Representing Probabilistic Knowledge in Relational Databases

Representing Probabilistic Knowledge in Relational Databases
Title Representing Probabilistic Knowledge in Relational Databases PDF eBook
Author International Business Machines Corporation. Research Division
Publisher
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."

Probabilistic Databases

Probabilistic Databases
Title Probabilistic Databases PDF eBook
Author Dan Suciu
Publisher Morgan & Claypool Publishers
Pages 183
Release 2011
Genre Computers
ISBN 1608456803

Download Probabilistic Databases Book in PDF, Epub and Kindle

Probabilistic databases are databases where the value of some attributes or the presence of some records are uncertain and known only with some probability. Applications in many areas such as information extraction, RFID and scientific data management, data cleaning, data integration, and financial risk assessment produce large volumes of uncertain data, which are best modeled and processed by a probabilistic database. This book presents the state of the art in representation formalisms and query processing techniques for probabilistic data. It starts by discussing the basic principles for representing large probabilistic databases, by decomposing them into tuple-independent tables, block-independent-disjoint tables, or U-databases. Then it discusses two classes of techniques for query evaluation on probabilistic databases. In extensional query evaluation, the entire probabilistic inference can be pushed into the database engine and, therefore, processed as effectively as the evaluation of standard SQL queries. The relational queries that can be evaluated this way are called safe queries. In intensional query evaluation, the probabilistic inference is performed over a propositional formula called lineage expression: every relational query can be evaluated this way, but the data complexity dramatically depends on the query being evaluated, and can be #P-hard. The book also discusses some advanced topics in probabilistic data management such as top-k query processing, sequential probabilistic databases, indexing and materialized views, and Monte Carlo databases. Table of Contents: Overview / Data and Query Model / The Query Evaluation Problem / Extensional Query Evaluation / Intensional Query Evaluation / Advanced Techniques

Probabilistic Ranking Techniques in Relational Databases

Probabilistic Ranking Techniques in Relational Databases
Title Probabilistic Ranking Techniques in Relational Databases PDF eBook
Author Ihab Ilyas
Publisher Springer Nature
Pages 71
Release 2022-05-31
Genre Computers
ISBN 303101846X

Download Probabilistic Ranking Techniques in Relational Databases Book in PDF, Epub and Kindle

Ranking queries are widely used in data exploration, data analysis and decision making scenarios. While most of the currently proposed ranking techniques focus on deterministic data, several emerging applications involve data that are imprecise or uncertain. Ranking uncertain data raises new challenges in query semantics and processing, making conventional methods inapplicable. Furthermore, the interplay between ranking and uncertainty models introduces new dimensions for ordering query results that do not exist in the traditional settings. This lecture describes new formulations and processing techniques for ranking queries on uncertain data. The formulations are based on marriage of traditional ranking semantics with possible worlds semantics under widely-adopted uncertainty models. In particular, we focus on discussing the impact of tuple-level and attribute-level uncertainty on the semantics and processing techniques of ranking queries. Under the tuple-level uncertainty model, we describe new processing techniques leveraging the capabilities of relational database systems to recognize and handle data uncertainty in score-based ranking. Under the attribute-level uncertainty model, we describe new probabilistic ranking models and a set of query evaluation algorithms, including sampling-based techniques. We also discuss supporting rank join queries on uncertain data, and we show how to extend current rank join methods to handle uncertainty in scoring attributes. Table of Contents: Introduction / Uncertainty Models / Query Semantics / Methodologies / Uncertain Rank Join / Conclusion

Relational Data Mining

Relational Data Mining
Title Relational Data Mining PDF eBook
Author Saso Dzeroski
Publisher Springer Science & Business Media
Pages 422
Release 2001-08
Genre Business & Economics
ISBN 9783540422891

Download Relational Data Mining Book in PDF, Epub and Kindle

As the first book devoted to relational data mining, this coherently written multi-author monograph provides a thorough introduction and systematic overview of the area. The first part introduces the reader to the basics and principles of classical knowledge discovery in databases and inductive logic programming; subsequent chapters by leading experts assess the techniques in relational data mining in a principled and comprehensive way; finally, three chapters deal with advanced applications in various fields and refer the reader to resources for relational data mining. This book will become a valuable source of reference for R&D professionals active in relational data mining. Students as well as IT professionals and ambitioned practitioners interested in learning about relational data mining will appreciate the book as a useful text and gentle introduction to this exciting new field.

Probabilistic Ranking Techniques in Relational Databases

Probabilistic Ranking Techniques in Relational Databases
Title Probabilistic Ranking Techniques in Relational Databases PDF eBook
Author Ihab F. Ilyas
Publisher Morgan & Claypool Publishers
Pages 73
Release 2011
Genre Computers
ISBN 160845567X

Download Probabilistic Ranking Techniques in Relational Databases Book in PDF, Epub and Kindle

Ranking queries are widely used in data exploration, data analysis and decision making scenarios. While most of the currently proposed ranking techniques focus on deterministic data, several emerging applications involve data that are imprecise or uncertain. Ranking uncertain data raises new challenges in query semantics and processing, making conventional methods inapplicable. Furthermore, the interplay between ranking and uncertainty models introduces new dimensions for ordering query results that do not exist in the traditional settings. This lecture describes new formulations and processing techniques for ranking queries on uncertain data. The formulations are based on marriage of traditional ranking semantics with possible worlds semantics under widely-adopted uncertainty models. In particular, we focus on discussing the impact of tuple-level and attribute-level uncertainty on the semantics and processing techniques of ranking queries. Under the tuple-level uncertainty model, we describe new processing techniques leveraging the capabilities of relational database systems to recognize and handle data uncertainty in score-based ranking. Under the attribute-level uncertainty model, we describe new probabilistic ranking models and a set of query evaluation algorithms, including sampling-based techniques. We also discuss supporting rank join queries on uncertain data, and we show how to extend current rank join methods to handle uncertainty in scoring attributes. Table of Contents: Introduction / Uncertainty Models / Query Semantics / Methodologies / Uncertain Rank Join / Conclusion

Title PDF eBook
Author
Publisher
Pages 372
Release
Genre
ISBN 1614998922

Download Book in PDF, Epub and Kindle

Query Processing on Probabilistic Data

Query Processing on Probabilistic Data
Title Query Processing on Probabilistic Data PDF eBook
Author Guy van den Broeck
Publisher
Pages 0
Release 2015
Genre
ISBN

Download Query Processing on Probabilistic Data Book in PDF, Epub and Kindle