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A Judicial Sentencing Method Based on Fused Deep Neural Networks

机译:基于融合深度神经网络的司法量刑方法

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Nowadays, the judicial system has been hard to satisfy the growing judicial needs of the people. Therefore, the introduction of artificial intelligence into the judicial field is an inevitable trend. This paper incorporates deep learning into intelligent judicial sentencing and proposes a comprehensive network fusion model based on massive legal documents. The proposed method combines multiple networks, e.g., recurrent neural network and convolutional neural network, in the procedure of sentencing prediction. Specially, we use text classification and post-classification regression to predict the defendant's conviction, articles of law related to the case and prison term. Moreover, we use the simulated gradient descent method to build a fusion model. Experimental results on legal documents datasets justify the effectiveness of the proposed method in sentencing prediction. The fused network model outperforms each individual model in terms of higher accuracy and stability when predicting the conviction, law article and prison term.
机译:如今,司法制度已难以满足人们日益增长的司法需求。因此,将人工智能引入司法领域是必然的趋势。本文将深度学习纳入智能司法判决中,并提出了基于海量法律文件的综合网络融合模型。所提出的方法在量刑预测的过程中结合了多个网络,例如递归神经网络和卷积神经网络。特别是,我们使用文本分类和分类后回归来预测被告的定罪,与案件有关的法律条款和监禁刑期。此外,我们使用模拟的梯度下降方法来建立融合模型。在法律文件数据集上的实验结果证明了该方法在量刑预测中的有效性。在预测定罪,法律条款和监禁刑期时,融合网络模型在更高的准确性和稳定性方面优于每个单独的模型。

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