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 Title: A First Course on Time Series Analysis with SAS
 Author(s) Michael Falk, et al.
 Publisher: University of Wuerzburg (August 1, 2012)
 License(s): GNU Free Documentation License
 Paperback: N/A
 eBook: PDF (364 pages, 2.60 MB)
 Language: English
 ASIN/ISBN10: 1558512985
 ISBN13: 9781558512986
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Book Description
This book has been developed for a onesemester course usually attended by students in statistics, economics, business, engineering, and quantitative social sciences. A unique feature of this edition is its integration with the statistical software package SAS (Statistical Analysis System) computing environment.
Basic applied statistics is assumed through multiple regression. Calculus is assumed only to the extent of minimizing sums of squares but a calculusbased introduction to statistics is necessary for a thorough understanding of some of the theory. Actual time series data drawn from various disciplines are used throughout the book to illustrate the methodology.
About the Authors N/A
 Amazon (Practical Time Series Analysis Using SAS)
 Amazon (SAS for Forecasting Time Series, Third Edition)
 Statistics, Mathematical Statistics, and SAS Programming
 Probability and Stochastic Process
 Mathematical and Computational Software, MATLAB, etc.
 Financial Mathematics, Mathematical Economics, and Financial Engineering
 Algebra, Abstract Algebra, and Linear Algebra
 A First Course on Time Series Analysis with SAS (Michael Falk, et al.)
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