论文标题
贝叶斯在线推断的神经元序列模型
Neuronal Sequence Models for Bayesian Online Inference
论文作者
论文摘要
顺序的神经元活性是大脑中广泛的过程的基础。在与感知,运动控制,语音,空间导航和记忆的域上,已经报道了神经元序列的神经科学证据。因此,已经提出了不同的动力学原理,作为可能的序列生成机制。将实验发现与贝叶斯脑假说和预测编码等计算概念相结合,这会导致有趣的可能性,即大脑中的预测性和推论过程基于维持顺序结构的生成过程。尽管对正在进行的序列的概率推断是对神经科学数据分析和人工识别和运动控制中广泛的问题的有用计算模型,但对该受试者的研究相对较少,并且在神经科学的不同领域中分布。在这里,我们回顾了有关神经元序列的关键发现,并将其与对序列的在线推断的概念相关联,作为感觉运动处理和识别的模型。我们建议将顺序神经元活性描述为序列上概率推断的表达,可能会导致对脑功能的新观点。重要的是,将概率推论的关键思想转化为机器学习的关键思想,以解决对语音和人类运动的实时识别中的挑战。
Sequential neuronal activity underlies a wide range of processes in the brain. Neuroscientific evidence for neuronal sequences has been reported in domains as diverse as perception, motor control, speech, spatial navigation and memory. Consequently, different dynamical principles have been proposed as possible sequence-generating mechanisms. Combining experimental findings with computational concepts like the Bayesian brain hypothesis and predictive coding leads to the interesting possibility that predictive and inferential processes in the brain are grounded on generative processes which maintain a sequential structure. While probabilistic inference about ongoing sequences is a useful computational model for both the analysis of neuroscientific data and a wide range of problems in artificial recognition and motor control, research on the subject is relatively scarce and distributed over different fields in the neurosciences. Here we review key findings about neuronal sequences and relate these to the concept of online inference on sequences as a model of sensory-motor processing and recognition. We propose that describing sequential neuronal activity as an expression of probabilistic inference over sequences may lead to novel perspectives on brain function. Importantly, it is promising to translate the key idea of probabilistic inference on sequences to machine learning, in order to address challenges in the real-time recognition of speech and human motion.