Dr. Peter Westfall Texas Tech University (806)

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1 Dr. Peter Westfall Texas Tech University (806) Education and Post Graduate Training Ph D, University of California, Major: Statistics BS, University of California, Major: Mathematics Courses Taught TEACHING Texas Tech University 5347, Advanced Statistics Methods, 1 course. 5349, Regression Analysis, 1 course. 7000, Research, 1 course. 8000, Doctor's Dissertation, 1 course. BA 7000, Research: Internship, 7 courses. BA 8000, Doctor's Dissertation, 10 courses. ISQS 5347, Advanced Statistical Methods, 16 courses. ISQS 5349, Regression Analysis, 8 courses. ISQS 5359, Individual Study in ISQS, 1 course. ISQS 6348, Applied Multivariate Analysis, 8 courses. Published Intellectual Contributions Journal Article, Academic Journal RESEARCH Westfall, P., Young, S.S Contradictions in Highly Cited Medical Research. [Letter to the editor].. Journal of the American Medical Association, 294(21), Lu, Y., Westfall, P. H., Han, G., Bui, M. (2016). Bayesian Hypothesis Testing for Selected Regression Coefficients. Communications in Statistics - Theory and Methods, 45(23), Tomoiaga, A., Westfall, P. H., Donato, M., Draghici, S., Hassan, S., Romero, R., Tellaroli, P. (2016). Pathway crosstalk effects: Shrinkage and disentanglement using a Bayesian hierarchical model. Statistics in Biosciences, 8(2), Henning, K. S. S., Westfall, P. H. (2015). Closed Testing in Pharmaceutical Research: Historical and Recent Developments. Statistics in Biopharmaceutical Research, 7, Westfall, P. H. (2015). Multiple Comparisons, Statistics of.. International Encyclopedia of the Social & Behavioral Sciences, 16(2), Report Generated on November 9, 2017 Page 83 of 101

2 Hothorn, T., Bretz, F., Westfall, P. (2015). Package multcomp: Simultaneous Inference in General Parametric Models. published online in the CRAN repository. Kenyon, G. N., Meixell, M. J., Westfall, P. H. (2015). Production Outsourcing and Operational Performance: An Empirical Study using Secondary Data. nternational Journal of Production Economics, 171, Westfall, P. H. (2014). Kurtosis as Peakedness, RIP. The American Statistician, 68, Westfall, P. H., Bretz, F. (2014). Multiplicity and Replicability: Two Sides of the Same Coin. Pharmaceutical Statistics, 13, Westfall, P. H., Meixell, M., Kenyon, G. (2014). The effects of production outsourcing on factory cost performance: an empirical study. Journal of Manufacturing Technology Management, 25, Westfall, P. H., Donato, M., Xu, Z., Tomoiaga, A., Granneman, J. G., MacKenzie, R. G. (2013). Analysis and Correction of Crosstalk Effects in Pathway Analysis. Genome Research, 23(11), Westfall, P. H., Bretz, F., Tobias, R. (2013). Directional Error Rates of Closed Testing Procedures. Statistics in Biopharmaceutical Research, 5, Hansen, H., Benson, D., Hansen, H., Westfall, P. (2013). Executing the Innocent. Civil Rights and Civil Liberties Law Review, 3(2), Benson, D., Hansen, H., Westfall, P. (2013). Executing the innocent. Civil Rights and Civil Liberties Law Review, Alabama University, 3. Westfall, P., Henning, K., Howell, R. (2012). The Effect of Error Correlation on Interfactor Correlation in Psychometric Measurement. Structural Equation Modeling, 19(1), Westfall, P. H., Troendle, J., Yu, K., Pennello, G., Schisterman, E. (2011). Comparing the expected Misclassification Cost for Two Classifiers based on estimates from the Same Sample. Statistics in Biopharmaceutical Research, 4, Westfall, P. H. (2011). Discussion of Multiple Testing of Exploratory Research by J.J. Goeman and A. Solari. Statistical Science, 26, Westfall, P. H., Benson, D., Hansen, H. (2011). Executing the Innocent,. Alabama Civil Rights & Civil Liberties Law Review, Westfall, P. H. (2011). On Using the Bootstrap for Multiple Comparisons. Journal of Biopharmaceutical Statistics, 21, Howell, R. D., Westfall, P. H., Heinzl, A. (2011). The effect of error correlation on interfactor correlation in psychometric measurement. Structual Equation Modeling, 19(1), Westfall, P. H., Henning, K., Howell, R. (2011). The Effect of Error Correlation on Interfactor Correlation in Psychometric Measurement,. Structural Equation Modeling, 19, Westfall, P. H. (2010). Comment on Correlated z-values and the Accuracy of Large-Scale Statistical Estimates by Bradley Efron,. Journal of the American Statistical Association, 105, Report Generated on November 9, 2017 Page 84 of 101

