生物学和机器学习中的电路设计。1 .随机网络与降维。

IF 3.1 2区 环境科学与生态学 Q2 ECOLOGY
Evolution Pub Date : 2025-03-29 DOI:10.1093/evolut/qpaf065
Steven A Frank
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引用次数: 0

摘要

生物电路是一个神经或生化级联,接受输入并产生输出。在生命史上,生物回路是如何学会解决环境挑战的?答案当然遵循多布赞斯基的名言:“生物学中没有任何东西是有意义的,除非从进化的角度来看。”但这句话忽略了自然选择的试错学习发生的机制基础,这正是我们必须理解的。设计生物电路的学习过程实际上是如何工作的?通过研究生物回路的形成过程,我们能对生物回路的形式和功能有多少了解?由于生命电路必须经常解决机器学习面临的相同问题,例如环境跟踪,稳态控制,降维或分类,我们可以从考虑机器学习如何设计计算电路来解决问题开始。然后我们可以问:这些计算电路为生物电路的设计提供了多少见解?生物学在解决问题的特定电路设计上与计算机有多大不同?本文通过两个经典的机器学习模型来为分析有关生物电路设计的广泛问题奠定基础。一种见解是随机连接网络的惊人力量。另一个是嵌入在生物回路中的环境内部模型的核心作用,由降维和趋势预测模型说明。总的来说,生物学中的许多挑战都有机器学习的类似物,提出了关于生物学电路设计的假设。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Circuit design in biology and machine learning. I. Random networks and dimensional reduction.

A biological circuit is a neural or biochemical cascade, taking inputs and producing outputs. How have biological circuits learned to solve environmental challenges over the history of life? The answer certainly follows Dobzhansky's famous quote that "nothing in biology makes sense except in the light of evolution." But that quote leaves out the mechanistic basis by which natural selection's trial-and-error learning happens, which is exactly what we have to understand. How does the learning process that designs biological circuits actually work? How much insight can we gain about the form and function of biological circuits by studying the processes that have made those circuits? Because life's circuits must often solve the same problems as those faced by machine learning, such as environmental tracking, homeostatic control, dimensional reduction, or classification, we can begin by considering how machine learning designs computational circuits to solve problems. We can then ask: How much insight do those computational circuits provide about the design of biological circuits? How much does biology differ from computers in the particular circuit designs that it uses to solve problems? This article steps through two classic machine learning models to set the foundation for analyzing broad questions about the design of biological circuits. One insight is the surprising power of randomly connected networks. Another is the central role of internal models of the environment embedded within biological circuits, illustrated by a model of dimensional reduction and trend prediction. Overall, many challenges in biology have machine learning analogs, suggesting hypotheses about how biology's circuits are designed.

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来源期刊
Evolution
Evolution 环境科学-进化生物学
CiteScore
5.00
自引率
9.10%
发文量
0
审稿时长
3-6 weeks
期刊介绍: Evolution, published for the Society for the Study of Evolution, is the premier publication devoted to the study of organic evolution and the integration of the various fields of science concerned with evolution. The journal presents significant and original results that extend our understanding of evolutionary phenomena and processes.
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