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, Outline 1. Introduction 2. Impact of dependence and dependence modeling 3. Disentangling signal from noise

?. .. Jrss-;-friedman, Bernoulli Conclusion ? Decorrelation method designed for prediction issues ? Preprocessing of the data which enables the use of usual selection methods, Technometrics 26. Ahdesmäki and Strimmer, 2010, AOAS 27. Bickel and Levina, 1996.

F. Perthame and C. , , 2014.

B. Hornung and C. , Outline 1. Introduction 2. Impact of dependence and dependence modeling 3. Disentangling signal from noise

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D. References, C. Causeur, and . Sheu, ERP: Significance analysis of Event-Related Potentials data, 2014.

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C. Sheu, E. Perthame, D. Causeur, and Y. Lee, Accounting for time dependence in large-scale multiple testing of event-related potential data, AOAS, vol.10, issue.1, pp.219-245, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01338701