单侧概念格生成的基于分割的合并算法

P. Butka, J. Pócsová, J. Pócs
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引用次数: 0

摘要

本文提出了一种新的模型生成算法——广义单侧概念格(GOSCL)。该模型提供了基于形式概念分析(Formal Concept Analysis, FCA)方法的数据分析方法的特定模糊版本,该方法支持包含定义为模糊集的多种属性类型的数据表。FCA模型的获取是一项计算复杂的任务,寻找更有效的算法来创建FCA模型非常重要。因此,我们设计了一种减少计算次数的算法,该算法是基于基于切分的方法对输入数据表进行简单的分割,然后通过合并过程将局部模型组成一个最终合并的完整输入数据的概念格。我们给出了说明性实验,证明了所提出的算法对稀疏数据输入的适用性,在这种情况下,计算时间可能会显著减少。更有效的稀疏数据算法有助于基于fca的模型在稀疏领域的应用,如信息检索或文本分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bisection-based merging algorithm for creation of one-sided concept lattices
In this paper we provide the new version of algorithm for creation model called Generalized One-Sided Concept Lattice (GOSCL). This model provides the specific fuzzy version of data analytical method based on the approach known as Formal Concept Analysis (FCA), which supports data tables containing the multiple types of attributes defined as fuzzy sets. The acquisition of the FCA models is computationally complex task and it is important to find more effective algorithms for their creation. Therefore, we have designed the algorithm for the reduction of the computation times, which is based on the simple division of input data table using bisection-based approach and then merging procedure compose the local models into one finally merged concept lattice for the complete input data. We present the illustrative experiments which prove the applicability of the presented algorithm for sparse data inputs, where it is possible to get significant decrease of computation times. More effective algorithm for sparse data can be useful for the application of FCA-based models in sparse domains like information retrieval or text analysis.
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