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Injury narrative text classification using factorization model

机译:基于分解模型的伤害性叙事文本分类

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摘要

Narrative text is a useful way of identifying injury circumstances from the routine emergency department data collections. Automatically classifying narratives based on machine learning techniques is a promising technique, which can consequently reduce the tedious manual classification process. Existing works focus on using Naive Bayes which does not always offer the best performance. This paper proposes the Matrix Factorization approaches along with a learning enhancement process for this task. The results are compared with the performance of various other classification approaches. The impact on the classification results from the parameters setting during the classification of a medical text dataset is discussed. With the selection of right dimension k, Non Negative Matrix Factorization-model method achieves 10 CV accuracy of 0.93.
机译:叙事文本是从常规急诊部门数据收集中识别伤害情况的有用方法。基于机器学习技术对叙事进行自动分类是一种很有前途的技术,因此可以减少繁琐的手动分类过程。现有作品专注于使用朴素贝叶斯(Naive Bayes),它并不总是提供最佳性能。本文提出了矩阵分解方法以及针对该任务的学习增强过程。将结果与其他各种分类方法的性能进行比较。讨论了医学文本数据集分类期间参数设置对分类结果的影响。通过选择正确的维数k,非负矩阵分解模型方法可实现0.93的10 CV精度。

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