首页> 外文会议>Future of Information and Communication Conference >Laughbot: Detecting Humor in Spoken Language with Language and Audio Cues
【24h】

Laughbot: Detecting Humor in Spoken Language with Language and Audio Cues

机译:笑声:用语言和音频线索检测口语中的幽默

获取原文

摘要

We propose detecting and responding to humor in spoken dialogue by extracting language and audio cues and subsequently feeding these features into a combined recurrent neural network (RNN) and logistic regression model. In this paper, we parse Switchboard phone conversations to build a corpus of punchlines and unfunny lines where punchlines precede laughter tokens in Switchboard transcripts. We create a combined RNN and logistic regression model that uses both acoustic and language cues to predict whether a conversational agent should respond to an utterance with laughter. Our model achieves an Fl-score of 63.2 and accuracy of 73.9. This model outperforms our logistic language model (Fl-score 56.6) and RNN acoustic model (59.4) as well as the final RNN model of D. Bertero, 2016 (52.9). Using our final model, we create a "laughbot" that audibly responds to a user with laughter when their utterance is classified as a punchline. A conversational agent outfitted with a humor-recognition system such as the one we present in this paper would be valuable as these agents gain utility in everyday life.
机译:通过提取语言和音频提示并随后将这些特征馈送到组合的复发性神经网络(RNN)和Logistic回归模型中,我们提出检测和响应口语对话中的幽默。在本文中,我们解析了交换机电话对话,构建了一个打扰板和不公布的线条,其中Pandlines在交换机成绩单中先当笑声令牌。我们创建了一个组合的RNN和逻辑回归模型,它使用声音和语言提示来预测会话代理是否应响应具有笑声的话语。我们的模型实现了63.2的飞行,准确性为73.9。该模型优于我们的逻辑语言模型(FL-Score 56.6)和RNN声学模型(59.4)以及D. Bertero,2016(52.9)的最终RNN模型。使用我们的最终模型,我们创建一个“笑声”,当他们的话语被归类为一个妙语时,可以在笑声响应用户的“笑声”。与幽默识别系统一起服用的会话代理,例如我们本文所呈现的系统,因为这些代理商在日常生活中获得效用是有价值的。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号