Knowledge representation is perhaps the most central problem confronting artificial intelligence. Expert systems need knowledge of their domain of expertise in order to function properly. Computer vlslOn systems need to know characteristics of what they are "seeing" in order to be able to fully interpret scenes. Natural language systems are invaluably aided by knowledge of the subject of the natural language discourse and knowledge of the participants in the discourse. Knowledge can guide learning systems towards better understanding and can aid problem solving systems in creating plans to solve various problems. Applications such as intelligent tutoring. computer-aided VLSI design. game playing. automatic programming. medical reasoning. diagnosis in various domains. and speech recogOltlOn. to name a few. are all currently experimenting with knowledge-based approaches. The problem of knowledge representation breaks down into several subsidiary problems including what knowledge to represent in a particular application. how to extract or create that knowledge. how to represent the knowledge efficiently and effectively. how to implement the knowledge representation scheme chosen. how to modify the knowledge in the face of a changing world. how to reason with the knowledge. and how tc use the knowledge appropriately in the creation of the application solution. This volume contains an elaboration of many of these basic issues from a variety of perspectives.
Les mer
Knowledge representation is perhaps the most central problem confronting artificial intelligence. The problem of knowledge representation breaks down into several subsidiary problems including what knowledge to represent in a particular application.
Les mer
The Knowledge Frontier: Essays in the Representation of Knowledge is an outgrowth of the IEEE Computer Special Issue on Knowledge Representation (Cercone and McCalla, 1983) containing a collection of seventeen original essays on various aspects of knowledge representation, the glue that holds much of artificial intelligence together. The papers in this book are organized into six sections: (1) overview, (2) logic, (3) foundations, (4) organization, (5) reasoning, and (6) applications. The sections have been arranged so that they can be read in order (more or less), although the degree of interconnectedness is high enough that certain aspects of each chapter can only be fully appreciated after the insights of many other chapters have been accommodated. The problem of knowledge representation breaks down into several subsidiary problems including what knowledge to represent in a particular application, how to extract or create that knowledge, how to represent the knowledge efficiently and effectively, how to implement the knowledge representation scheme chosen, how to modify the knowledge in the face of a changing world, how to reason with the knowledge, and how to use the knowledge appropriately in the creation of the application solution. This volume contains an elaboration of many of these basic issues from a variety of perspectives. This collection maintains the approachability to non-AIers of the IEEE Computer special issue while still having enough grist for even the most ardent AIer's mill. Researchers and students in computer science, engineering, linguistics, psychology, philosophy and mathematics should have an interest in this book.
Les mer
Springer Book Archives
Springer Book Archives

Produktdetaljer

ISBN
9781461291589
Publisert
2011-09-23
Utgiver
Vendor
Springer-Verlag New York Inc.
Høyde
235 mm
Bredde
155 mm
Aldersnivå
Research, P, 06
Språk
Product language
Engelsk
Format
Product format
Heftet