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Analysis of sequentially collected data including data modelling and forecasting techniques.
STAT317/ECON323 and STAT456/ECON614 are courses in Time Series Analysis. These courses introduce to the analysis of repeated observations over time, a type of data extremely common in every discipline. These courses are suited to anyone with an interest in analyzing data. We cover a wide range of topics, from the basic decomposition of a time series to advance topics such as spectral analysis.The methods explained during the lectures are complemented by practical computer lab tutorials which make use of the software R, one of the preferred computer packages by many statisticians. In these courses we will show you how to use the package, enter, manipulate and analyze time series data in R.
The courses will:define time series data in an appropriate statistical frameworkintroduce to both basic and advanced methods in time series analysisgive you experience in writing scientific and technical reports You will be able todescribe and conduct appropriate statistical modeling techniques for time series databe able to interpret the model results in such a way that a non-user of statistics can understanduse R competentlywrite a scientific and technical report
This course will provide students with an opportunity to develop the Graduate Attributes specified below:
Critically competent in a core academic discipline of their award
Students know and can critically evaluate and, where applicable, apply this knowledge to topics/issues within their majoring subject.
15 points from STAT201, STAT202, STAT213 and a further 15 points from STAT200-299, ECON213, MATH103, MATH199 or EMTH119.
ECON323, FINC323
Fabian Dunker
Carl Scarrott
General information for students Library portal LEARN
Domestic fee $749.00
International fee $3,788.00
* All fees are inclusive of NZ GST or any equivalent overseas tax, and do not include any programme level discount or additional course-related expenses.
For further information see Mathematics and Statistics .