Mutual Implications and Granularity

ARMANO, GIULIANO
1992-01-01

Abstract

This paper illustrates a technique for discovering mutual implications among hierarchically structured data. Such a technique may be applied to both knowledge and data bases. If the hierarchical structure makes it possible to define granularity levels, mutual implications can be evaluated at any level. Results can be quantitative (i.e. a degree in the range [0, 1]) or qualitative (i.e. a label taken from a user-defined set). If the ground data do not represent a mapping among individuals, i.e. the level of information granularity is not the highest, a local approximation based on T-Norms can be used. The process of implication discovery allows one to derive inference rules for expert systems and to detect default values. In addition, it might be successfully used by sophisticated machine learning algorithms.
1992
Inglese
4 (4)
371
386
16
http://www.sciencedirect.com/science/article/pii/104281439290001H
Esperti anonimi
mutual implications, feature selection, machine learning
The original paper was published in the journal "Knowledge Acquisition", which was later incorporated into IJMMS.
Armano, Giuliano
1.1 Articolo in rivista
info:eu-repo/semantics/article
1 Contributo su Rivista::1.1 Articolo in rivista
262
1
none
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