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Published:2026/1/1 17:17:00

事件解決を加速!AIで捜査を効率化✨

超要約: AIで事件の優先順位付け!捜査の効率UPを目指す研究だよ💖

🌟 ギャル的キラキラポイント ● 膨大な事件をAIで整理!捜査官の負担を減らすなんて、神ってる〜👏 ● 事件の解決パターンをデータで分析!まさに、イケメンを数値化するようなもの?🤣 ● 刑事司法システムの効率化で、みんなが安心して暮らせる社会に貢献できるって、尊い✨

🌟 詳細解説 ● 背景 メキシコでは未解決事件が山積みで、人手も足りない状態💔 そんな状況をIT技術で解決しようってのがこの研究! 過去のデータからAIが「この事件は早く解決できそう!」ってのを教えてくれるんだって。

● 方法 過去の事件データを使って、AIに「どんな事件が早く解決するのか」を学習させたみたい。事件の進み具合とか、色んな情報を分析して、優先順位を決めるモデルを作ったってことね!

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Improving criminal case management through Machine Learning system

Fernanda Sobrino / Adolfo De Un\'anue T. / Edgar Hern\'andez / Patricia Villa / Elena Villalobos / David Ak\'e / Stephany Cisneros / Cristian Paul Camacho Osnay / Armando Garc\'ia Neri / Israel Hern\'andez

Prosecutors across Mexico face growing backlogs due to high caseloads and limited institutional capacity. This paper presents a machine learning (ML) system co-developed with the Zacatecas State Prosecutor's Office to support internal case triage. Focusing on the M\'odulo de Atenci\'on Temprana (MAT) -- the unit responsible for intake and early-stage case resolution -- we train classification models on administrative data from the state's digital case management system (PIE) to predict which open cases are likely to finalize within six months. The model generates weekly ranked lists of 300 cases to assist prosecutors in identifying actionable files. Using historical data from 2014 to 2024, we evaluate model performance under real-time constraints, finding that Random Forest classifiers achieve a mean Precision@300 of 0.74. The system emphasizes interpretability and operational feasibility, and we will test it via a randomized controlled trial. Our results suggest that data-driven prioritization can serve as a low-overhead tool for improving prosecutorial efficiency without disrupting existing workflows.

cs / cs.CY