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Learning Comment Controversy Prediction in Web Discussions Using Incidentally Supervised Multi-Task CNNs

机译:使用偶然监督的多任务CNN在Web讨论中学习评论争议预测

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Comments on web news contain controversies that manifest as inter-group agreement-conflicts. Tracking such rapidly evolving controversy could ease conflict resolution or journalist-user interaction. However, this presupposes controversy online-prediction that scales to diverse domains using incidental supervision signals instead of manual labeling. To more deeply interpret comment-controversy model decisions we frame prediction as binary classification and evaluate baselines and multi-task CNNs that use an auxiliary news-genre-encoder. Finally, we use ablation and interpretability methods to determine the impacts of topic, discourse and sentiment indicators, contextual vs. global word influence, as well as genre-keywords vs. per-genre-controvcrsy keywords - to find that the models learn plausible controversy features using only incidentally supervised signals.
机译:对网络新闻的评论包含一些争议,这些争议表现为组间协议冲突。跟踪如此迅速发展的争议可能会缓解冲突解决或记者与用户之间的互动。但是,这以有争议的在线预测为前提,该预测使用偶然的监督信号而不是手动标记,可以扩展到不同的领域。为了更深入地解释有争议的模型决策,我们将预测构造为二进制分类,并评估使用辅助新闻类型编码器的基线和多任务CNN。最后,我们使用消融和可解释性方法来确定主题,话语和情感指标,上下文与全局词的影响以及体裁关键字与针对每个体裁的争议关键字的影响,以发现模型学习了合理的争议仅使用附带监督的信号的功能。

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