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2004

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2002

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Hotho, Andreas ; Maedche, Alexander ; Staab, Steffen: Text Clustering Based on Good Aggregations. In: ICDM '01: Proceedings of the 2001 IEEE International Conference on Data Mining. Washington, DC, USA : IEEE Computer Society, 2001. - ISBN 0-7695-1119-8, S. 607--608
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2000

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1999

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1998

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1965

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