9781635266924-1635266920-Portfolio and Investment Analysis with SAS: Financial Modeling Techniques for Optimization

Portfolio and Investment Analysis with SAS: Financial Modeling Techniques for Optimization

ISBN-13: 9781635266924
ISBN-10: 1635266920
Author: John B. Guerard, Ziwei Wang, Ganlin Xu
Publication date: 2019
Publisher: SAS Institute
Format: Paperback 230 pages
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Book details

ISBN-13: 9781635266924
ISBN-10: 1635266920
Author: John B. Guerard, Ziwei Wang, Ganlin Xu
Publication date: 2019
Publisher: SAS Institute
Format: Paperback 230 pages

Summary

Portfolio and Investment Analysis with SAS: Financial Modeling Techniques for Optimization (ISBN-13: 9781635266924 and ISBN-10: 1635266920), written by authors John B. Guerard, Ziwei Wang, Ganlin Xu, was published by SAS Institute in 2019. With an overall rating of 4.1 stars, it's a notable title among other Mathematical & Statistical (Software, Enterprise Applications) books. You can easily purchase or rent Portfolio and Investment Analysis with SAS: Financial Modeling Techniques for Optimization (Paperback) from BooksRun, along with many other new and used Mathematical & Statistical books and textbooks. And, if you're looking to sell your copy, our current buyback offer is $0.3.

Description

Choose statistically significant stock selection models using SAS®

Portfolio and Investment Analysis with SAS®: Financial Modeling Techniques for Optimization is an introduction to using SAS to choose statistically significant stock selection models, create mean-variance efficient portfolios, and aggressively invest to maximize the geometric mean. Based on the pioneering portfolio selection techniques of Harry Markowitz and others, this book shows that maximizing the geometric mean maximizes the utility of final wealth. The authors draw on decades of experience as teachers and practitioners of financial modeling to bridge the gap between theory and application.

Using real-world data, the book illustrates the concept of risk-return analysis and explains why intelligent investors prefer stocks over bonds. The authors first explain how to build expected return models based on expected earnings data, valuation ratios, and past stock price performance using PROC ROBUSTREG. They then show how to construct and manage portfolios by combining the expected return and risk models. Finally, readers learn how to perform hypothesis testing using Bayesian methods to add confidence when data mining from large financial databases.

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