Scalable Models for Computing Hierarchies in Information Networks

January 04, 2016 Β· Declared Dead Β· πŸ› Knowledge and Information Systems

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Authors Baoxu Shi, Tim Weninger arXiv ID 1601.00626 Category cs.AI: Artificial Intelligence Cross-listed cs.DL, cs.LG Citations 2 Venue Knowledge and Information Systems Last Checked 4 months ago
Abstract
Information hierarchies are organizational structures that often used to organize and present large and complex information as well as provide a mechanism for effective human navigation. Fortunately, many statistical and computational models exist that automatically generate hierarchies; however, the existing approaches do not consider linkages in information {\em networks} that are increasingly common in real-world scenarios. Current approaches also tend to present topics as an abstract probably distribution over words, etc rather than as tangible nodes from the original network. Furthermore, the statistical techniques present in many previous works are not yet capable of processing data at Web-scale. In this paper we present the Hierarchical Document Topic Model (HDTM), which uses a distributed vertex-programming process to calculate a nonparametric Bayesian generative model. Experiments on three medium size data sets and the entire Wikipedia dataset show that HDTM can infer accurate hierarchies even over large information networks.
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