Causal attribution by the chain rule: unifying natural selection, learning, economics, and other disciplines
Steven A. Frank

TL;DR
This paper reveals how the fundamental chain rule unifies diverse concepts like natural selection, economics, thermodynamics, and backpropagation, highlighting its deep role in causal analysis and system optimization.
Contribution
It demonstrates that the chain rule underpins key theories across disciplines and connects regression decompositions with causal interpretations in natural and artificial systems.
Findings
Unifies Fisher's theorem, Price equation, Oaxaca-Blinder, and thermodynamics through the chain rule.
Shows how the chain rule's product form decomposes change into meaningful components.
Links the chain rule to modern causal analysis and backpropagation in machine learning.
Abstract
Analysis often splits change into components. For example, how much of the observed variance is caused by genes or environment? In many cases, the split is ultimately made by the logic of the chain rule, which divides the difference of a product into two terms. Each term quantifies the partial difference associated with change in one component while holding the other component constant. The chain rule is of course widely known. However, this article argues that its deep fundamental role often goes unrecognized. The article shows how simply the basic chain rule unifies Fisher's fundamental theorem of natural selection, the Price equation description of evolutionary change, the Oaxaca-Blinder decomposition of wage differences in economics, the Kitagawa decomposition of mortality differences in demography, many expressions of thermodynamics, and most strikingly back propagation, the core…
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