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Automatic speaker role labeling in AMI meetings: Recognition of formal and social roles

机译:AMI会议中的自动演讲者角色标签:识别正式和社交角色

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This work aims at investigating the automatic recognition of speaker role in meeting conversations from the AMI corpus. Two types of roles are considered: formal roles, fixed over the meeting duration and recognized at recording level, and social roles related to the way participants interact between themselves, recognized at speaker turn level. Various structural, lexical and prosodic features as well as Dialog Act tags are exhaustively investigated and combined for this purpose. Results reveal an accuracy of 74% in recognizing the speakers formal roles and an accuracy of 66% (percentage of time) in correctly labeling the social roles. Feature analysis reveals that lexical features provide the higher performances in formal/functional role recognition while prosodic features provide the higher performances in social role recognition. Furthermore results reveal that social role recognition in case of rare roles in the corpus can be improved through the use of lexical and Dialog Act information combined over short time windows.
机译:这项工作旨在调查在与AMI语料库进行对话时自动识别说话者角色。考虑了两种类型的角色:正式角色,在会议持续时间内固定并在记录级别得到认可;与参与者之间的交互方式相关的社会角色,在演讲​​者回合级别得到认可。为此,对各种结构,词汇和韵律特征以及Dialog Act标签进行了详尽的研究和组合。结果显示,识别说话人的正式角色的准确度为74%,正确标记社交角色的准确度为66%(时间百分比)。特征分析表明,词汇特征在形式/功能角色识别中提供较高的表现,而韵律特征在社会角色识别中提供较高的表现。此外,结果表明,通过在短时间窗口内结合使用词汇和对话法信息,可以提高在语料中角色稀少的情况下的社会角色识别。

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