AIDB Daily Papers
AI時代の人間とデータのインタラクション:課題とチャンス
※ 日本語タイトル・ポイントはAIによる自動生成です。正確な内容は原論文をご確認ください。
ポイント
- AIの急速な発展に伴い、大規模で多様なデータ分析におけるインタラクティブシステムの課題が浮上した。
- 従来の効率性や拡張性だけでなく、認知、知覚、設計原則を組み込んだ人間中心のAIシステムが重要となる。
- AIによる洞察の信頼性と解釈性に対する不確実性が増大しており、新たな研究の方向性を示す。
Abstract
The rapid advancement of AI is transforming human-centered systems, with profound implications for human-AI interaction, human-data interaction, and visual analytics. In the AI era, data analysis increasingly involves large-scale, heterogeneous, and multimodal data that is predominantly unstructured, as well as foundation models such as LLMs and VLMs, which introduce additional uncertainty into analytical processes. These shifts expose persistent challenges for human-data interactive systems, including perceptually misaligned latency, scalability constraints, limitations of existing interaction and exploration paradigms, and growing uncertainty regarding the reliability and interpretability of AI-generated insights. Responding to these challenges requires moving beyond conventional efficiency and scalability metrics, redefining the roles of humans and machines in analytical workflows, and incorporating cognitive, perceptual, and design principles into every level of the human-data interaction stack. This paper investigates the challenges introduced by recent advances in AI and examines how these developments are reshaping the ways users engage with data, while outlining limitations and open research directions for building human-centered AI systems for interactive data analysis in the AI era.
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