All-relevant feature selection using multidimensional filters with exhaustive search

16 May 2017 Krzysztof Mnich Witold R. Rudnicki

This paper describes a method for identification of the informative variables in the information system with discrete decision variables. It is targeted specifically towards discovery of the variables that are non-informative when considered alone, but are informative when the synergistic interactions between multiple variables are considered... (read more)

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