Reservoir Subspace Injection for Online ICA under Top-n Whitening
Abstract
Reservoir expansion can improve online independent component analysis (ICA) under nonlinear mixing, yet top-$n$ whitening may discard injected features. We formalize this bottleneck as \emph{reservoir subspace injection} (RSI): injected features help only if they enter the retained eigenspace without displacing passthrough directions. RSI diagnostics (IER, SSO, $Ο_x$) identify a failure mode in our top-$n$ setting: stronger injection increases IER but crowds out passthrough energy ($Ο_x: 1.00\!\...
Description / Details
Reservoir expansion can improve online independent component analysis (ICA) under nonlinear mixing, yet top- whitening may discard injected features. We formalize this bottleneck as \emph{reservoir subspace injection} (RSI): injected features help only if they enter the retained eigenspace without displacing passthrough directions. RSI diagnostics (IER, SSO, ) identify a failure mode in our top- setting: stronger injection increases IER but crowds out passthrough energy (), degrading SI-SDR by up to ,dB. A guarded RSI controller preserves passthrough retention and recovers mean performance to within ,dB of baseline scaling. With passthrough preserved, RE-OICA improves over vanilla online ICA by ,dB under nonlinear mixing and achieves positive SI-SDR on the tested super-Gaussian benchmark (,dB).
Source: arXiv:2603.02178v1 - http://arxiv.org/abs/2603.02178v1 PDF: https://arxiv.org/pdf/2603.02178v1 Original Link: http://arxiv.org/abs/2603.02178v1
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Mar 4, 2026
Artificial Intelligence
AI
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