This text identifies the central role of managing uncertainty in AI and expert systems and provides a comprehensive introduction to different aspects of uncertainty and the rationales, descriptions (through worked examples), advantages and limitations of the major approaches that have been taken. The book introduces and describes the main ways in which uncertainty can occur and the importance of managing uncertainty for the production of intelligent behaviour in AI and its associated technologies of knowledge-based systems. It also describes the rationale, advantages and limitations of the major representational approaches (both quantitative and symbolic) that have been employed in AI systems and provides a worked illustration of each method. Finally, the book summarizes the significant themes that have emerged from applications and the research literature and identifies current and future directions. Concentrating wholly on this specific area of Artificial Intelligence, the work is aimed primarily at researchers and practitioners involved in the design and implementation of expert systems, other knowledge-based systems and cognitive science.It should also be of value to students of computer science, cognitive science, psychology and engineering with an interest in AI or decision support systems. While a technical book, technical details are presented in appendices, allowing the text to be read continuously by nontechnical readers.
1 The Nature of Uncertainty.- 1.1 Introduction.- 1.2 Representation and management of uncertainty.- 1.3 The structure of this book.- 2 Bayesian Probability.- 2.1 Introduction.- 2.2 Foundations.- 2.3 Resolution by independence.- 2.4 Belief propagation through local computation.- 2.5 MUNIN - An application of probabilistic reasoning in electromyography.- 2.6 Learning from the children of Great Ormond Street.- 2.7 Discussion.- 2.8 Conclusions.- 3 The Certainty Factor Model.- 3.1 Introduction.- 3.2 Operation.- 3.3 Simple worked example.- 3.4 Discussion.- 3.5 Conclusions.- 4 Epistemic Probability: the Dempster-Shafer theory of evidence.- 4.1 Introduction.- 4.2 A short history of epistemic probability.- 4.3 The Dempster-Shafer theory of evidence.- 4.4 How to act on a belief.- 4.5 Evidential reasoning applied to robot navigation.- 4.6 Discussion.- 4.7 Conclusions.- 5 Reasoning with Imprecise and Vague Data.- 5.1 Introduction.- 5.2 Crisp sets and imprecision.- 5.3 Vague and approximate concepts.- 5.4 Possibilistic logic.- 5.5 Discussion.- 5.6 Conclusions.- 6 Non-monotonic Logic.- 6.1 Introduction.- 6.2 A brief overview of formal logic.- 6.3 Non-monotonic logics.- 6.4 Discussion.- 6.5 Conclusion.- 7 Argumentation.- 7.1 Introduction.- 7.2 Heuristic models of argumentation.- 7.3 Logical models of argumentation.- 7.4 Discussion.- 7.5 Conclusions.- 8 Overview.- 8.1 Introduction.- 8.2 Resumé.- 8.3 Verbal uncertainty expressions.- 8.4 Uncertainty and decision making.- 8.5 Meta-level reasoning and control.- 8.6 Future trends: the convergence of symbolic and quantitative methods?.- References.- Author Index.