Langevin竞争学习算法的一种随机微分方法分析

Jinwuk Seok, Jeun-Woo Lee
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引用次数: 0

摘要

近年来,各种类型的神经网络模型已成功地应用于模式识别、控制、信号处理等领域。但是,以前的模型由于其复杂性而不适合硬件实现。在本文中,我们提出了随机分析的朗之万竞争学习算法,以其易于硬件实现而闻名。由于Langevin竞争学习算法使用时不变学习率和随机强化项,因此有必要使用随机微分或差分方程进行分析。分析结果验证了Langevin竞争学习过程与标准的Ornstein-Uhlenback过程相等,并且具有弱收敛性。对高斯分布数据的实验结果证实了本文的分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The analysis of a stochastic differential approach for Langevin competitive learning algorithm
Recently, various types of neural network models have been used successfully to applications in pattern recognition, control, signal processing, and so on. However, the previous models are not suitable for hardware implementation due to their complexity. In this paper, we present a survey of the stochastic analysis for the Langevin competitive learning algorithm, known for its easy hardware implementation. Since the Langevin competitive learning algorithm uses a time-invariant learning rate and a stochastic reinforcement term, it is necessary to analyze with stochastic differential or difference equation. The result of the analysis verifies that the Langevin competitive learning process is equal to the standard Ornstein-Uhlenback process and has a weak convergence property. The experimental results for Gaussian distributed data confirm the analysis provided in this paper.
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