Sciweavers

RSCTC
1993
Springer

Quantifying Uncertainty of Knowledge Discovered From Databases

13 years 8 months ago
Quantifying Uncertainty of Knowledge Discovered From Databases
This paper focuses on the application of rough set constructs to inductive learning from a database. A design guideline is suggested, which provides users the option to choose appropriate attributes, for the construction of classification rules. Error probabilities for the resultant rule are derived. A classification rule can be further generalized using concept hierarchies. The condition for preventing overgeneralization is derived. Moreover, given a constraint, an algorithm for generating a rule with minimal error probability is proposed.
Yang Xiang, S. K. Michael Wong, Nick Cercone
Added 10 Aug 2010
Updated 10 Aug 2010
Type Conference
Year 1993
Where RSCTC
Authors Yang Xiang, S. K. Michael Wong, Nick Cercone
Comments (0)