利用深度主动学习识别地震中基础设施的损坏

S. Priya, Saharsh Singh, Sourav Kumar Dandapat, Kripabandhu Ghosh, Joydeep Chandra
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引用次数: 8

摘要

Twitter为灾害期间的救援过程中的紧急救援人员提供了重要信息。然而,包含相关信息的推文是稀疏的,通常隐藏在大量嘈杂的内容中。这导致了在生成神经网络模型所需的合适训练数据方面的固有挑战。在本文中,我们研究了在危机期间从不同位置生成的推文中检索基础设施损坏信息的问题,该问题使用了对过去但相似的事件进行主动训练的模型。我们将基于RNN和GRU的模型与主动学习相结合,在大多数不确定样本上进行训练,并捕获不同数据分布的潜在特征。它减少了大约90%的训练数据的使用,从而大大减少了手工注释的工作量。我们使用基于主动学习的方法预先训练的模型来检索来自不同地区的基础设施损坏推文。与最近最先进的红外技术相比,我们在f1测量和其他指标上获得了至少18%的增益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying Infrastructure Damage during Earthquake using Deep Active Learning
Twitter provides important information for emergency responders in the rescue process during disasters. However, tweets containing relevant information are sparse and are usually hidden in a vast set of noisy contents. This leads to inherent challenges in generating suitable training data that are required for neural network models. In this paper, we study the problem of retrieving the infrastructure damage information from tweets generated from different location during crisis using the model actively trained on past but similar events. We combine RNN and GRU based model coupled with active learning that gets trained on most uncertain samples and captures the latent features of different data distribution. It reduces the uses of around 90% less training data, thereby significantly reducing the manual annotation efforts. We use the model pre-trained using active learning based approach to retrieve the infrastructure damage tweets originated from different regions. We obtain a minimum of 18% gain on F1-measure and considerably on other metrics over recent state-of-the-art IR techniques.
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