Forecasting in Business and Economics
Academic Press, 10. 5. 2014 - Počet stran: 236
Forecasting in Business and Economics presents a variety of forecasting techniques and problems. This book discusses the importance of the selection of a relevant information set.
Organized into 12 chapters, this book begins with an overview of the forecasting techniques that are useful in decision making. This text then discusses the difficulties in interpreting an apparent trend and discusses its implications. Other chapters consider how a time series is analyzed and forecast by discussing the methods by which a series can be generated. This book discusses as well the views of most academic time series analysts regarding the usefulness of searches for cycles in most economic and business series. The final chapter deals with the techniques developed for forecasting.
This book is a valuable resource for senior undergraduates in business, economics, commerce, and management. Graduate students in operations research and production engineering will also find this book extremely useful.
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CHAPTER 2 TrendLine Fitting and Forecasting
CHAPTER 3 Forecasting from Time Series Models
CHAPTER 4 Further Aspects of Time Series Forecasting
CHAPTER 5 Regression Methods and Econometric Models
Anticipations and Expectations
CHAPTER 7 Leading Indicators
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