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Hybrid generative discriminative approaches based on Multinomial Scaled Dirichlet mixture models

机译:基于多项式缩放Dirichlet混合模型的混合生成鉴别方法

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摘要

Developing both generative and discriminative techniques for classification has achieved significant progress in the last few years. Considering the capabilities and limitations of both, hybrid generative discriminative approaches have received increasing attention. Our goal is to combine the advantages and desirable properties of generative models, i.e. finite mixture, and the Support Vector Machines (SVMs) as powerful discriminative techniques for modeling count data that appears in many domains in machine learning and computer vision applications. In particular, we select accurate kernels generated from mixtures of Multinomial Scaled Dirichlet distribution and its exponential approximation (EMSD) for support vector machines. We demonstrate the effectiveness and the merits of the proposed framework through challenging real-world applications namely; object recognition and visual scenes classification. Large scale datasets have been considered in the empirical study such as Microsoft MOCR, Fruits-360 and MIT places.
机译:开发用于分类的生成和鉴别技术在过去几年中取得了重大进展。考虑到两者的能力和局限性,混合生成歧视性方法都得到了不断增加的关注。我们的目标是结合生成模型的优缺点,即,有限混合物,以及支持向量机(SVM)作为用于建模计数数据的强大判别技术,这些技术在机器学习和计算机视觉应用中的许多域中出现。特别是,我们选择从多项式缩放的Dirichlet分布的混合物和其指数近似(EMSD)产生的准确内核,用于支持向量机。我们通过挑战现实世界应用,展示了拟议框架的有效性和案情;对象识别和视觉场景分类。在实证研究中考虑了大规模数据集,例如Microsoft Mocr,Fruits-360和MIT位置。

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