Teleodynamic Learning a new Paradigm For Interpretable AI
Enrique ter Horst, Juan Diego Zambrano

TL;DR
Teleodynamic Learning introduces a novel paradigm for AI that emphasizes emergent, self-stabilizing organization inspired by living systems, enabling interpretable models and unified learning principles.
Contribution
It formalizes a new learning framework based on coupled dynamics and resource constraints, demonstrating interpretability and robustness over traditional optimization methods.
Findings
Achieved high accuracy on standard benchmarks with interpretable rules.
Revealed phenomena like self-stabilization and phase-structured learning dynamics.
Unified regularization, architecture search, and resource management under one principle.
Abstract
We introduce Teleodynamic Learning, a new paradigm for machine learning in which learning is not the minimization of a fixed objective, but the emergence and stabilization of functional organization under constraint. Inspired by living systems, this framework treats intelligence as the coupled evolution of three quantities: what a system can represent, how it adapts its parameters, and which changes its internal resources can sustain. We formalize learning as a constrained dynamical process with two interacting timescales: inner dynamics for continuous parameter adaptation and outer dynamics for discrete structural change, linked by an endogenous resource variable that both shapes and is shaped by the trajectory. This perspective reveals three phenomena that standard optimization does not naturally capture: self-stabilization without externally imposed stopping rules, phase-structured…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Embodied and Extended Cognition · Reinforcement Learning in Robotics
