SILGMay 18

Prism: Structural Symmetry Scanning via Duality-Constrained Laplacian Projection

arXiv:2605.202453.7
Predicted impact top 95% in SI · last 90 daysOriginality Highly original
AI Analysis

For network analysts and financial risk managers, Prism provides a training-free, computationally efficient early warning signal for structural fragility that is invisible to correlation-based methods.

Prism introduces a duality defect metric that measures structural symmetry in networks, achieving 3.38× better sensitivity to degradation than baselines and 94.5% community detection accuracy at 5% noise. On S&P 500 data, it detects rising structural stress (defect 0.43→0.73) before correlation spikes, and in a historical backtest it consistently precedes major crises.

We introduce \textbf{Prism}, a framework for structural symmetry diagnosis in complex networks. Given a graph Laplacian $L$ and a duality operator $P$ (a symmetric involution), Prism computes the \emph{duality defect} $δ(L,P) = \|LP - PL\|_F / \|L\|_F$ -- a scalar measuring how far the network deviates from structural self-consistency. When $P$ encodes the network's true symmetry, $δ$ starts near zero and rises monotonically as structure degrades; an arbitrary $P$ gives noise. We prove that the optimal $L'$ satisfying $[L', P] = 0$ is given by a closed-form block-diagonal projection, and provide an unsupervised alternating optimization that learns $P$ from the graph's own Fiedler vector. Experiments on synthetic networks show the true-$P$ defect is $3.38\times$ more sensitive to structural degradation than an index-reversal baseline and more sensitive than modularity. On Zachary's Karate Club with edge noise, Prism achieves $94.5\%$ community detection accuracy at $5\%$ noise versus $76.6\%$ for the raw Laplacian baseline. Applied to live S\&P~500 data (2026-05-17), Prism detects rising structural stress (defect $0.43 \to 0.73$ over 90 days) while surface correlations remain low -- a signal invisible to correlation-based methods. In a historical backtest spanning five major stress events (2011--2020), the duality defect exhibits a consistent pattern: it reaches elevated levels \emph{before} the correlation spike that accompanies each crisis, and sustains high readings during periods of structural fragility that conventional metrics classify as calm. The duality defect is a first-principles structural admissibility condition, requiring no training data and computable in milliseconds.

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