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Topic-space based setup of a neural network for theme identification of highly imperfect transcriptions

机译:基于主题空间的神经网络的设置,用于高度不完美转录的主题识别

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This paper presents a method for speech analytics that integrates topic-space based representation into a feed-forward artificial neural network (FFANN), working as a document classifier. The proposed method consists in configuring the FFANN's topology and in initializing the weights according to a previously estimated topic-space. Setup based on thematic priors is expected to improve the efficiency of the FFANN's weight optimization process, while speeding-up the training process and improving the classification accuracy. This method is evaluated on a spoken dialogue categorization task which is composed of customer-agent dialogues from the call-centre of Paris Public Transportation Company. Results show the interest of the proposed setup method, with a gain of more than 4 points in terms of classification accuracy, compared to the baseline. Moreover, experiments highlight that performance is weakly dependent to FFANN's topology with the LDA-based configuration, in comparison to classical empirical setup.
机译:本文介绍了一种语音分析的方法,它将基于空间的表示集成到前馈人工神经网络(FFANN)中,作为文档分类器。该方法包括根据先前估计的主题空间配置Ffann的拓扑和初始化权重。预计基于主题前沿的设置可以提高FFANN重量优化过程的效率,同时加速培训过程并提高分类准确性。这种方法是对由巴黎公共交通公司呼叫中心的客户 - 代理对话组成的口语分类任务。结果表明,与基线相比,所提出的设置方法的兴趣,在分类准确性方面有超过4分。此外,实验强调,与古典经验设置相比,基于LDA的配置与基于LDA的配置略有依赖于FFann的拓扑。

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