AI Agents

Facilitating Proactive and Reactive Guidance for Decision Making on the Web: A Design Probe with WebSeek

YYanwei HuangAArpit Narechania
Published
January 21, 2026
Authors
2
Word Count
16,222

WebSeek: AI-driven, interactive web data analysis tool.

Abstract

Web AI agents such as ChatGPT Agent and GenSpark are increasingly used for routine web-based tasks, yet they still rely on text-based input prompts, lack proactive detection of user intent, and offer no support for interactive data analysis and decision making. We present WebSeek, a mixed-initiative browser extension that enables users to discover and extract information from webpages to then flexibly build, transform, and refine tangible data artifacts-such as tables, lists, and visualizations-all within an interactive canvas. Within this environment, users can perform analysis-including data transformations such as joining tables or creating visualizations-while an in-built AI both proactively offers context-aware guidance and automation, and reactively responds to explicit user requests. An exploratory user study (N=15) with WebSeek as a probe reveals participants' diverse analysis strategies, underscoring their desire for transparency and control during human-AI collaboration.

Key Takeaways

  • 1

    WebSeek enhances web data analysis efficiency.

  • 2

    Mixed-initiative AI improves user control and transparency.

  • 3

    High accuracy and user satisfaction in tasks.

Limitations

  • Occasional model inaccuracies in data type determination.

  • Mixed feedback on peripheral guidance effectiveness.

Keywords

More in AI Agents

View all
Facilitating Proactive and Reactive Guidance for Decision Making on the Web: A Design Probe with WebSeek | Paperchime