Early in development, children learn to extend novel category labels to objects with the same shape, a phenomenon known as the shape bias. Inspired by these findings, Geirhos et al. (2019) examined whether deep neural networks show a shape or texture bias by constructing images with conflicting shape and texture cues. They found that convolutional neural networks strongly preferred to classify familiar objects based on texture as opposed to shape, suggesting a texture bias. However, there are a number of differences between how the networks were tested in this study versus how children are typically tested. In this work, we re-examine the inductive biases of neural networks by adapting the stimuli and procedure from Geirhos et al. (2019) to more closely follow the developmental paradigm and test on a wide range of pre-trained neural networks. Across three experiments, we find that deep neural networks exhibit a preference for shape rather than texture when tested under conditions that more closely replicate the developmental procedure.
翻译:在早期发育过程中,儿童学会将新分类标签扩大到形状相同的物体,一种被称为形状偏向的现象。根据这些发现,Geirhos等人(2019年)研究了深神经网络是否通过构建形状和纹理提示相冲突图像来显示形状或纹理偏差。他们发现,进化神经网络强烈倾向于根据纹理而不是形状对熟悉的物体进行分类,这表明了纹理偏差。然而,本研究中如何测试这些网络与儿童通常如何接受测试之间存在一些差异。在这项工作中,我们通过调整Geirhos等人(2019年)的神经网络的外观和程序,更密切地遵循发展模式和对一系列经过预先训练的神经网络进行测试,从而重新审视神经网络的诱导偏向性偏向。在三项实验中,我们发现深神经网络在更密切复制发育程序的条件下进行测试时,更倾向于形状,而不是纹理。