Extending the Minimal Learning Machine for Pattern Classification

Amauri H. Souza Junior, F. Corona, Y. Miché, A. Lendasse, G. Barreto
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引用次数: 2

Abstract

The Minimal Learning Machine (MLM) has been recently proposed as a novel supervised learning method for regression problems aiming at reconstructing the mapping between input and output distance matrices. Estimation of the response is then achieved from the geometrical configuration of the output points. Thanks to its comprehensive formulation, the MLM is inherently capable of dealing with nonlinear problems and multidimensional output spaces. In this paper, we introduce an extension of the MLM to classification tasks, thus providing a unified framework for multiresponse regression and classification problems. On the basis of our experiments, the MLM achieves results that are comparable to many de facto standard methods for classification with the advantage of offering a computationally lighter alternative to such approaches.
模式分类的最小学习机扩展
最小学习机(MLM)是最近提出的一种新颖的监督学习方法,旨在重建输入和输出距离矩阵之间的映射。然后根据输出点的几何结构来估计响应。由于其全面的公式,传销具有处理非线性问题和多维输出空间的固有能力。在本文中,我们将MLM扩展到分类任务,从而为多响应回归和分类问题提供了一个统一的框架。在我们实验的基础上,MLM达到了与许多事实上的标准分类方法相当的结果,其优势是提供了一个计算更轻的替代方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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