20
Nov
![Teaser image to Finite-sample exact prediction bands for functional data](/images/logos/stat-colloquium.png)
Finite-sample exact prediction bands for functional data
Simone Vantini, Polytechnic University of Milan
20.11.2023
3:00 pm - 4:30 pm
LMU Department of Statistics and via zoom
The talk discusses creating prediction bands for new observations in functional data with covariates. Leveraging Conformal Prediction and Functional Data Analysis, the proposed nonparametric method ensures visualization-friendly bands, exact coverage probability for finite samples, and computational efficiency.
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