评价随机梯度下降和相关向量分类器在口语理解性能和数据稀疏性方面的改进

Sheetal Jagdale, M. Shah
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引用次数: 1

摘要

口语理解(SLU)是口语对话系统(SDS)的一部分,它将语音数据表示为理解用户意图所需的语义形式。人机交互系统最常被置于噪声环境中。这在自动语音识别器(ASR)中引入了错误。SLU考虑了ASR误差。因此,语言单元的鲁棒性对人机交互系统的高效工作起着至关重要的作用。SLU由语义解码器和信念跟踪器组成。最近的研究将语义解码器建模为分类任务或序列到序列的学习。SLU模型包含用于分类的学习模型。学习模型需要大量的标记数据进行训练。获取标记数据的过程既昂贵又耗时。因此,即使有稀疏的训练数据可用,SLU也必须能够保持其准确性。本研究的目的是评估结合相关向量分类器(RVC)和随机梯度下降(SGD)分类器的SLU在准确性和数据稀疏性方面的鲁棒性。SLU的框架中包含语义元组分类器(STC)。STC通过使用分类器进行对话行为分类和插槽填充。在语义解码器中加入的分类器有支持向量机(SVM)、SGD和RVC。使用的数据集是DSTC II。与其他分类器相比,SVM分类器具有最大的鲁棒性和更好的准确率。SVM分类器的Inter Cross Entropy (ICE)和准确率分别为1.0和0.91。RVC的ICE和准确率分别为4.055和0.52。
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Evaluation of Stochastic Gradient Descent and Relevance Vector Classifier for Improvement in Spoken Language Understanding in Terms of Performance and Data Sparsity
Spoken Language Understanding (SLU) is a part of spoken dialogue system (SDS) which represents speech data into semantic form required to understand user's intention. The human-computer interaction system is most commonly placed in noisy environment. This introduces error in Automatic Speech Recognizer (ASR). SLU takes into account ASR errors. Thus robustness of SLU plays important role in efficient working of human computer interaction system. The SLU consist of semantic decoder and belief tracker. Recent line of research models semantic decoder as a classification task or sequence to sequence learning. The SLU models incorporate learning models for classification. The learning model requires lot of labelled data for training. The process of obtaining labelled data is expensive and time consuming. Thus it is desirable that SLU must be able to maintain its accuracy even if sparse training data is available. The objective of this research is to evaluate robustness in terms of accuracy and data sparsity of SLU incorporating Relevance Vector Classifier (RVC) and Stochastic Gradient Descent (SGD) classifier. The framework of SLU incorporates semantic tuple classifier (STC). The STC performs dialogue act classification and slot filling by using classifiers. The classifiers that were incorporated in semantic decoder are Support Vector Machine (SVM), SGD and RVC. The dataset used is DSTC II. The SVM classifier showed maximum robustness and better accuracy as compared to other classifiers. For SVM, classifier the Inter Cross Entropy (ICE) and accuracy were 1.0 and 0.91, respectively. For RVC, ICE and accuracy were 4.055 and 0.52.
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