Biological Faithfulness is Unnecessary for Machine Learning

Meagan Wiederman
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Abstract

Artificial intelligence (AI) is the ability of any device to take an input, like that of its environment, and work to achieve a desired output. Some advancements in AI have focused n replicating the human brain in machinery. This is being made possible by the human connectome project: an initiative to map all the connections between neurons within the brain. A full replication of the thinking brain would inherently create something that could be argued to be a thinking machine. However, it is more interesting to question whether a non-biologically faithful AI could be considered as a thinking machine. Under Turing’s definition of ‘thinking’, a machine which can be mistaken as human when responding in writing from a “black box,” where they can not be viewed, can be said to pass for thinking. Backpropagation is an error minimizing algorithm to program AI for feature detection with no biological counterpart which is prevalent in AI. The recent success of backpropagation demonstrates that biological faithfulness is not required for deep learning or ‘thought’ in a machine. Backpropagation has been used in medical imaging compression algorithms and in pharmacological modelling.
机器学习不需要生物忠诚
人工智能(AI)是任何设备接受输入的能力,就像它的环境一样,并努力实现预期的输出。人工智能的一些进步集中在用机器复制人类大脑上。人类连接组计划(human connectome project)让这一切成为可能:该计划旨在绘制大脑内神经元之间的所有连接。一个完整的思维大脑的复制将会创造出一个可以被认为是思考机器的东西。然而,更有趣的问题是,一个非生物忠诚的人工智能是否可以被视为一个思考的机器。根据图灵对“思考”的定义,如果一台机器在无法被看到的“黑盒子”里写东西时,可能被误认为是人类,那么它就可以被认为是在思考。反向传播算法是人工智能中普遍存在的一种用于无生物特征检测的误差最小化算法。最近反向传播的成功表明,深度学习或机器的“思考”并不需要生物忠诚。反向传播已用于医学成像压缩算法和药理学建模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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