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Research PaperResearchia:202601.1241e470

Innovation Capacity of Dynamical Learning Systems

Anthony M. Polloreno

Abstract

In noisy physical reservoirs, the classical information-processing capacity $C_{\mathrm{ip}}$ quantifies how well a linear readout can realize tasks measurable from the input history, yet $C_{\mathrm{ip}}$ can be far smaller than the observed rank of the readout covariance. We explain this missing capacity'' by introducing the innovation capacity $C_{\mathrm{i}}$, the total capacity allocated to readout components orthogonal to the input filtration (Doob innovations, including input-noise mixing...

Submitted: January 12, 2026Subjects: Machine Learning; Machine Learning

Description / Details

In noisy physical reservoirs, the classical information-processing capacity CipC_{\mathrm{ip}} quantifies how well a linear readout can realize tasks measurable from the input history, yet CipC_{\mathrm{ip}} can be far smaller than the observed rank of the readout covariance. We explain this ``missing capacity'' by introducing the innovation capacity CiC_{\mathrm{i}}, the total capacity allocated to readout components orthogonal to the input filtration (Doob innovations, including input-noise mixing). Using a basis-free Hilbert-space formulation of the predictable/innovation decomposition, we prove the conservation law Cip+Ci=rank(ΣXX)dC_{\mathrm{ip}}+C_{\mathrm{i}}=\mathrm{rank}(Σ_{XX})\le d, so predictable and innovation capacities exactly partition the rank of the observable readout dimension covariance ΣXXRd×dΣ_{XX}\in \mathbb{R}^{\rm d\times d}. In linear-Gaussian Johnson-Nyquist regimes, ΣXX(T)=S+TN0Σ_{XX}(T)=S+T N_0, the split becomes a generalized-eigenvalue shrinkage rule and gives an explicit monotone tradeoff between temperature and predictable capacity. Geometrically, in whitened coordinates the predictable and innovation components correspond to complementary covariance ellipsoids, making CiC_{\mathrm{i}} a trace-controlled innovation budget. A large CiC_{\mathrm{i}} forces a high-dimensional innovation subspace with a variance floor and under mild mixing and anti-concentration assumptions this yields extensive innovation-block differential entropy and exponentially many distinguishable histories. Finally, we give an information-theoretic lower bound showing that learning the induced innovation-block law in total variation requires a number of samples that scales with the effective innovation dimension, supporting the generative utility of noisy physical reservoirs.

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Date:
Jan 12, 2026
Topic:
Machine Learning
Area:
Machine Learning
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