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Influence of the data codification when applying evolving classifiers to develop spoken dialog systems

机译:应用进化分类器开发口语对话系统时数据编纂的影响

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摘要

In this paper we present a study of the influence of the representation of the data when applying evolving classifiers in a specific classification task. In particular, we consider an evolving classifier for the development of a spoken dialog system interacting in a practical domain. In order to conduct this study, we will first introduce an approach based on evolving fuzzy systems (EFS) which is employed to select the next system action of the dialog system. This classifier takes into account a set of evolving fuzzy rules which are automatically obtained using evolving systems. The reason for using EFS in this domain is that we can process streaming data on-line in real time and the structure and operation of the dialog model can dynamically change by considering the interaction of the dialog system with its users. Since we want to apply this evolving approach in a real domain, our proposal considers the data supplied by the user throughout the complete dialog history and the confidence measures provided by the recognition and understanding modules of the system. The paper is focused on the study of the influence of the codification of this input data to achieve the best performance of the proposed approach. To do this, we have completed this study for a real spoken dialog system providing railway information.
机译:在本文中,我们将研究在特定分类任务中应用进化分类器时数据表示的影响。特别是,我们考虑了一个不断发展的分类器,用于开发在实际领域中进行交互的口语对话系统。为了进行这项研究,我们将首先介绍一种基于演化模糊系统(EFS)的方法,该方法用于选择对话框系统的下一个系统动作。该分类器考虑了使用演化系统自动获得的一组演化模糊规则。在此领域中使用EFS的原因是,我们可以实时在线处理流数据,并且通过考虑对话框系统与其用户的交互作用,可以动态更改对话框模型的结构和操作。由于我们想将这种不断发展的方法应用于实际领域,因此我们的建议考虑了整个对话历史中用户提供的数据以及系统识别和理解模块所提供的置信度。本文专注于研究此输入数据的编码对实现所提出方法的最佳性能的影响。为此,我们已经完成了针对提供铁路信息的真实语音对话系统的研究。

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