An evolutionary confidence measurement for spoken term detection

Javier Tejedor, A. Echeverría, Dong Wang
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引用次数: 9

Abstract

We propose a new discriminative confidence measurement approach based on an evolution strategy for spoken term detection (STD). Our evolutionary algorithm, named evolutionary discriminant analysis (EDA), optimizes classification errors directly, which is a salient advantage compared with some conventional discriminative models which optimize objective functions based on certain class encoding, e.g. MLPs and SVMs. In addition, with the intrinsic randomness of the evolution strategy, EDA largely reduces the risk of converging to local minimums in model training. This is particularly valuable when the decision boundary is complex, which is the case when dealing with out-of-vocabulary (OOV) terms in STD. Experimental results on the meeting domain in English demonstrate considerable performance improvement with the EDA-based confidence for OOV terms compared with MLPs- and SVMs-based confidences; for in-vocabulary terms, however, no significant difference is observed with the three models. This confirms our conjecture that EDA exhibits more advantage for tasks with complex decision boundaries.
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语音术语检测的进化置信度测量
提出了一种基于进化策略的判别置信度测量方法。我们的进化算法——进化判别分析(EDA),直接优化分类误差,与传统的基于特定类编码优化目标函数的判别模型(如mlp和svm)相比,这是一个显著的优势。此外,由于进化策略的内在随机性,EDA在很大程度上降低了模型训练中收敛到局部最小值的风险。当决策边界很复杂时,这一点尤其有价值,这就是STD中处理词汇外(OOV)术语时的情况。英语会议域的实验结果表明,与基于mlp和svm的置信度相比,基于eda的OOV术语置信度有相当大的性能提高;然而,对于词汇内术语,三种模型之间没有显著差异。这证实了我们的猜想,EDA在具有复杂决策边界的任务中表现出更大的优势。
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