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Meta-learning of Text Classification Tasks

机译:文本分类任务的元学习

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A text mining characterization is proposed consisting of a set of meta-features, unlike previous meta-learning approaches, some of them are extracted directly from raw text. Such novel description is useful for comparing text mining tasks and study their differences. The problem of determining the task associated to a text classification dataset is introduced and approached with our characterization. Experimental results on a set of 81 corpora show that the proposed meta-features indeed allow to recognize tasks with acceptable performance using only a few meta-features.
机译:提出了一种文本挖掘特征,该特征由一组元特征组成,这与以前的元学习方法不同,其中一些是直接从原始文本中提取的。这种新颖的描述对于比较文本挖掘任务和研究它们之间的差异很有用。介绍和确定与文本分类数据集相关联的任务的问题,并通过我们的表征来解决。在一组81个语料库上的实验结果表明,提出的元功能确实允许仅使用少数元功能就可以识别具有可接受性能的任务。

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