Deep Learning for Identification of Adverse Effect Mentions In Twitter Data

P. Barry, Ozlem Uzuner
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引用次数: 1

Abstract

Social Media Mining for Health Applications (SMM4H) Adverse Effect Mentions Shared Task challenges participants to accurately identify spans of text within a tweet that correspond to Adverse Effects (AEs) resulting from medication usage (Weissenbacher et al., 2019). This task features a training data set of 2,367 tweets, in addition to a 1,000 tweet evaluation data set. The solution presented here features a bidirectional Long Short-term Memory Network (bi-LSTM) for the generation of character-level embeddings. It uses a second bi-LSTM trained on both character and token level embeddings to feed a Conditional Random Field (CRF) which provides the final classification. This paper further discusses the deep learning algorithms used in our solution.
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利用深度学习识别Twitter数据中的不利影响
社交媒体健康应用挖掘(SMM4H)不利影响提到共享任务挑战参与者准确识别推文中与药物使用导致的不利影响(ae)相对应的文本跨度(Weissenbacher等人,2019)。该任务的特征是一个包含2367条推文的训练数据集,以及1000条推文评估数据集。本文提出的解决方案具有双向长短期记忆网络(bi-LSTM),用于生成字符级嵌入。它使用在字符和标记级嵌入上训练的第二个bi-LSTM来提供条件随机场(CRF),该CRF提供最终分类。本文进一步讨论了我们的解决方案中使用的深度学习算法。
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Approaching SMM4H with Merged Models and Multi-task Learning BIGODM System in the Social Media Mining for Health Applications Shared Task 2019 HITSZ-ICRC: A Report for SMM4H Shared Task 2019-Automatic Classification and Extraction of Adverse Effect Mentions in Tweets Lexical Normalization of User-Generated Medical Text Towards Text Processing Pipelines to Identify Adverse Drug Events-related Tweets: University of Michigan @ SMM4H 2019 Task 1
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