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AIの設計ミスが引き起こす職場でのインシデント:見過ごされがちな問題とその影響

原題: The Quiet Path from Seemingly Minor Design Errors to Workplace AI Incidents
著者: Julia De Miguel Velázquez, Sanja Šćepanović, Andrés Gvirtz, Daniele Quercia
公開日: 2026-05-20 | 分野: AI 人間中心設計 cs.HC HCI 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

  • AIシステムと労働者のニーズの乖離が、職場で発生するAIインシデントの83%の原因となっていることを分析した。
  • 開発者は効率や速度を重視する傾向があるが、労働者は精度や洞察力、個別対応を求めており、このミスマッチが問題となっている。
  • AIの設計を労働者のニーズに合わせることで、職場でのAIインシデントを減らし、労働者の主体性と生産性の低下を防ぐ必要がある。

Abstract

Recent human-computer interaction (HCI) research has revealed a widespread misalignment between how developers design workplace artificial intelligence (AI) systems, and what workers actually need from them. Yet, little research has examined the effects of this gap, or how it may cause harm. We analyzed 1,524 reports of incidents in which AI systems were used to perform 171 occupational tasks across 12 industry sectors. Using an Large Language Model (LLM)-as-an-expert approach, we extracted the main traits of the AI systems involved in those incidents using an established framework of twelve traits. We then compared them with the traits that 202 workers highly familiar with those tasks would have preferred. We found that as many as 83% of workplace incidents stem from worker-AI misalignments. In most cases, workers wanted systems that are precise, insightful, or personal, but instead received systems that are basic, simple, or general. Over the years, fast AI caused a considerable number of incidents, yet these declined, and imaginative AI, with the mass introduction of generative AI, started to cause incidents. We also compared the traits causing the incidents with the traits that 197 developers building AI systems for those tasks would have preferred. If the traits causing the incidents were the same as those designed by developers, then developers may be responsible for those incidents. We found that 74% of task misalignments could be attributed to developers who tended to overfocus on efficiency and speed, especially for systems performing tasks in people-facing occupations such as those in the human resources sector. Our results call for design interventions that better align AI development with workers' needs, as without such corrections, workplace AI incidents are likely to persist, causing the invisible erosion of worker agency and organizational productivity.

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