Ornstein-Uhlenbeck Adaptation as a Mechanism for Learning in Brains and Machines.

IF 2 3区 物理与天体物理 Q2 PHYSICS, MULTIDISCIPLINARY Entropy Pub Date : 2024-12-22 DOI:10.3390/e26121125
Jesús García Fernández, Nasir Ahmad, Marcel van Gerven
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Abstract

Learning is a fundamental property of intelligent systems, observed across biological organisms and engineered systems. While modern intelligent systems typically rely on gradient descent for learning, the need for exact gradients and complex information flow makes its implementation in biological and neuromorphic systems challenging. This has motivated the exploration of alternative learning mechanisms that can operate locally and do not rely on exact gradients. In this work, we introduce a novel approach that leverages noise in the parameters of the system and global reinforcement signals. Using an Ornstein-Uhlenbeck process with adaptive dynamics, our method balances exploration and exploitation during learning, driven by deviations from error predictions, akin to reward prediction error. Operating in continuous time, Ornstein-Uhlenbeck adaptation (OUA) is proposed as a general mechanism for learning in dynamic, time-evolving environments. We validate our approach across a range of different tasks, including supervised learning and reinforcement learning in feedforward and recurrent systems. Additionally, we demonstrate that it can perform meta-learning, adjusting hyper-parameters autonomously. Our results indicate that OUA provides a promising alternative to traditional gradient-based methods, with potential applications in neuromorphic computing. It also hints at a possible mechanism for noise-driven learning in the brain, where stochastic neurotransmitter release may guide synaptic adjustments.

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Ornstein-Uhlenbeck:大脑和机器学习的适应机制
学习是智能系统的基本属性,在生物有机体和工程系统中都可以观察到。虽然现代智能系统通常依赖梯度下降进行学习,但对精确梯度和复杂信息流的需求使得其在生物和神经形态系统中的实现具有挑战性。这激发了对可以局部操作且不依赖于精确梯度的替代学习机制的探索。在这项工作中,我们引入了一种利用系统参数和全局强化信号中的噪声的新方法。使用带有自适应动态的Ornstein-Uhlenbeck过程,我们的方法平衡了学习过程中的探索和利用,由误差预测的偏差驱动,类似于奖励预测误差。Ornstein-Uhlenbeck自适应(OUA)作用于连续时间,是一种在动态、时间演化环境中学习的一般机制。我们在一系列不同的任务中验证了我们的方法,包括前馈和循环系统中的监督学习和强化学习。此外,我们证明了它可以执行元学习,自主调整超参数。我们的研究结果表明,OUA为传统的基于梯度的方法提供了一个有希望的替代方案,在神经形态计算中具有潜在的应用前景。它还暗示了大脑中噪音驱动学习的可能机制,其中随机神经递质释放可能指导突触调节。
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来源期刊
Entropy
Entropy PHYSICS, MULTIDISCIPLINARY-
CiteScore
4.90
自引率
11.10%
发文量
1580
审稿时长
21.05 days
期刊介绍: Entropy (ISSN 1099-4300), an international and interdisciplinary journal of entropy and information studies, publishes reviews, regular research papers and short notes. Our aim is to encourage scientists to publish as much as possible their theoretical and experimental details. There is no restriction on the length of the papers. If there are computation and the experiment, the details must be provided so that the results can be reproduced.
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