Ph.D. in Operations Research, Cornell University, 2004
M.S. in Operations Research, Cornell University, 2002
M.S. in Mathematics, University of Florida, 1998
B.S. in Mathematics, Ateneo de Manila University, 1993
Saint Joseph’s University, Philadelphia, PA
Director, Data Science Program, 2022 – present
Professor, Department of Mathematics, 2018 – present
Director, Actuarial Science Program, 2016 – 2020
Interim Director, Actuarial Science Program, 2015
Associate Professor, Department of Mathematics, 2013 – 2018
Assistant Professor, Department of Mathematics, 2007 – 2013
University of Pennsylvania, The Wharton School, Philadelphia, PA
Part-Time Lecturer, Department of Statistics and Data Science, 2022 – present
Cornell University, Ithaca, NY
Postdoctoral Associate, Cornell Theory Center, 2004 – 2007
Research Assistant, School of Civil and Environmental Engineering, 2003 – 2004
Research Assistant, Department of Computer Science, 2000 – 2003
Teaching Assistant, School of Operations Research & Industrial Engineering, 1998 – 2000
University of Florida, Gainesville, FL
Teaching Assistant, Department of Mathematics, 1996 – 1998
Ateneo de Manila University, Quezon City, Philippines
Assistant Instructor, Department of Mathematics, 1993 – 1996
Saint Joseph’s University
MAT 409 Real Analysis (Fall 2018)
MAT 423 Applied Statistical Methods (Spring 2018, 2017)
MAT 470 Machine Learning and Data Science (Spring 2020)
MAT 313 Mathematical Optimization (Spring 2021, 2019, 2016, 2014, 2012)
MAT 316 Operations Research (Spring 2010, 2008)
MAT 321 Probability (Fall 2023, 2022, Spring 2015, 2012, Fall 2009, 2008)
MAT 322 Mathematical Statistics (Spring 2023, Fall 2015, 2012, 2011, Spring 2009)
MAT 325 Essentials of Data Science (Fall 2020, 2021)
ASC 301 Actuarial Probability (Spring 2020, 2019, Fall 2017, 2016, 2013, Spring 2010)
DSC 223 / MAT 223 Introduction to the Math of Data Science (Spring 2024, 2021)
MAT 226 Introduction to Linear Algebra (Spring 2011)
MAT 238 Differential Equations (Spring 2013)
CSC 370 Topics in Computer Science: Machine Learning and Data Mining (Fall 2007)
MED 553 Discrete Structures (Spring 2009)
MAT 161 Calculus I (Fall 2010)
MAT 162 Calculus II (Fall 2020, 2019)
ASC 150 Forecasting the Future (Fall 2018)
MAT 128 Applied Statistics (Fall 2021, 2015, 2007 - 2012)
MAT 118 Introduction to Statistics (Fall 2023, Spring 2023, 2021, 2010, 2008)
MAT 130 The Whole Truth About Whole Numbers (Spring 2017, 2016, Fall 2013, Spring 2012, 2011)
MAT 131 Linear Methods (Spring 2024, Fall 2022, 2019, 2016, Spring 2013 - 2015)
MAT 134 The Mathematics of Uncertainty: Counting Rules and Probability (Spring 2018, Fall 2017)
University of Pennsylvania, The Wharton School
STAT 470/503/770 Data Analytics and Statistical Computing (Spring 2023, Fall 2022, Spring 2022)
STAT 4300 Probability (Fall 2023)
STAT 1120 Introductory Statistics (Spring 2024)
Derivative-Free Optimization
Engineering Optimization and Global Optimization
Surrogate-Based Optimization and Bayesian Optimization
Machine Learning and Computational Intelligence for Optimization
Optimization Applications in Data Science and in Engineering
Business Analytics and Operations Research
Links to the articles below are available through my Google Scholar Profile.
Derivative-Free Optimization and Trust Region Methods
R. G. Regis. On the Properties of the Cosine Measure and the Uniform Angle Subspace. Computational Optimization and Applications, Vol. 78, Issue 3, pp. 915-952, 2021.
