000 04034cam a2200301 a 4500
008 100224s2007 enka b 001 0 eng
010 _a2006925857
020 _a9781846284755
020 _a1846284759
035 _a(Sirsi) u3784
040 _aEG-CaNU
_c EG-CaNU
_d EG-CaNU
042 _ancode
082 0 4 _a006.332
_2 22
100 1 _aKendal, S. L.
_q (Simon L.)
_97458
245 1 3 _aAn introduction to knowledge engineering /
_c Simon Kendal, Malcolm Creen.
260 _aLondon :
_b Springer,
_c c2007.
300 _ax, 287 p. :
_b ill. ;
_c 24 cm.
504 _aIncludes bibliographical references (p. 283) and index.
505 0 _aAn Introduction to Knowledge Engineering -- Data, Information and Knowledge -- Skills of a Knowledge Engineer -- An Introduction to Knowledge Based Systems -- Types of Knowledge Based System-Expert Systems -- Neural Networks -- Case Based Reasoning -- Genetic Algorithms -- Intelligent Agents -- Data Mining-Knowledge Acquisition -- Knowledge Representation and Reasoning -- Using Knowledge -- Logic, Rules and Representation -- Developing Rule Based Systems -- Semantic Networks -- Frames -- Expert System Shells, Environments and Languages 169 -- Expert System Shells -- Expert System Development Environments -- Use of AI Languages -- Lifecycles and Methodologies -- The Need for Methodologies -- Blackboard Architectures -- Problem Solving Methods -- KADS-HyM (the Hybrid Methodology) -- Building a well Structured Application Using Aion BRE -- Uncertain Reasoning -- Hybrid Knowledge -- Based Systems -- Index.
520 _aKnowledge Engineering, as a discipline and a profession, has emerged from the practical application of decades of research into artificial intelligence and intelligent systems. In particular, knowledge engineering refers to the development of systems that use knowledge, rather than data, to solve many novel computing problems. This is achieved by the application of computing techniques, closely associated with human cognitive processes, for transforming data into knowledge. An Introduction to Knowledge Engineering presents a simple but detailed exploration of current and established work in the field. Its simple yet comprehensive treatment of knowledge based systems will provide the reader with a substantial grounding in such technologies as: •expert systems •neural networks •genetic algorithms •case based reasoning systems •data mining •intelligent agents. The text includes activities and self assessments that provide opportunities for the reader to reflect on and reinforce their understanding of the concepts as they progress. The book will be suitable for both undergraduate and postgraduate students in computing science and related disciplines such as Knowledge Engineering, Artificial Intelligence, Intelligent systems, Cognitive Neuroscience, Robotics and Cybernetics. In addition, it is expected that anyone interested or involved in sophisticated information system developments will find the book a valuable source of ideas and guidance.
520 _aThe authors use a refreshing and novel 'workbook' writing style which gives the book a very practical and easy to use feel. It includes methodologies for the development of hybrid information systems, covers neural networks, case based reasoning and genetic algorithms as well as expert systems. Numerous pointers to web based resources and current research are also included. The content of the book has been successfully used by undergraduates around the world. It is aimed at undergraduates and a strong maths background is not required.
650 0 _aKnowledge representation (Information theory)
_91630
650 0 _aExpert systems (Computer science)
_9952
700 1 _aCreen, M.
_q (Malcolm)
_97459
596 _a1
999 _c2772
_d2772