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Total Size:
11.9 MB
Info Hash:
AB6D3CD8966CD9088D46EAAE0AAD7E2425D17286
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Added:
April 17, 2026, 11:35 p.m.
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(Last updated: April 17, 2026, 11:36 p.m.)
| File | Size |
|---|---|
| Pages G. Numerical Probability. An Introduction with Apps to Finance 2ed 2025.pdf | 11.9 MB |
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510.6 MB
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2023-10-29
| Uploaded by Morgaretor | Size 510.6 MB | Health [ 50 /10 ] | Added 2023-10-29 |
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546.4 MB
[44
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2023-06-01
| Uploaded by GhostFreakXX | Size 546.4 MB | Health [ 44 /45 ] | Added 2023-06-01 |
NOTE
SOURCE: Pages G. Numerical Probability. An Introduction with Apps to Finance 2ed 2025
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COVER

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MEDIAINFO
Textbook in PDF format Now in a thoroughly revised and expanded second edition, this textbook offers a comprehensive and self-contained introduction to numerical methods in probability, with particular emphasis on stochastic optimization and its applications in financial mathematics. The volume covers a broad range of topics, including Monte Carlo simulation techniques—such as the simulation of random variables, variance reduction strategies, quasi-Monte Carlo methods—and recent advancements like the multilevel Monte Carlo paradigm. It further discusses discretization schemes for stochastic differential equations and optimal quantization methods. A rigorous treatment of stochastic optimization is provided, encompassing stochastic gradient descent, including Langevin-based gradient descent algorithms, new to this edition. Detailed applications are presented in the context of numerical methods for pricing and hedging financial derivatives, the computation of risk measures (including value-at-risk and conditional value-at-risk), parameter implicitation, and model calibration. Intended for graduate students and advanced undergraduates, the textbook includes numerous illustrative examples and over 200 exercises, rendering it well-suited for both classroom use and independent study
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