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An Extended Multivariate Data Visualization Approach for Interactive Feature Extraction from Manufacturing Data

机译:用于制造数据的交互式特征提取的扩展多变量数据可视化方法

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Awareness about interconnectivities and interactions among parameters is vital for the identification of the optimal manufacturing routes and economic factors within a manufacturing system. Within this context, multidimensional data projection methods, Principal Component Mapping (PCM) and Sammon's Mapping, have been scrutinized for visualizing multivariate interaction patterns. As a new approach, these techniques were employed in such a way that interactive multi-layer maps could be created. Each layer within the generated map matches to a specific attribute and characteristic of the dataset. Individual layers within the map can be interactively selected and superimposed to show multiple and partial interactions.
机译:对参数之间的互连和相互作用的认识对于识别制造系统内的最佳制造路线和经济因素至关重要。在此上下文中,已经仔细审查了多维数据投影方法,主成分映射(PCM)和SAMMON的映射以可视化多变量交互模式。作为一种新方法,采用这些技术以这样的方式采用,即可以创建交互式多层映射。生成的地图中的每个层匹配到数据集的特定属性和特性。地图中的各个层可以被交互地选择和叠加以显示多个和部分相互作用。

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