基于潜在语义索引的人工神经网络文档分类

C. Li, Soon-cheol Park
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引用次数: 5

摘要

在本研究中,我们使用多输出感知器学习算法(MOPL)和反向传播神经网络(BPNN)训练的人工神经网络来构建文档分类系统。大多数经典的分类系统用一组索引项来表示文档的内容,这被称为向量空间模型(VSM)。然而,这种方法需要高维空间来表示文档,并且没有考虑术语之间的语义关系,这可能导致分类性能较差。本文将潜在语义索引(LSI)引入到我们的系统中。它不仅可以在很大程度上降低维数,而且可以确定术语之间的重要关联关系。LSI还有助于加快训练速度和提高分类精度。我们在标准的reuters -21578集合上测试我们的分类系统。实验评估表明,使用LSI进行系统训练的速度明显快于使用VSM进行系统训练的速度,并且前者的分类效果更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Neural Network for Document Classification Using Latent Semantic Indexing
In this study, we construct document classification systems using artificial neural network training by the multi-output perceptron learning algorithm (MOPL) and back-propagation neural network (BPNN). Most classic classification systems represent the contents of documents with a set of index terms, which is termed the vector space model (VSM). However, this method requires a high dimensional space to represent the documents, and it does not take into account the semantic relationship between the terms, which could lead to a poor classification performance. In this paper, we introduce latent semantic indexing (LSI) in our systems. It could not only reduce the dimensionality to a great extent but also determine important associative relationships between the terms. The LSI also aids in accelerating the training speed and improves the classification accuracy. We test our classification systems on the standard Reuter-21578 collection. The experimental evaluations show that the system training with the LSI is considerably faster than the original system training with the VSM and that the former yields better classification results.
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