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Synthetic Data for Markets: A Comprehensive Guide: Simulated Economies, Regime Stress-Testing, and AI-Driven Market Modeling

by Alice Schwartz , Johann Strauss
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Current price ₹2,395.00
Original price ₹2,717.00
Original price ₹2,717.00
Original price ₹2,717.00
(-12%)
₹2,395.00
Current price ₹2,395.00

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Book cover type: Paperback
  • ISBN13: 9798278535768
  • Binding: Paperback
  • Subject: N/A
  • Publisher: Independently Published
  • Publisher Imprint: Independently Published
  • Publication Date:
  • Pages: 460
  • Original Price: GBP 20.9
  • Language: English
  • Edition: N/A
  • Item Weight: 608 grams
  • BISAC Subject(s): Finance / Financial Engineering

Reactive Publishing

Synthetic Data for Markets: A Comprehensive Guide presents a rigorous, practitioner-focused framework for using synthetic data to model, stress-test, and understand modern financial systems when real-world data is incomplete, biased, or structurally insufficient.

The book explores how simulated economies and artificial market environments can be constructed to replicate realistic price dynamics, agent behavior, liquidity conditions, and regime transitions. It examines the mathematical and statistical foundations of synthetic data generation, including stochastic processes, agent-based models, bootstrapped distributions, and generative AI techniques, while emphasizing practical implementation over theoretical abstraction.

Readers are guided through the use of synthetic data for regime stress-testing, tail-risk exploration, and scenario analysis that extends beyond historical backtests. The book demonstrates how artificial market worlds can be used to probe rare events, policy shocks, structural breaks, and nonlinear feedback loops that traditional datasets fail to capture. Particular attention is given to validating synthetic datasets, measuring divergence from real markets, and avoiding overfitting or false realism.

The latter sections focus on AI-driven market modeling, showing how machine learning systems can be trained, evaluated, and stress-tested within simulated environments before deployment in live markets. Topics include reinforcement learning in synthetic economies, adversarial scenario generation, robustness testing, and the use of synthetic data to improve generalization, risk awareness, and model stability.

Written for quantitative researchers, portfolio managers, risk professionals, and advanced market practitioners, Synthetic Data for Markets provides a practical blueprint for building resilient decision systems in an era where historical data alone is no longer sufficient to understand or navigate financial complexity.

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