SSNCSE-NLP @ EVALITA2020:使用机器学习方法从推文中进行文本和上下文姿态检测(短论文)

B. Bharathi, J. Bhuvana, Nitin Nikamanth Appiah Balaji
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引用次数: 0

摘要

通过网络社交媒体平台表达的意见可以用来分析公众对任何事件或话题的立场。识别所采取的立场就是姿态检测,本文提出了一种基于深度学习的特征提取和手工特征提取相结合的自动姿态检测方法。BERT作为一种特征提取方案,与从tweet中提取的风格、结构、上下文和基于社区的特征一起构建基于机器学习的模型。这项工作使用多层感知器来检测支持,反对和中立推文的立场。使用的数据集由SardiStance任务提供,其中包含关于沙丁鱼运动的意大利语tweet。用不同的特征组合构建模型的几个变体,并与任务组织者提供的基线模型进行比较。具有BERT的模型以及与其他上下文特征相结合的模型被证明是性能最好的模型,其性能优于基线模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SSNCSE-NLP @ EVALITA2020: Textual and Contextual Stance Detection from Tweets Using Machine Learning Approach (short paper)
Opinions expressed via online social media platforms can be used to analyse the stand taken by the public about any event or topic. Recognizing the stand taken is the stance detection, in this paper an automatic stance detection approach is proposed that uses both deep learning based feature extraction and hand crafted feature extraction. BERT is used as a feature extraction scheme along with stylistic, structural, contextual and community based features extracted from tweets to build a machine learning based model. This work has used multilayer perceptron to detect the stances as favour, against and neutral tweets. The dataset used is provided by SardiStance task with tweets in Italian about Sardines movement. Several variants of models were built with different feature combinations and are compared against the baseline model provided by the task organisers. The models with BERT and the same combined with other contextual features proven to be the best per-forming models that outperform the baseline model performance.
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