Rule-adhering synthetic data -- the lingua franca of learning
AI-generated synthetic data allows to distill the general patterns of existing data, that can then be shared safely as granular-level representative, yet novel data samples within the original semantics. In this work we explore approaches of incorporating domain expertise into the data synthesis, to...
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Zusammenfassung: | AI-generated synthetic data allows to distill the general patterns of
existing data, that can then be shared safely as granular-level representative,
yet novel data samples within the original semantics. In this work we explore
approaches of incorporating domain expertise into the data synthesis, to have
the statistical properties as well as pre-existing domain knowledge of rules be
represented. The resulting synthetic data generator, that can be probed for any
number of new samples, can then serve as a common source of intelligence, as a
lingua franca of learning, consumable by humans and machines alike. We
demonstrate the concept for a publicly available data set, and evaluate its
benefits via descriptive analysis as well as a downstream ML model. |
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DOI: | 10.48550/arxiv.2209.06679 |