Title of article :
A decomposability index in logical analysis of data Original Research Article
Author/Authors :
Hirotaka Ono، نويسنده , , Mutsunori Yagiura، نويسنده , , Toshihide Ibaraki، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2004
Pages :
16
From page :
165
To page :
180
Abstract :
Logical analysis of data (LAD) is one of the methodologies for extracting knowledge in the form of a Boolean function f from a given pair of data sets (T,F) on attributes set S of size n, in which T (resp., F) ⊆{0,1}n denotes a set of positive (resp., negative) examples for the phenomenon under consideration. In this paper, we consider the case in which extracted knowledge f has a decomposable structure; f(x)=g(x[S0],h(x[S1])) for some S0,S1⊆S and Boolean functions g and h, where x[I] denotes the projection of vector x on I. In order to detect meaningful decomposable structures, however, it is considered that the sizes |T| and |F| must be sufficiently large. In this paper, based on probabilistic analysis, we provide an index for such indispensable number of examples to detect decomposability; we claim that there exist many deceptive decomposable structures of (T,F) if |T| |F|⩽2n−1. The computational results on synthetically generated data sets and real-world data sets show that the above index gives a good lower bound on the indispensable data size.
Keywords :
Boolean functions , Logical analysis of data , Decomposable functions , Random graph , Probabilistic analysis , Computational learning theory
Journal title :
Discrete Applied Mathematics
Serial Year :
2004
Journal title :
Discrete Applied Mathematics
Record number :
885912
Link To Document :
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