The objectives of this unit of study are to develop an understanding of modern computationally intensive methods for statistical learning, inference, exploratory data analysis and data mining. Advanced computational methods for statistical learning will be introduced, including clustering, density estimation, smoothing, predictive models, model selection, combinatorial optimisation methods, sampling methods, the Bootstrap and Monte Carlo approach. In addition, the unit will demonstrate how to apply the above techniques effectively for use on large data sets in practice.
Unit details and rules
| Academic unit | Mathematics and Statistics Academic Operations |
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| Credit points | 6 |
| Prerequisites
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None |
| Corequisites
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None |
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Prohibitions
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None |
| Assumed knowledge
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A good understanding of statistics, including hypothesis testing and regression modelling, and substantial statistical computing experience. For example, both ODAT5011 and ODAT5021 or a unit like STAT5002. |
| Available to study abroad and exchange students | No |
Teaching staff
| Coordinator | Wei Zhang, wei.zhang5@sydney.edu.au |
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| Lecturer(s) | Justin Wishart, justin.wishart@sydney.edu.au |