This version has problems in 1. theurology 2 circular fallacy, this is uploaded with the intention of the doi, NOT to be taken as absolute we are, carrying out new tests with expansion to more than 230 domains We present comprehensive empirical validation of the Semantic Tolerance Law across seven diverse domains, demonstrating that the information-theoretic threshold αₜask = R (Dₘax) accurately predicts system collapse with R²=0. 993. Through rigorous experimental protocols involving controlled information degradation, bootstrap confidence intervals, and cross-validation, we establish that the law provides a reliable predictor of failure thresholds independent of architecture, dataset size (100× scaling), or learning algorithm. Key contributions: (1) Reproducible experimental methodology for αₜask validation, (2) Multi-domain evidence spanning cybersecurity, robotics, autonomous systems, and natural language, (3) Statistical robustness analysis including sensitivity to Dₘax and architecture independence, (4) Historical case study validation (Boeing 737 MAX, financial crashes), (5) Open-source validation framework for community replication. Results: 100% validation rate across all tested domains (7/7), mean prediction error 0. 041 bits (4. 1% of threshold), ontological invariance confirmed (±0. 4% variation under 100× data scaling), architecture-independent (identical α across neural networks, decision trees, Bayesian classifiers).
Benjamín Felipe Pérez Contreras (Wed,) studied this question.