Spatio-temporal proximity and social distance: a confirmation framework for social reporting

Social reporting is based on the idea that the members of a location-based social network observe real-world events and publish reports about their observations. Application scenarios include crisis management, bird watching or even some sorts of mobile games. A major issue in social reporting is the quality of the reports. We propose an approach to the quality problem that is based on the reciprocal confirmation of reports by other reports. This contrasts with approaches that require users to verify reports, that is, to explicitly evaluate their veridicality. We propose to use spatio-termporal proximity as a first criterion for confirmation and social distance as a second one. By combining these two measures we construct a graph containing the reports as nodes connected by confirmation edges that can adopt positive as well as negative values. This graph builds the basis for the computation of confirmation values for individual reports by different aggregation measures. By applying our approach to two use cases, we show the importance of a weighted combination, since the meaningfulness of the constituent measures varies between different contexts.

[1]  Rajeev Motwani,et al.  The PageRank Citation Ranking : Bringing Order to the Web , 1999, WWW 1999.

[2]  Paul Resnick,et al.  The influence limiter: provably manipulation-resistant recommender systems , 2007, RecSys '07.

[3]  Dong-Po Deng,et al.  Conceptualization of place via spatial clustering and co-occurrence analysis , 2009, LBSN '09.

[4]  Leysia Palen,et al.  Twitter adoption and use in mass convergence and emergency events , 2009 .

[5]  Sebastian Matyas,et al.  Playful Geospatial Data Acquisition by Location-based Gaming Communities , 2007, Int. J. Virtual Real..

[6]  Mor Naaman,et al.  Towards automatic extraction of event and place semantics from flickr tags , 2007, SIGIR.

[7]  Bertrand De Longueville,et al.  "OMG, from here, I can see the flames!": a use case of mining location based social networks to acquire spatio-temporal data on forest fires , 2009, LBSN '09.

[8]  A. Tversky,et al.  Judgment under Uncertainty: Heuristics and Biases , 1974, Science.

[9]  Axel Bruns,et al.  PREPARING FOR AN AGE OF PARTICIPATORY NEWS , 2007 .

[10]  Leysia Palen,et al.  Microblogging during two natural hazards events: what twitter may contribute to situational awareness , 2010, CHI.

[11]  Georgia Koutrika,et al.  Combating spam in tagging systems , 2007, AIRWeb '07.

[12]  Mohamed Bishr,et al.  A trust and reputation model for filtering and classifying knowledge about urban growth , 2008 .

[13]  M. Goodchild Citizens as sensors: the world of volunteered geography , 2007 .