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Log-linear System Combination Using Structured Support Vector Machines

机译:使用结构化支持向量机的对数线性系统组合

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Building high accuracy speech recognition systems with limited language resources is a highly challenging task. Although the use of multi-language data for acoustic models yields improvements, performance is often unsatisfactory with highly limited acoustic training data. In these situations, it is possible to consider using multiple well trained acoustic models and combine the system outputs together. Unfortunately, the computational cost associated with these approaches is high as multiple decoding runs are required. To address this problem, this paper examines schemes based on log-linear score combination. This has a number of advantages over standard combination schemes. Even with limited acoustic training data, it is possible to train, for example, phone-specific combination weights, allowing detailed relationships between the available well trained models to be obtained. To ensure robust parameter estimation, this paper casts log-linear score combination into a structured support vector machine (SSVM) learning task. This yields a method to train model parameters with good generalisation properties. Here the SSVM feature space is a set of scores from well-trained individual systems. The SSVM approach is compared to lattice rescoring and confusion network combination using language packs released within the IARPA Babel program.
机译:构建具有有限语言资源的高精度语音识别系统是一个高度挑战的任务。虽然使用用于声学模型的多语言数据产生改进,但性能通常与高限制的声学训练数据不满意。在这些情况下,可以考虑使用多良好训练的声学模型,并将系统输出组合在一起。不幸的是,与这些方法相关联的计算成本高,因为需要多个解码运行。要解决此问题,本文介绍了基于日志线性分数组合的方案。这与标准组合方案有很多优势。即使有限的声学训练数据,也可以训练例如特定于电话特定的组合权重,允许获得可用良好训练型模型之间的详细关系。为确保鲁棒参数估计,本文将Log-Linear分数组合施放到结构化支持向量机(SSVM)学习任务中。这产生了一种具有良好的概括性特性的模型参数的方法。这里,SSVM特征空间是从训练有素的单个系统的一组分数。使用IARPA Babel程序中释放的语言包进行比较SSVM方法。

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