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Pattern Classification Based on a Piecewise Multi-linear Model for the Class Probability Densities

机译:基于分段多线性模型的类概率密度模式分类

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摘要

When a Bayesian classifier is designed, a model for the class probability density functions (PDFs) has to be chosen. This choice is determined by a trade-off between robustness and low complexity ―?which is usually satisfied by simple parametric models, based on a restricted number of parameters ― and the model's ability to fit a large class of PDPs ― which usually requires a high number of model parameters. In this paper, a model is introduced, where the class PDFs are approximated as piecewise multi-linear functions (a generalisation of bilinear functions for an arbitrary dimensionality). This model is compared with classical parametric and non-parametric models, from a point of view of versatility, robustness and complexity. The results of classification and PDF estimation experiments are discussed.
机译:在设计贝叶斯分类器时,必须选择用于类概率密度函数(PDF)的模型。这种选择是由鲁棒性和低复杂度之间的权衡决定的,通常在简单的参数模型中,基于有限数量的参数,它可以满足要求;而模型具有适应大量PDP的能力,这通常需要很高的模型参数的数量。在本文中,介绍了一个模型,其中将PDF类近似为分段多线性函数(对任意维数的双线性函数的推广)。从多功能性,鲁棒性和复杂性的角度,将该模型与经典参数模型和非参数模型进行了比较。讨论了分类和PDF估计实验的结果。

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