𝔖 Scriptorium
✦   LIBER   ✦

πŸ“

Knowledge Integration Methods for Probabilistic Knowledge-based Systems

✍ Scribed by Van Tham Nguyen, Ngoc Thanh Nguyen, Trong Hieu Tran


Publisher
CRC Press/Chapman & Hall
Year
2022
Tongue
English
Leaves
203
Category
Library

⬇  Acquire This Volume

No coin nor oath required. For personal study only.

✦ Synopsis


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.

✦ Table of Contents


Cover
Half Title
Title Page
Copyright Page
Contents
Preface
Authors
CHAPTER 1: Introduction
1.1. MOTIVATION
1.2. THE OBJECTIVES OF THIS BOOK
1.3. THE STRUCTURE OF THIS BOOK
CHAPTER 2: Probabilistic knowledge-based systems
2.1. KNOWLEDGE BASE REPRESENTATION
2.1.1. Knowledge Representation Methods
2.1.2. Probabilistic Knowledge Base Representation
2.2. TYPES OF KNOWLEDGE-BASED SYSTEMS
2.3. THE KNOWLEDGE-BASED SYSTEM DEVELOPMENT
2.4. COMPONENTS OF A PROBABILISTIC KNOWLEDGE-BASED SYSTEM
2.5. COMPARING PROBABILISTIC KNOWLEDGE-BASED SYSTEM WITH OTHER SYSTEMS
2.6. CONCLUDING REMARKS
CHAPTER 3: Inconsistency measures for probabilistic knowledge bases
3.1. OVERVIEW OF INCONSISTENCY MEASURES
3.1.1. Distance Functions
3.1.2. Development of Inconsistency Measures
3.2. REPRESENTING THE INCONSISTENCY OF THE PROBABILISTIC KNOWLEDGE BASE
3.2.1. Basic Notions
3.2.2. Characteristic Model
3.2.3. Desired Properties of Inconsistency Measures
3.3. INCONSISTENCY MEASURES FOR PROBABILISTIC KNOWLEDGE BASES
3.3.1. The Basic Inconsistency Measures
3.3.2. The Norm-based Inconsistency Measures
3.3.3. The Unnormalized Inconsistency Measure
3.4. ALGORITHMS FOR COMPUTING THE INCONSISTENCY MEASURES
3.4.1. The Computational Complexity
3.4.2. The General Methods
3.4.3. Algorithms
3.5. CONCLUDING REMARKS
CHAPTER 4: Methods for restoring consistency in probabilistic knowledge bases
4.1. OVERVIEW OF HANDLING INCONSISTENCIES
4.1.1. The Inconsistency Resolution Problem
4.1.2. Methods of Handling Inconsistencies
4.2. RESTORING CONSISTENCY IN PROBABILISTIC KNOWLEDGE BASES
4.2.1. Basic Notions
4.2.2. Desired Properties of Consistency-Restoring Operator
4.2.3. A General Model for Restoring Consistency
4.3. METHODS FOR RESTORING CONSISTENCY
4.3.1. The Norm-based Consistency-restoring Problem
4.3.2. The Unnormalized Consistency-Restoring Problem
4.4. ALGORITHMS FOR RESTORING CONSISTENCY
4.5. CONCLUDING REMARKS
CHAPTER 5: Distance-based methods for integrating probabilistic knowledge bases
5.1. OVERVIEW OF KNOWLEDGE INTEGRATION METHODS
5.1.1. The Knowledge Integration Problem
5.1.2. Methods for Integrating Knowledge Bases
5.2. PROBABILISTIC KNOWLEDGE INTEGRATION
5.2.1. Divergence Functions
5.2.2. Distance-based Model for Integrating Probabilistic Knowledge Bases
5.2.3. Desired Properties of Distance-based Probabilistic Integrating Operator
5.2.4. Finding the Satisfying Probability Vector
5.3. THE PROBLEMS WITH DISTANCE-BASED INTEGRATING PROBABILISTIC KNOWLEDGE BASES
5.4. DISTANCE-BASED INTEGRATING OPERATORS
5.4.1. The Class of Probabilistic Integrating Operators Γϑ
5.4.2. The Class of Probabilistic Integrating Operators Ξ“HU
5.5. INTEGRATION ALGORITHMS
5.5.1. Algorithm for Finding the Satisfying Probability Vector
5.5.2. The Distance-based Integration Algorithm
5.5.3. The HULL Algorithm
5.6. CONCLUDING REMARKS
CHAPTER 6: Value-based method for integrating probabilistic knowledge bases
6.1. VALUE-BASED PROBABILISTIC KNOWLEDGE INTEGRATION
6.1.1. Basic Notions
6.1.2. Value-based Model for Integrating Probabilistic Knowledge Bases
6.1.3. Desired Properties of Value-based Probabilistic Integrating Operator
6.2. THE PROBABILITY VALUE-BASED INTEGRATING OPERATORS
6.3. THE PROBABILITY VALUE-BASED INTEGRATION ALGORITHMS
6.3.1. Algorithm for Deducting Probabilistic Constraints
6.3.2. Probability Value-based Integration Algorithms
6.4. CONCLUDING REMARKS
CHAPTER 7: Experiments and Applications
7.1. EXPERIMENT
7.1.1. Experimental Purpose and Assumptions
7.1.2. Experiment Settings
7.1.3. Experimental Implementation
7.1.4. Results and Analysis
7.2. APPLICATIONS
7.2.1. Artificial Intelligence and Machine Learning
7.2.1.1. Machine Learning
7.2.1.2. Recommendation Systems
7.2.1.3. Group Decision-making
7.2.2. Knowledge Systems
7.2.3. Software Engineering
7.2.4. Other Applications
CHAPTER 8: Conclusions and open problems
8.1. CONCLUSIONS
8.2. OPEN PROBLEMS
Bibliography
Index


