SCS Reads 2019-2020
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** Roger Peng, Reproducible Research in Computational Science, ''Science'', Vol. 334, Issue 6060, pp. 1226-1227 [http://science.sciencemag.org/content/334/6060/1226] | ** Roger Peng, Reproducible Research in Computational Science, ''Science'', Vol. 334, Issue 6060, pp. 1226-1227 [http://science.sciencemag.org/content/334/6060/1226] | ||
**RC: This is timely in a couple ways. Chris Green is teaching a course on the topic, so he or one of the students might be able to come to a meeting to discuss their views. We also have a QM Forum speaker on topic in the Winter | **RC: This is timely in a couple ways. Chris Green is teaching a course on the topic, so he or one of the students might be able to come to a meeting to discuss their views. We also have a QM Forum speaker on topic in the Winter | ||
- | ** We can use articles in the special issue of the American Statistician devoted to current problems in statistical inference, particularly the use and interpretation of p-values and the concept of statistical significance. | + | ** We can use articles in the special issue of the American Statistician devoted to current problems in statistical inference, particularly the use and interpretation of p-values and the concept of statistical significance. For an overview, see the [https://www.tandfonline.com/doi/full/10.1080/00031305.2019.1583913 editorial published in the special issue]. |
* '''Big Data problems''': Another hot topic, but perhaps too broad. [MF: I don't know enough to specify it more clearly as a useful seminar topic.] [This would be interesting, but I would hope we could find materials that address the issue from a social science perspective] | * '''Big Data problems''': Another hot topic, but perhaps too broad. [MF: I don't know enough to specify it more clearly as a useful seminar topic.] [This would be interesting, but I would hope we could find materials that address the issue from a social science perspective] | ||
* Some statistical methods topics, not yet clearly articulated: | * Some statistical methods topics, not yet clearly articulated: |
Revision as of 12:05, 2 September 2019
- A topic need not occupy the entire academic year and we could plan to consider more than one topic.
- To get an account to edit this wiki send a message to Georges Monette.
New candidates topics for 2019-2020
- Add suggestions here or send them to Georges Monette who can add them for you.
Candidates from 2018-2019
- Reproducibility of research: a crisis in Statistics??: How should statistical practice be informed by current controversies about the replication crisis and countervailing moves toward open science and reproducibility? This was a big topic at the recent JSM 2018 conference.
- Roger Peng, Reproducible Research in Computational Science, Science, Vol. 334, Issue 6060, pp. 1226-1227 [1]
- RC: This is timely in a couple ways. Chris Green is teaching a course on the topic, so he or one of the students might be able to come to a meeting to discuss their views. We also have a QM Forum speaker on topic in the Winter
- We can use articles in the special issue of the American Statistician devoted to current problems in statistical inference, particularly the use and interpretation of p-values and the concept of statistical significance. For an overview, see the editorial published in the special issue.
- Big Data problems: Another hot topic, but perhaps too broad. [MF: I don't know enough to specify it more clearly as a useful seminar topic.] [This would be interesting, but I would hope we could find materials that address the issue from a social science perspective]
- Some statistical methods topics, not yet clearly articulated:
- Clustering methods [RC: Could this fall under the Big Data label?]
- Robustness
- Mediation
- Meta analysis in medicine: how can you tell whether a lit review is complete with logistic regression?! [RC: I think Meta-Analysis could be a good topic, including M-L/J-A discussing their research]
- Consulting issues: Practical aspects of statistical consulting [MF: Perhaps this would be a better topic for the SCS staff meetings ??] [RC: That would make a good topic for a business/staff meeting, if there were no consulting cases to discuss]
- Survey Sampling: Elucidating the mystery of bootstrap weights and how to use them when analyzing survey data, e.g. from Statistics Canada.
- Evidence-based medicine: Ideas and implications
- Machine Learning, AI, Deep Learning: An Overview
- Disseminating technical information to non-technical audiences: in consulting and in teaching. [Could this be put together with 'consulting issues'?]
- Missing Data
- Statistical Paradoxes and Fallacies [RC: There are some good "summary" articles related to statistical paradoxes and Georges' examples are always helpful]
- Initial attempt at a creating a list: Paradoxes, Fallacies and Other Surprises. Please add, modify or comment.