Wan et al., 2018 - Google Patents
A hybrid ensemble learning method for tourist route recommendations based on geo-tagged social networksWan et al., 2018
View PDF- Document ID
- 10953962715735593741
- Author
- Wan L
- Hong Y
- Huang Z
- Peng X
- Li R
- Publication year
- Publication venue
- International Journal of Geographical Information Science
External Links
Snippet
Geo-tagged travel photos on social networks often contain location data such as points of interest (POIs), and also users' travel preferences. In this paper, we propose a hybrid ensemble learning method, BAyes-Knn, that predicts personalized tourist routes for travelers …
- 238000007636 ensemble learning method 0 title abstract description 19
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- G06F17/30867—Retrieval from the Internet, e.g. browsers by querying, e.g. search engines or meta-search engines, crawling techniques, push systems with filtering and personalisation
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