Title of article :
Non-linear variable selection for artificial neural networks using partial mutual information
Author/Authors :
Robert J. Maya، نويسنده , , *، نويسنده , , Holger R. Maier، نويسنده , , Graeme C. Dandy b، نويسنده , , T.M.K. Gayani Fernando b، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2008
Pages :
15
From page :
1312
To page :
1326
Abstract :
Artificial neural networks (ANNs) have been widely used to model environmental processes. The ability of ANN models to accurately represent the complex, non-linear behaviour of relatively poorly understood processes makes them highly suited to this task. However, the selection of an appropriate set of input variables during ANN development is important for obtaining high-quality models. This can be a difficult task when considering that many input variable selection (IVS) techniques fail to perform adequately due to an underlying assumption of linearity, or due to redundancy within the available data. This paper focuses on a recently proposed IVS algorithm, based on estimation of partial mutual information (PMI), which can overcome both of these issues and is considered highly suited to the development of ANN models. In particular, this paper addresses the computational efficiency and accuracy of the algorithm via the formulation and evaluation of alternative techniques for determining the significance of PMI values estimated during selection. Furthermore, this paper presents a rigorous assessment of the PMI-based algorithm and clearly demonstrates the superior performance of this non-linear IVS technique in comparison to linear correlation-based techniques.
Keywords :
Artificial neural networksInput variable selectionPartial mutual informationEnvironmental modellingInformation theory
Journal title :
Environmental Modelling and Software
Serial Year :
2008
Journal title :
Environmental Modelling and Software
Record number :
958935
Link To Document :
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