Carte Stochastic Foundations for Quantitative Finance Adrian Quill

Stochastic Foundations for Quantitative Finance

Probability, Statistics, and Practical Modeling

Limbă: engleză
Legare: Carte broșată
Disponibilitate: În depozitul extern
Expediem în 9-15 zile
174.90 lei
Reactive PublishingMaster the probabilistic engine that powers modern quantitative finance.In Stocha...

Informații despre carte

Limbă
engleză
Legare
Carte - Carte broșată
Publicat
2026
Pagini
468
EAN
9798180457608
Enbook ID
52826488
Greutate
562
Dimensiuni
152 x 229 x 30

Descriere completă

Reactive Publishing

Master the probabilistic engine that powers modern quantitative finance.

In Stochastic Foundations for Quantitative Finance, Adrian Quill delivers a rigorous yet practical guide to the mathematical bedrock of trading, risk management, and financial modeling. This book bridges the gap between theoretical probability and real-world application, equipping readers with the tools to build, test, and deploy robust quantitative strategies.

You'll explore core concepts including:

  • Probability spaces, random variables, and stochastic processes
  • Markov chains, martingales, and Brownian motion
  • Statistical inference, time-series analysis, and Monte Carlo methods
  • Ito calculus, stochastic differential equations, and numerical simulation techniques
  • Practical modeling of asset prices, volatility, and risk under uncertainty

Designed for quant traders, financial engineers, data scientists, and advanced students, this book emphasizes actionable modeling over abstract theory. Every chapter includes Python implementations, simulation examples, and market-relevant case studies that translate directly into better trading systems and risk frameworks.

Whether you're developing reinforcement learning agents for trading, pricing derivatives, constructing factor models, or stress-testing portfolios under stochastic regimes, Stochastic Foundations for Quantitative Finance provides the clear, precise foundation you need to move from understanding to implementation.

Clear. Rigorous. Immediately applicable.

Perfect for practitioners who demand both mathematical depth and production-ready insight.