9781316516195-1316516199-Machine Learning and Data Sciences for Financial Markets: A Guide to Contemporary Practices

Machine Learning and Data Sciences for Financial Markets: A Guide to Contemporary Practices

ISBN-13: 9781316516195
ISBN-10: 1316516199
Edition: 1
Author: Agostino Capponi, Charles-Albert Lehalle
Publication date: 2023
Publisher: Cambridge University Press
Format: Hardcover 741 pages
FREE US shipping on ALL non-marketplace orders
Rent
35 days
from $85.42 USD
FREE shipping on RENTAL RETURNS
Marketplace
from $121.87 USD
Buy

From $104.00

Rent

From $85.42

Book details

ISBN-13: 9781316516195
ISBN-10: 1316516199
Edition: 1
Author: Agostino Capponi, Charles-Albert Lehalle
Publication date: 2023
Publisher: Cambridge University Press
Format: Hardcover 741 pages

Summary

Machine Learning and Data Sciences for Financial Markets: A Guide to Contemporary Practices (ISBN-13: 9781316516195 and ISBN-10: 1316516199), written by authors Agostino Capponi, Charles-Albert Lehalle, was published by Cambridge University Press in 2023. With an overall rating of 3.9 stars, it's a notable title among other books. You can easily purchase or rent Machine Learning and Data Sciences for Financial Markets: A Guide to Contemporary Practices (Hardcover) from BooksRun, along with many other new and used books and textbooks. And, if you're looking to sell your copy, our current buyback offer is $3.89.

Description

Leveraging the research efforts of more than sixty experts in the area, this book reviews cutting-edge practices in machine learning for financial markets. Instead of seeing machine learning as a new field, the authors explore the connection between knowledge developed by quantitative finance over the past forty years and techniques generated by the current revolution driven by data sciences and artificial intelligence. The text is structured around three main areas: 'Interactions with investors and asset owners,' which covers robo-advisors and price formation; 'Risk intermediation,' which discusses derivative hedging, portfolio construction, and machine learning for dynamic optimization; and 'Connections with the real economy,' which explores nowcasting, alternative data, and ethics of algorithms. Accessible to a wide audience, this invaluable resource will allow practitioners to include machine learning driven techniques in their day-to-day quantitative practices, while students will build intuition and come to appreciate the technical tools and motivation for the theory.

Rate this book Rate this book

We would LOVE it if you could help us and other readers by reviewing the book