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LLMネイティブな図:科学的発見のための新たな成果物
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ポイント
- 本研究では、LLMが生成能力に加え、データ分析やタスク実行能力を持つことに着目し、科学研究のワークフローを変革する可能性を示した。
- 従来の図は静的な視覚的要約として扱われてきたが、LLMネイティブな図は、データ、分析、コード、可視化仕様を埋め込み、機械可読性を持つ点が新しい。
- LLMネイティブな図を用いることで、科学的発見の加速、再現性の向上、エージェントとユーザー間の透明性のある推論が実現できることを実証した。
Abstract
Large language models (LLMs) are transforming scientific workflows, not only through their generative capabilities but also through their emerging ability to use tools, reason about data, and coordinate complex analytical tasks. Yet in most human-AI collaborations, the primary outputs, figures, are still treated as static visual summaries: once rendered, they are handled by both humans and multimodal LLMs as images to be re-interpreted from pixels or captions. The emergent capabilities of LLMs open an opportunity to fundamentally rethink this paradigm. In this paper, we introduce the concept of LLM-native figures: data-driven artifacts that are simultaneously human-legible and machine-addressable. Unlike traditional plots, each artifact embeds complete provenance: the data subset, analytical operations and code, and visualization specification used to generate it. As a result, an LLM can "see through" the figure--tracing selections back to their sources, generating code to extend analyses, and orchestrating new visualizations through natural-language instructions or direct manipulation. We implement this concept through a hybrid language-visual interface that integrates LLM agents with a bidirectional mapping between figures and underlying data. Using the science of science domain as a testbed, we demonstrate that LLM-native figures can accelerate discovery, improve reproducibility, and make reasoning transparent across agents and users. More broadly, this work establishes a general framework for embedding provenance, interactivity, and explainability into the artifacts of modern research, redefining the figure not as an end product, but as an interface for discovery. For more details, please refer to the demo video available at www.llm-native-figure.com.
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