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Evolutionary Multidimensional Scaling for Data Visualization and Classification

机译:数据可视化和分类的进化多维缩放

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Multidimensional Scaling (MDS) is a well established technique for the projection of high-dimensional data in pattern recognition, data visualization and analysis, as well as scientific and industrial applications. In particular, Sammons Nonlinear Mapping (NLM) as a common MDS instance, computes distance preserving mapping based on gradient descent, which depends on initialization and just can reach the nearest local optimum. Improvement of mapping quality or reduction of mapping error is aspired and can be achieved by more powerful optimization techniques, e.g., stochastic search, successfully applied in our prior work. In this paper, evolutionary optimization adapted to the particular problem and the NLM has been investigated for the same aim, showing the feasibility of the approach and delivering competitive and encouraging results.
机译:多维缩放(MDS)是用于在模式识别,数据可视化和分析的模式识别,数据可视化和分析中的高维数据以及科学和工业应用的知识技术。特别地,Sammons非线性映射(NLM)作为公共MDS实例,基于梯度下降计算距离保存映射,这取决于初始化并且只能达到最近的局部最佳最优。展望映射质量或减少映射误差的提高,并且可以通过更强大的优化技术来实现,例如,随机搜索,成功应用于我们的前工作。本文研究了适应特定问题和NLM的进化优化,针对相同的目的,表明了方法的可行性以及提供竞争力和令人鼓舞的结果。

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