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Published:2026/1/8 15:02:41

ジラ系(Jirai Kei)解読!LLMで自己破壊を阻止✨

超要約: LLMでジラ系(Jirai Kei)の危険を察知!

🌟 ギャル的キラキラポイント✨ ● LLM(大規模言語モデル)の弱点克服!スラング(隠語)もバッチリ理解😎 ● 自己破壊的な表現を、サブカルチャー(独特の文化)から見つけ出すよ! ● AIでメンタルヘルス(心の健康)支援も夢じゃないかも💖

詳細解説 ● 背景 SNS(ソーシャルネットワーキングサービス)で自己表現する人が増えたけど、裏では危ないことしてる人もいるみたい…😱 特にジラ系みたいなサブカルチャーは、独特の言葉で危険なことを隠すから厄介なのよね。

● 方法 LLMに「サブカルチャーアライメントソルバー(SAS)」って魔法をかけたよ! SASは、最新のスラングを調べて、ジラ系の言葉を理解しちゃうんだって!すごい✨

続きは「らくらく論文」アプリで

Can Large Language Models Resolve Semantic Discrepancy in Self-Destructive Subcultures? Evidence from Jirai Kei

Peng Wang / Xilin Tao / Siyi Yao / Jiageng Wu / Yuntao Zou / Zhuotao Tian / Libo Qin / Dagang Li

Self-destructive behaviors are linked to complex psychological states and can be challenging to diagnose. These behaviors may be even harder to identify within subcultural groups due to their unique expressions. As large language models (LLMs) are applied across various fields, some researchers have begun exploring their application for detecting self-destructive behaviors. Motivated by this, we investigate self-destructive behavior detection within subcultures using current LLM-based methods. However, these methods have two main challenges: (1) Knowledge Lag: Subcultural slang evolves rapidly, faster than LLMs' training cycles; and (2) Semantic Misalignment: it is challenging to grasp the specific and nuanced expressions unique to subcultures. To address these issues, we proposed Subcultural Alignment Solver (SAS), a multi-agent framework that incorporates automatic retrieval and subculture alignment, significantly enhancing the performance of LLMs in detecting self-destructive behavior. Our experimental results show that SAS outperforms the current advanced multi-agent framework OWL. Notably, it competes well with fine-tuned LLMs. We hope that SAS will advance the field of self-destructive behavior detection in subcultural contexts and serve as a valuable resource for future researchers.

cs / cs.CL