Improving Steering and Verification in AI-Assisted Data Analysis with Interactive Task Decomposition

要旨

LLM-powered tools like ChatGPT Data Analysis, have the potential to help users tackle the challenging task of data analysis programming, which requires expertise in data processing, programming, and statistics. However, our formative study (n=15) uncovered serious challenges in verifying AI-generated results and steering the AI (i.e., guiding the AI system to produce the desired output). We developed two contrasting approaches to address these challenges. The first (Stepwise) decomposes the problem into step-by-step subgoals with pairs of editable assumptions and code until task completion, while the second (Phasewise) decomposes the entire problem into three editable, logical phases: structured input/output assumptions, execution plan, and code. A controlled, within-subjects experiment (n=18) compared these systems against a conversational baseline. Users reported significantly greater control with the Stepwise and Phasewise systems, and found intervention, correction, and verification easier, compared to the baseline. The results suggest design guidelines and trade-offs for AI-assisted data analysis tools.

著者
Majeed Kazemitabaar
University of Toronto, Toronto, Ontario, Canada
Jack Williams
Microsoft Research, Cambridge, United Kingdom
Ian Drosos
Microsoft Research, Cambridge, United Kingdom
Tovi Grossman
University of Toronto, Toronto, Ontario, Canada
Austin Z. Henley
Microsoft, Redmond, Washington, United States
Carina Negreanu
Microsoft Research , Cambridge, Cambridgeshire, United Kingdom
Advait Sarkar
Microsoft Research, Cambridge, United Kingdom
論文URL

https://doi.org/10.1145/3654777.3676345

動画

会議: UIST 2024

ACM Symposium on User Interface Software and Technology

セッション: 3. AI as Copilot

Westin: Allegheny 3
6 件の発表
2024-10-16 01:10:00
2024-10-16 02:40:00