Estimating sparse spectro-temporal receptive fields with natural stimuli.

Network (Bristol, England) Pub Date : 2007-09-01 Epub Date: 2007-09-07 DOI:10.1080/09548980701609235
Stephen V David, Nima Mesgarani, Shihab A Shamma
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引用次数: 158

Abstract

Several algorithms have been proposed to characterize the spectro-temporal tuning properties of auditory neurons during the presentation of natural stimuli. Algorithms designed to work at realistic signal-to-noise levels must make some prior assumptions about tuning in order to produce accurate fits, and these priors can introduce bias into estimates of tuning. We compare a new, computationally efficient algorithm for estimating tuning properties, boosting, to a more commonly used algorithm, normalized reverse correlation. These algorithms employ the same functional model and cost function, differing only in their priors. We use both algorithms to estimate spectro-temporal tuning properties of neurons in primary auditory cortex during the presentation of continuous human speech. Models estimated using either algorithm, have similar predictive power, although fits by boosting are slightly more accurate. More strikingly, neurons characterized with boosting appear tuned to narrower spectral bandwidths and higher temporal modulation rates than when characterized with normalized reverse correlation. These differences have little impact on responses to speech, which is spectrally broadband and modulated at low rates. However, we find that models estimated by boosting also predict responses to non-speech stimuli more accurately. These findings highlight the crucial role of priors in characterizing neuronal response properties with natural stimuli.

用自然刺激估计稀疏的光谱-时间感受野。
已经提出了几种算法来表征听觉神经元在自然刺激呈现期间的光谱-时间调谐特性。设计用于实际信噪比的算法必须对调谐做出一些预先假设,以便产生准确的拟合,而这些先验可能会在调谐估计中引入偏差。我们比较了一种新的,计算效率高的算法,用于估计调谐特性,增强,和一种更常用的算法,归一化反向相关。这些算法采用相同的功能模型和成本函数,不同的只是它们的先验。我们使用这两种算法来估计初级听觉皮层神经元在连续人类语言呈现期间的光谱-时间调谐特性。使用任何一种算法估计的模型都具有相似的预测能力,尽管通过增强来拟合的准确性略高。更引人注目的是,与归一化反向相关相比,以增强为特征的神经元似乎适应于更窄的频谱带宽和更高的时间调制率。这些差异对人们对语音的反应影响不大,因为语音在频谱上是宽带的,而且调制速率很低。然而,我们发现通过增强估计的模型也能更准确地预测对非言语刺激的反应。这些发现突出了先验在表征神经元对自然刺激的反应特性方面的关键作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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