CSA-Forecaster:预测儿童性虐待的叠加模型

S. Parthasarathy, Arunraj Lakshminarayanan, A. Khan, K. J. Sathick
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引用次数: 0

摘要

儿童性虐待是一个普遍存在的令人痛苦的问题,对儿童的福祉和发展构成严重威胁。早期识别和预防此类事件对于确保儿童安全和保护儿童至关重要。在本研究中,我们探讨了堆叠式机器学习模型在儿童性虐待案件预测中的应用。有关儿童性虐待事件的数据来自丹麦统计数据库,并被用于此次分析。作为描述性分析的一部分,我们还纳入了各市的地理坐标,以检查儿童性虐待案件的分布和普遍程度。我们的方法采用了堆叠集合框架,将 XGBoost、LSTM 和随机森林算法结合在一起。通过利用单个模型的优势和捕捉数据中的不同模式,堆叠模型旨在提高预测性能。实验结果表明,在预测儿童性虐待事件方面,CSA-Forecaster 模型优于单个模型。所提出的模型的 RMSE 为 0.094,MAE 为 0.0712,MAPE 为 0.1557,R2 为 0.8028,表明其性能稳健。这项研究的成果对建立积极主动的干预和支持系统具有重要意义。儿童保护机构和专家可以利用机器学习模型更有效地分配资源,并有可能预防未来的虐待事件。
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CSA-Forecaster: Stacked Model for Forecasting Child Sexual Abuse
Child sexual abuse is a pervasive and distressing issue that poses serious threats to the well-being and development of children. Early identification and prevention of such incidents are crucial for ensuring child safety and protection. In this study, we investigate the application of stacked machine learning models for the forecasting of child sexual abuse cases. Data on child sexual abuse incidents were gathered from StatBank Denmark and used in this analysis. The geographical coordinates of the municipalities were incorporated as part of the descriptive analysis to examine the distribution and prevalence of child abuse cases. Our approach incorporates a stacked ensemble framework that combines the XGBoost, LSTM, and Random Forest algorithms. By leveraging the strength of individual models and capturing diverse patterns in the data, the stacked model aims to improve prediction performance. Our experimental results demonstrate that the CSA-Forecaster model outperforms individual models in forecasting child sexual abuse incidents. The proposed model achieved an RMSE of 0.094, MAE of 0.0712, MAPE of 0.1557, and R2 of 0.8028, indicating robust performance. The outcomes of this research have significant repercussions for the creation of proactive interventions and support systems. Child protection agencies and experts might be equipped to more effectively allocate resources and potentially prevent future abuse instances by employing machine learning models.
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来源期刊
Journal of Internet Services and Information Security
Journal of Internet Services and Information Security Computer Science-Computer Science (miscellaneous)
CiteScore
3.90
自引率
0.00%
发文量
0
审稿时长
8 weeks
期刊最新文献
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