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Synthetic Tabular Data Evaluation in the Health Domain Covering Resemblance, Utility, and Privacy Dimensions. | LitMetric

Synthetic Tabular Data Evaluation in the Health Domain Covering Resemblance, Utility, and Privacy Dimensions.

Methods Inf Med

School of Computing, Engineering and Intelligent Systems, Ulster University, Derry-Londonderry, United Kingdom.

Published: June 2023

AI Article Synopsis

  • The paper discusses the lack of standardized methods for assessing synthetic tabular data, especially in the health domain, highlighting its importance for data augmentation and privacy.
  • The authors propose an evaluation strategy that focuses on three key dimensions: resemblance, utility, and privacy, along with specific metrics and methods to systematically assess the quality of generated data.
  • The evaluation results indicate that most synthetic data generation approaches maintain good resemblance, utility, and privacy, with variations in performance based on different datasets and methods, supporting the effectiveness of the proposed evaluation pipeline.

Article Abstract

Background: Synthetic tabular data generation is a potentially valuable technology with great promise for data augmentation and privacy preservation. However, prior to adoption, an empirical assessment of generated synthetic tabular data is required across dimensions relevant to the target application to determine its efficacy. A lack of standardized and objective evaluation and benchmarking strategy for synthetic tabular data in the health domain has been found in the literature.

Objective: The aim of this paper is to identify key dimensions, per dimension metrics, and methods for evaluating synthetic tabular data generated with different techniques and configurations for health domain application development and to provide a strategy to orchestrate them.

Methods: Based on the literature, the resemblance, utility, and privacy dimensions have been prioritized, and a collection of metrics and methods for their evaluation are orchestrated into a complete evaluation pipeline. This way, a guided and comparative assessment of generated synthetic tabular data can be done, categorizing its quality into three categories ("" "" and ""). Six health care-related datasets and four synthetic tabular data generation approaches have been chosen to conduct an analysis and evaluation to verify the utility of the proposed evaluation pipeline.

Results: The synthetic tabular data generated with the four selected approaches has maintained resemblance, utility, and privacy for most datasets and synthetic tabular data generation approach combination. In several datasets, some approaches have outperformed others, while in other datasets, more than one approach has yielded the same performance.

Conclusion: The results have shown that the proposed pipeline can effectively be used to evaluate and benchmark the synthetic tabular data generated by various synthetic tabular data generation approaches. Therefore, this pipeline can support the scientific community in selecting the most suitable synthetic tabular data generation approaches for their data and application of interest.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10306449PMC
http://dx.doi.org/10.1055/s-0042-1760247DOI Listing

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