Machine learning and public policy: Early detection of physical violence against children

IF 2.4 2区 社会学 Q1 FAMILY STUDIES
María Edo , Victoria Oubiña , Marcela Svarc
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引用次数: 0

Abstract

Physical violence against children is a widespread and grossly underreported phenomenon with substantial short and long-term negative consequences. In Latin America and the Caribbean, 43% of children under the age of 15 experience corporal punishment at home, yet reporting rates are alarmingly low. This paper aims to demonstrate how household data can be considered for a future predictive analytics model in Argentina. Based on the 2019–20 MICS survey we apply machine learning techniques to predict physical violence against children (understood as physical discipline) at the household level in Argentina. The scope and potential benefits of using predictive models in this context are assessed, as well as the main limitations and risks. The results suggest that, by analyzing the situation of the 30% of households with the highest risk scores, 43 out of 100 households in which children experience physical violence could be identified at an early stage.
机器学习与公共政策:早期发现针对儿童的身体暴力
针对儿童的身体暴力是一种普遍现象,但报告严重不足,造成了严重的短期和长期负面影响。在拉丁美洲和加勒比地区,43% 的 15 岁以下儿童在家中遭受过体罚,但报告率却低得惊人。本文旨在展示阿根廷未来的预测分析模型如何考虑家庭数据。基于 2019-20 年多指标类集调查,我们应用机器学习技术来预测阿根廷家庭层面对儿童的身体暴力(可理解为体罚)。我们评估了在此背景下使用预测模型的范围和潜在益处,以及主要局限性和风险。结果表明,通过分析风险分数最高的 30% 家庭的情况,可以及早发现 100 个家庭中有 43 个家庭中的儿童遭受过身体暴力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.30
自引率
6.10%
发文量
303
期刊介绍: Children and Youth Services Review is an interdisciplinary forum for critical scholarship regarding service programs for children and youth. The journal will publish full-length articles, current research and policy notes, and book reviews.
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