More about HKUST
Query Estimation Structures in Geo-Social Networks
MPhil Thesis Defence Title: "Query Estimation Structures in Geo-Social Networks" By Mr. Christos KOUTRAS Abstract Over the past few years the amount of information being processed by data management systems has grown exponentially, due to various technological advancements. Thus, substantial work has been focused on constructing novel summarization structures that make it possible to handle large datasets with the compromise of estimation errors . Furthermore, the rapid spread of GPS-enabled mobile devices and social networking have recently led to the growth of Geo-Social Networks (GeoSNs). These have enabled novel location-based social interactions through GeoSN queries, which extract useful information combining both the social relationships and the current location of the users. In this work, we first present numerous summarization structures, focusing on the cases of Histograms and Sketches. We highlight the most popular such structures and clarify their applicability in estimating specific query types. In the second part of the thesis, we introduce the notion of approximately answering queries on GeoSN and propose novel hybrid structures that facilitate their size estimation. Finally, we examine and evaluate the accuracy and efficiency of our proposed structures by conducting an extensive set of experiments over real-world datasets. Date: Monday, 25 June 2018 Time: 10:00am - 12:00noon Venue: Room 5560 Lifts 27/28 Committee Members: Prof. Dimitris Papadias (Supervisor) Dr. Raymond Wong (Chairperson) Dr. Ke Yi **** ALL are Welcome ****