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EqOD: Symmetry-Informed Stability Selection for PDE Identification

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Data-driven identification of partial differential equations (PDEs) relies on sparse regression over a candidate library of differential operators, where larger libraries inflate false positives under observation noise and smaller libraries risk missing true terms. We introduce Equivariant Operator Discovery (EqOD), a fully automatic method combining two library reduction mechanisms. When Galilean invariance is detected from trajectory data via a weak-form structural test, EqOD uses the symmetry-reduced library, eliminating terms that our Galilean exclusion result proves to be absent from the governing equation. Otherwise, it applies randomized LASSO stability selection guided by classical false-positive bounds. A residual-based fallback prevents degradation below the full-library baseline. On 8 PDEs at 4 noise levels, EqOD attains $F_1 = 1.000 \pm 0.000$ on Heat at $20\%$ noise, where WF-LASSO obtains $0.475 \pm 0.181$, official PySINDy 2.0 obtains $0.000$, and the WSINDy reimplementation obtains $0.789$. Under the strict criterion that the mean F1 difference exceeds the larger of the two standard deviations, EqOD wins 7 of 32 cells. WF-LASSO wins none, and the remaining 25 cells are ties. Across all 32 cells, EqOD outperforms PySINDy 2.0.0 in 23 of 32 cells, and all 5 PySINDy wins occur on reaction PDEs. External validation on WeakIdent and PINN-SR datasets gives $F_1 = 1.000$ on all 5 clean benchmarks. NLS, 2D, coupled-system, and cylinder-wake extensions are reported. The Galilean library reduction is proved under explicit autonomy and library assumptions. The stability-selection step is motivated by classical false-positive bounds, while formal guarantees for correlated PDE design matrices remain open.

Gnankan Landry Regis N'guessan, Bum Jun Kim• 2026

Related benchmarks

TaskDatasetResultRank
PDE IdentificationBurgers' PDE
F1 Score100
32
PDE IdentificationAdv-Diff PDE
F1 Score100
30
PDE DiscoveryKdV–Burgers PDE
F1 Score95.7
24
PDE DiscoveryKS PDE
F1 Score100
24
PDE DiscoveryReact-Diff PDE
F1 Score100
24
PDE IdentificationFisher-KPP PDE
F1 Score50
24
PDE DiscoveryKdV PDE
F1 Score100
16
PDE IdentificationHeat PDE
F1 Score100
16
PDE IdentificationKdV PDE
F1 Score100
16
Equation DiscoveryLotka-Volterra (LV)
F1 (u)80
9
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