基于Bert模型的人格分类

He Jun, Liu Peng, Jiang Changhui, Liu Pengzheng, Wu Shenke, Zhong Kejia
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引用次数: 5

摘要

人格分类是对语篇中相关的情感信息进行分析和总结,从而推断语篇中的人格特征的过程。鉴于传统的机器学习方法在处理人格分类问题时需要手工标注提取特征,导致分类结果的性能较差。本文提出了一种基于BERT模型的深度学习方法。该模型采用Transformer双向编码结构,可以比传统方法更有效地提取特征。最后,使用Softmax分类器对提取的文本特征向量进行分类。Qur实验比较了SVM、CNN和LSTM等几种经典模型,实验结果表明BERT模型的多分类效果优于其他模型。实验证明,BERT模型可以有效地提高人格分类的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Personality Classification Based on Bert Model
Personality classification is the process of analyzing and summarizing the relevant emotional information in the text, so as to infer the personality traits in the text. In view of the fact that traditional machine learning methods need to manually label to extract features when dealing with personality classification problems, which leads to poor per-formance of classification results. In this paper, we propose a deep learning method based on the BERT model. The model adopts the Transformer two-way coding structure, which can extract features more effectively than traditional methods. Finally, the Softmax classifier is used to classify the extracted text feature vectors. Qur experiment compares several classical models such as SVM, CNN and LSTM, and the experimental results show that the multi-classification effect of the BERT model is better than other models. It is proved that the BERT model can effectively improve the effect of personality classification.
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