一种无监督降维技术

E. Llobet, O. Gualdron, J. Brezmes, X. Vilanova, X. Correig
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引用次数: 4

摘要

介绍了一种新的变量选择过程,该过程分两步进行。首先,应用无监督且非常快速的变量选择过程:计算可用特征之间的相关性的参数,并且仅保留近20%的初始变量(那些不太共线的变量)以供进一步选择。然后,基于确定性方法(逐步)结合简单概率神经网络对第一步选择产生的变量子集进行微调选择。使用由乙醇、丙酮和甲苯蒸气及其二元混合物(120个变量)组成的数据库演示了该方法。在Pentium 4 PC平台上,可以同时识别和量化蒸汽,成功率为95.83%,整个过程所需时间约为5分钟。快速变量选择方法是无监督的,即使在香气分析问题中,类别发现也是一个问题。通过将该方法应用于直接质谱法的混合物分析,说明了这一点
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An unsupervised dimensionality-reduction technique
A new procedure for variable selection, which runs in two steps, is introduced. First, an unsupervised and very fast variable selection procedure is applied: a parameter that accounts for the correlation between the features available is computed and, only near 20% of initial variables (those that are less collinear) are retained for further selection. Then, a fine-tuning selection based on a deterministic method (stepwise) coupled to a simple probabilistic neural network is conducted on the variable subset that resulted from the first selection step. The method is demonstrated using a database consisting of vapors of ethanol, acetone and toluene and their binary mixtures (120 variables). Vapors can be simultaneously identified and quantified with a 95.83% success rate and the time needed for the whole process is about 5 minutes in a Pentium 4 PC platform. Being unsupervised, the fast variable selection method applies generally, even in aroma analysis problems where category discovery is an issue. This is illustrated by applying the method to mixture analysis using direct mass spectrometry
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