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Extraction of text classification rules based on multi-population collaborative optimization

机译:基于多人协作优化的文本分类规则提取

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Most text classification methods are highly complicated on computation and can not be used on the occasion of classifying a large number of texts. A novel approach based on multi-population collaborative optimization was proposed for the extraction of text classification rules. The mutual information was applied to generate the initial populations and the multi-population collaborative optimization method was adopted to evolve the current population. Experimental results show that the number of classification rules is small, the accuracies of classification rules are high and the time of computation is short using this approach. And this approach is competent for processing the large-scale text datasets.
机译:大多数文本分类方法对计算非常复杂,并且不能在分类大量文本时使用。提出了一种基于多人口协作优化的新方法,提取文本分类规则。应用相互信息以产生初始群体,采用多人口协同优化方法来发展目前的人口。实验结果表明,分类规则的数量很小,分类规则的准确性很高,使用这种方法的计算时间很短。并且这种方法是处理大规模文本数据集的能力。

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