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Unsupervised Bayesian visualization of high-dimensional data

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              cover image ACM Conferences
              KDD '00: Proceedings of the sixth ACM SIGKDD international conference on Knowledge discovery and data mining
              August 2000
              537 pages
              ISBN:1581132336
              DOI:10.1145/347090

              Copyright © 2000 ACM

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              • Published: 1 August 2000

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