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

机译:基于触觉手写签名的身份验证:GP框架的新颖适应性功能

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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.
机译:适应度函数是评估方法,可推动进化过程朝解决方案发展。为了解决基于触觉的手写签名中的不平衡数据集问题,本文提出了三种适应度函数。这些特殊设计的适应度函数的使用产生的解析表达式比使用当前可用的适应度度量获得的解析表达式更简单,同时保持了相当的分类精度。本文介绍的功能明确捕获了不平衡数据的性质,具有更好的降维效果和更高的误剔除率。

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