3 Westfall, P. H. (2010). How Well Do Multiple Testing Methods Scale Up When Both n and Increase?,. Journal of Biopharmaceutical Statistics, 21, Westfall, P. H. (2010). Improving Power by Dichotomizing (Even Under Normality),. Statistics in Biopharmaceutical Research, 3, Westfall, P. H., Troendle, J. F., Penello, G. (2010). Multiple McNemar Tests,. Biometrics, 66, Westfall, P. H., Bretz, F. (2010). Multiplicity in Clinical Trials,. Encyclopedia of Biopharmaceutical Statistics(3), Westfall, P. H., Troendle, J. (2010). Permutational Multiple Testing Adjustments with Multivariate Multiple Group Data. Journal of Statistical Planning and Interface, 141, Westfall, P., T. K., O. S., T. A., M. S., L. Y. (2008). Clinical Trials Simulation: A Statistical Approach. Journal of Biopharmaceutical Statistics, 18, Westfall, P. H., Lu, Y. (2008). Is Bonferroni Admissible for Large m?. American Journal of Mathematical and Management Sciences. Westfall, P. H., Troendle, J. F. (2008). Multiple Testing with Minimal Assumptions. Biometrical Journal, 50, Westfall, P. H. (2008). Overhauling online ratings systems leads November TAS. Amstat News(November), Westfall, P. H. (2008). ROC and FDR: Similarities, Assumptions, and Decisions. Statistica Sinica, 18, Westfall, P. (2008). ROC and FDR: Similarities, Assumptions, and Decisions. Statistica Sinica, 18, Hothorn, T., Bretz, F., Westfall, P. H. (2008). Simultaneous Inference in General parametric Models. Biometrical Journal, 50(3), Hothorn, T., Bretz, F., Westfall, P. (2008). Simultaneous Inference in General Parametric Models. Biometrical Journal., 50(3), Westfall, P. H. (2008). Teaching Bayes to Nonstatistics Graduate Students: Editors Note. The American Statistician, 189. Westfall, P. H. (2008). The Benjamini-Hochberg Method with Infinitely Many Contrasts in linear Models. Biometrika, 95, Westfall, P. (2008). The Benjamini-Hochberg Method with Infinitely Many Contrasts in Linear Models. Biometrika. Westfall, P. H., Lund, R. (2008). Voting Leads. Amstat News, 10. Westfall, P. H. (2007). ASA Tries out Promotions Strategy on Two May Articles. Amstat News(May), Westfall, P. H. (2007). Black Swan Flies into August Issue. Amstat News(July), Report Generated on November 9, 2017 Page 85 of 101

4 Westfall, P. H., Tsai, K., Ogenstad, S., Tomoiaga, A., Moseley, S., Lu, Y. (2007). Clinical Trials Simulation: A Statistical Approach. Journal of Biopharmaceutical Statistics, 18, Westfall, P. H., Hoffman, J., Xia, J. (2007). Joint Analysis of Multiple Categorical Dependent Variables in Organizational Research. Organizational Research Methods, 10(4), Westfall, P. H., Hoffman, J., Xia, J. (2007). Joint Analysis of Multiple Categorical Dependent Variables in Organizational Research. Organizational Research Methods, 10(4), Westfall, P., Hoffman, J., Xia, J. (2007). Joint Analysis of Multiple Categorical Dependent Variables in Organizational Research. Organizational Research Methods, 10(4), Westfall, P., Hoffman, J., Xia, J. (2007). Joint Analysis of Multiple Categorical Dependent Variables in Organizational Research. Organizational Research Methods, 10(4), Hoffman, J. J., Westfall, P. H., Xia, J. (2007). Joint Analysis of Multiple Categorical Dependent Variables in Organizational Research. Organizational Research Methods, 10(4), Westfall, P. H. (2007). Leading Papers Look at Teaching Bayes to Nonstatisticians. Amstat News(July), Westfall, P. H. (2007). Much Ado about How to. Amstat News(May), Westfall, P., Tobias, R.D (2007). Multiple Testing of General Contrasts: Truncated Closure and the Extended Shaffer-Royen Method. Journal of the American Statistical Association, 102, Westfall, P. H., Tobias, R. (2007). Multiple Testing of General Contrasts: Truncated Closure and the Extended ShafferRoyen Method. Journal of the American Statistical Association, 102:00:00, Westfall, P. H. (2007). Negative Chi Square Einstein and the Iraq Conflict. Amstat News(November), Westfall, P. H. (2007). Official Statistics and [square root of (1 plus the square root of 2)]. Amstat News, 356, Westfall, P. H. (2007). The American Statistician in The American Statistician, 61, Westfall, P. H., Hilbe (2007). The Black Swan: Praise and Criticism. The American Statistician, 61, Westfall, P. H. (2006). Editorial. The American Statistician, 60, Dmitrienko, A., Wiens, B., Westfall, P. H. (2006). Fallback Tests in Dose Response Clinical Trials. Journal of Biopharmaceutical Statistics, Dmitrienko, A., Wiens, B., Westfall, P. (2006). Fallback Tests in Dose Response Clinical Trials. Journal of Biopharmaceutical Statistics, 16, Westfall, P. H. (2006). Hurricane Forecasting Kicks off Inaugural Interdisciplinary Section. The Amstat News, 347(19). Westfall, P. H. (2006). Messy Data Invade August issue of TAS. The Amstat News, 350(7). Report Generated on November 9, 2017 Page 86 of 101

