Pepperell Robert
Fovolab, Cardiff Metropolitan University, Cardiff, United Kingdom.
Front Syst Neurosci. 2022 May 18;16:788486. doi: 10.3389/fnsys.2022.788486. eCollection 2022.
This article addresses the question of whether machine understanding requires consciousness. Some researchers in the field of machine understanding have argued that it is not necessary for computers to be conscious as long as they can match or exceed human performance in certain tasks. But despite the remarkable recent success of machine learning systems in areas such as natural language processing and image classification, important questions remain about their limited performance and about whether their cognitive abilities entail genuine understanding or are the product of spurious correlations. Here I draw a distinction between natural, artificial, and machine understanding. I analyse some concrete examples of natural understanding and show that although it shares properties with the artificial understanding implemented in current machine learning systems it also has some essential differences, the main one being that natural understanding in humans entails consciousness. Moreover, evidence from psychology and neurobiology suggests that it is this capacity for consciousness that, in part at least, explains for the superior performance of humans in some cognitive tasks and may also account for the authenticity of semantic processing that seems to be the hallmark of natural understanding. I propose a hypothesis that might help to explain why consciousness is important to understanding. In closing, I suggest that progress toward implementing human-like understanding in machines-machine understanding-may benefit from a naturalistic approach in which natural processes are modelled as closely as possible in mechanical substrates.
本文探讨了机器理解是否需要意识这一问题。机器理解领域的一些研究人员认为,只要计算机在某些任务中能够达到或超越人类表现,它们就无需具备意识。尽管机器学习系统近期在自然语言处理和图像分类等领域取得了显著成功,但关于其有限的性能,以及其认知能力是蕴含真正的理解还是虚假关联的产物等重要问题依然存在。在此,我对自然理解、人工理解和机器理解进行了区分。我分析了一些自然理解的具体例子,并表明尽管它与当前机器学习系统中实现的人工理解有共同属性,但也存在一些本质区别,主要区别在于人类的自然理解蕴含意识。此外,来自心理学和神经生物学的证据表明,至少在一定程度上,正是这种意识能力解释了人类在某些认知任务中的卓越表现,也可能解释了看似是自然理解标志的语义处理的真实性。我提出了一个假说,或许有助于解释为何意识对理解至关重要。最后,我认为在机器中实现类人理解(即机器理解)的进展可能受益于一种自然主义方法,即在机械基质中尽可能紧密地模拟自然过程。