Uses and Abuses of Forecasting
Author : Tom Whiston
Publisher : Springer
Page : 371 pages
File Size : 24,4 MB
Release : 1979-06-17
Category : Social Science
ISBN : 1349044865
Author : Tom Whiston
Publisher : Springer
Page : 371 pages
File Size : 24,4 MB
Release : 1979-06-17
Category : Social Science
ISBN : 1349044865
Author :
Publisher :
Page : 358 pages
File Size : 38,24 MB
Release : 1979
Category : Forecasting
ISBN :
Author : Tom Whiston
Publisher :
Page : 358 pages
File Size : 17,56 MB
Release : 1979
Category :
ISBN :
Author : Evan F. Koenig
Publisher :
Page : 44 pages
File Size : 34,41 MB
Release : 2000
Category : Economic forecasting
ISBN :
We distinguish between three different ways of using real-time data to estimate forecasting equations and argue that the most frequently used approach should generally be avoided. The point is illustrated with a model that uses monthly observations of industrial production, employment, and retail sales to predict real GDP growth. When the model is estimated using our preferred method, its out-of-sample forecasting performance is clearly superior to that obtained using conventional estimation, and compares favorably with that of the Blue-Chip consensus.
Author : William Cunningham
Publisher : London : Murray
Page : 256 pages
File Size : 27,34 MB
Release : 1891
Category : Capital
ISBN :
Author : Sussex Science Policy Research Unit
Publisher :
Page : pages
File Size : 33,81 MB
Release : 1979
Category :
ISBN : 9781349044887
Author : William Mathews
Publisher :
Page : 518 pages
File Size : 20,70 MB
Release : 1888
Category : English language
ISBN :
Author : Galit Shmueli
Publisher : Axelrod Schnall Publishers
Page : 232 pages
File Size : 12,32 MB
Release : 2016-07-19
Category : Mathematics
ISBN : 0997847913
Practical Time Series Forecasting with R: A Hands-On Guide, Second Edition provides an applied approach to time-series forecasting. Forecasting is an essential component of predictive analytics. The book introduces popular forecasting methods and approaches used in a variety of business applications. The book offers clear explanations, practical examples, and end-of-chapter exercises and cases. Readers will learn to use forecasting methods using the free open-source R software to develop effective forecasting solutions that extract business value from time-series data. Featuring improved organization and new material, the Second Edition also includes: - Popular forecasting methods including smoothing algorithms, regression models, and neural networks - A practical approach to evaluating the performance of forecasting solutions - A business-analytics exposition focused on linking time-series forecasting to business goals - Guided cases for integrating the acquired knowledge using real data* End-of-chapter problems to facilitate active learning - A companion site with data sets, R code, learning resources, and instructor materials (solutions to exercises, case studies) - Globally-available textbook, available in both softcover and Kindle formats Practical Time Series Forecasting with R: A Hands-On Guide, Second Edition is the perfect textbook for upper-undergraduate, graduate and MBA-level courses as well as professional programs in data science and business analytics. The book is also designed for practitioners in the fields of operations research, supply chain management, marketing, economics, finance and management. For more information, visit forecastingbook.com
Author : J.S. Armstrong
Publisher : Springer Science & Business Media
Page : 840 pages
File Size : 34,16 MB
Release : 2001-05-31
Category : Business & Economics
ISBN : 0306476304
Principles of Forecasting: A Handbook for Researchers and Practitioners summarizes knowledge from experts and from empirical studies. It provides guidelines that can be applied in fields such as economics, sociology, and psychology. It applies to problems such as those in finance (How much is this company worth?), marketing (Will a new product be successful?), personnel (How can we identify the best job candidates?), and production (What level of inventories should be kept?). The book is edited by Professor J. Scott Armstrong of the Wharton School, University of Pennsylvania. Contributions were written by 40 leading experts in forecasting, and the 30 chapters cover all types of forecasting methods. There are judgmental methods such as Delphi, role-playing, and intentions studies. Quantitative methods include econometric methods, expert systems, and extrapolation. Some methods, such as conjoint analysis, analogies, and rule-based forecasting, integrate quantitative and judgmental procedures. In each area, the authors identify what is known in the form of `if-then principles', and they summarize evidence on these principles. The project, developed over a four-year period, represents the first book to summarize all that is known about forecasting and to present it so that it can be used by researchers and practitioners. To ensure that the principles are correct, the authors reviewed one another's papers. In addition, external reviews were provided by more than 120 experts, some of whom reviewed many of the papers. The book includes the first comprehensive forecasting dictionary.
Author : Michael P. Clements
Publisher : Oxford University Press
Page : 732 pages
File Size : 35,2 MB
Release : 2011-06-29
Category : Business & Economics
ISBN : 0199875510
This Handbook provides up-to-date coverage of both new and well-established fields in the sphere of economic forecasting. The chapters are written by world experts in their respective fields, and provide authoritative yet accessible accounts of the key concepts, subject matter, and techniques in a number of diverse but related areas. It covers the ways in which the availability of ever more plentiful data and computational power have been used in forecasting, in terms of the frequency of observations, the number of variables, and the use of multiple data vintages. Greater data availability has been coupled with developments in statistical theory and economic analysis to allow more elaborate and complicated models to be entertained; the volume provides explanations and critiques of these developments. These include factor models, DSGE models, restricted vector autoregressions, and non-linear models, as well as models for handling data observed at mixed frequencies, high-frequency data, multiple data vintages, methods for forecasting when there are structural breaks, and how breaks might be forecast. Also covered are areas which are less commonly associated with economic forecasting, such as climate change, health economics, long-horizon growth forecasting, and political elections. Econometric forecasting has important contributions to make in these areas along with how their developments inform the mainstream.