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Detecting Levels of Interest from Spoken Dialog with Multistream Prediction Feedback and Similarity Based Hierarchical Fusion Learning

机译:基于多流预测反馈和基于相似性的层次融合学习从口语对话中检测兴趣级别

摘要

Detecting levels of interest from speakers is a new problem in Spoken Dialog Understanding with significant impact on real world business applications. Previous work has focused on the analysis of traditional acoustic signals and shallow lexical features. In this paper, we present a novel hierarchical fusion learning model that takes feedback from previous multistream predictions of prominent seed samples into account and uses a mean cosine similarity measure to learn rules that improve reclassification. Our method is domain-independent and can be adapted to other speech and language processing areas where domain adaptation is expensive to perform. Incorporating Discriminative Term Frequency and Inverse Document Frequency (DTFIDF), lexical affect scoring, and low and high level prosodic and acoustic features, our experiments outperform the published results of all systems participating in the 2010 Interspeech Paralinguistic Affect Subchallenge.
机译:检测说话者的兴趣水平是“对白对话”中的一个新问题,对现实世界的业务应用程序有重大影响。先前的工作集中在分析传统声音信号和浅层词汇特征。在本文中,我们提出了一种新颖的分层融合学习模型,该模型将先前种子样本的多流预测中的反馈考虑在内,并使用平均余弦相似性度量来学习可改善重分类的规则。我们的方法是与域无关的,并且可以适用于执行域自适应的代价昂贵的其他语音和语言处理领域。结合判别性术语频率和文档反向频率(DTFIDF),词汇影响评分以及低,高水平的韵律和声学特征,我们的实验优于所有参与2010年言语副语言能力子挑战的系统的公布结果。

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