2013/2014 BA-HA_E181 Applied Time Series Analysis and Forecasting
English Title | |
Applied Time Series Analysis and Forecasting |
Course information |
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Language | English |
Exam ECTS | 7.5 ECTS |
Type | Elective |
Level | Bachelor |
Duration | One Semester |
Course period | Autumn
Wedensday 12.30-15.10, week36-41,43-48 |
Time Table | Please see course schedule at e-Campus |
Max. participants | 30 |
Study board |
Study Board for BSc in Economics and Business
Administration
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Course coordinator | |
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Administration: Ida Lyngby - il.eco@cbs.dk | |
Main academic disciplines | |
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Last updated on 05-08-2013 |
Learning objectives | |||||||||||||||||||||
Upon the end of the course, the
students will be able to:
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Course prerequisites | |||||||||||||||||||||
Forecasting of time series requires the use of econometrics and econometric software. The course assumes familiarity and completed bachelor courses in economics and basic econometrics. However, the necessary econometrics will be reviewed. | |||||||||||||||||||||
Examination | |||||||||||||||||||||
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Course content and structure | |||||||||||||||||||||
Accurate forecasting of future events
and their outcomes is a crucial input into a successful business or
economic planning process. Forecasting is used to answer important
questions, such as: How much profit will the business make? How
much demand will there be for a product or service? How much will
it cost to produce the product or offer the service? How much money
will the company need to borrow? When and how will borrowed funds
be repaid? Businesses must understand and use forecasting in order
to answer these important questions. This course provides an
introduction to the application of various forecasting techniques.
This course aims to introduce quantitative methods and techniques for time series modeling, analysis, and forecasting. Emphasis will also be put on the applications in economic and business related areas. Computing is an integral part of this course, therefore all students are expected to do data analysis, modeling and forecasting with computer programming software. The focus of the course is to use past data to predict the future. The key concept is that there is an underlying process that gives rise to the data. Using statistical properties of that process, we can develop forecasts. Forecasting methodology will be presented in a lecture format in the first part of each class meeting. The application, however, is the centerpiece of the presentation. In the second part of the class meeting, students will work on in-class applications. We will start with simple models that are widely used in business and progress to modern methods that are used by professional forecasters and economists. We will be studying basic components of time-series data, such as trend, seasonal, and cyclical components, as well as basic model specification techniques, such as moving average and auto regressions, used in the forecasting of time-series. All forecasting methods will be illustrated with detailed real world applications designed to mimic typical forecasting situations. The course uses applications not simply to illustrate the methods but also drive home an important lesson, the limitations of forecasting, by presenting truly realistic examples in which not everything works perfectly! Examples of the applications include, but not limited to, forecasting retail sales, hotel occupancy, fishery output, consumer loan requests, predicting expansion of fast food chain stores, modeling and forecasting macroeconomic activity indices such as Gross Domestic Product, unemployment and inflation, modeling development of a small open economy, forecasting New York Stock Exchange index and currency exchange rates and many other applications. The course’s development of personal competences: During the course, students will develop theoretical, empirical and programming skills necessary for handling the time series analysis, models and forecasts. |
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Teaching methods | |||||||||||||||||||||
Lectures and exercises in computer labs. | |||||||||||||||||||||
Student workload | |||||||||||||||||||||
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Expected literature | |||||||||||||||||||||
Required:
Diebold, F. X. Elements of Forecasting, 4th Ed. (Mason, OH: Cengage Publishing, 2007). Optional: Bowerman, Bruce L., Richard T. O'Connell and Anne B. Koehler, Forecasting, time series, and regression: an applied approach (4th edition), Duxbury Press (2005). |
Last updated on
05-08-2013