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Fractional Calculus and Anomalous Diffusion in Financial Modeling: With Python (Richman Computational Economics)

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Management number 219249013 Release Date 2026/05/03 List Price $16.00 Model Number 219249013
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Book Description:Unlock the transformative potential of fractional calculus in financial modeling with this comprehensive guide. This extensive resource delves into the sophisticated techniques of fractional calculus, revealing its crucial role in deciphering complex financial phenomena. Crafted for finance professionals, mathematicians, data scientists, and students, this book merges theoretical insights with practical applications, supported by Python code for each concept, enabling you to apply advanced models in real-world scenarios.Key Features:Delve into the intersection of fractional calculus and finance, enhancing your modeling capabilities.Discover practical techniques to capture market anomalies and optimize financial strategies.Benefit from detailed Python implementations accompanying every chapter to bridge theory and practice.What You Will Learn:Master the use of the Riemann-Liouville fractional integral for dynamic option pricing models.Integrate Caputo fractional derivatives to accurately model volatility in financial time series.Analyze financial time series data through the Grünwald-Letnikov fractional derivative.Employ the Mittag-Leffler function to model anomalous diffusion in finance.Derive and implement a fractional Black-Scholes equation for advanced option pricing.Utilize the fractional Fokker-Planck equation for evolving financial probability distributions.Understand the fractional Ornstein-Uhlenbeck process for mean-reverting financial assets.Explore fractional Brownian motion for long-range dependency in asset pricing.Calculate the Hurst exponent for in-depth market memory and persistence analysis.Apply time-fractional diffusion equations to model irregular asset price dynamics.Leverage space-fractional differential equations to address spatial heterogeneity in markets.Model market microstructure noise with the fractional Langevin equation.Enhance risk management models using fractional calculus techniques.Incorporate fractional elements into the Merton Jump Diffusion Model for asset price jumps.Develop fractional option pricing models to address market anomalies.Construct a fractional Cox-Ingersoll-Ross model for interest rate dynamics.Present the fractional Vasicek model to capture memory effects in interest rate changes.Model heavy-tailed distributions in financial returns with fractional calculus.Extend GARCH models using fractional techniques for improved volatility clustering capture.Utilize fractional ARIMA models for modeling long-memory financial time series.Apply the fractional Laplacian operator for complex financial derivatives pricing.Discover the link between Lévy stable distributions and fractional calculus.Model anomalous diffusion using tempered stable distributions in financial markets.Simulate fractional stochastic differential equations with advanced Monte Carlo methods.Solve fractional differential equations with cutting-edge numerical algorithms.Use anomalous diffusion models to address market liquidity challenges.Analyze the fractional Fokker-Planck equation's response to exogenous market shocks.Implement time-changed Brownian motion for sophisticated financial models.Conduct path integration using fractional calculus for advanced financial analysis.Explore variable order fractional models to capture dynamic market behaviors.Apply fractional calculus in credit risk modeling to assess default probabilities.Solve portfolio optimization problems using fractional partial differential equations.Elevate financial predictions by integrating fractional dynamics into machine learning models. Read more

ISBN13 979-8345262184
Language English
Publisher Independently published
Dimensions 6 x 0.63 x 9 inches
Item Weight 12.3 ounces
Print length 192 pages
Part of series Richman Computational Economics
Publication date November 2, 2024

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