Health related social media mining is a valuable apparatus for the early recognition of the diverse antagonistic medicinal conditions. Mostly, the existing methods are based on machine learning with knowledge-based learning. This working note presents the Recurrent neural network (RNN) and Long short-term memory (LSTM) based embedding for automatic health text classification in the social media mining. For each task, two systems are built and that classify the tweet at the tweet level. RNN and LSTM are used for extracting features and non-linear activation function at the last layer facilitates to distinguish the tweets of different categories. The experiments are conducted on 2nd Social Media Mining for Health Applications Shared Task at AMIA 2017. The experiment results are considerable; however the proposed method is appropriate for the health text classification. This is primarily due to the reason that, it doesn't rely on any feature engineering mechanisms.
翻译:与健康有关的社交媒体采矿是早期认识多种对抗医学条件的宝贵工具,大部分现有方法基于基于知识的学习,以机器学习为基础,本工作说明介绍了经常性神经网络(RNN)和基于社交媒体采矿自动健康文本分类的长期短期内存(LSTM),为每项任务建立了两个系统,在推文层面对推文进行分类。RNN和LSTM用于提取特征和非线性激活功能,便于区分不同类别的推文。实验是在2017年AMIA健康应用第二社会媒体采矿共同任务上进行的。实验结果相当可观;但拟议方法适合健康文本分类,主要原因是它不依赖任何特征工程机制。