Knowledge discovery from multi-sourced data / Chen Ye, Hongzhi Wang, Guojun Dai.
2022
QA76.9.D343
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Title
Knowledge discovery from multi-sourced data / Chen Ye, Hongzhi Wang, Guojun Dai.
Author
ISBN
9789811918797 (electronic bk.)
9811918791 (electronic bk.)
9789811918780
9811918783
9811918791 (electronic bk.)
9789811918780
9811918783
Publication Details
Singapore : Springer, 2022.
Language
English
Description
1 online resource (91 pages)
Item Number
10.1007/978-981-19-1879-7 doi
Call Number
QA76.9.D343
Dewey Decimal Classification
006.3/12
Summary
This book addresses several knowledge discovery problems on multi-sourced data where the theories, techniques, and methods in data cleaning, data mining, and natural language processing are synthetically used. This book mainly focuses on three data models: the multi-sourced isomorphic data, the multi-sourced heterogeneous data, and the text data. On the basis of three data models, this book studies the knowledge discovery problems including truth discovery and fact discovery on multi-sourced data from four important properties: relevance, inconsistency, sparseness, and heterogeneity, which is useful for specialists as well as graduate students. Data, even describing the same object or event, can come from a variety of sources such as crowd workers and social media users. However, noisy pieces of data or information are unavoidable. Facing the daunting scale of data, it is unrealistic to expect humans to "label" or tell which data source is more reliable. Hence, it is crucial to identify trustworthy information from multiple noisy information sources, referring to the task of knowledge discovery. At present, the knowledge discovery research for multi-sourced data mainly faces two challenges. On the structural level, it is essential to consider the different characteristics of data composition and application scenarios and define the knowledge discovery problem on different occasions. On the algorithm level, the knowledge discovery task needs to consider different levels of information conflicts and design efficient algorithms to mine more valuable information using multiple clues. Existing knowledge discovery methods have defects on both the structural level and the algorithm level, making the knowledge discovery problem far from totally solved
Bibliography, etc. Note
Includes bibliographical references.
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Source of Description
Online resource; title from PDF title page (SpringerLink, viewed June 27, 2022).
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SpringerBriefs in computer science.
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Table of Contents
1. Introduction
2. Functional-dependency-based truth discovery for isomorphic data
3. Denial-constraint-based truth discovery for isomorphic data
4. Pattern discovery for heterogeneous data
5. Deep fact discovery for text data.
2. Functional-dependency-based truth discovery for isomorphic data
3. Denial-constraint-based truth discovery for isomorphic data
4. Pattern discovery for heterogeneous data
5. Deep fact discovery for text data.