Utilizing Data And Knowledge Mining For Probabilistic Knowledge Bases PDF Download

Are you looking for read ebook online? Search for your book and save it on your Kindle device, PC, phones or tablets. Download Utilizing Data And Knowledge Mining For Probabilistic Knowledge Bases PDF full book. Access full book title Utilizing Data And Knowledge Mining For Probabilistic Knowledge Bases.

Utilizing Data and Knowledge Mining for Probabilistic Knowledge Bases

Utilizing Data and Knowledge Mining for Probabilistic Knowledge Bases
Author: Daniel Joseph Stein
Publisher:
Total Pages: 68
Release: 1996-12-01
Genre: Knowledge acquisition (Expert systems)
ISBN:

Download Utilizing Data and Knowledge Mining for Probabilistic Knowledge Bases Book in PDF, ePub and Kindle

Problems can arise whenever inferencing is attempted on a knowledge base that is incomplete. Our work shows that data mining techniques can be applied to fill in incomplete areas in Bayesian Knowledge Bases (BKBs), as well as in other knowledge-based systems utilizing probabilistic representations. The problem of inconsistency in BKBs has been addressed in previous work, where reinforcement learning techniques from neural networks were applied. However, the issue of automatically solving incompleteness in BKBs has yet to be addressed. Presently, incompleteness in BKBs is repaired through the application of traditional knowledge acquisition techniques. We show how association rules can be extracted from databases in order to replace excluded information and express missing relationships. A methodology for incorporating those results while maintaining a consistent knowledge base is also included.


Knowledge Integration Methods for Probabilistic Knowledge-based Systems

Knowledge Integration Methods for Probabilistic Knowledge-based Systems
Author: Van Tham Nguyen
Publisher: CRC Press
Total Pages: 176
Release: 2022-12-30
Genre: Business & Economics
ISBN: 1000809994

Download Knowledge Integration Methods for Probabilistic Knowledge-based Systems Book in PDF, ePub and Kindle

Knowledge-based systems and solving knowledge integrating problems have seen a great surge of research activity in recent years. Knowledge Integration Methods provides a wide snapshot of building knowledge-based systems, inconsistency measures, methods for handling consistency, and methods for integrating knowledge bases. The book also provides the mathematical background to solving problems of restoring consistency and integrating probabilistic knowledge bases in the integrating process. The research results presented in the book can be applied in decision support systems, semantic web systems, multimedia information retrieval systems, medical imaging systems, cooperative information systems, and more. This text will be useful for computer science graduates and PhD students, in addition to researchers and readers working on knowledge management and ontology interpretation.


Representing Probabilistic Knowledge in Relational Databases

Representing Probabilistic Knowledge in Relational Databases
Author: International Business Machines Corporation. Research Division
Publisher:
Total Pages: 13
Release: 1990
Genre: Expert systems (Computer science)
ISBN:

Download Representing Probabilistic Knowledge in Relational Databases Book in PDF, ePub and Kindle

Abstract: "As knowledge bases are enlarged to support more complex classes of problems, expert systems will demand efficient knowledge-management techniques -- techniques that are already available in database systems. In this paper, we present the design of a database schema suitable for [sic] knowledge base that employ [sic] a decision-network representation. Using this schema, we describe the process of translating existing knowledge bases into relational format. Although exploratory in nature, our work indicates that the application of database techniques offer numerous advantages over an ad-hoc scheme for managing probabilistic knowledge bases."


Data Mining Methods for Knowledge Discovery

Data Mining Methods for Knowledge Discovery
Author: Krzysztof J. Cios
Publisher: Springer Science & Business Media
Total Pages: 508
Release: 2012-12-06
Genre: Computers
ISBN: 1461555892

Download Data Mining Methods for Knowledge Discovery Book in PDF, ePub and Kindle

Data Mining Methods for Knowledge Discovery provides an introduction to the data mining methods that are frequently used in the process of knowledge discovery. This book first elaborates on the fundamentals of each of the data mining methods: rough sets, Bayesian analysis, fuzzy sets, genetic algorithms, machine learning, neural networks, and preprocessing techniques. The book then goes on to thoroughly discuss these methods in the setting of the overall process of knowledge discovery. Numerous illustrative examples and experimental findings are also included. Each chapter comes with an extensive bibliography. Data Mining Methods for Knowledge Discovery is intended for senior undergraduate and graduate students, as well as a broad audience of professionals in computer and information sciences, medical informatics, and business information systems.


Data Mining: Know It All

Data Mining: Know It All
Author: Soumen Chakrabarti
Publisher: Morgan Kaufmann
Total Pages: 477
Release: 2008-10-31
Genre: Computers
ISBN: 0080877885

Download Data Mining: Know It All Book in PDF, ePub and Kindle

This book brings all of the elements of data mining together in a single volume, saving the reader the time and expense of making multiple purchases. It consolidates both introductory and advanced topics, thereby covering the gamut of data mining and machine learning tactics ? from data integration and pre-processing, to fundamental algorithms, to optimization techniques and web mining methodology. The proposed book expertly combines the finest data mining material from the Morgan Kaufmann portfolio. Individual chapters are derived from a select group of MK books authored by the best and brightest in the field. These chapters are combined into one comprehensive volume in a way that allows it to be used as a reference work for those interested in new and developing aspects of data mining. This book represents a quick and efficient way to unite valuable content from leading data mining experts, thereby creating a definitive, one-stop-shopping opportunity for customers to receive the information they would otherwise need to round up from separate sources. Chapters contributed by various recognized experts in the field let the reader remain up to date and fully informed from multiple viewpoints. Presents multiple methods of analysis and algorithmic problem-solving techniques, enhancing the reader’s technical expertise and ability to implement practical solutions. Coverage of both theory and practice brings all of the elements of data mining together in a single volume, saving the reader the time and expense of making multiple purchases.


