Cappé, 2011 - Google Patents
Online expectation maximisationCappé, 2011
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- 7258198151949311971
- Author
- Cappé O
- Publication year
- Publication venue
- Mixtures: Estimation and applications
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Before entering into any more details about the methodological aspects, we discuss the motivation behind the association of the two groups of words 'online (estimation)'and 'expectation maximisation (algorithm)'as well as their pertinence in the context of mixtures …
- 239000000203 mixture 0 abstract description 32
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