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Disfluency Detection using Auto-Correlational Neural Networks

机译:使用自相关神经网络进行气孔检测

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In recent years, the natural language processing community has moved away from task-specific feature engineering, i.e., researchers discovering ad-hoc feature representations for various tasks, in favor of general-purpose methods that learn the input representation by themselves. However, state-of-the-art approaches to disfluency detection in spontaneous speech transcripts currently still depend on an array of hand-crafted features, and other representations derived from the output of pre-exisling systems such as language models or dependency parsers. As an alternative, this paper proposes a simple yet effective model for automatic disfluency detection, called an auto-correlational neural network (ACNN). The model uses a convolutional neural network (CNN) and augments it with a new auto-correlation operator at the lowest layer that can capture the kinds of "rough copy" dependencies that are characteristic of repair dislluencies in speech. In experiments, the ACNN model outperforms the baseline CNN on a disfluency detection task with a 5% increase in f-score, which is close to the previous best result on this task.
机译:近年来,自然语言处理社区已经远离任务特定的特征工程,即发现各种任务的特征特征表示的研究人员,有利于通过自己学习输入表示的通用方法。然而,目前仍然依赖于手工制作的特征的阵列的最先进的传扰检测方法,以及导致的预先出现的系统的输出等诸如语言模型或依赖性解析器的其他表示。作为替代方案,本文提出了一种简单而有效的自动失控检测模型,称为自动相关神经网络(ACNN)。该模型使用卷积神经网络(CNN)并在最低层中使用新的自动相关操作员增强,可以捕获语音中修复欲望的“粗副本”依赖项的类型。在实验中,ACNN Model在F-Score增加5%的增长下占据了基线CNN的基线CNN,这是接近此任务的最佳结果。

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