Synthetic Dataset Generation with Itemset-Based Generative Models

07/13/2020
by   Christian Lezcano, et al.
0

This paper proposes three different data generators, tailored to transactional datasets, based on existing itemset-based generative models. All these generators are intuitive and easy to implement and show satisfactory performance. The quality of each generator is assessed by means of three different methods that capture how well the original dataset structure is preserved.

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