次回の更新記事:AIによるレガシーシステムのモダナイズ、暗黙の業務…(公開予定日:2026年06月25日)
AIDB Daily Papers

高齢者の追跡データから家族へ「何が」から「どのように」「なぜ」を伝えるLLM要約

原題: From 'What' to 'How' and 'Why': Sharing LLM-Generated Retrospective Summaries of Older Adults' Passive Tracking Data with Remote Family Members
著者: Jiachen Li, Reina Szeyi Chan, Akshat Choube, Xiang Zhi Tan, Elizabeth Mynatt, Varun Mishra
公開日: 2026-06-02 | 分野: AI cs.AI cs.HC cs.MA AI支援 AI評価

※ 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

  • 高齢者の追跡データを多角的に分析し、遠隔の家族に有益な情報を提供するシステムを開発した。
  • 従来のシステムでは難しかった、客観的データから文脈を理解した物語性のある要約生成にLLMを活用した点が新しい。
  • 再設計されたシステムは、家族の満足度、有用性、信頼性を大幅に向上させ、「何が」から「どのように」「なぜ」への理解を深めた。

Abstract

With the growing prevalence of modern ubiquitous computing technologies, multi-modal tracking systems hold promise for providing timely awareness and reassurance to stakeholders such as remote family members (RFMs) of older adults, who play a central role in care coordination. However, combining heterogeneous data streams into high-level, meaningful content - such as retrospective summaries - remains challenging. While recent work has demonstrated the promise of large language models (LLMs) for interpreting multi-modal tracking data, less attention has been given to generating narrative accounts for stakeholders like RFMs, who possess rich personal knowledge of older adults and strong emotional responsibility, yet have limited visibility into their daily lives and limited capacity for caregiving. In this work, we explore how LLMs can be used to generate retrospective summaries from multi-modal tracking data for RFMs of older adults. We leveraged and customized an existing system, Vital Insight, to generate initial summaries on different dates and data availability scenarios as technology probes, and conducted interviews with 11 RFMs to gather feedback. Based on these insights, we redesigned the system into a multi-layer, multi-agent, insight-driven summary approach that builds from objective statistics and descriptions to enriched, context-aware narratives. We then compared the redesigned summaries with the initial versions through a survey with the same 11 RFMs and found significant improvements in satisfaction, perceived helpfulness, trust, and willingness to receive the summaries. We conclude by presenting design implications for AI-generated summaries for RFMs and broader contexts, emphasizing the need to support RFMs' sensemaking shift from simply presenting ''What'' data were collected, to explaining ''How'' is my loved one doing and ''Why''.

Paper AI Chat

この論文のPDF全文を対象にAIに質問できます。

質問の例:

AIチャット機能を利用するには、ログインまたは会員登録(無料)が必要です。

会員登録 / ログイン

💬 ディスカッション

ディスカッションに参加するにはログインが必要です。

ログイン / アカウント作成 →

関連するAIDB記事