2024
DOI: 10.3390/data9010014
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GeMSyD: Generic Framework for Synthetic Data Generation

Ramona Tolas,
Raluca Portase,
Rodica Potolea

Abstract: In the era of data-driven technologies, the need for diverse and high-quality datasets for training and testing machine learning models has become increasingly critical. In this article, we present a versatile methodology, the Generic Methodology for Constructing Synthetic Data Generation (GeMSyD), which addresses the challenge of synthetic data creation in the context of smart devices. GeMSyD provides a framework that enables the generation of synthetic datasets, aligning them closely with real-world data. To… Show more

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References 34 publications
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“…To generate the refrigerator data, we applied the approach we proposed in [42], where a synthetic data generation framework is presented. The synthetic data are generated by emulating the syntactic and semantic characteristics of real data.…”
Section: Dataset Descriptionmentioning
confidence: 99%
“…To generate the refrigerator data, we applied the approach we proposed in [42], where a synthetic data generation framework is presented. The synthetic data are generated by emulating the syntactic and semantic characteristics of real data.…”
Section: Dataset Descriptionmentioning
confidence: 99%