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Is the end of Insight in Sight ?

Is the end of Insight in Sight ?

来源:Arxiv_logoArxiv
英文摘要

The rise of deep learning challenges the longstanding scientific ideal of insight - the human capacity to understand phenomena by uncovering underlying mechanisms. In many modern applications, accurate predictions no longer require interpretable models, prompting debate about whether explainability is a realistic or even meaningful goal. From our perspective in physics, we examine this tension through a concrete case study: a physics-informed neural network (PINN) trained on a rarefied gas dynamics problem governed by the Boltzmann equation. Despite the system's clear structure and well-understood governing laws, the trained network's weights resemble Gaussian-distributed random matrices, with no evident trace of the physical principles involved. This suggests that deep learning and traditional simulation may follow distinct cognitive paths to the same outcome - one grounded in mechanistic insight, the other in statistical interpolation. Our findings raise critical questions about the limits of explainable AI and whether interpretability can - or should-remain a universal standard in artificial reasoning.

Jean-Michel Tucny、Sauro Succi、Mihir Durve

自然科学理论自然科学研究方法

Jean-Michel Tucny,Sauro Succi,Mihir Durve.Is the end of Insight in Sight ?[EB/OL].(2025-05-07)[2025-07-01].https://arxiv.org/abs/2505.04627.点此复制

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