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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Fuzzy convex set-based pattern classification for analysis of mammographic microcalcifications
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Fuzzy convex set-based pattern classification for analysis of mammographic microcalcifications

机译:基于模糊凸集的模式分类用于乳腺钼靶微钙化分析

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摘要

There are many different criteria for the comparative analysis of pattern classifiers. They include generalization ability, computational complexity and understanding of the feature space. In some applications such as the medical diagnostic systems it is crucial to use reliable tools, whose behavior is always predictable, so that the risk of misdiagnosis is minimized. In such applications the use of the popular feedforward backpropagation (BP) neural network algorithm can be seen as questionable. This is because it is not inherent for the backpropagation method to analyze the problem's feature space during training, which can sometimes result in inadequate decision surfaces. A novel convex-set-based neuro-fuzzy algorithm for classification of difficult-to-diagnose instances of breast cancer is described in this paper. With its structural approach to feature space tile new method offers rational advantages over the backpropagation algorithm. The classification performance, computational and structural efficiencies are analyzed and compared with that of the BP network. A 20-dimensional set of "difficult-to-diagnose" mammographic microcalcifications was used to evaluate the neuro-fuzzy pattern classifier (NFPC) and the BP methods. In order to evaluate the learning ability of both methods, the relative size of training sets was varied from 40 to 90%. The comparative results obtained using receiver operating characteristic (ROC) analysis show that the ability of the convex-set-based method to infer knowledge was better than that of backpropagation in all of the tests performed, making it more suitable for use in real diagnostic systems. (C) 2001 Pattern Recognition Society. Published by Elsevier Science Ltd. All rights reserved. [References: 28]
机译:模式分类器的比较分析有许多不同的标准。它们包括泛化能力,计算复杂性和对特征空间的理解。在某些应用程序中,例如医学诊断系统,至关重要的是使用可靠的工具,其行为始终是可预测的,从而将误诊的风险降到最低。在此类应用中,使用流行的前馈反向传播(BP)神经网络算法可能会引起问题。这是因为反向传播方法在训练过程中分析问题的特征空间并不是固有的,有时可能会导致决策面不足。本文介绍了一种基于凸集的神经模糊算法,用于对难以诊断的乳腺癌病例进行分类。通过其结构化的特征空间图块,新方法比反向传播算法具有合理的优势。分析了分类性能,计算效率和结构效率,并与BP网络进行了比较。使用20维“难以诊断”的乳腺X射线微钙化集来评估神经模糊模式分类器(NFPC)和BP方法。为了评估两种方法的学习能力,训练集的相对大小从40%变为90%。使用接收器工作特性(ROC)分析获得的比较结果表明,在所有执行的测试中,基于凸集的方法推断知识的能力均优于反向传播的能力,从而使其更适合在实际诊断系统中使用。 (C)2001模式识别学会。由Elsevier Science Ltd.出版。保留所有权利。 [参考:28]

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