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Nonlinear functional regression: a functional RKHS approach

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Academic year: 2021

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Figure

Figure 1: Daily weather data for 35 Canadian station.
Figure 2 show an example of constructing these data.
Figure 3: True Curve (triangular mark), LFR predic- predic-tion (circle mark) and RKHS predicpredic-tion (star mark) of a curve obtained by a cut plane through f 2 at a y value equal to 10.5.
Figure 4: True Curve (triangular mark), LFR prediction (circle mark) and RKHS prediction (star mark) of log precipitation for four weather station.

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