Association Rules Machine Learning complete intersection Calabi-Yau 5-Folds and 6-Folds
Abstract
Association rule machine learning is applied to the dataset of complete intersection Calabi--Yau 5-folds and 6-folds in order to uncover hidden patterns among their Hodge numbers. These Hodge numbers -- six for the 5-folds and nine for the 6-folds -- serve as the items in our analysis. For the 5-folds, we discover 60 significant association rules. For example, within the dataset, if h1,3 = 0 and h2,2 = 5, then h1,1 = 3 with 99.43\% confidence. Similarly, if h2,1 = 0, h1,3 = 0, and h2,2 = 5, then h1,1 = 3 with 99.42\% confidence. For the 6-folds, we identify 160 association rules across a dataset of 1,482,022 examples. A particularly striking observation is that h1,2 = h1,3 = h1,4 = h2,3 = 0 for all entries in this dataset. These types of association rules are especially valuable because the Hodge numbers of complete intersection Calabi--Yau 5-folds have only been computed for approximately 53 percent of the dataset, while those of 6-folds remain largely undetermined. The discovered patterns provide predictive insights that can guide future computations and theoretical developments.
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