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Efficient Semantic Kernel-Based Text Classification Using Matching Pursuit KFDA

机译:使用匹配追踪KFDA的基于语义核的高效文本分类

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A number of powerful kernel-based learning machines, such as support vector machines (SVMs), kernel Fisher discriminant analysis (KFDA), have been proposed with competitive performance. However, directly applying existing attractive kernel approaches to text classification (TC) task will suffer semantic related information deficiency and incur huge computation costs hindering their practical use in numerous large scale and real-time applications with fast testing requirement. To tackle this problem, this paper proposes a novel semantic kernel-based framework for efficient TC which offers a sparse representation of the final optimal prediction function while preserving the semantic related information in kernel approximate subspace. Experiments on 20-Newsgroup dataset demonstrate the proposed method compared with SVM and KNN (K-nearest neighbor) can significantly reduce the computation costs in predicating phase while maintaining considerable classification accuracy.
机译:已经提出了许多具有竞争力的性能强大的基于内核的学习机,例如支持向量机(SVM),内核Fisher判别分析(KFDA)。然而,直接将现有吸引人的内核方法应用于文本分类(TC)任务将遭受语义相关的信息缺陷,并招致巨大的计算成本,从而阻碍了它们在大量具有快速测试需求的大规模和实时应用中的实际使用。为了解决这个问题,本文提出了一种基于语义内核的高效TC框架,该框架提供了最终最优预测函数的稀疏表示,同时将语义相关信息保留在内核近似子空间中。在20-Newsgroup数据集上进行的实验表明,与SVM和KNN(K最近邻)相比,该方法可以显着降低预测阶段的计算成本,同时保持相当大的分类精度。

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