使用集成方法在纵向数据中捕捉情绪随时间的变化

Ana-Maria Bucur, Hyewon Jang, F. F. Liza
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引用次数: 1

摘要

本文介绍了CLPsych 2022共享任务A中BLUE团队在纵向文本数据中识别情绪和行为变化的系统描述。这些变化时刻是可以用来筛选和防止自杀企图的信号。为了检测这些变化,我们实验了几种文本表示方法,如TF-IDF、句子嵌入、情感信息嵌入和几种经典的机器学习分类器。我们根据对表现最好的模型的预测的最大投票,选择提交三组集成系统。在Task A的9个参赛团队中,我们的团队在Precision-oriented Coverage-based Evaluation中排名第二,得分为0.499。我们最好的系统是支持向量机、逻辑回归和自适应增强分类器的集合,使用情感信息嵌入作为输入表示,可以对用户发现的语言和情感信息进行建模。职位。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Capturing Changes in Mood Over Time in Longitudinal Data Using Ensemble Methodologies
This paper presents the system description of team BLUE for Task A of the CLPsych 2022 Shared Task on identifying changes in mood and behaviour in longitudinal textual data. These moments of change are signals that can be used to screen and prevent suicide attempts.To detect these changes, we experimented with several text representation methods, such as TF-IDF, sentence embeddings, emotion-informed embeddings and several classical machine learning classifiers. We chose to submit three runs of ensemble systems based on maximum voting on the predictions from the best performing models. Of the nine participating teams in Task A, our team ranked second in the Precision-oriented Coverage-based Evaluation, with a score of 0.499. Our best system was an ensemble of Support Vector Machine, Logistic Regression, and Adaptive Boosting classifiers using emotion-informed embeddings as input representation that can model both the linguistic and emotional information found in users? posts.
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