Extreme learning machine for mammographie risk analysis

Yanpeng Qu, Qiang Shen, N. M. Parthaláin, Wei Wu
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引用次数: 4

Abstract

The assessment of mammographie risk analysis is an important issue in the medical field. Various approaches have been applied in order to achieve a higher accuracy in such analysis. In this paper, an approach known as Extreme Learning Machines (ELM), is employed to generate a single hidden layer neural network based classifier for estimating mammographie risk. ELM is able to avoid problems such as local minima, improper learning rate, and overfitting which iterative learning methods tend to suffer from. In addition the training phase of ELM is very fast. The performance of the ELM-trained neural network is compared with a number of state of the art classifiers. The results indicate that the use of ELM entails better classification accuracy for the problem of mammographie risk analysis.
用于乳房x光检查风险分析的极限学习机
乳房x光检查风险分析的评估是医学领域的一个重要问题。为了在这种分析中达到更高的准确性,已经应用了各种方法。在本文中,一种称为极限学习机(ELM)的方法被用来生成一个基于单隐层神经网络的分类器来估计乳房x线摄影的风险。ELM能够避免迭代学习方法容易出现的局部最小值、不适当的学习率和过拟合等问题。此外,ELM的训练阶段非常快。将elm训练的神经网络的性能与许多最先进的分类器进行比较。结果表明,对于乳房x线摄影风险分析问题,使用ELM需要更好的分类准确性。
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