COPPE-PEE-Engineering Graduate Program and School of Medicine, Federal University of Rio de Janeiro (UFRJ), Rio de Janeiro, Brazil.
Neural Netw. 2010 Sep;23(7):887-91. doi: 10.1016/j.neunet.2010.04.010. Epub 2010 May 5.
In this paper, we propose a new local-global pattern classification scheme that combines supervised and unsupervised approaches, taking advantage of both, local and global environments. We understand as global methods the ones concerned with the aim of constructing a model for the whole problem space using the totality of the available observations. Local methods focus into sub regions of the space, possibly using an appropriately selected subset of the sample. In the proposed method, the sample is first divided in local cells by using a Vector Quantization unsupervised algorithm, the LBG (Linde-Buzo-Gray). In a second stage, the generated assemblage of much easier problems is locally solved with a scheme inspired by Bayes' rule. Four classification methods were implemented for comparison purposes with the proposed scheme: Learning Vector Quantization (LVQ); Feedforward Neural Networks; Support Vector Machine (SVM) and k-Nearest Neighbors. These four methods and the proposed scheme were implemented in eleven datasets, two controlled experiments, plus nine public available datasets from the UCI repository. The proposed method has shown a quite competitive performance when compared to these classical and largely used classifiers. Our method is simple concerning understanding and implementation and is based on very intuitive concepts.
在本文中,我们提出了一种新的局部-全局模式分类方案,该方案结合了监督和无监督方法,充分利用了局部和全局环境。我们将全局方法理解为旨在使用所有可用观测值构建整个问题空间模型的方法。局部方法则侧重于空间的子区域,可能使用样本的适当选择子集。在提出的方法中,首先通过使用无监督算法,即 LBG(Linde-Buzo-Gray)的矢量量化将样本划分为局部单元。在第二阶段,通过受贝叶斯规则启发的方案局部解决生成的更简单问题的集合。为了进行比较,实现了四种分类方法:学习矢量量化(LVQ);前馈神经网络;支持向量机(SVM)和 k-最近邻。这四种方法和所提出的方案在 11 个数据集、两个受控实验以及来自 UCI 存储库的 9 个公共可用数据集上进行了实现。与这些经典且广泛使用的分类器相比,所提出的方法表现出了相当有竞争力的性能。我们的方法在理解和实现方面非常简单,并且基于非常直观的概念。