R. G. Regis and S. M. Wild. CONORBIT: constrained optimization by radial basis function interpolation in trust regions. Optimization Methods and Software, Vol. 32, Issue 3, pp. 552–580, 2017.
R. G. Regis. On the properties of positive spanning sets and positive bases. Optimization and Engineering, Vo1. 17, Issue 1, pp. 229-262, 2016.
R. G. Regis. The calculus of simplex gradients. Optimization Letters, Vol. 9, Issue 5, pp. 845-865, 2015.
S. Wild, R. G. Regis, and C. A. Shoemaker. ORBIT: Optimization by radial basis function interpolation in trust-regions. SIAM Journal on Scientific Computing, Vol. 30, No. 6, pp. 3197-3219, 2008.
Global Optimization Using Stochastic Search and Related Methods
L. Nuñez, R. G. Regis, K. Varela. Constrained global optimization using accelerated random search assisted by radial basis function surrogates. Journal of Computational and Applied Mathematics, Vol. 340, pp. 276-295, 2018.
R. G. Regis. On the convergence of adaptive stochastic search methods for constrained and multi-objective black-box optimization. Journal of Optimization Theory and Applications, Vol. 170, Issue 3, pp. 932–959, 2016.
E. J. C. Gouvea, R. G. Regis, A. C. Soterroni, M. C. Scarabello and F. M. Ramos. Global optimization using q-gradients. European Journal of Operational Research, Vol. 251, Issue 3, pp. 727–738, 2016.
R. G. Regis. Convergence guarantees for generalized adaptive stochastic search methods for continuous global optimization. European Journal of Operational Research, Vol. 207, Issue 3, pp. 1187-1202, 2010.
Surrogate-Based and Bayesian Optimization and Machine Learning Methods for Optimization
M. A. Bouhlel, N. Bartoli, R. G. Regis, A. Otsmane, J. Morlier. Efficient Global Optimization for high-dimensional constrained problems by using Kriging models combined with the Partial Least Squares method. Engineering Optimization, Vol. 50, Issue 12, pp. 2038 – 2053, 2018.
R. G. Regis. Multi-objective constrained black-box optimization using radial basis function surrogates. Journal of Computational Science, Vol. 16, pp. 140–155, 2016.
R. G. Regis. Trust regions in kriging-based optimization with expected improvement. Engineering Optimization, Vol. 48, Issue 6, pp. 1037-1059, 2016.
R. Datta and R. G. Regis. A surrogate-assisted evolution strategy for constrained multi-objective optimization. Expert Systems with Applications, Vol. 57, pp. 270–284, 2016.
R. G. Regis. Constrained optimization by radial basis function interpolation for high-dimensional expensive black-box problems with infeasible starting points. Engineering Optimization, Vol. 46, Issue 2, pp. 218-243, February 2014.
R. G. Regis. Particle swarm with radial basis function surrogates for expensive black-box optimization. Journal of Computational Science, Vol. 5, Issue 1, pp. 12-23, January 2014.
R. G. Regis. Evolutionary programming for high-dimensional constrained expensive black-box optimization using radial basis functions. IEEE Transactions on Evolutionary Computation, Vol. 18, Issue 3, pp. 326-347, 2014.
R. G. Regis and C. A. Shoemaker. A quasi-multistart framework for global optimization of expensive functions using response surface models. Journal of Global Optimization, Vol. 56, Issue 4, pp. 1719-1753, 2013.
R. G. Regis and C. A. Shoemaker. Combining radial basis function surrogates and dynamic coordinate search in high-dimensional expensive black-box optimization. Engineering Optimization, Vol. 45, Issue 5, pp. 529-555, 2013.
R. G. Regis. Stochastic radial basis function algorithms for large-scale optimization involving expensive black-box objective and constraint functions. Computers and Operations Research, Vol. 38, Issue 5, pp. 837-853, 2011.
