这是关于时间的:重新思考使用时间分裂的谣言检测基准评估

Yida Mu, Kalina Bontcheva, Nikolaos Aletras
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引用次数: 9

摘要

随着时间的推移,新事件的出现会影响社交媒体上的谣言话题。目前的谣言检测基准使用随机分割作为训练、开发和测试集,这通常会导致主题重叠。因此,由于时间概念漂移,在随机分裂上训练的模型可能不能很好地对以前未见过的主题进行谣言分类。在本文中,我们对四种流行的谣言检测基准的分类模型进行了重新评估,考虑了时间顺序而不是随机分裂。我们的实验结果表明,使用随机分割可以显著高估所有数据集和模型的预测性能。因此,我们建议谣言检测模型应该始终使用时间间隔来评估,以尽量减少主题重叠。
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It’s about Time: Rethinking Evaluation on Rumor Detection Benchmarks using Chronological Splits
New events emerge over time influencing the topics of rumors in social media. Current rumor detection benchmarks use random splits as training, development and test sets which typically results in topical overlaps. Consequently, models trained on random splits may not perform well on rumor classification on previously unseen topics due to the temporal concept drift. In this paper, we provide a re-evaluation of classification models on four popular rumor detection benchmarks considering chronological instead of random splits. Our experimental results show that the use of random splits can significantly overestimate predictive performance across all datasets and models. Therefore, we suggest that rumor detection models should always be evaluated using chronological splits for minimizing topical overlaps.
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