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Multi-way Distributional Clustering Files

Status: Beta
Brought to you by: ron_bekkerman
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The interactive file manager requires Javascript. Please enable it or use sftp or scp.
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Download Latest Version MDC3.1.tar.gz (19.5 kB)
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Name Modified Size InfoDownloads / Week
code 2007-05-15
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docs 2007-05-14
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Totals: 2 Items   0
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