| Literature DB >> 26705505 |
Chi Wang1, Xueqing Liu2, Yanglei Song2, Jiawei Han2.
Abstract
Automatic construction of user-desired topical hierarchies over large volumes of text data is a highly desirable but challenging task. This study proposes to give users freedom to construct topical hierarchies via interactive operations such as expanding a branch and merging several branches. Existing hierarchical topic modeling techniques are inadequate for this purpose because (1) they cannot consistently preserve the topics when the hierarchy structure is modified; and (2) the slow inference prevents swift response to user requests. In this study, we propose a novel method, called STROD, that allows efficient and consistent modification of topic hierarchies, based on a recursive generative model and a scalable tensor decomposition inference algorithm with theoretical performance guarantee. Empirical evaluation shows that STROD reduces the runtime of construction by several orders of magnitude, while generating consistent and quality hierarchies.Entities:
Keywords: Interactive Data Exploration; Ontology Learning; Tensor Decomposition; Topic Modeling
Year: 2015 PMID: 26705505 PMCID: PMC4688012 DOI: 10.1145/2783258.2783288
Source DB: PubMed Journal: KDD ISSN: 2154-817X