Department of Bioengineering, University of Pennsylvania, Philadelphia, PA, USA.
Department of Psychology, University of Pennsylvania, Philadelphia, PA, USA.
Nat Commun. 2022 Dec 29;13(1):7972. doi: 10.1038/s41467-022-35659-7.
Human sensory systems are more sensitive to common features in the environment than uncommon features. For example, small deviations from the more frequently encountered horizontal orientations can be more easily detected than small deviations from the less frequent diagonal ones. Here we find that artificial neural networks trained to recognize objects also have patterns of sensitivity that match the statistics of features in images. To interpret these findings, we show mathematically that learning with gradient descent in neural networks preferentially creates representations that are more sensitive to common features, a hallmark of efficient coding. This effect occurs in systems with otherwise unconstrained coding resources, and additionally when learning towards both supervised and unsupervised objectives. This result demonstrates that efficient codes can naturally emerge from gradient-like learning.
人类的感官系统对环境中的常见特征比不常见特征更为敏感。例如,与较不常见的对角线偏差相比,更频繁出现的水平方向上的小偏差更容易被检测到。在这里,我们发现,经过训练以识别物体的人工神经网络也具有与图像特征统计数据相匹配的敏感性模式。为了解释这些发现,我们从数学上表明,神经网络中的梯度下降学习优先创建对常见特征更敏感的表示,这是有效编码的标志。这种效果发生在编码资源不受限制的系统中,并且当朝着有监督和无监督的目标学习时也会发生。该结果表明,有效的编码可以自然地从类似梯度的学习中产生。