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mixt
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The answer MIXT has 2 possible clue(s) in existing crosswords.
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The word MIXT is VALID in some board games. Check MIXT in word games in Scrabble, Words With Friends, see scores, anagrams etc.
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Definitions of mixt in various dictionaries:
adv - to put together into one mass [v MIXED or MIXT, MIXING, MIXES] : MIXABLE, MIXIBLE [ adj ], MIXEDLY
MIXT - In statistics, a mixture model is a probabilistic model for representing the presence of subpopulations within an overall population, without requiri...
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Blended, to Donne |
Blended, old-style |
Last Seen in these Crosswords & Puzzles |
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Jan 28 2007 L.A. Times Daily |
Aug 1 2002 Universal |
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Archaic A past tense and a past participle of mix. |
bDefinitionb of bmixtb in English: archaic Past and past participle of mix. |
Mixt might refer to |
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In statistics, a mixture model is a probabilistic model for representing the presence of subpopulations within an overall population, without requiring that an observed data set should identify the sub-population to which an individual observation belongs. Formally a mixture model corresponds to the mixture distribution that represents the probability distribution of observations in the overall population. However, while problems associated with "mixture distributions" relate to deriving the properties of the overall population from those of the sub-populations, "mixture models" are used to make statistical inferences about the properties of the sub-populations given only observations on the pooled population, without sub-population identity information. * Some ways of implementing mixture models involve steps that attribute postulated sub-population-identities to individual observations (or weights towards such sub-populations), in which case these can be regarded as types of unsupervised learning or clustering procedures. However, not all inference procedures involve such steps. * Mixture models should not be confused with models for compositional data, i.e., data whose components are constrained to sum to a constant value (1, 100%, etc.). However, compositional models can be thought of as mixture models, where members of the population are sampled at random. Conversely, mixture models can be thought of as compositional models, where the total size reading population has been normalized to 1. |