Annisa Nurul Azhar, M. L. Khodra, Arie Pratama Sutiono
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引用次数: 12
摘要
方面分类是基于方面的情感分析中的一个子任务。这个任务是一个多标签分类任务,因为每个文档可能属于多个方面类别。在本文中,我们将方面分类任务分为两个子任务:特征提取和多标签分类。我们使用卷积神经网络(CNN)作为特征提取器,极端梯度增强(XGBoost)作为顶层分类器。本文使用的数据集由9450条酒店评论组成。与我们的基线CNN-LSTM (F1 0.9198 & Loss 0.03217)和CNN-SVM (F1 0.9295 & Loss 0.02719)相比,我们的模型获得了更高的F1得分0.9316和更低的Hamming Loss 0.02667。
Multi-label Aspect Categorization with Convolutional Neural Networks and Extreme Gradient Boosting
Aspect categorization is a subtask in aspect-based sentiment analysis. This task is a multi-label classification task since each document may belong to more than one aspect categories. In this paper, we divided the aspect categorization task into two subtasks, feature extraction and multi-label classification. We use Convolutional Neural Network (CNN) as feature extractor and Extreme Gradient Boosting (XGBoost) as the top-level classifier. Dataset used in this paper consists of 9450 hotel reviews. Our model achieved higher F1-score, 0.9316, and lower Hamming Loss, 0.02667, compared to our baselines which are CNN-LSTM (F1 0.9198 & loss 0.03217) and CNN-SVM (F1 0.9295 & loss 0.02719).