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Applying False Discovery Rate (FDR) Control in Detecting Future Climate Changes ZongBo Shang SIParCS Program, IMAGe, NCAR August 4, 2009.

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Presentation on theme: "Applying False Discovery Rate (FDR) Control in Detecting Future Climate Changes ZongBo Shang SIParCS Program, IMAGe, NCAR August 4, 2009."— Presentation transcript:

1 Applying False Discovery Rate (FDR) Control in Detecting Future Climate Changes ZongBo Shang SIParCS Program, IMAGe, NCAR August 4, 2009

2 North American Regional Climate Change Assessment Program (NARCCAP) Predicted Changes in Future Winter Temperature ( °C) Note: This figure shows the difference between the mean of future (2040 – 2069 ) winter temperature vs. current (1970 – 1999) winter temperature.

3 Can We Trust What We See? Note: Those two figures show the means of 10 replicate random fields that are generated from the same Matèrn semi-variogram model, but with different random seeds.

4 What’s the Problem with Pointwise Two-sample t Tests?

5 False Discovery Rate (FDR) Control FDR controls the expected proportion of incorrectly rejected null hypotheses (type I errors) among the rejected null hypotheses. Less conservative than Bonferroni procedures, with greater power than Familywise Error Rate (FWER) control, at a cost of increasing the likelihood of obtaining type I errors. Applications of FDR in Genes Expression and Microarray Applications of FDR in Functional Magnetic Resonance Imaging

6 Definition of False Discovery Rate Declared non- significant (fail to reject) Declared significant (reject) Total True null hypotheses UVm₀ Non-true null hypotheses TSm-m₀ m-RRm Let Q = V / (V + S) define the proportion of errors committed by falsely rejecting null hypotheses. Notice Q is an unobservable random variable. Define the FDR to be the expectation of Q:

7 False Discovery Rates for Spatial Signals Testing on clusters rather than individual locations Procedure 1: Weighted Benjamini & Hochberg (BH) procedure Procedure 2: Weighted two-stage procedure Procedure 3: Hierarchical testing procedure – Testing stage: control FDR on clusters – Trimming stage: control FDR on selected points Reference: Benjamini, Y. and Heller, R. 2007. False discovery rates for spatial signals. Journal of the American Statistical Association. 102:1272-1281.

8 Simulation Studies 1. Random Fields 2. Random Field Block 3. Random Field Gradient

9 Simulation Study I: Two Random Fields Note: Those two figures show the means of 10 replicate random fields that are generated from the same Matèrn semi-variogram model, but with different random seeds.

10 Pre-defined Clusters

11 Simulation Study 1: Pointwise vs. False Discover Rate Control

12 9 Repeats on Simulation Study I

13 Simulation Study II: Pre-defined Block Trend 4-10 10-4 2 -2

14 Simulation Study II: Average of 10 Replicates Random Field (Matèrn, σ = 0.4) + Block Trends 4-10 10-4 2 -2

15 Simulation Study II: Pointwise vs. False Discover Rate Control

16 9 Repeats on Simulation Study II

17 Study III: Pre-defined Gradient Trend

18 Study III: Average of 10 Replicates Random Field (Matèrn, σ = 2) + Gradient Trends

19 Simulation Study III: Pointwise vs. False Discover Rate Control

20 9 Repeats on Simulation Study III

21 Applying FDR Control for Detecting Future Climate Changes Download climate datasets from NARCCAP program Calculate seasonal average Construct clusters from EPA Eco-regions Conduct two-sample t test on temperature/precipitation Pointwise p-values and corresponding z scores Build semi-variogram model to estimate spatial autocorrelation Calculate z score and p-value by cluster Reject clusters based on FDR control

22 http://www.epa.gov/wed/pages/ecoregions/na_eco.htm GIS: Vector Dataset, Lambert Equal-Area Projection

23 61 regions rejected at q=0.25 level 56 regions rejected at q=0.1 level 54 regions rejected at q=0.05 level 51 regions rejected at q=0.01 level H 0 : Future Winter Temperature Increase by 3 ˚C

24 H 0 : Winter Temperature ↑ 1 ˚CH 0 : Winter Temperature ↑ 2 ˚CH 0 : Winter Temperature ↑ 3 ˚C H 0 : Winter Temperature ↑ 4 ˚CH 0 : Winter Temperature ↑ 6 ˚CH 0 : Winter Temperature ↑ 5 ˚C FDR Tests on Winter Temperature

25 H 0 : Winter Prec ↓ 20 Kg/ m²H 0 : ↓ 10 Kg/ m²H 0 : ↑ 10 Kg/ m²H 0 : ↑ 20 Kg/ m² H 0 : ↑ 50 Kg/ m²H 0 : Winter Prec ↑ 30 Kg/ m²H 0 : ↑ 75 Kg/ m²H 0 : ↑ 100 Kg/ m² FDR Tests on Winter Precipitation

26 Acknowledgement Dr. Steve Sain, IMAGe, NCAR Drs. Douglas Nychka, Tim Hoar, IMAGe, NCAR Dr. Armin Schwartzman, Harvard University University of Wyoming SIParCS, IMAGe, NCAR NARCCAP


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