Title :
Structural and probabilistic knowledge for abductive reasoning
Author :
Bhatnagar, Raj ; Kanal, Laveen N.
Author_Institution :
Dept. of Comput. Sci., Cincinnati Univ., OH, USA
fDate :
3/1/1993 12:00:00 AM
Abstract :
Different ways of representing probabilistic relationships among the attributes of a domain ar examined, and it is shown that the nature of domain relationships used in a representation affects the types of reasoning objectives that can be achieved. Two well-known formalisms for representing the probabilistic among attributes of a domain. These are the dependence tree formalism presented by C.K. Chow and C.N. Liu (1968) and the Bayesian networks methodology presented by J. Pearl (1986). An example is used to illustrate the nature of the relationships and the difference in the types of reasoning performed by these two representations. An abductive type of reasoning objective that requires use of the known qualitative relationships of the domain is demonstrated. A suitable way to represent such qualitative relationships along with the probabilistic knowledge is given, and how an explanation for a set of observed events may be constituted is discussed. An algorithm for learning the qualitative relationships from empirical data using an algorithm based on the minimization of conditional entropy is presented
Keywords :
explanation; inference mechanisms; knowledge engineering; learning (artificial intelligence); probabilistic logic; abductive reasoning; conditional entropy; probabilistic knowledge; qualitative relationships learning; structural knowledge; Bayesian methods; Computer science; Context modeling; Entropy; Laboratories; Logic; Minimization methods; Pattern analysis; Uncertainty;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on