Researchers across cognitive, neuro-, and computer sciences increasingly reference human-like artificial intelligence and neuroAI. However, the scope and use of the terms are often inconsistent. Contributed research ranges widely from mimicking behaviour, to testing machine learning methods as neurally plausible hypotheses at the cellular or functional levels, or solving engineering problems. However, it cannot be assumed nor expected that progress on one of these three goals will automatically translate to progress in others. Here a simple rubric is proposed to clarify the scope of individual contributions, grounded in their commitments to human-like behaviour, neural plausibility, or benchmark/engineering goals. This is clarified using examples of weak and strong neuroAI and human-like agents, and discussing the generative, corroborate, and corrective ways in which the three dimensions interact with one another. The author maintains that future progress in artificial intelligence will need strong interactions across the disciplines, with iterative feedback loops and meticulous validity tests, leading to both known and yet-unknown advances that may span decades to come.
翻译:在认知、神经和计算机科学中,研究人员越来越多地参考人造人工智能和神经AI。然而,术语的范围和使用往往不一致。促进的研究范围很广,从模仿行为,到测试机器学习方法作为细胞或功能层面的神经假说,或解决工程问题等,范围很广。然而,不能假定或预期这三个目标之一的进展将自动转化为其他目标的进展。在这里,提议一个简单的标语,以对类似人类的行为、神经可视性或基准/工程目标的承诺为基础,澄清个人贡献的范围。这通过弱而强大的神经智能和类似人类的制剂的例子加以澄清,并讨论三个维度相互作用的基因化、确证和纠正方法。作者认为,人工智能的未来进步将需要各学科之间的有力互动,同时进行迭接回回循环和精确的有效性测试,从而取得已知和未知的进展,这些进展可能持续数十年之久。