ExOAR: Expert-Guided Object and Activity Recognition from Textual Data (2512.03790v1)
Abstract: Object-centric process mining requires structured data, but extracting it from unstructured text remains a challenge. We introduce ExOAR (Expert-Guided Object and Activity Recognition), an interactive method that combines LLMs with human verification to identify objects and activities from textual data. ExOAR guides users through consecutive stages in which an LLM generates candidate object types, activities, and object instances based on contextual input, such as a user's profession, and textual data. Users review and refine these suggestions before proceeding to the next stage. Implemented as a practical tool, ExOAR is initially validated through a demonstration and then evaluated with real-world Active Window Tracking data from five users. Our results show that ExOAR can effectively bridge the gap between unstructured textual data and the structured log with clear semantics needed for object-centric process analysis, while it maintains flexibility and human oversight.
Sponsor
Paper Prompts
Sign up for free to create and run prompts on this paper using GPT-5.
Top Community Prompts
Collections
Sign up for free to add this paper to one or more collections.