利用CNN对短文本进行COVID-19事件加重状态分类

Ekasari Nugraheni, P. Khotimah, Andria Arisal, A. Rozie, D. Riswantini, A. Purwarianti
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引用次数: 4

摘要

COVID-19大流行是一个新的先例,改变了人类生活的许多方面。由于疫苗供应的不确定性,利益攸关方需要跟踪COVID-19事件的动态,以准备必要的应对措施。跟踪事件动态的一个子任务是确定事件的恶化状态(即,事件是恶化还是好转)。利用卷积神经网络(CNN)模型从短文本中对COVID-19加重状态进行分类。没有热编码的CNN占了上风。此外,我们对CNN进行了调优,以获得更好的性能。通过调优一些配置参数可以实现最高性能。作为最终结果,当使用80个节点,SGD优化器,lr = 0.1,动量= 0.9时,模型表现最佳(准确率= 87.585%,F1-score = 76%)。
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Classifying aggravation status of COVID-19 event from short-text using CNN
COVID-19 pandemic is a new precedent that has changed many aspects of human life. With the uncertainty of vaccine availability, stakeholders are required to track the dynamics of COVID-19 events to prepare the necessary response. One sub-task in tracking the dynamics of an event is to identify the aggravation status of the event (i.e., whether an event is worsening or getting better). We experimented with convolutional neural network (CNN) models to classify the status of COVID-19 aggravation status from a short text. CNN without one hot encoding prevailed. Furthermore, we conduct tuning to achieve better performance of CNN. The highest performance was achieved by tuning some of the configuration parameters. As the final result, the model performed at best (accuracy = 87.585% and F1-score = 76%) when using 80 nodes, SGD optimizer, lr = 0.1, and momentum = 0.9.
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