Bonnasse-Gahot Laurent, Nadal Jean-Pierre
Centre d'Analyse et de Mathématique Sociales (CAMS, UMR 8557 CNRS-EHESS), Ecole des Hautes Etudes en Sciences Sociales, 54 bd. Raspail, 75270, Paris Cedex 06, France.
J Comput Neurosci. 2008 Aug;25(1):169-87. doi: 10.1007/s10827-007-0071-5. Epub 2008 Jan 31.
This paper deals with the analytical study of coding a discrete set of categories by a large assembly of neurons. We consider population coding schemes, which can also be seen as instances of exemplar models proposed in the literature to account for phenomena in the psychophysics of categorization. We quantify the coding efficiency by the mutual information between the set of categories and the neural code, and we characterize the properties of the most efficient codes, considering different regimes corresponding essentially to different signal-to-noise ratio. One main outcome is to find that, in a high signal-to-noise ratio limit, the Fisher information at the population level should be the greatest between categories, which is achieved by having many cells with the stimulus-discriminating parts (steepest slope) of their tuning curves placed in the transition regions between categories in stimulus space. We show that these properties are in good agreement with both psychophysical data and with the neurophysiology of the inferotemporal cortex in the monkey, a cortex area known to be specifically involved in classification tasks.
本文探讨了通过大量神经元集合对离散类别集进行编码的分析研究。我们考虑群体编码方案,其也可被视为文献中提出的范例模型的实例,用于解释分类心理物理学中的现象。我们通过类别集与神经编码之间的互信息来量化编码效率,并考虑本质上对应于不同信噪比的不同情况,来表征最有效编码的特性。一个主要结果是发现在高信噪比极限下,群体水平的费希尔信息在类别之间应该最大,这是通过让许多具有调谐曲线刺激辨别部分(最陡斜率)的细胞放置在刺激空间中类别之间的过渡区域来实现的。我们表明这些特性与心理物理学数据以及猴子颞下皮质的神经生理学都非常吻合,颞下皮质是一个已知专门参与分类任务的皮质区域。