Events
Wed 7 Jan, '26- |
Department Council MeetingStats Staff Common Room (MB1.02) |
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Wed 7 Jan, '26- |
DCM LunchMB1.02 Stats Staff Common Room |
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Thu 8 Jan, '26- |
APTS Executive CommitteeTeams |
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Tue 13 Jan, '26- |
Statistical Learning & Inference Seminars(See webpage for venue) |
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Tue 13 Jan, '26- |
Management GroupMB1.05 |
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Thu 15 Jan, '26- |
WEDICMB1.05 |
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Thu 15 Jan, '26- |
Young Researchers Meeting (YRM)Stats Common Room |
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Fri 16 Jan, '26- |
Applied Probability SeminarsMB0.08 |
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Fri 16 Jan, '26- |
Algorithms & Computationally Intensive Inference SeminarsMB0.08 |
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Tue 20 Jan, '26- |
Statistical Learning & Inference Seminars(See webpage for venue) |
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Wed 21 Jan, '26- |
Stochastic Finance @ Warwick (SF@W)B3.03 (Zeeman) |
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Thu 22 Jan, '26- |
Young Researchers Meeting (YRM)Stats Common Room |
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Fri 23 Jan, '26- |
Applied Probability SeminarsMB0.08 |
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Fri 23 Jan, '26- |
Algorithms & Computationally Intensive Inference SeminarsMB0.08 |
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Mon 26 Jan, '26- |
Staff ForumStats Common Rm |
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Tue 27 Jan, '26- |
Statistical Learning & Inference Seminars(See webpage for venue) |
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Tue 27 Jan, '26- |
CRiSM - First Colloquium by Daniela Witten about Valid F-screening in linear regressionZeeman Building MS.04Daniella Witten (), COPSS awardee, current co-editor of JRSSB. Research interests: statistical machine learning, biostats, etc. Suppose that a data analyst wishes to report the results of a least squares linear regression only if the overall null hypothesis—namely, that all non-intercept coefficients equal zero—is rejected. This practice, which we refer to as F-screening (since the overall null hypothesis is typically tested using an F-statistic), is in fact common practice across a number of applied fields. Unfortunately, it poses a problem: standard guarantees for the inferential outputs of linear regression, such as Type 1 error control of hypothesis tests and nominal coverage of confidence intervals, hold unconditionally, but fail to hold conditional on rejection of the overall null hypothesis. In this talk, I will present an inferential toolbox for the coefficients in a least squares model that are valid conditional on rejection of the overall null hypothesis. I will present selective p-values that lead to tests that control the selective Type 1 error, i.e., the Type 1 error conditional on having rejected the overall null hypothesis. Furthermore, they can be computed without access to the raw data, using only the standard outputs of a least squares linear regression, and therefore are suitable for use in a retrospective analysis of a published study. I will also present confidence intervals that attain nominal selective coverage, and point estimates that account for having rejected the overall null hypothesis. I will illustrate this selective procedure via re-analysis of a published result in the biomedical literature, for which the raw data is not available. This is joint work with Olivia McGough (U. Washington) and Daniel Kessler (UNC Chapel Hill). |
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Wed 28 Jan, '26- |
Early Career CommitteeMB1.05 |
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Wed 28 Jan, '26- |
Teaching CommitteeMB2.22 |
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Thu 29 Jan, '26- |
Young Researchers Meeting (YRM)Stats Common Room |
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Fri 30 Jan, '26- |
Applied Probability SeminarsMB0.08 |
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Fri 30 Jan, '26- |
Algorithms & Computationally Intensive Inference SeminarsMB0.08 |
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Tue 3 Feb, '26- |
Statistical Learning & Inference Seminars(See webpage for venue) |
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Tue 3 Feb, '26- |
Management GroupMB1.05 |
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Thu 5 Feb, '26- |
Young Researchers Meeting (YRM)Stats Common Room |
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Fri 6 Feb, '26- |
Applied Probability SeminarsMB0.08 |
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Fri 6 Feb, '26- |
Algorithms & Computationally Intensive Inference SeminarsMB0.08 |
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Mon 9 Feb, '26- |
Staff ForumStats Common Rm |
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Tue 10 Feb, '26- |
Statistical Learning & Inference Seminars(See webpage for venue) |
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Thu 12 Feb, '26- |
Young Researchers Meeting (YRM)Stats Common Room |
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