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Natural language processing in law: Prediction of outcomes in the higher courts of Turkey

机译:法律处理的自然语言处理:土耳其高等法院的结果预测

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Natural language processing (NLP) based approaches have recently received attention for legal systems of several countries. It is of interest to study the wide variety of legal systems that have so far not received any attention. In particular, for the legal system of the Republic of Turkey, codified in Turkish, no works have been published. We first review the state-of-the-art of NLP in law, and then study the problem of predicting verdicts for several different courts, using several different algorithms. This study is much broader than earlier studies in the number of different courts and the variety of algorithms it includes. Therefore it provides a reference point and baseline for further studies in this area. We further hope the scope and systematic nature of this study can set a framework that can be applied to the study of other legal systems. We present novel results on predicting the rulings of the Turkish Constitutional Court and Courts of Appeal, using only fact descriptions, and without seeing the actual rulings. The methods that are utilized are based on Decision Trees (DTs), Random Forests (RFs), Support Vector Machines (SVMs) and state-of-the-art deep learning (DL) methods; specifically Gated Recurrent Units (GRUs), Long Short-Term Memory networks (LSTMs) and bidirectional LSTMs (BiLSTMs), with the integration of an attention mechanism for each model. The prediction results for all algorithms are given in a comparative and detailed manner. We demonstrate that outcomes of the courts of Turkish legal system can be predicted with high accuracy, especially with deep learning based methods. The presented results exhibit similar performance to earlier work in the literature for other languages and legal systems.
机译:基于自然语言处理(NLP)的方法最近得到了几个国家的法律制度的关注。研究到目前为止没有受到任何关注的各种法律制度感兴趣。特别是,对于土耳其共和国的法律制度,在土耳其编纂,没有任何作品发表。我们首先审查了NLP的最先进的法律,然后使用几种不同的算法研究了几个不同法庭预测判决问题的问题。本研究比在不同法庭数量的早期研究以及它包括的各种算法中的早期研究更广泛。因此,它提供了参考点和基线,以便在该地区进一步研究。我们进一步希望本研究的范围和系统性质可以设定可以应用于其他法律制度的研究的框架。我们提出了新的结果,以预测土耳其宪法法院和上诉法院的裁决,只使用实事描述,而不看到实际裁决。使用的方法基于决策树(DTS),随机林(RFS),支持向量机(SVM)和最先进的深度学习(DL)方法;专门门控复发单元(GRUS),长短期存储器网络(LSTMS)和双向LSTM(BILSTMS),集成了每个模型的注意机制。所有算法的预测结果以比较和详细的方式给出。我们证明土耳其法律制度法院的结果可以通过高精度预测,特别是基于深度学习的方法。呈现的结果表现出类似的性能与其他语言和法律制度的文献中的早期工作相似。

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