Title :
Rule-based knowledge in neural computing
Author_Institution :
Inst. fur Inf., Tech. Univ. Munchen, Germany
Abstract :
Similar to humans, an information processing system should be able to exploit knowledge that is presented in form of rules as well as information that is acquired through experience. The author demonstrates how rule-based knowledge can be used to pre-structure a neural network. In this way, the network has problem specific knowledge prior to training. After training, the altered rules can be extracted and interpreted by an expert. The viability of the approach is demonstrated in a legal application, where rules defined by a legal expert as well as previous court decisions are used for network structuring and training
Keywords :
knowledge based systems; law administration; learning (artificial intelligence); neural nets; altered rules; information processing system; legal application; legal expert; network structuring; neural network; previous court decisions; rule-based knowledge; training;
Conference_Titel :
Grammatical Inference: Theory, Applications and Alternatives, IEE Colloquium on
Conference_Location :
Colchester