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A SVM-Based Ensemble Approach to Multi-Document Summarization

机译:基于SVM的组合方法来多文件摘要

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In this paper, we present a Support Vector Machine (SVM) based ensemble approach to combat the extractive multi-document summarization problem. Although SVM can have a good generalization ability, it may experience a performance degradation through wrong classifications. We use a committee of several SVMs, i.e. Cross-Validation Committees (CVC), to form an ensemble of classifiers where the strategy is to improve the performance by correcting errors of one classifier using the accurate output of others. The practicality and effectiveness of this technique is demonstrated using the experimental results.
机译:在本文中,我们介绍了一种基于支持向量机(SVM)的集合方法来打击提取多文件摘要问题。虽然SVM可以具有良好的概括能力,但它可能会通过错误的分类验证性能下降。我们使用委员会,即跨验证委员会(CVC),形成一个分类因子的集合,其中,通过使用他人的准确输出来纠正一个分类器的错误来提高性能。使用实验结果证明了该技术的实用性和有效性。

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