Confidence Measures for Carbon-Nanotube / Liquid Crystals Classifiers

E. Vissol-Gaudin, A. Kotsialos, C. Groves, C. Pearson, D. Zeze, M. Petty, N. A. Moubayed
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引用次数: 1

Abstract

This paper focuses on a performance analysis of single-walled-carbon-nanotube / liquid crystal classifiers produced by evolution in materio. A new confidence measure is proposed in this paper. It is different from statistical tools commonly used to evaluate the performance of classifiers in that it is based on physical quantities extracted from the composite and related to its state. Using this measure, it is confirmed that in an untrained state, ie: before being subjected to an algorithm-controlled evolution, the carbon-nanotube-based composites classify data at random. The training, or evolution, process brings these composites into a state where the classification is no longer random. Instead, the classifiers generalise well to unseen data and the classification accuracy remains stable across tests. The confidence measure associated with the resulting classifier's accuracy is relatively high at the classes' boundaries, which is consistent with the problem formulation.
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碳纳米管/液晶分类器的置信度测量
对材料进化产生的单壁碳纳米管/液晶分类器进行了性能分析。本文提出了一种新的置信度测度。它不同于通常用于评估分类器性能的统计工具,因为它基于从复合材料中提取的物理量并与其状态相关。利用这一方法,证实了在未经训练的状态下,即在接受算法控制的进化之前,碳纳米管基复合材料对数据进行随机分类。训练或进化过程将这些组合物带入一种分类不再是随机的状态。相反,分类器可以很好地泛化到不可见的数据,并且分类精度在测试中保持稳定。与所得到的分类器的准确性相关的置信度在类的边界处相对较高,这与问题的表述一致。
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