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A0805
Title: Experimental designs for functional modeling of longitudinal data Authors:  MingHung Kao - Arizona State University (United States) [presenting]
Abstract: Functional data analysis (FDA) has gained much popularity in extracting useful information from repeated measurements collected at various points on a domain, such as time. A crucial step for rendering a precise and valid inference is to have a high-quality sampling schedule to sample informative data from the underlying function. We are concerned with this design problem of FDA, and propose efficient computational approaches for obtaining good designs to rein in cost. Our proposed approaches generate high-quality designs to allow a precise recovery of the underlying function, as well as precise prediction with functional linear and quadratic regressions.