可证伪性
认知科学
集合(抽象数据类型)
透视图(图形)
计算机科学
神经经济学
研究计划
神经计算模型
科学哲学
芯(光纤)
计算模型
人工智能
人工神经网络
管理科学
心理学
数据科学
认识论
认知心理学
电信
哲学
经济
程序设计语言
作者
Adrien Doerig,Rowan P. Sommers,Katja Seeliger,Blake A. Richards,Jenann Ismael,Grace W. Lindsay,Konrad P. Körding,Talia Konkle,Marcel van Gerven,Nikolaus Kriegeskorte,Tim C. Kietzmann
标识
DOI:10.1038/s41583-023-00705-w
摘要
Artificial neural networks (ANNs) inspired by biology are beginning to be widely used to model behavioural and neural data, an approach we call 'neuroconnectionism'. ANNs have been not only lauded as the current best models of information processing in the brain but also criticized for failing to account for basic cognitive functions. In this Perspective article, we propose that arguing about the successes and failures of a restricted set of current ANNs is the wrong approach to assess the promise of neuroconnectionism for brain science. Instead, we take inspiration from the philosophy of science, and in particular from Lakatos, who showed that the core of a scientific research programme is often not directly falsifiable but should be assessed by its capacity to generate novel insights. Following this view, we present neuroconnectionism as a general research programme centred around ANNs as a computational language for expressing falsifiable theories about brain computation. We describe the core of the programme, the underlying computational framework and its tools for testing specific neuroscientific hypotheses and deriving novel understanding. Taking a longitudinal view, we review past and present neuroconnectionist projects and their responses to challenges and argue that the research programme is highly progressive, generating new and otherwise unreachable insights into the workings of the brain.
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