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Suboptimal Bayesian classification by vector quantization with small clusters

机译:基于小聚类的矢量量化次优贝叶斯分类

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Multi-dimensional classification based on the Bayes criterion minimizes the probability of misclassification. In order to apply this criterion, one has to know or to evaluate the probability densities of each class of data. Parzen windows or probabilistic neural networks may be used to estimate these probability densities; however, the number of operations involved in such process is prohibitive for large databases. The proposed algorithm shows how to apply vector quantization techniques to reduce the size of the learning set, while keeping sufficiently accurate estimations of probability densities. The problem of the width of the kernels used in the estimation is addressed by making the hypothesis of small clusters after quantization.
机译:基于贝叶斯准则的多维分类可最大程度地减少误分类的可能性。为了应用这一标准,必须知道或评估每一类数据的概率密度。 Parzen窗口或概率神经网络可用于估计这些概率密度。但是,此过程涉及的操作数量对于大型数据库是不允许的。所提出的算法展示了如何应用矢量量化技术来减小学习集的大小,同时保持足够准确的概率密度估计。通过对量化后的小簇进行假设,可以解决估计中使用的核的宽度问题。

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