极限学习机概述

Bohua Deng, Xinman Zhang, Weiyong Gong, Dongpeng Shang
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引用次数: 11

摘要

极限学习机(Extreme Learning Machine, ELM)作为单隐层前馈神经网络(SLFN)的一种新的学习框架,已成为近年来人工智能领域的研究热点之一。它广泛应用于多类分类、人体动作识别等领域。ELM为回归、分类、特征学习和聚类提供了高效、统一的学习框架。同时,针对具体应用,ELM理论和算法也得到了改进。本文旨在对ELM相关的现有研究进行综述。我们首先给出标准ELM的概述。然后对ELM的典型变体进行了讨论和分析,并从模型、优缺点等方面对其进行了改进。然后将ELM与传统的分类方法进行了比较,并列举了ELM与其他深度网络算法的性能比较。总结了ELM及其变体的最新应用。最后,我们总结了上述ELM变体的研究趋势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Overview of Extreme Learning Machine
Extreme Learning Machine (ELM), as a new learning framework of Single Hidden Layer Feedforward Neural Network (SLFN), has become one of the hottest research directions in the field of artificial intelligence in recent years. It has been widely used in multiclass classification, human action recognition and other fields. ELM provides an efficient and unified learning framework for regression, classification, feature learning, and clustering. At the same time, ELM theories and algorithms have been improved for specific applications. This paper aims to provide a comprehensive review of existing research related to ELM. We first give an overview of the standard ELM. Then we discuss and analyze the typical variants of ELM, which are improved from different aspects, including models, strengths and weaknesses. Then we compare ELM with traditional methods in classification field and list the performance comparison between ELM and other deep network algorithms. Furthermore, the latest applications of ELM and its variants are summarized. Last but not least, we conclude the research trends of ELM variants mentioned above.
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