中文情感分析 Python

上传者: 45508265 | 上传时间: 2022-05-15 16:06:36 | 文件大小: 73.22MB | 文件类型: ZIP
中文情感分析的实质是文本分类问题,本项目分别采用CNN和BI-LSTM两种模型解决文本分类任务,并用于情感分析,达到不错的效果。 两种模型在小数据集上训练,在验证集的准确率、号回率及F1因子均接近90% 项目设计的目标可以接受不同语料的多种分类任务,只要语料按照特定格式准备好,就可以开始调参训练、导出、serving。

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