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DTSTART;TZID=Europe/Helsinki:20230130T140000
DTEND;TZID=Europe/Helsinki:20230130T151500
DTSTAMP:20260711T094742
CREATED:20230116T053404Z
LAST-MODIFIED:20230116T053404Z
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SUMMARY:Eftychia SOLEA (CREST-ENSAI)  “High-dimensional Nonparametric Functional Graphical Models via the Functional Additive Partial Correlation Operator ”
DESCRIPTION:Statistical Seminar: Every Monday at 2:00 pm.\nTime: 2:00 pm – 3:15 pm\nDate: 30th of January 2023\nPlace: Room 3001 \n  \nEftychia SOLEA (CREST-ENSAI) – “High-dimensional Nonparametric Functional Graphical Models via the Functional Additive Partial Correlation Operator ” \nAbstract: \nThis article develops a novel approach for estimating a high-dimensional and nonparametric graphical model for functional data. Our approach is built on a new linear operator\, the functional additive partial correlation operator\, which extends the partial correlation matrix to both the nonparametric and functional settings. We show that its nonzero elements can be used to characterize the graph\, and we employ sparse regression techniques for graph estimation. Moreover\, the method does not rely on any distributional assumptions and does not require the computation of multi-dimensional kernels\, thus avoiding the curse of dimensionality. We establish both estimation consistency and graph selection consistency of the proposed estimator\, while allowing the number of nodes to grow with the increasing sample size. Through simulation studies\, we demonstrate that our method performs better than existing methods in cases where the Gaussian or Gaussian copula assumption does not hold. We also demonstrate the performance of the proposed method by a study of an electroencephalography data set to construct a brain network. \n  \n  \n  \nOrganizers:\nCristina BUTUCEA (CREST)\, Alexandre TSYBAKOV (CREST)\, Karim LOUNICI (CMAP) \, Jaouad MOURTADA (CREST)\nSponsors:\nCREST-CMAP \n
URL:https://crest.science/event/eftychia-solea-crest-ensai-high-dimensional-nonparametric-functional-graphical-models-via-the-functional-additive-partial-correlation-operator/
CATEGORIES:Statistics
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