支持向量回归的顺序最小优化的阐述

Chan-Yun Yang, Kuo-Ho Su, G. Jan
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引用次数: 3

摘要

序列最小优化(SMO)的计算量缩减对于大规模函数逼近支持向量回归(SVR)至关重要。鉴于这一问题的重要性,本文对相关研究进行了广泛的综述,并对其要点进行了消化,然后对理论进行了梳理和阐释。本文首先寻求对SVR-SMO的字面理解,用统一的、不间断的推导框架和适当的插图来改革数学发展,以直观地阐明关键思想。这一发展也被另一种观点所审视。交叉检验使发展的基础更加坚实,并导致了一个直接的广义算法的一致建议。文中还包括了一些一致的实验结果。
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An elaboration of sequential minimal optimization for support vector regression
The computational reduction by sequential minimal optimization (SMO) is crucial for support vector regression (SVR) with large-scale function approximation. Due to the importance, the paper surveys broadly the relevant researches, digests their essentials, and then reorganizes the theory with a plain explanation. Sought first to provide a literal comprehension of SVR-SMO, the paper reforms the mathematical development with a framework of unified and non-interrupted derivations together with appropriate illustrations to visually clarify the key ideas. The development is also examined by an alternative viewpoint. The cross-examination achieves the foundation of the development more solid, and leads to a consistent suggestion of a straightforward generalized algorithm. Some consistent experimental results are also included.
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