In this paper, we introduce an original approach that exploits time stamped geo-tagged messages posted by Twitter users through their smartphones when they travel to trace their trips. An original clustering technique is presented, that groups similar trips to define tours and analyze the popular tours in relation with local geo-located territorial resources. This objective is very relevant for emerging big data analytics tools. Tools developed to reconstruct and mine the most popular tours of tourists within a region are described which identify, track and group tourists' trips through a knowledge-based approach exploiting time stamped geo-tagged information associated with Twitter messages sent by tourists while traveling. The collected tracks are managed and shared on the Web in compliance with OGC standards so as to be able to analyze the characteristic of localities visited by the tourists by spatial overlaying with other open data, such as maps of Points Of Interest (POIs) of distinct type. The result is an novel Interoperable framework, based on web-service technology. Keywords-Big Data Analytics; Knowledge Disco
Clustering Geo-tagged Tweets for Advanced Big Data Analytics
Bordogna;Gloria;
2016
Abstract
In this paper, we introduce an original approach that exploits time stamped geo-tagged messages posted by Twitter users through their smartphones when they travel to trace their trips. An original clustering technique is presented, that groups similar trips to define tours and analyze the popular tours in relation with local geo-located territorial resources. This objective is very relevant for emerging big data analytics tools. Tools developed to reconstruct and mine the most popular tours of tourists within a region are described which identify, track and group tourists' trips through a knowledge-based approach exploiting time stamped geo-tagged information associated with Twitter messages sent by tourists while traveling. The collected tracks are managed and shared on the Web in compliance with OGC standards so as to be able to analyze the characteristic of localities visited by the tourists by spatial overlaying with other open data, such as maps of Points Of Interest (POIs) of distinct type. The result is an novel Interoperable framework, based on web-service technology. Keywords-Big Data Analytics; Knowledge DiscoI documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


