Review for sensitivity analysis quiz
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Review for Sensitivity Analysis Quiz. SS Scaled Sensitivity. Sensitivity Analysis Quiz! Which statistics address which relations??. Observations – Parameters - Predictions. Leverage OPR

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Review for Sensitivity Analysis Quiz

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Review for sensitivity analysis quiz

Review for Sensitivity Analysis Quiz

SS Scaled Sensitivity


Sensitivity analysis quiz which statistics address which relations

Sensitivity Analysis Quiz! Which statistics address which relations??

Observations – Parameters - Predictions

Leverage OPR

DSS

PPR

PCC CSS

PSS

Cook’s D

DFBETAS

Observations ---------------- Predictions

After Hill and Tiedeman, 2007, p. 263


Review for model fit quiz

Review for model fit quiz

BIC

AIC

s2

s

S(b)

Graphical analysis


Review for uncertainty analysis quiz

Review for Uncertainty Analysis Quiz


Review for sensitivity analysis quiz

UCODE_2005 documentation,

Appendix B, p. 231-233


Common questions that can be addressed by the methods taught here

Common questions that can be addressed by the methods taught here

  • How much and what model complexity can the observations support?

  • Are any of the estimated parameter values dominated by a single observation?

  • What model parameters are important to the things I need to predict?

  • What data should be collected to improve the predictions?

  • Which conceptual model of the system is likely to produce better predictions?

  • How certain are the predictions?


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