5 Westfall, P. H. (2006). Sandwiches outliers and Graphs. The Amstat News, 354(9). Westfall, P. H. (2006). The American Statistician Moves in a New Direction. The Amstat News, 346(17). Westfall, P. H., Young, S. S. (2005). Contradictions in Highly Cited Medical Research [Letter to the editor]. Journal of the American Medical Association, 294(21), Koyama, T., Westfall, P. H. (2005). Decision-Theoretic Views on Simultaneous Testing of Superiority and Noninferiority. Journal of Biopharmaceutical Statistics, Westfall, P., Koyama, T. (2005). Decision-Theoretic Views on Simultaneous Testing of Superiority and Noninferiority. Journal of Biopharmaceutical Statistics, 15, Moreau, A. R., Westfall, P. H., Cancio, L. C., Mason, A. D. (2005). Development And Validation Of An Age-Risk Score For Mortality Prediction Following Thermal Injury. The Journal Of Trauma, 58(5), Westfall, P., Moreau, A.R, Cancio, L.C, Mason, A.D (2005). Development And Validation Of An Age-Risk Score For Mortality Prediction Following Thermal Injury. Journal of Trauma, Injury, Infection & Critical Care, 58(5), Westfall, P. H. (2005). False Discovery Rate Adjusted Confidence Intervals for Selected Parameters. Journal of the American Statistical Association, 100, Gnen, M., Johnson, W. O., Lu, Y., Westfall, P. H. (2005). The Bayesian two-sample t test. The American Statistician, 59, Gönen, M., Johnson, W.O., Lu, Y., Westfall, P. (2005). The Bayesian Two-Sample t Test. The American Statistician, 59, Somerville, M., Wilson, T., Koch, G., Westfall, P. H. (2004). Evaluation of a weighted multiple comparison procedure. Pharmaceutical Statistics, 4, Hein, S. E., Westfall, P. H. (2004). Improving Tests of Abnormal Returns by Bootstrapping the Multivariate Regression Model with Event Parameters. Journal of Financial Econometrics, Hein, S. E., Westfall, P. H. (2004). Improving Tests of Abnormal Returns Significance Using the Event Parameter Estimation Approach. Journal of Financial Econometrics, 2(3), Contracts, Grants and Sponsored Research Grant Iyer, R. (Co-Principal), Berg, J. (Principal), Rao, V. (Principal), Wang, X. (Co-Principal), (Co- Principal), Avetisyan, M. (Co-Principal), Hoo, K. (Co-Principal), Ren, B. (Co-Principal), Hui, Q. (Co-Principal), Sutton, V. (Co-Principal), Urban, J. (Co-Principal), Urban, S. (Co- Principal), Westfall, P. (Co-Principal), Nutter, B. (Co-Principal), Becker, K. (Co-Principal), Forbis, R. (Co-Principal), Lewis, D. (Co-Principal), "Cluster Hire in Secure Critical Infrastructure Systems," Sponsored by Texas Tech University, Texas Tech University, $265, (August 25, August 24, 2016). Westfall, P. (Principal), "SUPPLEMENT: Novel Methods for the Analysis of Gene Signaling Pathways with Applications in Obesity and Diabetes," Sponsored by NIH/Wayne State Univ, $23, (July 15, June 30, 2014). Report Generated on November 9, 2017 Page 87 of 101

6 Intellectual Contributions in Submission Book, Textbook-New B. F., H. T., Westfall, P. Multiple Comparisons. Chapman and Hall, Boca Raton. Journal Article, Academic Journal Akay, O., Lu, Y., Westfall, P. BAYESIAN MODEL SELECTION APPROACH FOR DETECTING VARIANCE-INFLATED OBSERVATIONS. Econometric Reviews. Lu, Y., Westfall, P. Is Bonferroni Admissible for Large m. American Journal of Mathematical and Management Sciences. Service/Performance Partnerships Novel methods for the analysis of gene signaling pathways with applications in obesity and diabetes, Engaged Research and Creative Activity, NIH grant. I am the mathematical statistician in charge of developing sound methodology. Report Generated on November 9, 2017 Page 88 of 101

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