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A Granular Computing approach to the design of optimized graph classification systems

机译:设计优化图分类系统的一种粒度计算方法

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摘要

Research on Graph-based pattern recognition and Soft Computing systems has attracted many scientists and engineers in several different contexts. This fact is motivated by the reason that graphs are general structures able to encode both topological and semantic information in data. While the data modeling properties of graphs are of indisputable power, there are still different concerns about the best way to compute similarity functions in an effective and efficient manner. To this end, suited transformation procedures are usually conceived to address the wellknown Inexact Graph Matching problem in an explicit embedding space. In this paper, we propose two graph embedding algorithms based on the Granular Computing paradigm, which are engineered as key procedures of a general-purpose graph classification system. Tests have been conducted on benchmarking datasets relying on both synthetic and real-world data, achieving competitive results in terms of test set classification accuracy.
机译:基于图的模式识别和软计算系统的研究吸引了许多处于不同背景下的科学家和工程师。该事实是由于图形是能够对数据中的拓扑信息和语义信息进行编码的通用结构的原因所致。虽然图的数据建模属性具有无可争议的优势,但对于以有效和高效的方式计算相似性函数的最佳方法仍然存在不同的担忧。为此,通常构思合适的变换过程以在显式嵌入空间中解决众所周知的不精确图匹配问题。在本文中,我们提出了两种基于粒度计算范式的图嵌入算法,它们被设计为通用图分类系统的关键过程。已经对依赖于合成数据和真实数据的基准数据集进行了测试,从而在测试集分类准确性方面获得了竞争性结果。

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