Abstract:
This paper adopts item-based collaborative filtering to predict the interests of an active tourist by collecting preferences or taste information from a number of other t...Show MoreMetadata
Abstract:
This paper adopts item-based collaborative filtering to predict the interests of an active tourist by collecting preferences or taste information from a number of other tourists. Our proposed mechanism is able to predict a set recommended tourism places of elicited rating places (e.g., ratings of 1 through 5 stars) for the active tourist pre-traveling places. Furthermore, giving restriction of traveling factors, such as budge and time, the recommendation system will refine the exact set of tourism places by applying genetic algorithm mechanism. Finally, the system is based on minimum cost to schedule traveling path from a set of selected places by the using genetic algorithm approach. Our proposed hybrid recommendation algorithm focuses on the refining efficiency and provides multi-functional tourism information.
Date of Conference: 11-13 September 2013
Date Added to IEEE Xplore: 19 December 2013
Electronic ISBN:978-0-7695-5111-1
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- IEEE Keywords
- Index Terms
- Recommender Systems ,
- Hybrid Recommendation ,
- Hybrid Recommender System ,
- Tourist Attractions ,
- Collaborative Filtering ,
- Set Of Places ,
- Recommendation Algorithm ,
- Genetic Algorithm Approach ,
- Social Networks ,
- R Core Team ,
- Mobile App ,
- Pedestrian ,
- Social Networking Sites ,
- Similarity Matrix ,
- Travel Agencies ,
- User Profile ,
- Rate Matrix ,
- Recommendations For Users
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Recommender Systems ,
- Hybrid Recommendation ,
- Hybrid Recommender System ,
- Tourist Attractions ,
- Collaborative Filtering ,
- Set Of Places ,
- Recommendation Algorithm ,
- Genetic Algorithm Approach ,
- Social Networks ,
- R Core Team ,
- Mobile App ,
- Pedestrian ,
- Social Networking Sites ,
- Similarity Matrix ,
- Travel Agencies ,
- User Profile ,
- Rate Matrix ,
- Recommendations For Users
- Author Keywords