一轮会话的姿态检测:联合提取目标极性对

Zhaohao Zeng, Ruihua Song, Pingping Lin, T. Sakai
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引用次数: 6

摘要

我们处理态度检测,我们将其定义为从给定的一轮对话中提取应答者的态度,即目标极性对的任务。以往的研究将目标提取和极性分类单独考虑,本文将其作为姿态检测的子任务。我们的实验结果表明,独立处理两个子任务并不是姿态检测的最佳解决方案,因为在每个子任务中实现高性能并不足以获得正确的目标极性对。我们的联合训练模型AD-NET通过减轻目标极性不匹配问题大大优于单独训练的模型。此外,我们提出了一种利用姿态检测模型改进基于检索的聊天机器人的方法,该方法通过对具有姿态特征的候选响应进行重新排序。人类的评估表明,与商业聊天机器人获得的原始回复相比,集成了姿态检测后,对采样查询的新回复在统计上明显更加一致、连贯、引人入胜和信息丰富。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attitude Detection for One-Round Conversation: Jointly Extracting Target-Polarity Pairs
We tackle Attitude Detection, which we define as the task of extracting the replier's attitude, i.e., a target-polarity pair, from a given one-round conversation. While previous studies considered Target Extraction and Polarity Classification separately, we regard them as subtasks of Attitude Detection. Our experimental results show that treating the two subtasks independently is not the optimal solution for Attitude Detection, as achieving high performance in each subtask is not sufficient for obtaining correct target-polarity pairs. Our jointly trained model AD-NET substantially outperforms the separately trained models by alleviating the target-polarity mismatch problem. Moreover, we proposed a method utilising the attitude detection model to improve retrieval-based chatbots by re-ranking the response candidates with attitude features. Human evaluation indicates that with attitude detection integrated, the new responses to the sampled queries from are statistically significantly more consistent, coherent, engaging and informative than the original ones obtained from a commercial chatbot.
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