Forbus Kenneth D, Liang Chen, Rabkina Irina
Department of Computer Science, Northwestern University.
Top Cogn Sci. 2017 Jul;9(3):694-718. doi: 10.1111/tops.12277. Epub 2017 Jun 21.
One of the central issues in cognitive science is the nature of human representations. We argue that symbolic representations are essential for capturing human cognitive capabilities. We start by examining some common misconceptions found in discussions of representations and models. Next we examine evidence that symbolic representations are essential for capturing human cognitive capabilities, drawing on the analogy literature. Then we examine fundamental limitations of feature vectors and other distributed representations that, despite their recent successes on various practical problems, suggest that they are insufficient to capture many aspects of human cognition. After that, we describe the implications for cognitive architecture of our view that analogy is central, and we speculate on roles for hybrid approaches. We close with an analogy that might help bridge the gap.
认知科学的核心问题之一是人类表征的本质。我们认为符号表征对于捕捉人类认知能力至关重要。我们首先审视在表征和模型讨论中发现的一些常见误解。接下来,我们借鉴类比文献,研究符号表征对于捕捉人类认知能力至关重要的证据。然后,我们考察特征向量和其他分布式表征的基本局限性,尽管它们最近在各种实际问题上取得了成功,但表明它们不足以捕捉人类认知的许多方面。在此之后,我们描述了我们认为类比是核心这一观点对认知架构的影响,并推测了混合方法的作用。我们以一个可能有助于弥合差距的类比作为结尾。