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BIGODM System in the Social Media Mining for Health Applications Shared Task 2019

机译:用于健康应用程序的社交媒体挖掘中的BIGODM系统共享任务2019

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In this study, we describe our methods to automatically classify Twitter posts conveying events of adverse drug reaction (ADR). Based on our previous experience in tackling the ADR classification task, we empirically applied the vote-based under-sampling ensemble approach along with linear support vector machine (SVM) to develop our classifiers as part of our participation in ACL 2019 Social Media Mining for Health Applications (SMM4H) shared task 1. The best-performed model on the test sets were trained on a merged corpus consisting of the datasets released by SMM4H 2017 and 2019. By using VUE, the corpus was randomly under-sampled with 2:1 ratio between the negative and positive classes to create an ensemble using the linear kernel trained with features including bag-of-word, domain knowledge, negation and word embedding. The best performing model achieved an F-measure of 0.551 which is about 5% higher than the average F-scores of 16 teams.
机译:在这项研究中,我们描述了自动分类Twitter帖子的方法,这些帖子传达了不良药物反应(ADR)事件。基于我们在处理ADR分类任务方面的先前经验,我们经验性地将基于投票的欠采样集成方法与线性支持向量机(SVM)一起开发了分类器,作为我们参与ACL 2019社交媒体健康挖掘的一部分应用程序(SMM4H)共享任务1.在包含由SMM4H 2017和2019发布的数据集组成的合并语料库上训练测试集上表现最佳的模型。通过使用VUE,该语料库以2:1的比率随机进行欠采样在负数和正数类之间使用经过训练的线性核创建整体,这些线性核的特征包括词袋,领域知识,否定和词嵌入。表现最佳的模型的F值达到0.551,比16支球队的平均F值高出5%。

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