Sensecape: Enabling Multilevel Exploration and Sensemaking with Large Language Models
This addresses the challenge for users engaging in complex information tasks like academic research or planning, though it is incremental as it builds on existing LLM interaction methods.
The authors tackled the problem of linear LLM interfaces hindering nonlinear exploration and sensemaking in complex information tasks by developing Sensecape, a system enabling multilevel abstraction and seamless switching between foraging and sensemaking, which in a user study allowed users to explore more topics and structure knowledge hierarchically.
People are increasingly turning to large language models (LLMs) for complex information tasks like academic research or planning a move to another city. However, while they often require working in a nonlinear manner -- e.g., to arrange information spatially to organize and make sense of it, current interfaces for interacting with LLMs are generally linear to support conversational interaction. To address this limitation and explore how we can support LLM-powered exploration and sensemaking, we developed Sensecape, an interactive system designed to support complex information tasks with an LLM by enabling users to (1) manage the complexity of information through multilevel abstraction and (2) seamlessly switch between foraging and sensemaking. Our within-subject user study reveals that Sensecape empowers users to explore more topics and structure their knowledge hierarchically, thanks to the externalization of levels of abstraction. We contribute implications for LLM-based workflows and interfaces for information tasks.