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arxiv: 1706.02714 · v3 · submitted 2017-06-08 · ✦ hep-th · hep-ph· math.AG· stat.ML

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Deep-Learning the Landscape

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classification ✦ hep-th hep-phmath.AGstat.ML
keywords neuralparadigmphysicsaccuracyalgebraicastoundingavailablebundles
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We propose a paradigm to deep-learn the ever-expanding databases which have emerged in mathematical physics and particle phenomenology, as diverse as the statistics of string vacua or combinatorial and algebraic geometry. As concrete examples, we establish multi-layer neural networks as both classifiers and predictors and train them with a host of available data ranging from Calabi-Yau manifolds and vector bundles, to quiver representations for gauge theories. We find that even a relatively simple neural network can learn many significant quantities to astounding accuracy in a matter of minutes and can also predict hithertofore unencountered results. This paradigm should prove a valuable tool in various investigations in landscapes in physics as well as pure mathematics.

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