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Project Description
Nature has left us with some very subtle signals within data to indicate the causal relationships that generated that data. These signals can be hard to detect, prone to statistical error, and while we do have mechanisms to construct causal models from data, at this point, they tend to be brittle, expensive, and unreliable. HPCC Systems can help overcome the challenge of identifying causal signals from data by allowing far more data to be processed efficiently via complex causal discovery algorithms.
A wide variety of causal discovery algorithms have been described and implemented to date. This project will evaluate the available algorithms against mixed-data-type, real-world datasets using open-source implementations. Algorithms will be evaluated for power, practicality, and applicability to different data-types.
The work involves identifying candidate datasets, defining appropriate analytics, performing causal analysis and publishing results. The student will design tests, perform tests, and document their results comparing various algorithms.
The successful candidate should have a background in mathematics and statistics, machine learning, and preferably knowledge of Causal Science, Causal algorithms and Causal analysis packages.
If you are interested in this project, please contact the mentor shown below.
More information about the HPCC Systems Causality Toolkit is available in our blog Causality 2021.
Mentor | Roger Dev Backup Mentor: Lili Xu |
Skills needed |
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Other resources |
Student Posters from previous Causality Projects:
Student Blog Journals |