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A Two-stage Approach for Extending Event Detection to New Types via Neural Networks

机译:一种通过神经网络将事件检测扩展到新类型的两级方法

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We study the event detection problem in the new type extension setting. In particular, our task involves identifying the event instances of a target type that is only specified by a small set of seed instances in text. We want to exploit the large amount of training data available for the other event types to improve the performance of this task. We compare the convolutional neural network model and the feature-based method in this type extension setting to investigate their effectiveness. In addition, we propose a two-stage training algorithm for neural networks that effectively transfers knowledge from the other event types to the target type. The experimental results show that the proposed algorithm outperforms strong baselines for this task.
机译:我们研究了新型扩展设置中的事件检测问题。特别是,我们的任务涉及识别仅由文本中的一小组种子实例指定的目标类型的事件实例。我们希望利用其他事件类型的大量培训数据来提高此任务的性能。我们将卷积神经网络模型和基于特征的方法进行比较,以研究其有效性。此外,我们为神经网络提出了一种两级训练算法,可有效地将知识从其他事件类型转换为目标类型。实验结果表明,该算法优于此任务的强大基线。

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