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Soft learning vector quantization and clustering algorithms based on ordered weighted aggregation operators

机译:基于有序加权聚合算子的软学习矢量量化和聚类算法

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This paper presents the development and investigates the properties of ordered weighted learning vector quantization (LVQ) and clustering algorithms. These algorithms are developed by using gradient descent to minimize reformulation functions based on aggregation operators. An axiomatic approach provides conditions for selecting aggregation operators that lead to admissible reformulation functions. Minimization of admissible reformulation functions based on ordered weighted aggregation operators produces a family of soft LVQ and clustering algorithms, which includes fuzzy LVQ and clustering algorithms as special cases. The proposed LVQ and clustering algorithms are used to perform segmentation of magnetic resonance (MR) images of the brain. The diagnostic value of the segmented MR images provides the basis for evaluating a variety of ordered weighted LVQ and clustering algorithms.
机译:本文介绍了发展情况,并研究了有序加权学习矢量量化(LVQ)和聚类算法的性质。这些算法是通过使用梯度下降来最小化基于聚合算子的重新构造函数而开发的。公理化方法为选择导致可允许的重构函数的聚合算子提供了条件。基于有序加权聚合算子的可允许重新构造函数的最小化产生了一系列软LVQ和聚类算法,其中包括模糊LVQ和聚类算法作为特殊情况。提出的LVQ和聚类算法用于执行大脑的磁共振(MR)图像分割。分割后的MR图像的诊断价值为评估各种有序加权LVQ和聚类算法提供了基础。

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