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NileTMRG at SemEval-2017 Task 8: Determining Rumour and Veracity Support for Rumours on Twitter

机译:NileTMRG在SemEval-2017上的任务8:在Twitter上确定谣言的谣言和准确性支持

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This paper presents the results and conclusions of our participation in SemEval-2017 task 8: Determining rumour veracity and support for rumours. We have participated in 2 subtasks: SDQC (Subtask A) which deals with tracking how tweets orient to the accuracy of a rumourous story, and Veracity Prediction (Subtask B) which deals with the goal of predicting the veracity of a given rumour. Our participation was in the closed task variant, in which the prediction is made solely from the tweet itself. For subtask A, linear support vector classification was applied to a model of bag of words, and the help of a naive Bayes classifier was used for semantic feature extraction. For subtask B, a similar approach was used. Many features were used during the experimentation process but only a few proved to be useful with the data set provided. Our system achieved 71% accuracy and ranked 5th among 8 systems for subtask A and achieved 53% accuracy with the lowest RMSE value of 0.672 ranking at the first place among 5 systems for subtask B.
机译:本文介绍了我们参与SemEval-2017任务8的结果和结论:确定谣言的准确性和对谣言的支持。我们参与了两个子任务:SDQC(子任务A)处理跟踪推文如何定位谣言故事的准确性,而准确性预测(子任务B)处理预测给定谣言的准确性。我们参与了封闭式任务变体,其中仅根据推文本身进行预测。对于子任务A,将线性支持向量分类应用于单词袋模型,并使用朴素贝叶斯分类器进行语义特征提取。对于子任务B,使用了类似的方法。在实验过程中使用了许多功能,但只有少数几个功能对提供的数据集有用。我们的系统达到71%的精度,在子任务A的8个系统中排名第5,并以53%的精度达到了53%,最低的RMSE值为0.672,在子任务B的5个系统中排名第一。

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