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Fourth International Conference on Software Engineering Research, Management and Applications (SERA'06)
A Comparison of Two Contributive Analysis Methods Applied to an ANN Modeling Facial Attractiveness
Seattle, Washington
August 09-August 11
ISBN: 0-7695-2656-X
Karen L. Joy, Virginia Commonwealth University
David Primeaux, Virginia Commonwealth University
Artificial Neural Networks (ANNs) are powerful predictors. ANNs, however, essentially function like ?black boxes? because they lack explanatory power regarding input contribution to the model. Various contributive analysis algorithms (CAAs) have been developed to apply to ANNs to illuminate the influences and interactions between the inputs and thus, to enhance understanding of the modeled function. In this study two CAAs were applied to an ANN modeling facial attractiveness. Conflicting results from these CAAs imply that more research is needed in the area of contributive analysis and that researchers should be cautious when selecting a CAA method.
Citation:
Karen L. Joy, David Primeaux, "A Comparison of Two Contributive Analysis Methods Applied to an ANN Modeling Facial Attractiveness," sera, pp.82-86, Fourth International Conference on Software Engineering Research, Management and Applications (SERA'06), 2006
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