AIDB Daily Papers
LLMの推論はどこまで許容されるか?ユーザーの反応と個人情報推論に対する制御
※ 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
- LLMがユーザーの意図を超えて個人情報を推論するリスクを可視化ツールで調査した。
- ユーザーは不快感より好奇心を示し、推論が不正確な場合にのみ不快感を覚えた。
- 推論の許容度は、内容だけでなく、生成・保持・伝達の文脈に依存することが示された。
Abstract
Ask ChatGPT about vacation planning, and it may infer your income. Ask it about medication, and it may infer your medical history. Because such inferences can expose more information than users intend to reveal, prior work argues that they are a defining privacy risk of LLM-based systems. Yet prior work has mostly shown that LLMs can make potentially violating inferences, not how users experience those inferences nor what controls users may want governing their use. We built the Reflective Layer, a visualization tool that surfaces example unstated inferences from users' own ChatGPT histories, and used it in a mixed-methods study with 18 regular ChatGPT users evaluating 215 surfaced inferences from their own conversations. Counterintuitively, participants reacted more strongly with curiosity and interest rather than distress and concern. Discomfort arose mainly when inferences felt misrepresentative of the user or misaligned with expected use. Participants were also markedly less comfortable with advertisers and third-party applications using those inferences than with platform providers. These findings suggest that the acceptability of LLM inferences is governed not only by its content, but by context-sensitive norms around how they are generated, retained within the platform, and transmitted beyond it.
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: