生物医学光谱识别的随机特征选择

N. Pizzi, M. Alexiuk, W. Pedrycz
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引用次数: 2

摘要

在处理维数诅咒(小样本多维)时,特征子集选择是一种重要的预处理策略。这个问题与通常从磁共振和红外光谱仪获得的分类标记的高维生物医学光谱的区分特别相关。提出了一种随机选取变基数特征子集进行概率神经网络判别的方法。使用整个特征集对结果进行基准测试,包括使用和不使用特征平均。新技术的错误分类明显少于两种基准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stochastic feature selection for the discrimination of biomedical spectra
When dealing with the curse of dimensionality (small sample size with many dimensions), feature subset selection is an important preprocessing strategy. This issue is particularly germane to the discrimination of class-labeled high-dimensional biomedical spectra as is often acquired from magnetic resonance and infrared spectrometers. A technique is presented that stochastically selects feature subsets with varying cardinality for discrimination by probabilistic neural networks. The results are benchmarked against two classifiers using the entire feature set both with and without feature averaging. The new technique had significantly fewer misclassifications than either of the benchmarks.
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