Human-AI Collaborative Taxonomy Construction: A Case Study in Profession-Specific Writing Assistants (2406.18675v2)
Abstract: LLMs have assisted humans in several writing tasks, including text revision and story generation. However, their effectiveness in supporting domain-specific writing, particularly in business contexts, is relatively less explored. Our formative study with industry professionals revealed the limitations in current LLMs' understanding of the nuances in such domain-specific writing. To address this gap, we propose an approach of human-AI collaborative taxonomy development to perform as a guideline for domain-specific writing assistants. This method integrates iterative feedback from domain experts and multiple interactions between these experts and LLMs to refine the taxonomy. Through larger-scale experiments, we aim to validate this methodology and thus improve LLM-powered writing assistance, tailoring it to meet the unique requirements of different stakeholder needs.
- Minhwa Lee (7 papers)
- Zae Myung Kim (15 papers)
- Dongyeop Kang (72 papers)
- Vivek Khetan (13 papers)