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LLM支援ワークフローにおける若手研究者の研究プライバシー認識に関する調査
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ポイント
- 若手研究者がLLM利用時のプライバシー・出版のジレンマに直面している実態を調査した。
- アイデア漏洩への懸念が逆にLLM利用を加速させ、出版圧力と誤解が利用を促進した。
- 入力断片化等の対策は効果が低いと認識されており、制度的・教育的支援が必要である。
Abstract
Large Language Model (LLMs)-assisted scholarly workflows introduce critical privacy and intellectual property risks. As a uniquely vulnerable cohort driven by publication pressure and a lack of institutional support, novice researchers rely heavily on public LLMs, compelling them to navigate high-stakes privacy-publication trade-offs. To investigate these concerns, we conducted semi-structured interviews with 44 researchers across diverse disciplines. Our findings reveal that the fear of idea leakage paradoxically accelerates, rather than deters, reliance on LLMs, as researchers utilize them to expedite publication. They also held misconceptions that their ideas lacked the unique value to attract targeted attacks, and that their inputs would be safely diluted within massive datasets, preventing reconstruction. From interviews, we identified five types of mitigations including input fragmentation and adversarial probing, though we found that participants largely perceived these measures as ineffective. We outline implications including implementing institution-level sandboxed isolation, scenario-based privacy pedagogy, and verifiable data-deletion audits for transparency.
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