Attribute-based Explanation of Non-Linear Embeddings of High-Dimensional Data

IEEE Transactions on Visualization and Computer Graphics(2022)

引用 9|浏览27
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摘要
Embeddings of high-dimensional data are widely used to explore data, to verify analysis results, and to communicate information. Their explanation, in particular with respect to the input attributes, is often difficult. With linear projects like PCA the axes can still be annotated meaningfully. With non-linear projections this is no longer possible and alternative strategies such as attribute-base...
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关键词
Data visualization,Visualization,Task analysis,Data analysis,Topology,Image color analysis,Dimensionality reduction
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