Synthetic Data
[/sɪnˈθetɪk ˈdeɪtə/]
Definitions
機械支援の翻訳下書き (Japanese) for "Synthetic Data": Artificially generated data that mimics the statistical properties of real-world data, used for training or testing AI models. Synthetic data can be created by generative models, rule-based systems, or simulations, and is especially valuable when real data is scarce, sensitive, or expensive to collect.
“例文の下書き: We generated synthetic medical records to train the model without risking patient privacy.”
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