The System for Extracting Crime Elements and Predicting Excavation-Type Heritage Crimes Based on Deep Learning Models

Hongyu Lv, Ning Ding, Yiming Zhai, Yingjie Du, Fengxi Xie
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Abstract

Heritage crimes can result in the significant loss of cultural relics and predicting them is crucial. To address the issues of inconsistent textual information format and the challenge of preventing and combating heritage crimes, this paper develops a system that extracts crime elements and predict heritage crime occurrences. The system comprises two deep-learning models. The first model, Bi-LSTM + CRF, is constructed to automatically extract crime elements and perform spatio-temporal analysis of crimes based on them. By integrating routine activity theory, social disorder theory, and practical field experience, the research reveals that holidays and other special days (SD) perform a critical role as influential factors in heritage crimes. Building upon these findings, the second model, LSTM + SD, is constructed to predict excavation-type heritage crimes. The results demonstrate that the model with the introduction of the holiday factor improves the RMSE and MAE by 6.4% and 47.8%, respectively, when compared to the original LSTM model. This paper presents research aimed at extracting crime elements and predicting excavation-type heritage crimes. With the ongoing expansion of data volume, the practical significance of the proposed system is poised to escalate. The results of this study are expected to provide decision-making support for heritage protection departments and public security authorities in preventing and combating crimes.
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基于深度学习模型的挖掘型文物犯罪犯罪要素提取与预测系统
遗产犯罪可能导致文物的重大损失,预测它们是至关重要的。为解决文本信息格式不一致的问题和预防和打击遗产犯罪的挑战,本文开发了一个提取犯罪要素并预测遗产犯罪发生的系统。该系统包括两个深度学习模型。首先构建Bi-LSTM + CRF模型,自动提取犯罪要素,并基于犯罪要素对犯罪进行时空分析。结合日常活动理论、社会失序理论和实地实践经验,研究发现节假日和其他特殊日子是遗产犯罪的重要影响因素。在这些发现的基础上,第二个模型LSTM + SD被构建来预测挖掘型遗产犯罪。结果表明,引入假日因子的模型相对于原始LSTM模型,RMSE和MAE分别提高了6.4%和47.8%。本文对挖掘型文物犯罪的犯罪要素提取和预测进行了研究。随着数据量的不断扩大,所提出的系统的实际意义将不断升级。这项研究的结果有望为文物保护部门和公安机关预防和打击犯罪提供决策支持。
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