基于内容的特征在不同文本长度中检测抑郁倾向的性能

N. Z. Zulkarnain, N. Yusof, Sharifah Sakinah Syed Ahmad, Zuraini Othman, Azura Hanim Hashim
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引用次数: 0

摘要

文本分析目前已广泛应用于心理健康领域,用于预测抑郁和焦虑等心理健康问题的发病,以期进行早期干预。大多数现有的工作都集中在研究如何根据社交媒体数据预测这类心理健康问题。与博客和期刊相比,这些文本通常简短而直接。在本文中,我们感兴趣的是比较分类模型在将长文本和短文本分类为具有抑郁倾向方面的性能。采用现有的基于内容特征的短文本分类模型,并对较长的文本进行了测试。从结果中可以发现,与较短的文本相比,基于内容的特征在长文本中表现最差,其中使用的所有五个分类器的准确率都低于0.65。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance of Content-Based Features to Detect Depression Tendencies in Different Text Lengths
Text analytics have been widely used nowadays in the field of mental health to predict onset mental health issues such as depression and anxiety, with the intention to perform early intervention. Most existing works focuses on looking at how such mental health issues can be predicted based on social media data. These texts are often short and straightforward as compared to blogs and journals. In this paper, we are interested in comparing the performance of a classification model in classifying long texts and short texts as having depression tendencies. An existing model that can perform well in classifying short texts using content-based features was adopted and tested on longer texts. From the result, it is found that compared to shorter text, content-based features performed worst in long texts whereby all five classifiers used produced an accuracy of less than 0.65.
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