
TL;DR
This paper proposes a transparent, network-free AI framework based on a parameter-free data interpolation method, demonstrating its effectiveness across disciplines and addressing ethical concerns associated with neural networks.
Contribution
It introduces a theoretically grounded, deterministic, and parameter-free AI approach that does not rely on neural networks or training, with applications in behavioral modeling, control, and mathematical prediction.
Findings
Outperformed traditional behavioral models and neural networks in fish trajectory prediction.
Enabled control of unstable systems using pure data interpolation.
Achieved Riemann Zeta zeros prediction comparable to transformer networks.
Abstract
Contemporary Artificial Intelligence (AI) stands on two legs: large training data corpora and many-parameter artificial neural networks (ANNs). The data corpora are needed to represent the complexity and heterogeneity of the world. The role of the networks is less transparent due to the obscure dependence of the network parameters and outputs on the training data and inputs. This raises problems, ranging from technical-scientific to legal-ethical. We hypothesize that a transparent approach to machine learning is possible without using networks at all. By generalizing a parameter-free, statistically consistent data interpolation method, which we analyze theoretically in detail, we develop a network-free framework for AI incorporating generative modeling. We demonstrate this framework with examples from three different disciplines - ethology, control theory, and mathematics. Our…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI)
