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Neural networks for data mining electronic text collections

机译:用于数据挖掘电子文本收集的神经网络

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Abstract: The use of neural networks in information retrieval and text analysis has primarily suffered from the issues of adequate document representation, the ability to scale to very large collections, dynamism in the face of new information and the practical difficulties of basing the design on the use of supervised training sets. Perhaps the most important approach to begin solving these problems is the use of `intermediate entities' which reduce the dimensionality of document representations and the size of documents collections to manageable levels coupled with the use of unsupervised neural network paradigms. This paper describes the issues, a fully configured neural network-based text analysis system - dataHARVEST - aimed at data mining text collections which begins this process, along with the remaining difficulties and potential ways forward.!5
机译:摘要:神经网络在信息检索和文本分析中的使用主要受到以下问题的困扰:充分的文档表示能力,扩展到非常大的馆藏的能力,面对新信息时的动态性以及基于设计的实际困难。使用监督训练集。解决这些问题的最重要方法也许是“中间实体”的使用,它可以将文档表示的维数和文档集合的大小降低到可管理的水平,并使用无监督的神经网络范式。本文介绍了这些问题,一个完全配置的基于神经网络的文本分析系统dataHARVEST,该系统旨在开始此过程的数据挖掘文本集合,以及其余的困难和潜在的前进方向。5

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