Kids Library Home

Welcome to the Kids' Library!

Search for books, movies, music, magazines, and more.

     
Available items only
E-Book/E-Doc
Author Guida, Tony, 1979- author.

Title Big data and machine learning in quantitative investment / Tony Guida.

Publication Info. Chichester : Wiley, [2019]
2019

Copies

Location Call No. OPAC Message Status
 Axe ProQuest E-Book  Electronic Book    ---  Available
Description 1 online resource (299 pages).
text txt rdacontent
computer c rdamedia
online resource cr rdacarrier
Series Wiley finance
Wiley finance series.
Bibliography Includes bibliographical references and index.
Contents Machine generated contents note: Chapter 1: Do algorithms dream about artificial alphas? Chapter 2: Taming Big data Chapter 3: State of machine learning applications in investment management Chapter 4: Implementing alternative data in an investment Process Chapter 5: Using alternative and Big Data to trade macro assets Chapter 6: Big is beautiful: How email receipt data can help predict company sales Chapter 7: Ensemble learning applied to quant equity: gradient boosting in a multi-factor framework Chapter 8: A social media analysis of corporate culture Chapter 9: Machine Learning & Event Detection for Trading Energy Futures Chapter 10: Natural language processing of financial news Chapter 11: Support-Vector-Machine Based Global Tactical Asset Allocation Chapter 12: Reinforcement learning in finance Chapter 13: Deep learning in Finance: Prediction of stock returns with long short term memory networks Biography of contributors.
Note Description based on print version record.
Subject Investments -- Study and teaching.
Machine learning.
Big data.
BUSINESS & ECONOMICS / Finance.
Genre/Form Electronic books.
Other Form: Print version: Guida, Tony, 1979- Big data and machine learning in quantitative investment. Chichester : Wiley, c2019 299 pages Wiley finance series. 9781119522195 (DLC) 2018054105
ISBN 9781119522195
9781119522089 (electronic bk.)
9781119522218 (electronic bk.)

 
    
Available items only