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引用次数: 0
摘要
我们利用弱重构纯贪婪算法(WRPGA)研究了监督学习中的回归问题。我们应用 WRPGA 构建了学习估计器,并推导出了希尔伯特空间中相应贪婪学习算法的 K 函数误差估计的紧上限。在回归函数的两个先验假设下,得到了令人满意的学习率。与其他贪婪学习算法相比,WRPGA 在监督学习中的应用大大降低了计算成本,同时保持了强大的泛化能力。
The learning performance of the weak rescaled pure greedy algorithms
We investigate the regression problem in supervised learning by means of the weak rescaled pure greedy algorithm (WRPGA). We construct learning estimator by applying the WRPGA and deduce the tight upper bounds of the K-functional error estimate for the corresponding greedy learning algorithms in Hilbert spaces. Satisfactory learning rates are obtained under two prior assumptions on the regression function. The application of the WRPGA in supervised learning considerably reduces the computational cost while maintaining its powerful generalization capability when compared with other greedy learning algorithms.
期刊介绍:
The aim of this journal is to provide a multi-disciplinary forum of discussion in mathematics and its applications in which the essentiality of inequalities is highlighted. This Journal accepts high quality articles containing original research results and survey articles of exceptional merit. Subject matters should be strongly related to inequalities, such as, but not restricted to, the following: inequalities in analysis, inequalities in approximation theory, inequalities in combinatorics, inequalities in economics, inequalities in geometry, inequalities in mechanics, inequalities in optimization, inequalities in stochastic analysis and applications.