Chebyshev Polynomial Broad Learning System

Shuang Feng, Bingshu Wang, C. L. Philip Chen
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引用次数: 1

Abstract

The broad learning system (BLS) has been attracting more and more attention due to its excellent property in the field of machine learning. A great deal of variants and hybrid structures of BLS have also been designed and developed for better performance in some specialized tasks. In this paper, the Chebyshev polynomials are introduced into the BLS to take advantage of their powerful approximation capability, where the feature windows are replaced by a set of Chebyshev polynomials. This new variant, named Chebyshev polynomial BLS (CPBLS), has a light structure with a reduction in computational complexity since the sparse autoencoder is removed. Instead, the dimension of each input sample is expended by n + 1 Chebyshev polynomials, mapping the original feature into a new feature space with higher dimension, which helps to classify the patterns in training. The proposed CPBLS is evaluated by some popular datasets from UCI and KEEL repositories, and it outperforms some representative neural networks and neuro-fuzzy models in terms of classification accuracy. The CPBLS also show some advantages over the recent developed compact fuzzy BLS (CFBLS) which indicates its great potential in future research and real-world applications.
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Chebyshev多项式广义学习系统
广义学习系统(BLS)由于其在机器学习领域的优异性能而受到越来越多的关注。为了在某些特殊任务中获得更好的性能,人们还设计和开发了大量的BLS变体和混合结构。本文将切比雪夫多项式引入到BLS中,利用其强大的逼近能力,将特征窗口替换为一组切比雪夫多项式。这种新的变体被命名为Chebyshev多项式BLS (CPBLS),由于去除了稀疏自编码器,它具有轻结构,减少了计算复杂度。取而代之的是,将每个输入样本的维度扩展n + 1个切比雪夫多项式,将原始特征映射到更高维度的新特征空间中,这有助于对训练中的模式进行分类。利用UCI和KEEL知识库中的常用数据集对所提出的CPBLS进行了评估,在分类精度方面优于一些代表性的神经网络和神经模糊模型。CPBLS也比最近发展起来的紧凑模糊BLS (CFBLS)显示出一些优势,这表明它在未来的研究和实际应用中具有很大的潜力。
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