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3rd International Workshop Boolean Problems |
Abstract:
Finding column multiplicity index is one of important component
processes in functional decomposition of discrete functions for
circuit design and especially Data Mining applications. How important
it is to solve this problem exactly from the point of view of
the minimum complexity of decomposition, and related to it error
in Machine Learning type of applications? In order to investigate
this problem we wrote two graph coloring programs: exact program
EXOC and ap- proximate program DOM (DOM can give provably exact
results on some types of graphs). These programs were next incorporated
into the multi-valued decom- poser of functions and relations
MVGUD. Extensive testing of MVGUD with these programs has been
performed on various kinds of data. Based on these tests we demonstrated
that exact graph coloring is not necessary for high-quality functional
decomposers, especially in Data Mining applications, giving thus
another argument that efficient and effective Machine Learning
approach based on decomposition is possible.