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A Comparative Study of Classifier Combination Methods Applied to NLP Tasks

机译:分类器组合方法对NLP任务的比较研究

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There are many classification tools that can be used for various NLP tasks, although none of them can be considered the best of all since each one has a particular list of virtues and defects. The combination methods can serve both to maximize the strengths of the base classifiers and to reduce errors caused by their defects improving the results in terms of accuracy. Here is a comparative study on the most relevant methods that shows that combination seems to be a robust and reliable way of improving our results.
机译:有许多可以用于各种NLP任务的分类工具,尽管它们中没有一个都可以被认为是最佳,因为每个人都有一个特定的美德和缺陷列表。组合方法可以用于最大化基础分类器的强度,并减少由其缺陷引起的误差,从而改善精度的结果。以下是对最相关方法的比较研究表明,组合似乎是改善我们的结果的强大和可靠的方式。

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