We present our latest findings on backchannel modeling novelly motivated by the canonical use of the minimal responses Yeah and Uh-huh in English and their correspondent tokens in German, and the effect of encoding the speaker-listener interaction. Backchanneling theories emphasize the active and continuous role of the listener in the course of the conversation, their effects on the speaker's subsequent talk, and the consequent dynamic speaker-listener interaction. Therefore, we propose a neural-based acoustic backchannel classifier on minimal responses by processing acoustic features from the speaker speech, capturing and imitating listeners' backchanneling behavior, and encoding speaker-listener interaction. Our experimental results on the Switchboard and GECO datasets reveal that in almost all tested scenarios the speaker or listener behavior embeddings help the model make more accurate backchannel predictions. More importantly, a proper interaction encoding strategy, i.e., combining the speaker and listener embeddings, leads to the best performance on both datasets in terms of F1-score.
翻译:我们提出了最新的次要回应建模方法,由最小响应“Yeah”和“Uh-huh”,以及德语中对应的代币,以及编码演讲者-听众互动的影响而产生的新颖动机。回路回应理论强调听众在谈话过程中的主动和持续作用,其对演讲者后续讲话的影响以及随之而来的动态演讲者-听众互动。因此,我们提出了基于神经网络的声学次要回应分类器,通过处理演讲者语音的声学特征,捕获和模仿听众的次要回应行为,并编码演讲者-听众互动。我们对Switchboard和GECO数据集的实验结果表明,在几乎所有测试情况下,演讲者或听众行为嵌入有助于模型进行更准确的次要回应预测。更重要的是,一种适当的交互编码策略,即将演讲者和听众嵌入进行组合,在F1-score方面在两个数据集上实现了最佳性能。