This systematic review aims to provide a comprehensive analysis of the state of data-to-text generation research, focusing on identifying research gaps, offering future directions, and addressing challenges found during the review. We thoroughly examined the literature, including approaches, datasets, evaluation metrics, applications, multilingualism, and hallucination mitigation measures. Our review provides a roadmap for future research in this rapidly evolving field.
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