On When and How to use SAT to Mine Frequent Itemsets
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A new stream of research was born in the last decade with the goal of mining itemsets of interest using Constraint Programming (CP). This has promoted a natural way to combine complex constraints in a highly flexible manner. Although CP state-of-the-art solutions formulate the task using Boolean variables, the few attempts to adopt propositional Satisfiability (SAT) provided an unsatisfactory performance. This work deepens the study on when and how to use SAT for the frequent itemset mining (FIM) problem by defining different encodings with multiple task-driven enumeration options and search strategies. Although for the majority of the scenarios SAT-based solutions appear to be non-competitive with CP peers, results show a variety of interesting cases where SAT encodings are the best option.
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Cited by 2 Pith papers
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Quantum Computing and Data Processing for Frequent Itemset Mining
QFM is a quantum data-processing framework for frequent itemset mining that introduces bit-vector qubit encoding, mining-aware candidate superposition, and bit-parallel threshold marking, reporting 96% average improve...
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Quantum Computing and Data Processing for Frequent Itemset Mining
QFM introduces three quantum mechanisms for level-wise frequent itemset mining and reports 96% average improvement over classical baselines on real-world datasets via implementations on IBM Qiskit and Amazon Braket.
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