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A Modified Incremental Principal Component Analysis for On-Line Learning of Feature Space and Classifier

机译:用于特征空间和分类器的在线学习的修改增量主成分分析

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We have proposed a new concept for pattern classification systems in which feature selection and classifier learning are simultaneously carried out on-line. To realize this concept, Incremental Principal Component Analysis (IPCA) and Evolving Clustering Method (ECM) was effectively combined in the previous work. However, in order to construct a desirable feature space, a threshold value to determine the increase of a new feature shoule be properly given in the original IPCA. To alleviate this problem, we can adopt the accumulation ratio as its criterion. However, in incremental situations, the accumulation ratio must be modified every time a new sample is given. Therefore, to use this ratio as a criterion, we also need to develop a one-pass update algorithm for the ratio. In this paper, we propose an improved algorithm of IPCA in which the accumulation ratio as well as the feature space can be updated online without all the past samples. To see if correct feature construction is carried out by this new IPCA algorithm, the recognition performance is evaluated for some standard datasets when ECM is adopted as a prototype learning method in Nearest Neighbor classifier.
机译:我们已经提出了一种用于模式分类系统的新概念,其中特征选择和分类器学习同时在线执行。为了实现这一概念,增量主成分分析(IPCA)和不断发展的聚类方法(ECM)在上一个工作中有效地结合在一起。然而,为了构建期望的特征空间,在原始IPCA中适当地给出阈值以确定新特征Shoule的增加。为了减轻这个问题,我们可以作为其标准采用积累比率。但是,在增量情况下,每次给出新样本时必须修改累积比率。因此,要将此比率用作标准,我们还需要开发一个单通更新算法的比率。在本文中,我们提出了一种改进的IPCA算法,其中累积比以及特征空间可以在没有所有过去的样本的情况下在线更新。为了通过这种新的IPCA算法执行正确的特征结构,当ECM被用作最近邻分类器中的原型学习方法时,对某些标准数据集进行识别性能。

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