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Published byStephany Alexander Modified over 9 years ago
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Mathematical Modeling of Serial Data
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Modeling Serial Data Differs from simple equation fitting in that the parameters of the equation must have meaning – Can be used to smooth – Can explain phenomena – Can be used to predict
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Mathematical Modeling of Serial Data Steps in Mathematical Modeling Identification of the mechanism Translation of that phenomenon into a mathematical equation Testing the fit of the model to actual data Modification of the model according to the results of the experimental evaluation
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Mathematical Modeling of Serial Data Criteria of Fit of the Model Least Sum of Squares Shape of the curve
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Mathematical Modeling of Serial Data Examination of Residuals Residual = Actual Y - Predicted Y Ideally there is no pattern to the residuals. In this case there would be a horizontal normal distribution of residuals about a mean of zero. However there is a clear pattern indicating the lack of fit of the model.
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Mathematical Modeling of Serial Data Ideal Characteristics of a Model Simple Fits the experimental data well Has biologically meaningful parameters
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Modeling Growth Data
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Mathematical Modeling of Serial Data National Centre for Health Statistics (N.C.H.S.)1970’s revamped as Center for Disease Control C.D.C. charts, 2001 Most often used clinical norms for height and weight Cross-sectional Clinical Growth Charts
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Mathematical Modeling of Serial Data Preece-Baines model I where h is height at time t, h 1 is final height, s 0 and s 1 are rate constants, q is a time constant and h q is height at t = q.
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Smooth curves are the result of fitting Preece- Baines Model 1 to raw data This was achieved using MS EXCEL rather than custom software
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Examination of Residuals
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Caribbean Growth Data n =1697
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