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Hybrid Parallel Classifiers for Semantic Subspace Learning

机译:用于语义子空间学习的混合并行分类器

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Subspace learning is very important in today's world of information overload. Distinguishing between categories within a subset of a large data repository such as the web and the ability to do so in real time is critical for a successful search technique. The characteristics of data belonging to different domains are also varying widely. This merits the need for an architecture which caters to the differing characteristics of different data domains. In this paper we present a novel hybrid parallel architecture using different types of classifiers trained on different subspaces. We further compare the performance of our hybrid architecture with a single classifier and show that it outperforms the single classifier system by a large margin when tested with a variety of hybrid combinations. Our results show that subspace classification accuracy is boosted and learning time reduced significantly with this new hybrid architecture.
机译:在当今信息过载的世界中,子空间学习非常重要。在大型数据存储库(例如Web)的子集中的类别之间进行区分以及实时执行此操作的能力对于成功的搜索技术至关重要。属于不同域的数据的特征也相差很大。因此,需要一种架构来满足不同数据域的不同特征。在本文中,我们提出了一种新颖的混合并行架构,该架构使用在不同子空间上训练的不同类型的分类器。我们进一步比较了具有单个分类器的混合体系结构的性能,并显示了在通过各种混合组合进行测试时,它在很大程度上优于单个分类器系统。我们的结果表明,使用这种新的混合体系结构,可以提高子空间分类的准确性,并显着减少学习时间。

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