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      Quantitative Asset Management: Factor Investing and Machine Learning for Institutional Investing

      3 in stock

      Firm sale: non returnable item
      SKU 9781264258444 Categories ,
      Whether you are managing institutional portfolios or private wealth, augment your asset allocation strategy with machine learning and factor investing for unprecedented returns and growthIn a straightforward and unambiguous fashion, Quantitative Asset Management shows how to take join factor investi...

      £58.99

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      Description

      Product ID:9781264258444
      Product Form:Hardback
      Country of Manufacture:GB
      Title:Quantitative Asset Management: Factor Investing and Machine Learning for Institutional Investing
      Authors:Author: Michael Robbins
      Page Count:496
      Subjects:Investment and securities, Investment & securities, Machine learning, Machine learning
      Description:Whether you are managing institutional portfolios or private wealth, augment your asset allocation strategy with machine learning and factor investing for unprecedented returns and growthIn a straightforward and unambiguous fashion, Quantitative Asset Management shows how to take join factor investing and data science—machine learning and applied to big data. Using instructive anecdotes and practical examples, including quiz questions and a companion website with working code, this groundbreaking guide provides a toolkit to apply these modern tools to investing and includes such real-world details as currency controls, market impact, and taxes. It walks readers through the entire investing process, from designing goals to planning, research, implementation, and testing, and risk management. Inside, you’ll find:Cutting edge methods married to the actual strategies used by the most sophisticated institutionsReal-world investment processes as employed by the largest investment companiesA toolkit for investing as a professionalClear explanations of how to use modern quantitative methods to analyze investing optionsAn accompanying online site with coding and appsWritten by a seasoned financial investor who uses technology as a tool—as opposed to a technologist who invests—Quantitative Asset Management explains the author’s methods without oversimplification or confounding theory and math. Quantitative Asset Management demonstrates how leading institutions use Python and MATLAB to build alpha and risk engines, including optimal multi-factor models, contextual nonlinear models, multi-period portfolio implementation, and much more to manage multibillion-dollar portfolios. Big data combined with machine learning provide amazing opportunities for institutional investors. This unmatched resource will get you up and running with a powerful new asset allocation strategy that benefits your clients, your organization, and your career.

      Whether you are managing institutional portfolios or private wealth, augment your asset allocation strategy with machine learning and factor investing for unprecedented returns and growth

      In a straightforward and unambiguous fashion, Quantitative Asset Management shows how to take join factor investing and data science—machine learning and applied to big data. Using instructive anecdotes and practical examples, including quiz questions and a companion website with working code, this groundbreaking guide provides a toolkit to apply these modern tools to investing and includes such real-world details as currency controls, market impact, and taxes. It walks readers through the entire investing process, from designing goals to planning, research, implementation, and testing, and risk management. Inside, you’ll find:

      • Cutting edge methods married to the actual strategies used by the most sophisticated institutions
      • Real-world investment processes as employed by the largest investment companies
      • A toolkit for investing as a professional
      • Clear explanations of how to use modern quantitative methods to analyze investing options
      • An accompanying online site with coding and apps

      Written by a seasoned financial investor who uses technology as a tool—as opposed to a technologist who invests—Quantitative Asset Management explains the author’s methods without oversimplification or confounding theory and math. Quantitative Asset Management demonstrates how leading institutions use Python and MATLAB to build alpha and risk engines, including optimal multi-factor models, contextual nonlinear models, multi-period portfolio implementation, and much more to manage multibillion-dollar portfolios.

      Big data combined with machine learning provide amazing opportunities for institutional investors. This unmatched resource will get you up and running with a powerful new asset allocation strategy that benefits your clients, your organization, and your career.


      Imprint Name:McGraw-Hill Education
      Publisher Name:McGraw-Hill Education
      Country of Publication:GB
      Publishing Date:2023-07-18

      Additional information

      Weight754 g
      Dimensions164 × 236 × 44 mm