R. G. Regis and C. A. Shoemaker. Parallel stochastic global optimization using radial basis functions. INFORMS Journal on Computing, Vol. 21, No. 3 (Special issue: High-Throughput Optimization), pp. 411-426, Summer 2009.
N. Bliznyuk, D. Ruppert, C. A. Shoemaker, R. G. Regis, S. Wild and P. Mugunthan. Bayesian calibration of computationally expensive models using optimization and radial basis function approximation. Journal of Computational and Graphical Statistics, Vol. 17, No. 2, pp. 270-294, 2008.
R. G. Regis and C. A. Shoemaker. A stochastic radial basis function method for the global optimization of expensive functions. INFORMS Journal on Computing, Vol. 19, No. 4, pp. 497-509, Fall 2007.
R. G. Regis and C. A. Shoemaker. Parallel radial basis function methods for the global optimization of expensive functions. European Journal of Operational Research, Vol. 182, Issue 2, pp. 514-535, 2007.
R. G. Regis and C. A. Shoemaker. Improved strategies for radial basis function methods for global optimization. Journal of Global Optimization, Vol. 37, No. 1, pp. 113-135, 2007.
R. G. Regis and C. A. Shoemaker. Constrained global optimization of expensive black box functions using radial basis functions. Journal of Global Optimization, Vol. 31, No. 1, pp. 153-171, 2005.
R. G. Regis and C. A. Shoemaker. Local function approximation in evolutionary algorithms for costly black box optimization. IEEE Transactions on Evolutionary Computation, Vol. 8, No. 5, pp. 490–505, October 2004.
Engineering Optimization Applications
V. Christelis, G. Kopsiaftis, R. G. Regis, A. Mantoglou. An adaptive multi-fidelity optimization framework based on co-Kriging surrogate models and stochastic sampling with application to coastal aquifer management. Advances in Water Resources, Vol. 180 (104537), 2023.
M. Pandey, R. G. Regis, R. Datta and B. Bhattacharya. Surrogate-assisted multi-objective optimisation of the dynamic response of a freight wagon fitted with three-piece bogies. International Journal of Rail Transportation, Vol. 9, Issue 3, pp. 290-309, 2021.
V. Christelis, R. G. Regis, A. Mantoglou. Surrogate-based pumping optimization of coastal aquifers under limited computational budgets. Journal of Hydroinformatics, Vol. 20, Issue 1, pp. 164–176, 2018.
C. A. Shoemaker, R. G. Regis and R. C. Fleming. Watershed calibration using multistart local optimization and evolutionary optimization with radial basis function approximation. Hydrological Sciences Journal – Journal Des Sciences Hydrologiques, Vol. 52, Issue 3 (Special issue: Hydroinformatics), pp. 450-465, 2007.
P. Mugunthan, C. A. Shoemaker and R. G. Regis. Comparison of function approximation, heuristic and derivative-based methods for automatic calibration of computationally expensive groundwater bioremediation models. Water Resources Research, Vol. 41, W11427, 2005.
Business Analytics and Operations Research
J. Glasser and R. G. Regis. A generalized survival function method for mixed distributions. American Journal of Mathematical and Management Sciences, Vol. 40, Issue 4, pp. 378-390, 2021.
V. M. Evangelista and R. G. Regis. A multi-objective approach for maximizing the Reach or GRP of different brands in TV advertising. International Transactions in Operational Research, Vol. 27, Issue 3, pp. 1664-1698, 2020.
V. M. Evangelista and R. G. Regis. Exploring the Suitability of Support Vector Regression and Radial Basis Function Approximation to Forecast Sales of Fortune 500 Companies. Advances in Business and Management Forecasting, Vol. 13, pp. 3-23, 2019.
C. P. Gomes, R. G. Regis and D. B. Shmoys. An improved approximation algorithm for the partial latin square extension problem. Operations Research Letters, Vol. 32, No. 5, pp. 479–484, 2004.
