AI RESEARCH
Evaluating quality in synthetic data generation for large tabular health datasets
arXiv CS.LG
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ArXi:2604.15961v1 Announce Type: new There is no consensus in the field of synthetic data on concise metrics for quality evaluations or benchmarks on large health datasets, such as historical epidemiological data. This study presents an evaluation of seven recent models from major machine learning families. The models were evaluated using four different datasets, each with a distinct scale. To ensure a fair comparison, we systematically tuned the hyperparameters of each model for each dataset.