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An Empirical Study of Linear Dimensionality Reduction for Judicial Predictive Models

机译:司法预测模型线性维度降低的实证研究

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Judicial cases can be modeled with the textual frequency vectors under the Bag-of-Words assumption to predict the decision outcome. However, such models are often with much more numbers of features than training samples, which usually leads to the over fitting problem. In this paper, we conduct an empirical investigation on linear dimensionality reduction of the high-dimensional judicial predictive models via the wide spread principal component analysis approach. The experimental results show that these high-dimensional models do not suffer from the overfitting problem, but the under fitting problem. Moreover, the higher-order dependency in the textual frequency data cannot be decorrelated by the linear dimensionality reduction approach, which restrains the performance of judicial classification models subject to the unchanged level of signal-noise ratio in the derived low-dimensional features.
机译:司法案例可以用文本频率向量建模,以便在文字袋假设下预测决策结果。然而,这些模型通常具有比训练样本更多的特征,这通常会导致过度拟合问题。在本文中,我们通过广泛的扩展主成分分析方法对高维司法预测模型的线性维度降低进行了实证研究。实验结果表明,这些高维模型不会遭受过度装备的问题,而是拟合问题。此外,在线性维度降低方法中不能使文本频率数据的高阶依赖性,其限制衍生的低维特征中的不变信噪比的不变级别的司法分类模型的性能。

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