Derivative Pricing: A Practical Guide to Stochastic Calculus and Quantitative Modeling - Softcover

Van Der Post, Hayden; Publishing, Reactive; Marwood, Helena K.

 
9798185096703: Derivative Pricing: A Practical Guide to Stochastic Calculus and Quantitative Modeling

Synopsis

Reactive Publishing

In today's fast-evolving financial markets, accurately pricing derivatives and managing risk requires a deep understanding of stochastic processes and quantitative modeling. Derivative Pricing: A Practical Guide to Stochastic Calculus and Quantitative Modeling bridges the gap between rigorous theory and real-world application, delivering clear explanations, intuitive insights, and powerful implementation techniques.

Hayden Van Der Post takes readers on a structured journey from the fundamentals of probability and stochastic calculus to advanced topics in derivative pricing. You'll explore Brownian motion, Itô's Lemma, stochastic differential equations (SDEs), martingale theory, the Black-Scholes framework, and sophisticated extensions including local volatility, stochastic volatility (e.g., Heston model), jump diffusions, and interest rate models.

What sets this book apart:

  • Practical focus: Every concept is paired with Python code examples, numerical simulations, and market data applications—perfect for building production-ready models.
  • Progressive learning: Starts with accessible introductions for those new to stochastic calculus and advances to complex pricing techniques used by professional quants.
  • Real-world emphasis: Covers calibration, risk management (Greeks, VaR, stress testing), hedging strategies, and implementation pitfalls in algorithmic trading and portfolio optimization.
  • Modern toolkit: Integrates Monte Carlo methods, finite difference PDE solvers, and machine learning enhancements for volatility surfaces and exotic derivatives.

Whether you're preparing for a career in quantitative finance, enhancing your trading strategies, or deepening your expertise in financial engineering, this book equips you with the tools to navigate uncertainty, price complex instruments with confidence, and develop robust quantitative models that perform in live markets.

Ideal for: Quantitative analysts, risk managers, derivatives traders, MFE students, and Python-proficient finance professionals.

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