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A Two-Stage Classifier That Identifies Charge and Punishment under Criminal Law of Civil Law System

机译:识别民法系刑法下指控与惩罚的两阶段分类器

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摘要

A two-stage classifier is proposed that identifies criminal charges and a range of punishments given a set of case facts and attributes. Our supervised-learning model focuses only on the offences against life and body section of the criminal law code of Thailand. The first stage identifies a set of diagnostic issues from the case facts using a set of artificial neural networks (ANNs) modularized in hierarchical order. The second stage extracts a set of legal elements from the diagnostic issues by employing a set of C4.5 decision tree classifiers. These linked modular networks of ANNs and decision trees form an effective system in terms of determining power and the ability to trace or infer the relevant legal reasoning behind the determination. Isolated and system-integrated experiments are conducted to measure the performance of the proposed system. The overall accuracy of the integrated system can exceed 90%. An actual case is also demonstrated to show the effectiveness of the proposed system.
机译:提出了一个两阶段分类器,该分类器根据一组案例事实和属性来识别刑事指控和一系列处罚。我们的监督学习模型仅关注泰国刑法典中关于危害生命和身体的部分。第一阶段使用一组以分层顺序模块化的人工神经网络(ANN),从案件事实中识别出一组诊断问题。第二阶段通过使用一组C4.5决策树分类器从诊断问题中提取一组法律要素。这些由人工神经网络和决策树组成的链接式模块化网络在确定权力以及跟踪或推断确定背后的相关法律推理的能力方面形成了有效的系统。进行了隔离的和系统集成的实验,以测量所提出系统的性能。集成系统的整体精度可以超过90%。还显示了一个实际案例,以证明所提出系统的有效性。

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