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Inferring social nature of conversations from words: Experiments on a corpus of everyday telephone conversations

机译:从单词推断对话的社会性质:对日常电话对话的语料库进行实验

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摘要

Language is being increasingly harnessed to not only create natural human-machine interfaces but also to infer social behaviors and interactions. In the same vein, we investigate a novel spoken language task, of inferring social relationships in two-party conversations: whether the two parties are related as family, strangers or are involved in business transactions. For our study, we created a corpus of all incoming and outgoing calls from a few homes over the span of a year. On this unique naturalistic corpus of everyday telephone conversations, which is unlike Switchboard or any other public domain corpora, we demonstrate that standard natural language processing techniques can achieve accuracies of about 88%, 82%, 74% and 80% in differentiating business from personal calls, family from non-family calls, familiar from unfamiliar calls and family from other personal calls respectively. Through a series of experiments with our classifiers, we characterize the properties of telephone conversations and find: (a) that 30 words of openings (beginnings) are sufficient to predict business from personal calls, which could potentially be exploited in designing context sensitive interfaces in smart phones; (b) our corpus-based analysis does not support Schegloff and Sack's manual analysis of exemplars in which they conclude that pre-closings differ significantly between business and personal calls - closing fared no better than a random segment; and (c) the distribution of different types of calls are stable over durations as short as 1-2 months. In summary, our results show that social relationships can be inferred automatically in two-party conversations with sufficient accuracy to support practical applications.
机译:人们越来越多地利用语言来创建自然的人机界面,还可以推断出社交行为和互动。同样,我们研究一种新颖的口头语言任务,即通过两方对话来推断社交关系:两方是作为家庭,陌生人联系在一起还是参与业务交易。在我们的研究中,我们创建了一个集合,涵盖了一年之内来自几个家庭的所有传入和传出呼叫的语料库。在不同于Switchboard或任何其他公共领域语料库的这种日常电话交谈的独特自然主义语料库上,我们证明了标准的自然语言处理技术可以在区分个人业务和个人业务方面实现约88%,82%,74%和80%的准确性电话,非家庭电话的家庭,陌生电话的家庭熟悉和其他个人电话的家庭。通过使用分类器进行的一系列实验,我们表征了电话交谈的性质,并发现:(a)30个单词的开头(开头)足以预测来自个人呼叫的业务,可以在设计以下内容的上下文相关接口时加以利用智能手机; (b)我们基于语料库的分析不支持Schegloff和Sack对示例的手动分析,他们得出的结论是,商务和私人电话的收盘前差异很大-收盘价不比随机分段好; (c)在短至1-2个月的时间内,不同类型的呼叫分布稳定。总而言之,我们的结果表明,可以在两方对话中以足够的准确性自动推断出社交关系,以支持实际应用。

著录项

  • 来源
    《Computer speech and language》 |2014年第1期|224-239|共16页
  • 作者单位

    Center for Spoken Language Understanding, Oregon Health & Science University (OHSU), Portland, OR, United States;

    Center for Spoken Language Understanding, Oregon Health & Science University (OHSU), Portland, OR, United States;

    Oregon Center for Aging & Technology, Oregon Health & Science University (OHSU), Portland, OR, United States;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Conversation telephone speech; Social networks; Social relationships;

    机译:对话电话讲话;社交网络;社会关系;

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