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Recognizing Sequences of Sequences

机译:识别序列序列

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摘要

The brain's decoding of fast sensory streams is currently impossible to emulate, even approximately, with artificial agents. For example, robust speech recognition is relatively easy for humans but exceptionally difficult for artificial speech recognition systems. In this paper, we propose that recognition can be simplified with an internal model of how sensory input is generated, when formulated in a Bayesian framework. We show that a plausible candidate for an internal or generative model is a hierarchy of ‘stable heteroclinic channels’. This model describes continuous dynamics in the environment as a hierarchy of sequences, where slower sequences cause faster sequences. Under this model, online recognition corresponds to the dynamic decoding of causal sequences, giving a representation of the environment with predictive power on several timescales. We illustrate the ensuing decoding or recognition scheme using synthetic sequences of syllables, where syllables are sequences of phonemes and phonemes are sequences of sound-wave modulations. By presenting anomalous stimuli, we find that the resulting recognition dynamics disclose inference at multiple time scales and are reminiscent of neuronal dynamics seen in the real brain.
机译:目前尚无法用人工制剂来模拟大脑对快速感觉流的解码,甚至无法近似模拟。例如,健壮的语音识别对人类来说相对容易,但对于人工语音识别系统却异常困难。在本文中,我们建议当使用贝叶斯框架进行表述时,可以通过内部模型如何简化感官输入来简化识别。我们表明,内部模型或生成模型的合理候选者是“稳定的异质渠道”的层次结构。该模型将环境中的连续动态描述为序列的层次结构,其中较慢的序列会导致较快的序列。在此模型下,在线识别对应于因果序列的动态解码,从而在几个时标上具有预测能力来表示环境。我们说明了随后的使用合成音节序列的解码或识别方案,其中,音节是音素序列,音素是声波调制序列。通过呈现异常刺激,我们发现产生的识别动力学揭示了多个时间尺度上的推断,并且让人联想到真实大脑中看到的神经元动力学。

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