A Modular Unsupervised Framework for Attribute Recognition from Unstructured Text
–arXiv.org Artificial Intelligence
--We propose POSID, a modular, lightweight and on-demand framework for extracting structured attribute-based properties from unstructured text without task-specific fine-tuning. While the method is designed to be adaptable across domains, in this work, we evaluate it on human attribute recognition in incident reports. POSID combines lexical and semantic similarity techniques to identify relevant sentences and extract attributes. We demonstrate its effectiveness on a missing person use-case using the InciT ext dataset, achieving effective attribute extraction without supervised training. Attribute recognition from unstructured text is important in many domains, including human descriptions in incident reports, product descriptions, and more.
arXiv.org Artificial Intelligence
Jul-8-2025