Submitted:
27 May 2026
Posted:
29 May 2026
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Abstract
Keywords:
1. Introduction
2. Materials and Methods
2.1. The THETA AI/ML Pipeline and Its Role in This Study
2.2. Theoretical Background of Options Methodology
2.2.1. The Black-Scholes Theta Function
2.2.2. The Cliff Is Moneyness-Conditional
2.2.3. Sector-Conditional Asymmetry in the Prior Literature
2.2.4. The Variance Risk Premium Framing
2.3. The α Parameterisation: Effective Theta as Sector-and-Regime Scaling on Black-Scholes Theta
2.3.1. The Formulation
2.3.2. What α Captures
2.3.3. α as a Calibration Target
2.3.4. α as a Rule-Layer Trigger
2.4. SIMDEC Methodology Applied to the Theta Cliff
2.4.1. The SIMDEC Framework
2.4.2. Application: The Three-Input Decomposition
2.4.3. The Predicted High-Acceleration Region
2.4.4. Extending the Decomposition: α as a Fourth Input Variable
3. Results
3.1. First Observation: The May 1, 2026 Intraday Cohort
3.1.1. The Three-Position Cohort
- XOM 160-strike call, 8 contracts retained at the start of the cliff session.
- CVX 175-strike call, 1 contract.
- LNG 250-strike call (Cheniere Energy), 1 contract.
3.1.2. The Eleven-Snapshot Trajectory
3.1.3. The α Back-Out
3.1.4. What the First Observation Establishes (And What It Does Not)
3.2. Sector and Quality Conditioning: SIMDEC L2 Evidence from the Deployment Corpus
3.2.1. The Corpus and What It Is Not
3.2.2. Sector-Conditional Cliff Timing
3.2.3. Quality-Stratified Decay Rates at the Effective-Theta Layer
3.2.4. Volatility Surface Bifurcation by Quality
3.2.5. Variance Decomposition Under Total-Order Sobol

3.2.6. Three-Way Interaction as the Signature Finding
3.2.7. Conditional Decomposition: Empirical Test of Quality Endogeneity
3.2.8. What the L2 Corpus Establishes and What It Does Not
- Sector-conditional cliff timing across 12 sectors with a 7- to 14-day spread between Tech (7–10 DTE, ) and Energy (14–21 DTE, ).
- Quality-stratified decay rates across 150 underlyings with a 6.37× within-cohort HIGH/LOW differential at the effective-theta layer.
- Volatility surface bifurcation by quality with an 8.5× amplitude ratio in the cliff-zone region.
- Variance decomposition where quality is the largest total-order contributor at .
- A causal claim on quality. The corpus is observational. The 6.37× differential is consistent with quality-driven mechanisms but does not rule out confounding factors — size, sector mix, idiosyncratic-volatility loadings — that have not been jointly tested in an encompassing regression.
- First-order Sobol shares. The 139.7% figure is total-order, including interactions. The first-order share has not been computed in this paper.
- Out-of-sample generalization. The corpus covers October 2025 to May 2026 only. Whether the same conditionings hold in subsequent windows is the principal extension question. The Tech-positive / Energy-negative momentum-correlation signs in Section 3.2.2 reflect the specific regime conditions of the corpus window: Tech generally flow-positive, Energy under war-driven flow-stress. Under different regime conditions — quiet energy markets, technology under correction — the signs may reverse. The parameterisation absorbs this by construction. The specific magnitudes reported here are conditional, not structural.
4. Discussion
4.1. Implications for Risk Management
4.2. Limitations and Future Work
5. Conclusions
6. Patents
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| AI/ML | Artificial Intelligence/Machine Learning |
| AMD | Advanced Micro Devices Inc, NASDAQ |
| ATM | At-the-money |
| BiLSTM | Bidirectional Long Short-Term Memory |
| BS | Black-Scholes |
| CAD | Canadian Dollar |
| CVX | Chevron Corp, NYSE |
| DTE | Days-to-expiration |
| FH | Final Hours |
| FS | Final Session |
| ITM | In-the-money |
| LNG | Chevron Corp, NYSE |
| MC | Monte Carlo |
| MS | Multi-Session |
| NTM | Near-the-money |
| OTM | Out-of-the-money |
| QMJ | Quality Minus Junk |
| USD | United States Dollar |
| XOM | Exxon Mobil Corp, NYSE |
| XAI | Explainable Artificial Intelligence |
Appendix A
Appendix B
| Position | T1 mark (USD) | T2 mark (USD) | Observed decay (% premium) | BS theta-implied decay (% premium, approximate) | (approximate) |
| XOM 160C | 0.45 | 0.07 | 84.4% | 50–55% | ~1.6 |
| CVX 175C | 0.85 | 0.14 | 83.5% | 48–52% | ~1.7 |
| LNG 250C | 0.70 | 0.11 | 84.3% | 45–50% | ~1.7 |
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| Snapshot | XOM 160C (USD) | CVX 175C (USD) | LNG 250C (USD) | Notes |
| T1 (~09:35 EDT, open) | 0.45 | 0.85 | 0.70 | Session open marks |
| T2 (~10:55 EDT) | 0.07 | 0.14 | 0.11 | First cliff acceleration interval |
| T3 | 0.06 | 0.12 | 0.10 | |
| T4 | 0.05 | 0.10 | 0.08 | |
| T5 | 0.04 | 0.08 | 0.06 | |
| T6 | 0.03 | 0.06 | 0.04 | |
| T7 | 0.03 | 0.05 | 0.03 | |
| T8 | 0.02 | 0.04 | 0.03 | |
| T9 | 0.02 | 0.03 | 0.02 | |
| T10 | 0.01 | 0.02 | 0.01 | |
| T11 (~15:55 EDT, close) | 0.01 | 0.01 | 0.01 | Session close marks |
| Component | Variance (%) | Interpretation |
| Quality (unconditional main effect) | 30.43 | Quality alone in the 4-input setup |
| Regime (main effect) | 21.85 | Regime alone |
| Quality × Regime joint contribution | 31.64 | Joint with interaction |
| Quality conditional on regime (mean across regimes) | 16.80 | Within-regime variance, averaged |
| Conditional drop | 13.63 pp | 45% reduction |
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