r-Instance Learning for Missing People Tweets Identification
This addresses the challenge of timely data analysis for missing persons identification using social media, but appears incremental as it builds on multi-instance learning and homophily theory.
The paper tackles the problem of identifying missing people from heterogeneous social media data by proposing a novel r-instance learning model, but no concrete results or numbers are provided in the abstract.
The number of missing people (i.e., people who get lost) greatly increases in recent years. It is a serious worldwide problem, and finding the missing people consumes a large amount of social resources. In tracking and finding these missing people, timely data gathering and analysis actually play an important role. With the development of social media, information about missing people can get propagated through the web very quickly, which provides a promising way to solve the problem. The information in online social media is usually of heterogeneous categories, involving both complex social interactions and textual data of diverse structures. Effective fusion of these different types of information for addressing the missing people identification problem can be a great challenge. Motivated by the multi-instance learning problem and existing social science theory of "homophily", in this paper, we propose a novel r-instance (RI) learning model.