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Validation of uncertain predictions against uncertain observations Scott Ferson, 16 October 2007, Stony Brook University, MAR 550, Challenger.

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Presentation on theme: "Validation of uncertain predictions against uncertain observations Scott Ferson, 16 October 2007, Stony Brook University, MAR 550, Challenger."— Presentation transcript:

1 Validation of uncertain predictions against uncertain observations Scott Ferson, scott@ramas.com 16 October 2007, Stony Brook University, MAR 550, Challenger 165

2 V & V Verification (checking the math) –Code testing –Interval analysis, probability bounds analysis –Units/dimension checking Validation (checking against data)

3 Goals Objectively measure the conformance of predictions with empirical data Use this measure to characterize the reliability of other predictions

4 Initial setting The model is fixed, at least for the time being –No changing it on the fly during validation A prediction is a probability distribution –Expressing stochastic uncertainty Observations are precise (scalar) numbers –Measurement uncertainty is negligible relaxed later

5 Validation metric A measure of the mismatch between the observed data and the model’s predictions –Low value means a good match –High value means they disagree Distance between prediction and data

6 Desirable properties of a metric Should be expressed in physical units Should generalize deterministic comparisons Should reflect performance of full distribution Shouldn’t be too sensitive to long tails Should be a true mathematical metric Should be unbounded (you can be really off)

7 200 250 300 350 400 1000900800700600 Time [seconds] Temperature [degrees Celsius] How the data come

8 How we look at them 0 1 Probability 200250300350450400 Temperature

9 0 1 Probability 200250300350450400 Temperature One suggestion for a metric Area or average horizontal distance between the empirical distribution S n and the predicted distribution

10 Reflects full distribution Matches in mean Both mean and variance Matches well overall a = L(2,1.6) + 5 a ~(range=[5.25515,14.5592], mean=7, var=[1.94,2.56]) b = N(7,2.25) c = mix( N(4,0.5), N(10,0.5)) d = 0.9*a + 0.4 show a in black show c in blue hide c show b in blue hide b show d in blue hide d 515 0 1 01020 0 1 01020 0 1 10 Probability

11 Single observation 0 1 01234 Probability

12 Single observation A single datum can’t match an entire distribution (unless it’s degenerate) Single datum matches best if it’s at the median If the prediction is a uniform distribution over [a,b], a single observation can’t be any ‘closer’ to it than (b  a)/4

13 When the prediction is really bad The metric degenerates to simple distance Probability is dimensionless, so units are the same 0 1 6810121416182022242628024 d  24 Probability

14 Depends on the local scale The metric depends on the units Can standardize (divide by s.d.), but this means the metric will no longer be in physical units 0 1 01234 0 1 0100200300400 d  0.45 d  45

15 Why physical units? Distributions in the left graph don’t overlap but they seem closer than those on the right 0 1 01234 Probability 01234 1 0

16 Why an unbounded metric? Neither overlaps, but left is better fit than right Smirnov’s metric D max considers these two cases indistinguishable (they’re both just ‘far’) 0 1 01234 Probability 010203040

17 200 250 300 350 400 1000900800700600 Time [seconds] Temperature [degrees Celsius] The model says different things

18 0 1 Probability 200250300350450400 Temperature

19 Pooling data comparisons When data are to be compared against a single distribution, they’re pooled into S n When data are compared against different distributions, this isn’t possible Conformance must be expressed on some universal scale

20 Universal scale u i =F i (x i ) where x i are the data and F i are their respective predictions 1101001000 0 1 01234 0 1 010 0 1 N(2, 0.6) ~normal(range=[0.454502,3.5455], mean=2, var=0.36) max(0.0001,exponential(1.7)) ~(range=[0.0001,9.00714], mean=[1.699999,1.7001], var=[2.43,2.89]) mix(U(1,5),N(10,1)) * 2.3 ~(range=[2.3,28.9244], mean=14.95, var=70.9742) u1u1 u2u2 u3u3 5 Probability

21 Backtransforming to physical scale u 0 5 0 1 1324 Probability G

22 Backtransforming to physical scale The distribution of G  1 (F i (x i )) represents the empirical data (like S n does) but in a common, transformed scale Could pick any of many scales, and each leads to a different value for the metric The distribution of interest is the one used for the regulatory statement

23 Number of function evaluations Some models are difficult to evaluate Extracting distributional predictions may be expensive in terms of function evaluations –Blame the modeler rather than the validator! Can our validation metric be applied when only very coarse predictions based on few function evaluations are available?