Statistical Data Analytics

Statistical Data Analytics
Author: Walter W. Piegorsch
Publisher: John Wiley & Sons
Total Pages: 82
Release: 2015-08-21
Genre: Mathematics
ISBN: 1119030668

Download Statistical Data Analytics Book in PDF, ePub and Kindle

Statistical Data Analytics Statistical Data Analytics Foundations for Data Mining, Informatics, and Knowledge Discovery A comprehensive introduction to statistical methods for data mining and knowledge discovery Applications of data mining and ‘big data’ increasingly take center stage in our modern, knowledge-driven society, supported by advances in computing power, automated data acquisition, social media development and interactive, linkable internet software. This book presents a coherent, technical introduction to modern statistical learning and analytics, starting from the core foundations of statistics and probability. It includes an overview of probability and statistical distributions, basics of data manipulation and visualization, and the central components of standard statistical inferences. The majority of the text extends beyond these introductory topics, however, to supervised learning in linear regression, generalized linear models, and classification analytics. Finally, unsupervised learning via dimension reduction, cluster analysis, and market basket analysis are introduced. Extensive examples using actual data (with sample R programming code) are provided, illustrating diverse informatic sources in genomics, biomedicine, ecological remote sensing, astronomy, socioeconomics, marketing, advertising and finance, among many others. Statistical Data Analytics: Focuses on methods critically used in data mining and statistical informatics. Coherently describes the methods at an introductory level, with extensions to selected intermediate and advanced techniques. Provides informative, technical details for the highlighted methods. Employs the open-source R language as the computational vehicle – along with its burgeoning collection of online packages – to illustrate many of the analyses contained in the book. Concludes each chapter with a range of interesting and challenging homework exercises using actual data from a variety of informatic application areas. This book will appeal as a classroom or training text to intermediate and advanced undergraduates, and to beginning graduate students, with sufficient background in calculus and matrix algebra. It will also serve as a source-book on the foundations of statistical informatics and data analytics to practitioners who regularly apply statistical learning to their modern data.


Epistemological Databases for Probabilistic Knowledge Base Construction

Epistemological Databases for Probabilistic Knowledge Base Construction
Author: Michael Louis Wick
Publisher:
Total Pages: 173
Release: 2015
Genre:
ISBN:

Download Epistemological Databases for Probabilistic Knowledge Base Construction Book in PDF, ePub and Kindle

Knowledge bases (KB) facilitate real world decision making by providing access to structured relational information that enables pattern discovery and semantic queries. Although there is a large amount of data available for populating a KB; the data must first be gathered and assembled. Traditionally, this integration is performed automatically by storing the output of an information extraction pipeline directly into a database as if this prediction were the ``truth.'' However, the resulting KB is often not reliable because (a) errors accumulate in the integration pipeline, and (b) they persist in the KB even after new information arrives that could rectify these errors. We envision a paradigm-shift in KB construction for addressing these concerns that we term an ``epistemological'' database. In epistemological databases the existence and properties of entities are not directly input into the DB; they are instead determined by inference on raw evidence input into the DB. This shift in thinking is important because it allows inference to revisit previous conclusions and retroactively correct errors as new evidence arrives. Evidence is abundant and in steady supply from web spiders, semantic web ontologies, external databases, and even groups of enthusiastic human editors. As this evidence continues to accumulate and inference continues to run in the background, the quality of the knowledge base continues to improve. In this dissertation we develop the machine learning components necessary to achieve epistemological knowledge base construction at scale with key contributions in modeling, inference and learning.


Knowledge-intensive Subgroup Mining

Knowledge-intensive Subgroup Mining
Author: Martin Atzmüller
Publisher: IOS Press
Total Pages: 232
Release: 2007
Genre: Data mining
ISBN: 9783898383073

Download Knowledge-intensive Subgroup Mining Book in PDF, ePub and Kindle


Knowledge Integration Methods for Probabilistic Knowledge-based Systems

Knowledge Integration Methods for Probabilistic Knowledge-based Systems
Author: Van Tham Nguyen
Publisher: CRC Press
Total Pages: 203
Release: 2022-12-30
Genre: Business & Economics
ISBN: 100080996X

Download Knowledge Integration Methods for Probabilistic Knowledge-based Systems Book in PDF, ePub and Kindle

Knowledge-based systems and solving knowledge integrating problems have seen a great surge of research activity in recent years. Knowledge Integration Methods provides a wide snapshot of building knowledge-based systems, inconsistency measures, methods for handling consistency, and methods for integrating knowledge bases. The book also provides the mathematical background to solving problems of restoring consistency and integrating probabilistic knowledge bases in the integrating process. The research results presented in the book can be applied in decision support systems, semantic web systems, multimedia information retrieval systems, medical imaging systems, cooperative information systems, and more. This text will be useful for computer science graduates and PhD students, in addition to researchers and readers working on knowledge management and ontology interpretation.