The Function Model Family: Direct Functional Updates and Convergence Guarantees in Adaptive Function Spaces
Description
This paper introduces the Function Model (renamed from Morph), a mathematical framework for adaptive function learning based on direct functional updates rather than iterative gradient descent. What one would consider "retraining" is merely a functional assignment definition and can be performed via streaming data at fine granularity. A morph is a finite, scoped functional transformation f -> f + delta derived from finite-difference directional estimates and interpolation along promising update directions. Under standard smoothness, exploration, and noise assumptions, we prove convergence to an O(epsilon^2) stationary regime and obtain linear rates under strong convexity. We further show how morphs propagate through composite architectures including weighted ensembles and mixture-of-experts, providing a training-optional alternative to traditional optimization. This framework offers a mathematically grounded and computationally efficient update mechanism suitable for real-time adaptive systems. Patent pending.
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The Function Model Architecture.pdf
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Dates
- Created
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2025-12-01Initial Creation for Publication