24 Coarse prediction 0 1 01234 Probability Prediction can be expressed as an ‘empirical’ distribution too

25 Statistical test for model accuracy Kolmogorov-Smirnov test of distribution of u i ’s against uniform over [0,1] This tests whether the empirical data are as though they were drawn from the respective prediction distributions Probability integral transform theorem (Angus 1994) says the u’s will be distributed as uniform(0,1) if x i ~ F i Assumes the empirical data are independent of each other

26 Generalizations Nonrandom sampling of observations Measurement uncertainty of empirical observations Imprecise predictions (intervals or p-boxes)

27 Epistemic uncertainty in predictions In left, the datum evidences no discrepancy at all In middle, the discrepancy is relative to the edge In right, the discrepancy is even smaller Probability 01020 0 1 01020 0 1 01020 0 1 a = N([5,11],1) show a b = 8.1 show b in blue b = 15 breadth(env(rightside(a),b)) 4.023263478773 b = 11 breadth(env(rightside(a),b)) / 2 0.4087173895951 d = 0 d  4 d  0.4

28 Epistemic uncertainty in both Probability 0510 0 1 05 0 1 05 0 1 z=0.0001; zz =9.999 show z,zz a = N([6,7],1)-1 show a b = -1+mix(1,[5,7], 1,[6.5,8], 1,[7.6,9.99], 1, [3.3,6], 1,[4,8], 1,[4.5,8], 1,[5,7], 1,[7.5,9], 1,[4,8], 1,[5,9], 1,[6,9.99]) show b in blue b = -0.2+mix(1, [9,9.6],1, [5.3,6.2], 1,[5.6,6], 1,[7.8,8.4], 1,[5.9,7.8], 1,[8.3,8.7], 1,[5,7], 1,[7.5,8], 1,[7.6,9.99], 1, [3.3,6], 1,[4,8], 1,[4.5,8], 1,[5,7], 1,[8.5,9], 1,[7,8], 1,[7,9], 1,[8,9.99]) breadth(env(rightside(a),b)) 2.137345705795 c = -4 b = -0.2+mix(1, [9,9.6],1, [5.3,6.2]+c, 1,[5.6,6]+c, 1,[7.8,8.4], 1,[5.9,7.8], 1,[8.3,8.7], 1,[5,7], 1,[7.5,8], 1,[7.6,9.99], 1, [3.3,6], 1,[4,8], 1,[4.5,8]+c, 1,[5,7]+c, 1,[8.5,9], 1,[7,8], 1,[7,9], 1,[8,9.99]) breadth(env(rightside(a),b)) / 2 1.329372857714 d = 0 d  0.05d  0.07 Predictions in white Observations in blue

29 Validation: summary Both assessment and reliability of extrapolation –How good is the model? –Should we trust its pronouncements? Need metric to be both ad hoc and universal Updating is a separate activity Epistemic uncertainty introduces some wrinkles –Full credit for being modest about predictions

30 Complexities we can handle Variability in the experimental data Prediction is a probability distribution rather than a point Large measurement uncertainty in the data Multiple predictions (dimensions) to be assessed Available data aren’t directly relevant to the predictions Validation data collected under other conditions Model’s predictions are extremely expensive to compute

31 End

32

33 Definition of a true metric Positive, d(x, y)  0 Symmetric, d(x, y) = d(y, x) Identicals indistinguishable, d(x, y) = 0  x = y Triangle inequality, d(x, y) + d(y, z)  d(x, z) Quasi-, semi-, pseudo-, ultra-metric

34 Other metrics Area is only one of many possible metrics Area favors central tendency (median) Could also use the medial distance from a datum to the distribution, or maybe the 95 th percentile of distances Might prefer conformance in the tails, or one tail in particular

35 Degrees of impossibility If a datum is completely outside the range of the prediction, it’s ‘impossible’ Transforming to the u scale makes it 0 or 1 We’d like to preserve how far outside it is

36 0 1 01020 2 3040 Extended distribution functions F < (x), x < 0 F*(x) =F(x), 0  x  1 F > (x), x > 1 01020 0 1 Probability FF* Extension slopes can be set by the distribution’s dispersion, to mimic tails, or as just relocated 45  lines

37 Using extensions in the metric Extended functions F i * can be used to get u’s (now no longer ranging only on [0,1]) The common backtransformation scale can also be extended to G* to accept these u’s This allows values considered impossible by the prediction to be represented

38 Vector of outputs Usually want to treat dimensions separately Possible to unify (pool) prediction-observation pairs even if they’re from different dimensions –Degrees, seconds, pascals, meters, etc. But there’s no G for backcalculation and so there can’t be a physically meaningful scale

39 Comparing accuracies Questions like “Is the match for temperature as good as the match for conductivity?” also require a universal scale to which all physical dimensions must be transformed If we do this, the metric becomes a norm

40 Uncertainty about a distribution 300350400450500 0.0 0.2 0.4 0.6 0.8 1.0 Cumulative probability 95% confidence bounds on the normal distribution


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