DES V3.7 introduces a causality-driven quantitative framework designed to identify and model the underlying drivers of financial market behavior. The methodology shifts from correlation-based inference to causal attribution, enabling the system to distinguish between structural drivers, transient events, and noise in asset price movements. At its core, the framework incorporates a Causal Attribution Engine that decomposes returns into causal components, event-driven effects, and residual noise, producing a ranked hierarchy of drivers such as macroeconomic variables, liquidity conditions, sector flows, and earnings revisions. A Causal Graph Builder represents these relationships as a dynamic network of directed dependencies between assets and macro factors, enabling structural analysis of market interactions. The system includes a Counterfactual Simulation Engine for scenario testing and forward-looking risk assessment, allowing evaluation of hypothetical changes in key causal variables. A Spurious Correlation Filter identifies and removes statistically significant but non-causal relationships through stability testing and causal divergence analysis, improving robustness across regimes. A Regime Cause Detector defines market states based on their underlying drivers, incorporating causal vectors, duration expectations, and reversal triggers. Factor allocation is governed by a Causal Weighting Engine, which prioritizes variables based on causal strength and stability rather than historical performance alone. Reinforcement learning components are enhanced through a causality-aware reward function that incorporates both return and causal consistency, discouraging reliance on spurious relationships. A Macro Narrative Engine translates model outputs into structured, interpretable explanations of market behavior, supporting transparency and diagnostic analysis. The framework integrates causal inference, network modeling, simulation, and adaptive control into a unified architecture. DES V3.7 is designed to improve interpretability, reduce model fragility, and enhance forward-looking decision-making in complex and evolving financial environments. This work is intended for research and educational purposes in quantitative finance, machine learning, and adaptive systems. Notes This framework is provided for research and educational purposes and does not constitute financial or investment advice.
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David Edward Scherer
Quantitative BioSciences
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David Edward Scherer (Thu,) studied this question.
synapsesocial.com/papers/69d9e58f78050d08c1b75cae — DOI: https://doi.org/10.5281/zenodo.19486359
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