Machine learning for risk calculations : a practitioner's view
by
 
Ruiz, Ignacio, 1972- author.

Title
Machine learning for risk calculations : a practitioner's view

Author
Ruiz, Ignacio, 1972- author.

ISBN
9781119791416
 
9781119791409
 
9781119791393

Physical Description
1 online resource

Series
Wiley Finance Series
 
Wiley finance series.

Contents
Fundamental Approximation Methods. Machine Learning -- Deep Neural Nets -- Chebyshev Tensors -- The toolkit - plugging in approximation methods. Introduction: why is a toolkit needed -- Composition techniques -- Tensors in TT format and Tensor Extension Algorithms -- Sliding Technique -- The Jacobian projection technique -- Hybrid solutions - approximation methods and the toolkit. Introduction -- The Toolkit and Deep Neural Nets -- The Toolkit and Chebyshev Tensors -- Hybrid Deep Neural Nets and Chebyshev Tensors Frameworks -- Applications. The aim -- When to use Chebyshev Tensors and when to use Deep Neural Nets -- Counterparty credit risk -- Market Risk -- Dynamic sensitivities -- Pricing model calibration -- Approximation of the implied volatility function -- Optimisation Problems -- Pricing Cloning -- XVA sensitivities -- Sensitivities of exotic derivatives -- Software libraries relevant to the book -- Appendices. Families of orthogonal polynomials -- Exponential convergence of Chebyshev Tensors -- Chebyshev Splines on functions with no singularity points -- Computational savings details for CCR -- Computational savings details for dynamic sensitivities -- Dynamic sensitivities on the market space -- Dynamic sensitivities and IM via Jacobian Projection technique -- MVA optimisation - further computational enhancement.

Abstract
"The computational demand of risk calculations in financial institutions has ballooned. Traditionally, this has led to the acquisition of more and more computer power -- some banks have farms in the order of 50,000 CPUs, with running costs in the multimillions of dollars -- but this path is no longer economically or operationally viable. Algorithmic solutions represent a viable way to reduce costs while simultaneously increasing risk calculation capabilities."-- Provided by publisher.

Local Note
John Wiley and Sons

Subject Term
Machine learning.
 
Financial risk management.
 
Apprentissage automatique.
 
Finances -- Gestion du risque.
 
Finance.
 
Financial Engineering.
 
BUSINESS & ECONOMICS.
 
Algorithms.
 
Programming.
 
COMPUTERS.
 
Financial risk management
 
Machine learning

Added Author
Laris, Mariano Zeron Medina,

Electronic Access
https://onlinelibrary.wiley.com/doi/book/10.1002/9781119791416


LibraryMaterial TypeItem BarcodeShelf Number[[missing key: search.ChildField.HOLDING]]Status
Online LibraryE-Book596976-1001Q325.5Wiley E-Kitap Koleksiyonu