超复值极限学习机的一般框架

Guilherme Vieira, Marcos Eduardo Valle
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引用次数: 10

摘要

本文旨在为一般超复代数上的极限学习机(ELM)建立一个框架。超复杂神经网络是以高维数字为参数、输入和输出的机器学习模型。首先,我们回顾了广义超复代数,并展示了一个通过实值线性代数运算在这些代数中以稳健的方式进行运算的框架。我们继续探索一些众所周知的四维例子。然后,我们提出了超复值ELM,并使用超复值最小二乘问题推导了它们的学习。最后,我们比较了实数和超复数值ELM模型在时间序列预测实验和彩色图像自动编码实验中的性能。计算实验强调了超复数值ELM在处理多维数据方面的优异性能,包括基于异常超复数代数的模型。
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A general framework for hypercomplex-valued extreme learning machines

This paper aims to establish a framework for extreme learning machines (ELMs) on general hypercomplex algebras. Hypercomplex neural networks are machine learning models that feature higher-dimension numbers as parameters, inputs, and outputs. Firstly, we review broad hypercomplex algebras and show a framework to operate in these algebras through real-valued linear algebra operations in a robust manner. We proceed to explore a handful of well-known four-dimensional examples. Then, we propose the hypercomplex-valued ELMs and derive their learning using a hypercomplex-valued least-squares problem. Finally, we compare real and hypercomplex-valued ELM models’ performance in an experiment on time-series prediction and another on color image auto-encoding. The computational experiments highlight the excellent performance of hypercomplex-valued ELMs to treat multi-dimensional data, including models based on unusual hypercomplex algebras.

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