Update README
Signed-off-by: Riccardo Finotello <riccardo.finotello@gmail.com>
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@@ -18,7 +18,7 @@ We show that divergences are not due to gravitational feedback but to the lack o
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We also introduce a new orbifold structure capable of fixing the issue and reinstate a distributional interpretation to field theory amplitudes.
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We finally present a new artificial intelligence approach to algebraic geometry and string compactifications.
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We compute the Hodge numbers of Complete Intersection Calabi--Yau 3-folds using deep learning techniques based on computer vision and object recognition techniques.
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We compute the Hodge numbers of Complete Intersection Calabi-Yau 3-folds using deep learning techniques based on computer vision and object recognition techniques.
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We also include a methodological study of machine learning applied to data in string theory: as in most applications machine learning almost never relies on the blind application of algorithms to the data but it requires a careful exploratory analysis and feature engineering.
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We thus show how such an approach can help in improving results by processing the data before utilising them.
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We then show that deep learning the configuration matrix of the manifolds reaches the highest accuracy in the task with smaller networks, less parameters and less data.
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