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首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >CONJUGATE AND NATURAL GRADIENT RULES FOR BYY HARMONY LEARNING ON GAUSSIAN MIXTURE WITH AUTOMATED MODEL SELECTION
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CONJUGATE AND NATURAL GRADIENT RULES FOR BYY HARMONY LEARNING ON GAUSSIAN MIXTURE WITH AUTOMATED MODEL SELECTION

机译:自动选择模型在高斯混合物上学习和谐的共轭和自然梯度规则

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摘要

Under the Bayesian Ying-Yang (BYY) harmony learning theory, a harmony function has been developed on a Bi-directional architecture of the BYY system for Gaussian mixture with an important feature that, via its maximization through a general gradient rule, a model selection can be made automatically during parameter learning on a set of sample data from a Gaussian mixture. This paper further proposes the conjugate and natural gradient rules to efficiently implement the maximization of the harmony function, i.e. the BYY harmony learning, on Gaussian mixture. It is demonstrated by simulation experiments that these two new gradient rules not only work well, but also converge more quickly than the general gradient ones.
机译:在贝叶斯(Bayesian Ying-Yang,BYY)和声学习理论的指导下,基于高斯混合气的BYY系统的双向体系结构开发了一个和声函数,其重要特征是通过一般梯度规则的最大化来进行模型选择在参数学习过程中,可以自动对来自高斯混合的一组样本数据进行设置。本文还提出了共轭和自然梯度规则,以在高斯混合上有效地实现和声函数的最大化,即BYY和声学习。仿真实验表明,这两个新的梯度规则不仅效果很好,而且比一般的梯度规则收敛更快。

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