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引用次数: 9

摘要

与应用于数据分类的传统机器学习技术不同,高级分类不仅考虑数据的物理特征(距离、相似性或分布),还考虑数据的模式形成。在后一种情况下,采用了一组复杂的网络度量,因为它们能够捕获空间、功能和拓扑关系。虽然高层次的技术提供了强大的功能,但良好的分类性能通常是通过与一些低层次的算法相结合来获得的,这反过来又降低了整体技术的效率。首先,原因是低级和高级技术提供了不同的分类视角。这样一来,一个人就不能简单地替代另一个人。本文提出了一种数据分类技术,其中低层和高层分类嵌入在一个独特的方案中,即所提出的技术不需要单独的低层技术。新颖之处在于使用了一种简单且最近提出的复杂网络度量,称为组件效率。因此,我们的算法计算每个组件中顶点之间信息交换的效率,并使用结果值来驱动新实例的分类,即新实例将被分类到其中一个组件(类)中,其中其局部特征与新实例的插入一致。用人工和真实数据集进行的实验表明,完全基于复杂网络的方法是有前途的,它比一些传统的分类技术提供了更好的结果。
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High Level Classification Totally Based on Complex Networks
Differently from traditional machine learning techniques applied to data classification, high level classification considers not only the physical features of the data (distance, similarity or distribution), but also the pattern formation of the data. In this latter case, a set of complex network measures are employed because of their abilities to capture spatial, functional and topological relations. Although high level techniques offer powerful features, good classification performance is usually obtained by combining them with some low level algorithms, which, in turn, reduces the efficiency of the overall technique. A priori, the reason is that low level and high level techniques provide different visions of classification. In this way, one cannot simply substitute another. This paper presents a data classification technique in which low level and high level classifications are embedded in a unique scheme, i.e., the proposed technique does not need a separated low level technique. The novelty is the use of a simple and recently proposed complex network measure, named component efficiency. Thus, our algorithm computes the efficiency of information exchanging among vertices in each component and the resulting values are used to drive the classification of the new instances i.e., a new instance will be classified into one of the components (class), in which their local features are in conformity with the insertion of the new instance. The experiments performed with artificial and real-world data sets show our approach totally based on complex networks is promising and it provides better results than some traditional classification techniques.
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