使用LSTM递归神经网络进行跨语言和体裁的轮转预测

Nigel G. Ward, Diego Aguirre, Gerardo Cervantes, O. Fuentes
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引用次数: 18

摘要

除了为解决特定任务(如预测用户是否会在暂停后保持他/她的回合)而构建的轮取模型之外,人们对包含许多此类任务的更通用的轮取模型越来越感兴趣,并且最近获得了非常好的结果[1]。在这里,我们提出了一个改进的循环网络模型,其性能优于[1],并且不需要词法注释。此外,我们表明该模型可以在不修改的情况下训练不同的语言,在英语,西班牙语,日语,普通话和法语的轮流预测中提供了良好的结果。我们还展示了我们的模型在各种类型中表现良好,包括面向任务的对话和一般对话。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Turn-Taking Predictions across Languages and Genres Using an LSTM Recurrent Neural Network
Going beyond turn-taking models built to solve specific tasks, such as predicting if a user will hold his/her turn after a pause, there is growing interest in more general models for turn taking that subsume many such tasks, and very good results have recently been obtained [1]. Here we present an improved recurrent network model that outperforms [1] and does so without requiring lexical annotation. Further, we show that this model can be trained for different languages with no modifications, providing good results in turn-taking prediction for English, Spanish, Japanese, Mandarin and French. We also show that our model performs well across genres, including task-oriented dialog and general conversation.
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