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  • 1
    Online Resource
    Online Resource
    San Rafael, California : Morgan & Claypool Publishers
    UID:
    gbv_886015669
    Format: 1 Online-Ressource (ix, 79 Seiten) , Illustrationen
    ISBN: 1627059180 , 9781627059183
    Series Statement: Synthesis lectures on data mining and knowledge discovery #13
    Content: A lot of digital ink has been spilled on "big data" over the past few years. Most of this surge owes its origin to the various types of unstructured data in the wild, among which the proliferation of text-heavy data is particularly overwhelming, attributed to the daily use of web documents, business reviews, news, social posts, etc., by so many people worldwide. A core challenge presents itself: How can one efficiently and effectively turn massive, unstructured text into structured representation so as to further lay the foundation for many other downstream text mining applications? In this book, we investigated one promising paradigm for representing unstructured text, that is, through automatically identifying high-quality phrases from innumerable documents. In contrast to a list of frequent n-grams without proper filtering, users are often more interested in results based on variable-length phrases with certain semantics such as scientific concepts, organizations, slogans, and so on. We propose new principles and powerful methodologies to achieve this goal, from the scenario where a user can provide meaningful guidance to a fully automated setting through distant learning. This book also introduces applications enabled by the mined phrases and points out some promising research directions
    Content: 1. Introduction -- 1.1 Motivation -- 1.2 What is phrase mining? -- 1.3 Outline of the book --
    Content: 2. Quality phrase mining with user guidance -- 2.1 Overview -- 2.2 Phrasal segmentation -- 2.3 Supervised phrase mining framework -- 2.3.1 Frequent phrase detection -- 2.3.2 Phrase quality estimation -- 2.3.3 Rectification through phrasal segmentation -- 2.3.4 Feedback as segmentation features -- 2.3.5 Complexity analysis -- 2.4 Experimental study -- 2.4.1 Quantitative evaluation and results -- 2.4.2 Model selection -- 2.4.3 Efficiency study -- 2.4.4 Case study -- 2.5 Summary --
    Content: 3. Automated quality phrase mining -- 3.1 Overview -- 3.2 Automated phrase mining framework -- 3.2.1 Phrase label generation -- 3.2.2 Phrase quality estimation -- 3.2.3 POS-guided phrasal segmentation -- 3.2.4 Phrase quality re-estimation -- 3.2.5 Complexity analysis -- 3.3 Experimental study -- 3.3.1 Experimental settings -- 3.3.2 Quantitative evaluation and results -- 3.3.3 Distant training exploration -- 3.3.4 POS-guided phrasal segmentation -- 3.3.5 Efficiency study -- 3.3.6 Case study --
    Content: 4. Phrase mining applications -- 4.1 Latent keyphrase inference -- 4.2 Topic exploration for document collection -- 4.3 Knowledge base construction -- 4.4 Research frontier -- Bibliography -- Authors' biographies
    Note: Includes bibliographical references (pages 73-78)
    Additional Edition: ISBN 9781627058988
    Additional Edition: Print version ISBN 9781627058988
    Language: English
    Library Location Call Number Volume/Issue/Year Availability
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