Precision versus Accuracy (1) Precision is the variation of X around – expressed as standard deviation or variance Accuracy is the closeness of to the.

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Precision versus Accuracy (1) Precision is the variation of X around – expressed as standard deviation or variance Accuracy is the closeness of to the “true” value of X Precision and accuracy are often mixed in the literature

Precision versus Accuracy (2) Precise, not accurate Precise and accurate Accurate, not precise Not accurate and not precise

Precision and true variance Precision underestimates true variance Precision equals true variance Precision overestimates true variance

Normal distributions and Z- scores X - average Z = sigma

Normal distributions and RMS Z-scores RMS Z-score=1.0 (reference) RMS Z-score~2 RMS Z-score~0.5 X - average Z = sigma

Z-scores and RMS Z-scores Local geometry RMS Z-scores: –Too tight restraining of geometry  0 < RMS Z-score < 1 –Proper Gaussian distribution  RMS Z-score 1 –Too loose restraining of geometry  1 > RMS Z-score Structure Z-scores: –Z-scores > 0 are “better” than average –Z-scores < 0 are “worse” than average –However: A Z-score of -1 is equally likely as a Z-score of +1!!