Comparison of generality based algorithm variants for automatic taxonomy generation

Andreas Henschel, W. Woon, Thomas Wachter, S. Madnick
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引用次数: 16

Abstract

We compare a family of algorithms for the automatic generation of taxonomies by adapting the Heymann-algorithm in various ways. The core algorithm determines the generality of terms and iteratively inserts them in a growing taxonomy. Variants of the algorithm are created by altering the way and the frequency, generality of terms is calculated. We analyse the performance and the complexity of the variants combined with a systematic threshold evaluation on a set of seven manually created benchmark sets. As a result, betweenness centrality calculated on unweighted similarity graphs often performs best but requires threshold fine-tuning and is computationally more expensive than closeness centrality. Finally, we show how an entropy-based filter can lead to more precise taxonomies.
基于通用性的自动分类法生成算法变体比较
我们比较了一个家族的算法自动生成分类法通过适应海曼算法在不同的方式。核心算法确定术语的通用性,并迭代地将它们插入到不断增长的分类法中。该算法的变体是通过改变方式和频率来创建的,计算项的通用性。我们分析了变体的性能和复杂性,并结合了七个手动创建的基准集的系统阈值评估。因此,在未加权的相似图上计算的中间性中心性通常表现最好,但需要阈值微调,并且在计算上比接近性中心性更昂贵。最后,我们将展示基于熵的过滤器如何产生更精确的分类法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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