Steering LLM Summarization with Visual Workspaces for Sensemaking
Large Language Models (LLMs) have been widely applied in summarization due to their speedy and high-quality text generation. Summarization for sensemaking involves information compression and insight extraction. Human guidance in sensemaking tasks can prioritize and cluster relevant information for...
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Zusammenfassung: | Large Language Models (LLMs) have been widely applied in summarization due to
their speedy and high-quality text generation. Summarization for sensemaking
involves information compression and insight extraction. Human guidance in
sensemaking tasks can prioritize and cluster relevant information for LLMs.
However, users must translate their cognitive thinking into natural language to
communicate with LLMs. Can we use more readable and operable visual
representations to guide the summarization process for sensemaking? Therefore,
we propose introducing an intermediate step--a schematic visual workspace for
human sensemaking--before the LLM generation to steer and refine the
summarization process. We conduct a series of proof-of-concept experiments to
investigate the potential for enhancing the summarization by GPT-4 through
visual workspaces. Leveraging a textual sensemaking dataset with a ground truth
summary, we evaluate the impact of a human-generated visual workspace on
LLM-generated summarization of the dataset and assess the effectiveness of
space-steered summarization. We categorize several types of extractable
information from typical human workspaces that can be injected into engineered
prompts to steer the LLM summarization. The results demonstrate how such
workspaces can help align an LLM with the ground truth, leading to more
accurate summarization results than without the workspaces. |
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DOI: | 10.48550/arxiv.2409.17289 |