Title :
R-MINI: An iterative approach for generating minimal rules from examples
Author_Institution :
Div. of Res., IBM Thomas J. Watson Res. Center, Yorktown Heights, NY, USA
Abstract :
Generating classification rules or decision trees from examples has been a subject of intense study in the pattern recognition community, the statistics community, and the machine-learning community of the artificial intelligence area. We pursue a point of view that minimality of rules is important, perhaps above all other considerations (biases) that come into play in generating rules. We present a new minimal rule-generation algorithm called R-MINI (Rule-MINI) that is an adaptation of a well-established heuristic-switching-function-minimization technique, MINI. The main mechanism that reduces the number of rules is repeated application of generalization and specialization operations to the rule set while maintaining completeness and consistency. R-MINI results on some benchmark cases are also presented
Keywords :
artificial intelligence; knowledge based systems; learning by example; pattern recognition; R-MINI; artificial intelligence; classification rules generation; completeness; consistency; heuristic-switching-function-minimization technique; iterative approach; machine-learning community; minimal rule-generation algorithm; minimal rules from examples; minimality of rules; pattern recognition; statistics community; Artificial intelligence; Classification tree analysis; Decision trees; Error analysis; Explosions; Iterative methods; Minimization methods; Noise generators; Pattern recognition; Statistics;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on