Abstract

We revisit the question of predicting both Hodge numbers $h^{1,1}$ and $h^{2,1}$ of complete intersection Calabi-Yau (CICY) 3-folds using machine learning (ML), considering both the old and new datasets built respectively by Candelas-Dale-Lutken-Schimmrigk / Green-H\"ubsch-Lutken and by Anderson-Gao-Gray-Lee. In real world applications, implementing a ML system rarely reduces to feed the brute data to the algorithm. Instead, the typical workflow starts with an exploratory data analysis (EDA) which aims at understanding better the input data and finding an optimal representation. It is followed by the design of a validation procedure and a baseline model. Finally, several ML models are compared and combined, often involving neural networks with a topology more complicated than the sequential models typically used in physics. By following this procedure, we improve the accuracy of ML computations for Hodge numbers with respect to the existing literature. First, we obtain 97% (resp. 99%) accuracy for $h^{1,1}$ using a neural network inspired by the Inception model for the old dataset, using only 30% (resp. 70%) of the data for training. For the new one, a simple linear regression leads to almost 100% accuracy with 30% of the data for training. The computation of $h^{2,1}$ is less successful as we manage to reach only 50% accuracy for both datasets, but this is still better than the 16% obtained with a simple neural network (SVM with Gaussian kernel and feature engineering and sequential convolutional network reach at best 36%). This serves as a proof of concept that neural networks can be valuable to study the properties of geometries appearing in string theory.

Highlights

  • The last few years have seen a major uprising of machine learning (ML), and more of neural networks [1,2,3]

  • In view of its versatility, it is likely that ML will find its way toward highenergy and theoretical physics

  • We approach the problem of predicting the Hodge numbers using artificial neural networks (ANN), which we briefly review in Appendix A 4

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Summary

Introduction

The last few years have seen a major uprising of machine learning (ML), and more of neural networks [1,2,3] This technology is extremely efficient at discovering and predicting patterns and pervades most fields of applied sciences and of the industry. String theory is the most developed candidate for a theory of quantum gravity together with the unification of matter and interactions.

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