Convolutional Neural Networks (CNNs) have become the state of the art method for image classification in the last ten years. Despite the fact that they achieve superhuman classification accuracy on many popular datasets, they often perform much worse on more abstract image classification tasks. We will show that these difficult tasks are linked to relational concepts from cognitive psychology and that despite progress over the last few years, such relational reasoning tasks still remain difficult for current neural network architectures. We will review deep learning research that is linked to relational concept learning, even if it was not originally presented from this angle. Reviewing the current literature, we will argue that some form of attention will be an important component of future systems to solve relational tasks. In addition, we will point out the shortcomings of currently used datasets, and we will recommend steps to make future datasets more relevant for testing systems on relational reasoning.
翻译:过去十年来,进化神经网络(CNNs)已成为图像分类的最先进方法。尽管它们在许多流行数据集中实现了超人分类精度,但它们往往在更抽象的图像分类任务中表现得更差。我们将表明,这些困难的任务与认知心理学的关联概念有关,尽管过去几年来取得了进展,但对于目前的神经网络结构来说,这种关联推理任务仍然很困难。我们将审查与关联概念学习有关的深层次学习研究,即使最初不是从这个角度提出的。审查目前的文献,我们将指出,某些关注形式将是未来系统解决关联任务的一个重要组成部分。此外,我们将指出目前使用的数据集的缺点,并将建议采取步骤,使未来数据集更切合关系理论的测试系统。