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Multivariate-bounded Gaussian mixture model with minimum message length criterion for model selection

机译:具有最小消息长度标准的多变频的高斯混合模型,用于模型选择

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Bounded support Gaussian mixture model (BGMM) has been proposed for data modelling as an alternative to unbounded support mixture models for the cases when the data lies in bounded support. In this paper, we propose applications of multivariate BGMM in data clustering for more insightful analysis of the model. We also propose minimum message length (MML) criterion for model selection in data clustering using multivariate BGMM. The presented model is applied to data clustering in several speech (TSP and Spoken Digits) and image databases (MNIST and Fashion MNIST). We also propose the application of BGMM in code-book generation at feature extraction phase. Inspired by the success of bag of visual words approach in computer vision, it is also introduced in speech data representation and validated through experiments presented in this paper. For validation of model selection criterion, MML is applied to different medical, speech and image datasets. Experimental results obtained during the model selection through MML are further compared with seven different model selection criteria. The results presented in the paper demonstrate the effectiveness of BGMM for clustering speech and image databases, code-book generation through clustering for feature representation and model selection.
机译:已经提出了有界支持高斯混合模型(BGMM)作为数据建模,作为数据建模,作为无界支持混合模型的替代情况,当数据在于有界支持时。在本文中,我们提出了多元BGMM在数据聚类中的应用,以便对模型进行更多富有洞察分析。我们还提出了使用多元BGMM的数据集群中的模型选择的最小消息长度(MML)标准。呈现的模型应用于多个语音(TSP和口头数字)和图像数据库(Mnist和Fashion Mnist)的数据聚类。我们还提出了BGMM在特征提取阶段的守则中的应用。灵感来自计算机视觉中的视觉单词方法的成功,它也在语音数据表示中引入并通过本文提出的实验验证。为了验证模型选择标准,MML应用于不同的医疗,语音和图像数据集。通过MML在模型选择期间获得的实验结果与七种不同的模型选择标准相比,进一步与MML相比。本文提出的结果展示了BGMM用于聚类语音和图像数据库的有效性,通过群集特征表示和模型选择的代码书生成。

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