Abstract
With a rapid growth in the global population, the modern world is undergoing a rapid expansion of residential areas, especially in urban centres. This continuously demands for increased general services and basic amenities, which are required according to the kind of population associated with the places. The advent of location-based online social networks (LBSNs) has made it much easier to collect voluminous data about users in different locations or spatial regions. The problem of mining location types from the LBSN data is largely unexplored. In this paper, we propose a pattern mining approach, using the geo-social-temporal data collected from LBSNs, to infer types of different locations. The proposed method first mines frequent co-located users and user components from an LBSN and then performs a temporal pattern analysis to finally categorize the locations. Extensive experiments are conducted on two real datasets that demonstrate the efficacy of the proposed method in terms of mean reciprocal rank (MRR), visualisations, and insights. The resulting inference mechanism would be very useful in several application domains including urban planning, billboard placement, tour planning, and geo-social event planning.
Highlights
The modern world is going through an expansion in both urban and rural areas
We study the problem of inferring location types from location-based social networks (LBSNs) and invent a step-by-step geo-socialtemporal pattern mining approach as the inference mechanism
In this paper, we proposed a geo-social-temporal mining approach to infer location types from location based social networks data
Summary
While the rural areas are growing at a relatively slower pace, there is a rapid growth of our cities, horizontally as well as vertically This is continuously and consistently raising the demands for general services and basic amenities. With the development of wireless communication technologies and ubiquitous GPS-equipped mobile devices, the online social networking (OSN) sites rapidly took a new form, called location-based social networks (LBSNs). These social networks allow the registered users to share their location along with the performed activity, referred as ‘‘check-in’’ (e.g., visiting Taj Mahal, eating at a local restaurant), and discuss on them as part of their online social interactions. LBSNs have been quite successful in attracting a large
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