Online Infinite-Dimensional Regression: Learning Linear Operators

09/08/2023
by   Vinod Raman, et al.
0

We consider the problem of learning linear operators under squared loss between two infinite-dimensional Hilbert spaces in the online setting. We show that the class of linear operators with uniformly bounded p-Schatten norm is online learnable for any p ∈ [1, ∞). On the other hand, we prove an impossibility result by showing that the class of uniformly bounded linear operators with respect to the operator norm is not online learnable. Moreover, we show a separation between online uniform convergence and online learnability by identifying a class of bounded linear operators that is online learnable but uniform convergence does not hold. Finally, we prove that the impossibility result and the separation between uniform convergence and learnability also hold in the agnostic PAC setting.

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