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Fig 1: Plots of Y (circles), θˆ (red), and θ∗ (blue) for three different f’s: (i) cubic polynomial(left plot), (ii) constant (middle plot), and (iii) piecewise constant
Fig 2: The left panel shows the scatter plot with the fitted function fˆn (in red) and the true f(in blue) while the right panel shows the CSD (dashed) along with its GCM (in red)

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