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Difference between revisions of "Maximum likelihood"

From Online Dictionary of Crystallography

 
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<font color="blue">Maximum de vraisemblance</font> (''Fr''). <font color="red">Maximale Wahrscheinlichkeit</font> (''Ge''). <font color="black">Metodo della massima verosimiglianza</font> (''It''). <font color="purple">最尤法</font> (''Ja''). <font color="green">Máxima verosimilitud</font> (''Sp'').
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An approach to structure [[refinement]] in which the parameters of a structural model are modified to optimize the statistical probability of generating a set of observed intensities. The technique is often used in the refinement of structures of biological macromolecules, where the unfavourable parameter-to-observation ratio often leads to overfitted data and consequent systematic errors in least-squares minimization procedures.
 
An approach to structure [[refinement]] in which the parameters of a structural model are modified to optimize the statistical probability of generating a set of observed intensities. The technique is often used in the refinement of structures of biological macromolecules, where the unfavourable parameter-to-observation ratio often leads to overfitted data and consequent systematic errors in least-squares minimization procedures.
  
 
[[Category:Biological crystallography]]
 
[[Category:Biological crystallography]]
 
[[Category:Structure determination]]
 
[[Category:Structure determination]]

Latest revision as of 12:40, 16 November 2017

Maximum de vraisemblance (Fr). Maximale Wahrscheinlichkeit (Ge). Metodo della massima verosimiglianza (It). 最尤法 (Ja). Máxima verosimilitud (Sp).


An approach to structure refinement in which the parameters of a structural model are modified to optimize the statistical probability of generating a set of observed intensities. The technique is often used in the refinement of structures of biological macromolecules, where the unfavourable parameter-to-observation ratio often leads to overfitted data and consequent systematic errors in least-squares minimization procedures.