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Commitment and Typicality Measurements for Fuzzy ARTMAP Neural Network

机译:模糊ARTMAP神经网络的承诺度和典型性度量

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摘要

As a neural approach, fuzzy ARTMAP has the capability to resolve the stability-plasticity dilemma, i.e., incorporate novel information but preserve significant past learning. In this paper, we propose two non-parametric algorithms for the fuzzy ARTMAP to provide soft classification outputs. These algorithms, which are triggering-frequency-based and are called ART Commitment (ART-C) and ART Typicality (ART-T), expressing in the first case the degree of commitment the classifier has for each class for a specific pixel and in the second case, how typical that pixel's reflectances are of the ones upon which the classifier was trained for each class. To evaluate the two proposed algorithms, soft classifications of a SPOT HRV image were undertaken. A Bayesian posterior probability soft classifier, Mahalanobis typicality soft classifier, SOM Commitment and SOM Typicality measures were also used as a comparison. Principal Components Analysis (PCA) was used to explore the relationship between these measures. Results indicate that similarities exist among the ART-C, SOM-C and a parametric Bayesian posterior probability classifier, and among ART-T, SOM-T and a Mahalanobis typicality classifier. Additionally, ART models distinguish themselves from all other four models due to its special properties.
机译:作为一种神经方法,模糊ARTMAP具有解决稳定性-可塑性难题的能力,即合并了新信息,但保留了重要的过去学习经验。在本文中,我们为模糊ARTMAP提出了两种非参数算法,以提供软分类输出。这些基于触发频率的算法被称为ART承诺(ART-C)和ART典型性(ART-T),在第一种情况下表示分类器针对特定像素的每个类别的承诺程度,第二种情况,像素反射率在每个类别上训练分类器的反射率有多典型。为了评估所提出的两种算法,对SPOT HRV图像进行了软分类。贝叶斯后验概率软分类器,Mahalanobis典型性软分类器,SOM承诺和SOM典型性度量也用作比较。主成分分析(PCA)用于探讨这些度量之间的关系。结果表明,ART-C,SOM-C和参数贝叶斯后验概率分类器之间,ART-T,SOM-T和马氏距离典型分类器之间存在相似性。此外,ART模型由于其特殊属性而与所有其他四个模型区分开。

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