Publication | Open Access
Interval-wise testing for functional data
68
Citations
39
References
2017
Year
EngineeringVerificationStatistical AnalysisNull Hypothesis SignificanceData ScienceUncertainty QuantificationInterval AnalysisStatistical ComputingExploratory Data AnalysisBiostatisticsPublic HealthStatisticsFunctional DataFunctional Data AnalysisAutomated ReasoningSoftware TestingInterval ComputationStatistical InferenceNull HypothesisFunctional Verification
In the framework of null hypothesis significance testing for functional data, we propose a procedure able to select intervals of the domain imputable for the rejection of a null hypothesis. An unadjusted p-value function and an adjusted one are the output of the procedure, namely interval-wise testing. Depending on the sort and level α of type-I error control, significant intervals can be selected by thresholding the two p-value functions at level α. We prove that the unadjusted (adjusted) p-value function point-wise (interval-wise) controls the probability of type-I error and it is point-wise (interval-wise) consistent. To enlighten the gain in terms of interpretation of the phenomenon under study, we applied the interval-wise testing to the analysis of a benchmark functional data set, i.e. Canadian daily temperatures. The new procedure provides insights that current state-of-the-art procedures do not, supporting similar advantages in the analysis of functional data with less prior knowledge.
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