
Scalable association rule mining from tabular data using the Aerial neurosymbolic method. PyAerial provides a comprehensive toolkit for association rule mining with advanced capabilities: Scalable Rule Mining - Efficiently mine association rules from large tabular datasets without rule explosion Automatic Quality Metrics - Rules include support, confidence, Zhang's metric, and more calculated automatically Frequent Itemset Mining - Generate frequent itemsets with support values using the same neural approach ARM with Item Constraints - Focus rule mining on specific features of interest Classification Rules - Extract rules with target class labels for interpretable inference Numerical Data Support - 8 built-in discretization methods (unsupervised: equal-frequency, equal-width, k-means, quantile, custom bins; supervised: entropy-based, ChiMerge, decision tree) Customizable Architectures - Fine-tune autoencoder layers and dimensions for optimal performance GPU Acceleration - Leverage CUDA for faster training on large datasets Comprehensive Metrics - Support, confidence, lift, conviction, Zhang's metric, Yule's Q, interestingness Rule Visualization - Integrate with NiaARM for scatter plots and visual analysis Flexible Training - Adjust epochs, learning rate, batch size, and noise factors CITATION: If you use PyAerial in your research, please cite our papers: The neurosymbolic method paper:Karabulut, E., Groth, P., & Degeler, V. (2025). Neurosymbolic Association Rule Mining from Tabular Data. In Proceedings of The 19th International Conference on Neurosymbolic Learning and Reasoning (NeSy 2025), PMLR 284:565-588.https://proceedings.mlr.press/v284/karabulut25a.html The software paper:Karabulut, E., Groth, P., & Degeler, V. (2025). PyAerial: Scalable association rule mining from tabular data. SoftwareX, 31, 102341.https://doi.org/10.1016/j.softx.2025.102341
autoencoder, neurosymbolic artificial intelligence, machine learning, association rule mining, tabular data, Computer Science, interpretable machine learning, data mining, Capsule, Python
autoencoder, neurosymbolic artificial intelligence, machine learning, association rule mining, tabular data, Computer Science, interpretable machine learning, data mining, Capsule, Python
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