LANet: An Enriched Knowledgebase for Location-aware Activity Recommendation System
Sahisnu Mazumder

TL;DR
This paper introduces LANet, a comprehensive knowledgebase derived from location-aware reviews, enhancing location-specific activity recommendations by ensuring relevancy, non-redundancy, and richness of information.
Contribution
The paper proposes LANet, a novel location-specific activity network built from reviews, with new methods for location similarity detection and activity uniqueness measurement.
Findings
LANet achieves high information richness and accuracy.
The knowledgebase is comparable to human perception.
Experimental results validate the effectiveness of LANet.
Abstract
Accumulation of large amount of location-specific reviews on web due to escalating popularity of Location-based Social Networking platforms like Yelp, Foursquare, Brightkite etc. in recent years, has created the opportunity to discover location-specific activities and develop myriads of location-aware activity recommendation applications. The performance and popularity of such recommendation applications greatly depend on the richness and accuracy of the back-end knowledgebase, which intern is regulated by information relevancy and redundancy issues. Existing work on activity discovery have not made any attempt to ensure relevancy and non-redundancy of discovered knowledge (i.e., location-specific activities). Moreover, majority of these work have utilized body-worn sensors, images or human GPS traces and discovered generalized activities that do not convey any location-specific…
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Taxonomy
TopicsContext-Aware Activity Recognition Systems · Data Management and Algorithms · Human Mobility and Location-Based Analysis
