Identity verification based on haptic handwritten Signature: Novel fitness functions for GP framework

Haptic Audio Visual Environments and Games(2013)

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摘要
Fitness functions are the evaluation measures driving evolutionary processes towards solutions. In this paper, three fitness functions are proposed for solving the unbalanced dataset problem in Haptic-based handwritten signatures using genetic programming (GP). The use of these specifically designed fitness functions produced simpler analytical expressions than those obtained with currently available fitness measures, while keeping comparable classification accuracy. The functions introduced in this paper capture explicitly the nature of unbalanced data, exhibit better dimensionality reduction and have better False Rejection Rate.
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关键词
genetic algorithms,handwriting recognition,haptic interfaces,gp framework,evolutionary processes,false rejection rate,genetic programming,haptic based handwritten signatures,identity verification,novel fitness functions
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