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Experimental Evaluation of CNN Parameters for Text Categorization in Legal Document Review

机译:CNN参数在法律文件审阅中用于文本分类的实验评估

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Predictive Coding, also called Text Categorization, has been widely used in legal industry. By leveraging machine learning models such as logistic regression and SVM, the review of documents can be prioritized based on their probability of relevance to the legal case, thus improving review efficiency and cutting cost. In recent years, deep learning models—combined with word embeddings—have shown better performance in predictive coding. However, deep learning models involve many parameters and it is challenging and time-consuming for legal practitioners to select appropriate settings. Based on the experiments on several public legal text datasets, this paper shows the preliminary results about how various key parameter settings impact the performance of Convolutional Neural Networks (CNNs).
机译:预测编码(也称为文本分类)已在法律行业中广泛使用。通过利用诸如Logistic回归和SVM之类的机器学习模型,可以根据文档与法律案件相关的可能性来优先进行文档审阅,从而提高审阅效率并降低成本。近年来,结合词嵌入的深度学习模型在预测编码中表现出更好的性能。但是,深度学习模型涉及许多参数,法律从业人员选择合适的设置既困难又耗时。基于对几个公共法律文本数据集的实验,本文显示了有关各种关键参数设置如何影响卷积神经网络(CNN)性能的初步结果。

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