FlexiDataGen: An Adaptive LLM Framework for Dynamic Semantic Dataset Generation in Sensitive Domains
- URL: http://arxiv.org/abs/2510.19025v1
- Date: Tue, 21 Oct 2025 19:07:49 GMT
- Title: FlexiDataGen: An Adaptive LLM Framework for Dynamic Semantic Dataset Generation in Sensitive Domains
- Authors: Hamed Jelodar, Samita Bai, Roozbeh Razavi-Far, Ali A. Ghorbani,
- Abstract summary: FlexiDataGen is an adaptive large language model (LLM) framework designed for dynamic semantic dataset generation in sensitive domains.<n>It autonomously synthesizes rich, semantically coherent, and linguistically diverse datasets tailored to specialized fields.<n>We show that FlexiDataGen effectively alleviates data shortages and annotation bottlenecks, enabling scalable and accurate machine learning model development.
- Score: 5.062812514858075
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Dataset availability and quality remain critical challenges in machine learning, especially in domains where data are scarce, expensive to acquire, or constrained by privacy regulations. Fields such as healthcare, biomedical research, and cybersecurity frequently encounter high data acquisition costs, limited access to annotated data, and the rarity or sensitivity of key events. These issues-collectively referred to as the dataset challenge-hinder the development of accurate and generalizable machine learning models in such high-stakes domains. To address this, we introduce FlexiDataGen, an adaptive large language model (LLM) framework designed for dynamic semantic dataset generation in sensitive domains. FlexiDataGen autonomously synthesizes rich, semantically coherent, and linguistically diverse datasets tailored to specialized fields. The framework integrates four core components: (1) syntactic-semantic analysis, (2) retrieval-augmented generation, (3) dynamic element injection, and (4) iterative paraphrasing with semantic validation. Together, these components ensure the generation of high-quality, domain-relevant data. Experimental results show that FlexiDataGen effectively alleviates data shortages and annotation bottlenecks, enabling scalable and accurate machine learning model development.
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