Feature reduction for neural network based text categorization

S. L. Lam, Lee
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引用次数: 167

Abstract

In a text categorization model using an artificial neural network as the text classifier scalability is poor if the neural network is trained using the raw feature space since textural data has a very high-dimension feature space. We proposed and compared four dimensionality reduction techniques to reduce the feature space into an input space of much lower dimension for the neural network classifier. To test the effectiveness of the proposed model, experiments were conducted using a subset of the Reuters-22173 test collection for text categorization. The results showed that the proposed model was able to achieve high categorization effectiveness as measured by precision and recall. Among the four dimensionality reduction techniques proposed, principal component analysis was found to be the most effective in reducing the dimensionality of the feature space.
基于神经网络的文本分类特征约简
在使用人工神经网络作为文本分类器的文本分类模型中,由于纹理数据具有非常高维的特征空间,如果神经网络使用原始特征空间进行训练,则可扩展性很差。我们提出并比较了四种降维技术,将特征空间降为更低维的神经网络分类器输入空间。为了测试所提出模型的有效性,使用Reuters-22173测试集的一个子集进行了文本分类实验。结果表明,该模型在准确率和查全率两方面均取得了较好的分类效果。在提出的四种降维技术中,主成分分析是最有效的降维方法。
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