Sequential Adaptive Design for Jump Regression Estimation

2 Apr 2019Chiwoo ParkPeihua QiuJennifer Carpena-NúñezRahul RaoMichael SusnerBenji Maruyama

Selecting input variables or design points for statistical models has been of great interest in sequential design and active learning. Motivated by two scientific examples, this paper present a strategy of selecting the design points for a regression model when the underlying regression function is discontinuous... (read more)

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