πŸ“œ SIMILAR VOLUMES


Eurofuse 2011: Workshop on Fuzzy Methods
✍ Francisco Herrera (auth.), Pedro Melo-Pinto, Pedro Couto, Carlos SerΓ΄dio, JΓ‘nos πŸ“‚ Library πŸ“… 2012 πŸ› Springer-Verlag Berlin Heidelberg 🌐 English

<p><p>This carefully edited book comprises the papers from EUROFUSE 2011 Workshop on Fuzzy Methods for Knowledge-based Systems. EUROFUSE was established in 1998 as the EURO (the Association of European Operational Research Societies) Working Group on Fuzzy Sets, as a successor of the former European

Knowledge-based Systems for Industrial C
✍ J. McGhee, M.J. Grimble, O. Mowforth πŸ“‚ Library πŸ“… 1990 πŸ› The Institution of Engineering and Technology 🌐 English

Background for knowledge-based control: Holistic approaches in knowledge-based process control; introduction to knowledge-based systems for process control; basic theory and algorithms for fuzzy sets and logic; knowledge engineering and process control. Artificial intelligence issues: Cognitive mo

Handbook for Evaluating Knowledge-Based
✍ Leonard Adelman, Sharon L. Riedel (auth.) πŸ“‚ Library πŸ“… 1997 πŸ› Springer US 🌐 English

<p>Knowledge-based systems are increasingly found in a wide variety of settings and this handbook has been written to meet a specific need in their widening use. While there have been many successful applications of knowledge-based systems, some applications have failed because they never received t

Development of Knowledge-Based Systems f
✍ Carlo Tasso, Edoardo R. de Arantes e Oliveira (eds.) πŸ“‚ Library πŸ“… 1998 πŸ› Springer-Verlag Wien 🌐 English

<p>The goal of the volume is twofold: to help engineers to understand the design and development process and the specific techniques utilized for constructing expert systems in engineering and, secondly, to introduce computer specialists to significant applications of knowledge-based techniques in e