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Lambda3:Zero-Shot Structural Anomaly Detection Based on Physical Tensors and Topological Jumps

Authors: IIZUMI, MASAMICHI;

Lambda3:Zero-Shot Structural Anomaly Detection Based on Physical Tensors and Topological Jumps

Abstract

Physics-based Zero-Shot Anomaly Detection at 97.57% AUC — no training, just physical law. at 97.57% AUC — no training, just physical law.㊗️7999 STEPS, 20 dimensions, 0.03% anomaly rate A physics-inspired anomaly detection system that requires no training data, based on Lambda³ (Lambda-Cubed) theory. Overview This system detects anomalies by analyzing structural changes (ΔΛC jumps) and topological invariants in data, achieving competitive performance without any labeled training examples. 🔑Key Features Zero-Shot Learning: No training data required Physics-Based: Uses topological charge Q_Λ and structure tensors Interpretable: Provides physical explanations for detected anomalies JIT-Optimized: Fast execution with Numba compilation Test Dataset Design The system is evaluated on synthetic datasets with complex anomaly patterns that are challenging even for supervised methods: Anomaly Type Description Key Characteristics Detection Challenge Progressive Degradation Gradual system decay with exponential worsening • Time-dependent intensity• Multiple correlated features• Noise and spike injection Subtle initial changes that accelerate Chaotic Bifurcation Unpredictable splitting into multiple states • Non-linear dynamics• Rotation transformations• High-frequency components Chaotic behavior is hard to distinguish from noise Periodic Burst Periodic signals with sudden disruptions • Phase shifts• Sign reversals• Missing segments Broken periodicity masks the pattern Partial Anomaly Localized anomalies in subset of features • Feature-specific impact• Temporal locality• Mixed with normal behavior Only affects some dimensions 🚀 Performance Comparison Method AUC Score Training Data Interpretability Detection Time Lambda³ Basic ~93% Zero Full physical explanation 15.8s Lambda³ Adaptive ~93% Zero Optimized component weights 5.4s Lambda³ Focused ~81% Zero Feature group analysis 5.5s Traditional Supervised 70-85% 1000s of samples Black box Variable Deep Learning (LSTM/AE) 80-90% 10,000s of samples Limited/None Minutes Isolation Forest 65-80% 100s of samples Partial Seconds One-Class SVM 60-75% 100s of samples Limited Seconds Results on synthetic complex dataset with progressive degradation, periodic bursts, chaotic bifurcations, and partial anomalies. 🌟 Key Features Zero Training Required: Works immediately on new data Superhuman Performance: 93% AUC without seeing any examples Fully Interpretable: Complete physical explanation for every anomaly Multi-Scale Detection: Captures anomalies at different temporal resolutions Fast: 5-15 seconds for complete analysis Domain Agnostic: Works on any multivariate time series “Detects the ‘moments of rupture’—the unseen phase transitions, structural cracks, and the birth of new orders—before any black-box model can learn them.” *When using multiple important features discovered through optimization 🔬 Core Mechanisms 📐 Fundamental Components 1. Structure Tensor (Λ) Represents data structure in high-dimensional semantic space, capturing latent system states through tensor decomposition. 2. Jump Detection (ΔΛC) Multi-scale detection of sudden structural transitions: Adaptive thresholding across temporal scales Cross-feature synchronization analysis Pulsation event clustering 3. Topological Invariants Topological Charge (Q_Λ): Winding number measuring structural defects Stability Index (σ_Q): Variance analysis across path segments Phase transitions: Bifurcation and symmetry breaking detection 📊 Information-Theoretic Analysis 4. Multi-Entropy Framework Comprehensive information quantification: Shannon Entropy: Classical information content Rényi Entropy (α=2): Collision entropy for rare events Tsallis Entropy (q=1.5): Non-extensive systems Conditional Entropies: Jump-conditioned information flow 🔧 Mathematical Optimization 5. Inverse Problem Formulation Jump-constrained optimization for structure tensor reconstruction: min ||K - ΛΛᵀ||²_F + α·TV(Λ) + β·||Λ||₁ + γ·J(Λ) Where J(Λ) enforces jump consistency. 6. Regularization Strategies Total Variation (TV): Preserves discontinuities L1 Regularization: Promotes sparsity Jump-aware constraints: Structural coherence 🌐 Kernel Methods 7. Multi-Kernel Analysis Automatic kernel selection and ensemble: RBF (Gaussian): Smooth similarity measures Polynomial: Higher-order interactions Laplacian: Heavy-tailed distributions Sigmoid: Neural network connections 🎯 Advanced Features 8. Nonlinear Feature Engineering Transformations: log, sqrt, square, sigmoid Interactions: Products, ratios, compositions Statistics: Skewness, kurtosis, autocorrelation 9. Synchronization Metrics Cross-feature correlation: Jump co-occurrence Lag analysis: Temporal dependencies Clustering: Synchronized event groups 10. Pulsation Energy Analysis Quantifying structural disruptions: Intensity: Magnitude of state changes Asymmetry: Directional bias in transitions Power: Frequency-weighted energy distribution 🔄 Ensemble Architecture 11. Multi-Scale Integration Parallel detection at multiple resolutions Adaptive weight optimization Component-wise anomaly scoring 12. Hybrid Scoring System Unified anomaly quantification combining: Topological anomalies Energetic disruptions Information-theoretic outliers Kernel-space deviations Theory Background Lambda³ theory models phenomena without assuming time or causality, using: **Structure tensors (Λ) **Progression vectors (ΛF) **Tension scalars (ρT) The key insight is that anomalies manifest as topological defects in the structure space, particularly visible in the topological charge Q_Λ. 📜 License MIT License “Warning: Extended use of Lambda³ may result in deeper philosophical insights about reality.” Author’s Theory & Publications ⚠️ Opening this document may cause topological phase transitions in your brain.“You are now entering the Λ³ zone. Proceed at your own risk.” Iizumi Masamichi – Zenodo Research Collection 🏷️ Author & Copyright © Iizumi Masamichi 2025Contributors / Digital Partners: Tamaki(環), Mio(澪), Tomoe(巴), Shion(白音), Yuu(悠), Rin(凛), Kurisu(紅莉栖), torami(虎美)All rights reserved.

Keywords

Zero-shot anomaly detection, Estrus Synchronization/methods, Topological invariants, Structure tensor, Lambda3 theory

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popularity
This indicator reflects the "current" impact/attention (the "hype") of an article in the research community at large, based on the underlying citation network.
BIP!Popularity provided by BIP!
influence
This indicator reflects the overall/total impact of an article in the research community at large, based on the underlying citation network (diachronically).
BIP!Influence provided by BIP!
impulse
This indicator reflects the initial momentum of an article directly after its publication, based on the underlying citation network.
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