Projected regression method for solving Fredholm integral equations arising in the analytic continuation problem of quantum physics

We present a supervised machine learning approach to the inversion of Fredholm integrals of the first kind as they arise, for example, in the analytic continuation problem of quantum many-body physics. The approach provides a natural regularization for the ill-conditioned inverse of the Fredholm ker...

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Veröffentlicht in:Inverse problems 2017-11, Vol.33 (11), p.115007
Hauptverfasser: Arsenault, Louis-François, Neuberg, Richard, Hannah, Lauren A, Millis, Andrew J
Format: Artikel
Sprache:eng
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Zusammenfassung:We present a supervised machine learning approach to the inversion of Fredholm integrals of the first kind as they arise, for example, in the analytic continuation problem of quantum many-body physics. The approach provides a natural regularization for the ill-conditioned inverse of the Fredholm kernel, as well as an efficient and stable treatment of constraints. The key observation is that the stability of the forward problem permits the construction of a large database of outputs for physically meaningful inputs. Applying machine learning to this database generates a regression function of controlled complexity, which returns approximate solutions for previously unseen inputs; the approximate solutions are then projected onto the subspace of functions satisfying relevant constraints. Under standard error metrics the method performs as well or better than the Maximum Entropy method for low input noise and is substantially more robust to increased input noise. We suggest that the methodology will be similarly effective for other problems involving a formally ill-conditioned inversion of an integral operator, provided that the forward problem can be efficiently solved.
ISSN:0266-5611
1361-6420
DOI:10.1088/1361-6420/aa8d93