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hilbertSimilarity

Hilbert Similarity Index for High Dimensional Data

Quantifying similarity between high-dimensional single cell samples is challenging, and usually requires some simplifying hypothesis to be made. By transforming the high dimensional space into a high dimensional grid, the number of cells in each sub-space of the grid is characteristic of a given sample. Using a Hilbert curve each sample can be visualized as a simple density plot, and the distance between samples can be calculated from the distribution of cells using the Jensen-Shannon distance. Bins that correspond to significant differences between samples can identified using a simple bootstrap procedure.

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VersionRepositoryFileSize
0.4.4 rolling source/ R- hilbertSimilarity_0.4.4.tar.gz 629.0 KiB
0.4.4 rolling linux/jammy R-4.5 hilbertSimilarity_0.4.4.tar.gz 705.3 KiB
0.4.4 rolling linux/noble R-4.5 hilbertSimilarity_0.4.4.tar.gz 706.0 KiB
0.4.4 latest source/ R- hilbertSimilarity_0.4.4.tar.gz 629.0 KiB
0.4.4 latest linux/jammy R-4.5 hilbertSimilarity_0.4.4.tar.gz 705.3 KiB
0.4.4 latest linux/noble R-4.5 hilbertSimilarity_0.4.4.tar.gz 706.0 KiB
0.4.4 2026-04-23 source/ R- hilbertSimilarity_0.4.4.tar.gz 629.0 KiB
0.4.4 2026-04-09 windows/windows R-4.5 hilbertSimilarity_0.4.4.zip 1.0 MiB
0.4.3 2025-04-20 source/ R- hilbertSimilarity_0.4.3.tar.gz 140.3 KiB

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