Cognition

Gary W. Wood
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引用次数: 0

Abstract

Not every item in a stimulus ensemble equally contributes to the perceived ensemble average. Rather, items with feature values close to the ensemble mean (inlying items) contribute stronger compared to those items whose feature values are further away from the mean (outlying items). This nonuniform weighting process, named robust averaging, has been interpreted as evidence against an optimal integration of sensory information. Here, however, we show that robust averaging naturally emerges from an optimal integration process when sensory encoding is efficiently adapted to the ensemble statistics in the experiment. We demonstrate that such a model can accurately fit several existing datasets showing robust perceptual averaging in discriminating low-level stimulus features such as orientation. Across various feature domains, our model accurately predicts subjects’ decision accuracy and nonuniform weighting profile, and both their dependency on the specific stimulus distribution in the experiments. Our results suggest that the human visual system forms efficient sensory representations on short time-scales to improve overall decision performance.
认知
刺激集合中的每个项目对感知集合平均的贡献并不相等。相反,特征值接近整体平均值的项目(内嵌项目)比那些特征值远离平均值的项目(外围项目)贡献更大。这种非均匀加权过程,被称为稳健平均,被解释为反对感官信息的最佳整合的证据。然而,在这里,我们表明,当感觉编码有效地适应实验中的集成统计时,最优集成过程自然产生鲁棒平均。我们证明了这样的模型可以准确地拟合几个现有的数据集,在区分低水平刺激特征(如方向)方面显示出鲁棒的感知平均。在不同的特征域中,我们的模型准确地预测了受试者的决策准确性和非均匀加权分布,以及它们对实验中特定刺激分布的依赖。我们的研究结果表明,人类视觉系统在短时间尺度上形成有效的感觉表征,以提高整体决策性能。
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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