The Oracle of DLphi
Dominik Alfke
W. Baines
J. Blechschmidt
Mauricio J. del Razo Sarmina
Amnon Drory
Dennis Elbrächter
N. Farchmin
Matteo Gambara
Silke Glas
Philipp Grohs
Peter Hinz
D. Kivaranovic
C. Kümmerle
Gitta Kutyniok
Sebastian Lunz
Jan Macdonald
Ryan Malthaner
Gregory Naisat
Ariel Neufeld
P. Petersen
Rafael Reisenhofer
Jun-Da Sheng
L. Thesing
Philipp Trunschke
Johannes von Lindheim
David Weber
Melanie Weber

Abstract
We present a novel technique based on deep learning and set theory which yields exceptional classification and prediction results. Having access to a sufficiently large amount of labelled training data, our methodology is capable of predicting the labels of the test data almost always even if the training data is entirely unrelated to the test data. In other words, we prove in a specific setting that as long as one has access to enough data points, the quality of the data is irrelevant.
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