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Content-based software classification by self-organization

机译:自组织基于内容的软件分类

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This paper is concerned with a case study in content-based classification of textual documents. In particular we compare the application of two prominent self-organizing neural networks to the same problem domain, namely the organization of software libraries. The two models are adaptive resonance theory and self-organizing maps. As a result we are able to show that both models successfully arrange software components according to their semantic similarity.
机译:本文涉及基于内容的文本文件分类的案例研究。特别是,我们将两个突出的自组织神经网络的应用程序与同一问题域进行比较,即软件库的组织。这两种模型是自适应共振理论和自组织地图。因此,我们能够表明这两个模型根据其语义相似性成功安排软件组件。

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