The coursework is worth 100 marks, weighted at 50% of the final mark.
The intention of the module is for you to follow along with each of the topics, testing all the methods and ideas on your portfolio of at least half a dozen time series.
The coursework mostly stems from this activity. Make sure that two of the time series in your portfolio include high-frequency financial data of your choice from the available high-frequency data sets on the module page on VLE. Each high-frequency data set contains minute-by-minute data for 3 years. You may not consider the full 3-year range of the high-frequency time series for the analysis; instead, you may select part of the range for your analysis.
Students are required to submit the following:
Note on the datasets: If the datasets used are available publicly (or accessible on the VLE), you do not need to upload them in your submission. Please use and provide a direct link to the dataset within your code.
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The coursework is designed to directly support the learning outcomes of the module by providing you with a hands-on approach to analysing real-world time-based data, particularly in financial contexts.
Through the portfolio-based assessment, you will apply key time series analysis techniques. A major focus of the coursework is on predicting future values of time series, requiring you to engage with regression models, Monte Carlo simulations, and autoregressive methods. In addition, the open-ended component of the coursework aligns with the module’s broader objective of equipping you with the ability to independently investigate, analyse, and make predictions on complex time-based data using both traditional and modern computational techniques.
At the end of each of the first five topics, you will find a section outlining what you should include in your portfolio at that stage. Your submission should provide a structured account of your engagement with each topic, demonstrating both implementation and critical analysis. This should include:
[60 Marks]
In this section, you will extend your analysis by conducting ACF, PACF, and AR(q) predictions at two different frequencies of the selected high-frequency dataset. For example, you may extract data at intervals of 5 minutes and 10 minutes and perform comparative analysis.
Use Monte Carlo methods in conjunction with AR(q) to simulate 25 potential future scenarios for each frequency for both 5-minute and 10-minute data intervals. Employ kernel density estimation (KDE) to estimate the probability distributions of these future scenarios, providing insights into forecast uncertainty.
Compare and evaluate forecasting performance across both frequencies,
considering model effectiveness at different time resolutions. Explore how alternative forecasting approaches, parameter refinements, or extended comparisons can provide deeper insights.
[20 marks]
The last part of the coursework is more open-ended. You should extend your analysis by both applying familiar techniques in a new way and exploring an approach that we have not covered in detail during the lectures. To achieve full marks, you should engage in both aspects of this exploration.
You may wish to consider that the topics that we think will be covered are STL decomposition, ARIMA, Vector Auto Regression, ARCH, GARCH, and Kalman filter. Some possibilities for things not covered are deep learning, recurrent neural networks, and technical trading analyses.
[20 marks]
The marks in this coursework are allocated as follows:
There are 60 marks available for completing tasks outlined at the bottom of each of the first five topics. You do not need to perform any additional implementation, and it is perfectly acceptable to use stats models or other libraries. For each of those five topics:
There are 20 marks available for completing this part:
The remaining 20 marks are more open-ended and more attuned to your creativity and backgrounds. There are several ways to obtain these marks, and it is up to you to put them together.
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Alongside the course materials, for essential reading on time series forecasting and analysis, please refer to:
A full list of reading materials is available on the VLE page
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