文本文档分类的增量学习

ZhiHang Chen, Liping Huang, Y. Murphey
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引用次数: 20

摘要

本文介绍了我们在文本文档分类中的增量学习研究。增量学习在文本文档分类中很重要,因为许多应用程序都有大量的训练数据,并且训练文档随着时间的推移变得可用。我们提出了一个增量学习框架,ILTC(文本分类的增量学习),它涉及文本类的特征学习,然后是增量感知器学习过程。ILTC具有增量学习新特征维度和新文档类的能力。我们将ILTC应用于诊断文本文档的分类系统。实验结果表明,ILTC能够从新的训练数据中逐步学习新的知识,而不需要参考旧的训练数据,也不需要忘记已经学习的知识。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incremental Learning for Text Document Classification
This paper presents our research in incremental learning for text document classification. Incremental learning is important in text document classification since many applications have huge amount of training data, and training documents become available through time. We propose an incremental learning framework, ILTC(Incremental Learning of Text Classification) that involves the learning of features of text classes followed by an incremental Perceptron learning process. ILTC has the capabilities of incremental learning of new feature dimensions as well as new document classes. We applied the ILTC to a classification system of diagnostic text documents. The experiment results demonstrate that ILTC was able to incrementally learn new knowledge from newly available training data without either referring to the older training data or forgetting the already learnt knowledge.
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