1997), pp.77-87.
4. Schafer, J. B, Konstan and J., Riedl J. Electronic Commerce Recommender Applications. Journal of Data Mining and Knowledge Discovery, Vol.15, No.1-2 (2001), pp.115-152.
5. David Camacho, Daniel Borrajo and Jose M. Molina. Intelligent Travel Planning: A Multi-Agent Planning System to Solve Web Problems in the e-Tourism Domain, Autonomous Agents and Multi-Agent Systems, Vol.4, No.4 (2001), pp.387-392.
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1 articles.
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