暴力结果分类的预测模型:泰国南部腹地个案研究

Q2 Decision Sciences Advances in Decision Sciences Pub Date : 2019-01-01 DOI:10.47654/v23y2019i3p56-92
Bunjira Makond, M. Eso
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引用次数: 0

摘要

暴力现已被广泛认为是一个公共卫生问题,因为它对人民的健康和福利造成了严重后果,而且在包括泰国在内的许多国家,这仍然是一个日益严重的问题。阐明与暴力有关的因素可以提供有助于预防暴力和减少受伤人数的信息。本研究探索了具有较高可解释性和预测精度的预测数据挖掘模型。经过数据预处理,从深南协调中心的数据库中获得了2004年至2016年发生的21,424起事件。采用基于关联的特征子集选择和嵌入特征选择的决策树技术进行变量选择,并采用四种数据挖掘技术将暴力结果划分为身体伤害和非身体伤害。结果表明,无论采用何种变量选择方法,枪都被选择为身体损伤的危险因素。此外,具有三个变量(枪、区域和固体/锋利武器)的决策树模型在准确性能和可解释性方面优于朴素贝叶斯模型。决策树和人工神经网络模型在分类暴力结果方面具有相似的性能水平,但在实践中,决策树模型比人工神经网络模型更具可解释性。
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Predictive Models for Classifying the Outcomes of Violence: Case Study for Thailand’s Deep South
Violence is now widely recognized as a public health problem because of its significant consequences on the health and wellness of people and it remains a growing problem in many countries including Thailand. Elucidating the factors related to violence can provide information that can help to prevent violence and decrease the number of injuries. This study explored predictive data mining models which have high interpretability and prediction accuracy in classifying the outcomes of violence. After data preprocessing, a set of 21,424 incidents occurring from 2004 to 2016 were obtained from the Deep South Coordination Centre database. A correlation-based feature subset selection and decision tree technique with embedded feature selection were used for variable selection and four data mining techniques were applied to classify the violent outcomes into physical injury and no physical injury. The findings revealed that regardless of the variable selection method, gun was selected as a risk factor of physical injury. Moreover, a decision tree model with three variables, gun, zone, and solid/sharp weapon outperformed a naive Bayes model in terms of accurate performance and interpretability. Decision tree and artificial neural network models have similar levels of performance in classifying the outcome of violence but in practical terms, a decision tree model is more interpretable than an artificial neural network model.
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来源期刊
Advances in Decision Sciences
Advances in Decision Sciences Mathematics-Applied Mathematics
CiteScore
4.70
自引率
0.00%
发文量
18
审稿时长
29 weeks
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