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Hybrid Unsupervised/Supervised Virtual Reality Spaces for Visualizing Gastric and Liver Cancer Databases: An Evolutionary Computation Approach

机译:用于可视化胃癌和肝癌数据库的混合无监督/监督虚拟现实空间:一种进化计算方法

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摘要

This paper expands a multi-objective optimization approach to the problem of computing virtual reality spaces for the visual representation of relational structures (e.g. databases), symbolic knowledge and others, in the context of visual data mining and knowledge discovery. Procedures based on evolutionary computation are discussed. In particular, the NSGA-II algorithm is used as a framework for an instance of this methodology; simultaneously minimizing Sammon's error for dissimilarity measures, and mean cross-validation error on a k-nn pattern classifier. The proposed approach is illustrated with two examples from cancer genomics data (e.g. gastric and liver cancer) by constructing virtual reality spaces resulting from multi-objective optimization. Selected solutions along the Pareto front approximation are used as nonlinearly transformed features for new spaces that compromise similarity structure preservation (from an unsupervised perspective) and class separability (from a supervised pattern recognition perspective), simultaneously. The possibility of spanning a range of solutions between these two important goals, is a benefit for the knowledge discovery and data understanding process. The quality of the set of discovered solutions is superior to the ones obtained separately, from the point of view of visual data mining.
机译:本文针对可视化数据挖掘和知识发现的关系结构(例如数据库),符号知识等的可视化表示,针对计算虚拟现实空间的问题扩展了一种多目标优化方法。讨论了基于进化计算的过程。特别是,NSGA-II算法被用作该方法实例的框架。同时最小化相异性度量的Sammon误差,以及k-nn模式分类器的均值交叉验证误差。通过构建由多目标优化产生的虚拟现实空间,从癌症基因组学数据(例如胃癌和肝癌)中用两个示例说明了所提出的方法。沿着Pareto前沿逼近的选定解决方案被用作新空间的非线性变换特征,这些特征同时损害相似性结构的保留(从无监督的角度)和类可分离性(从有监督的模式识别角度)。在这两个重要目标之间扩展一系列解决方案的可能性,对于知识发现和数据理解过程是有益的。从可视数据挖掘的角度来看,这套发现的解决方案的质量优于单独获得的解决方案。

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