Peer-Reviewed Conference Proceedings and Book Chapters
R. G. Regis. A Parallel Surrogate Approach for High-Dimensional Constrained Optimization with Discrete Variables. Proceedings of the International Conference on Optimization and Learning (OLA 2024), Dubrovnik, Croatia, 2024.
R. G. Regis. Radial Basis Function and Bayesian Methods for the Hyperparameter Optimization of Classification Random Forests. In: Gervasi, O. et al. (eds) Computational Science and Its Applications – ICCSA 2023 Workshops. ICCSA 2023. Lecture Notes in Computer Science, vol. 14105. Springer, Cham, 2022, pp. 508–525.
Regis R.G. Hyperparameter Tuning of Random Forests Using Radial Basis Function Models. In: Nicosia G. et al. (eds) Machine Learning, Optimization, and Data Science. LOD 2022. Lecture Notes in Computer Science, vol 13810. Springer, Cham, 2023, pp. 309–324.
R. G. Regis. A Bootstrap-Surrogate Approach for Sequential Experimental Design for Simulation Models. In: O. Gervasi et al. (eds) Computational Science and Its Applications – ICCSA 2022 Workshops. Lecture Notes in Computer Science, vol 13377. Springer, Cham, 2022, pp. 498-513.
R. G. Regis. A Hybrid Surrogate-Assisted Accelerated Random Search and Trust Region Approach for Constrained Black-Box Optimization. In: G. Nicosia et al. (eds) Machine Learning, Optimization, and Data Science. LOD 2021. Lecture Notes in Computer Science, vol 13164. Springer, Cham, 2022, pp. 162-177.
J. N. Iorio and R. G. Regis. Accelerated Random Search for Black-Box Constraint Satisfaction and Optimization. 2021 IEEE Symposium Series on Computational Intelligence (SSCI), Orlando, Florida, USA, 2021, pp. 1 – 8.
R. G. Regis. High-Dimensional Constrained Discrete Expensive Black-Box Optimization Using a Two-Phase Surrogate Approach. In: O. Gervasi et al. (eds) Computational Science and Its Applications – ICCSA 2021. Lecture Notes in Computer Science, vol 12953. Springer, Cham, pp. 366-381.
R. G. Regis. A two-phase surrogate approach for high-dimensional constrained discrete multi-objective optimization. In: F. Chicano (ed). Proceedings of the Genetic and Evolutionary Computation Conference Companion (GECCO 2021): 1870-1878, ACM, New York, NY, USA, 2021.
R. G. Regis. Large-Scale Discrete Constrained Black-Box Optimization Using Radial Basis Functions. 2020 IEEE Symposium Series on Computational Intelligence (SSCI), Canberra, ACT, Australia, 2020, pp. 2924-2931.
R. G. Regis. High-Dimensional Constrained Discrete Multi-Objective Optimization Using Surrogates. In: Nicosia G. et al. (eds) Machine Learning, Optimization, and Data Science. LOD 2020. Lecture Notes in Computer Science, vol 12566. Springer, Cham, 2020.
N. Mandarano, R. G. Regis, E. Bloom. Machine Learning and Statistical Models for the Prevalence of Multiple Sclerosis. In: Nicosia G. et al. (eds) Machine Learning, Optimization, and Data Science. LOD 2020. Lecture Notes in Computer Science, vol 12566. Springer, Cham, 2020.
R. G. Regis. A Survey of Surrogate Approaches for Expensive Constrained Black-Box Optimization. In: H. Le Thi, H. Le, T. Pham Dinh (eds), Optimization of Complex Systems: Theory, Models, Algorithms and Applications. WCGO2019. Advances in Intelligent Systems and Computing, vol 991. Springer, Cham, 2020.
P. S. Palar, Y. B. Dwianto, R. G. Regis, A. Oyama, and L. R. Zuhal. Benchmarking constrained surrogate-based optimization on low speed airfoil design problems. In: M. Lopez-Ibanez (ed). Proceedings of the Genetic and Evolutionary Computation Conference Companion (GECCO 2019): 1990-1998, ACM, New York, NY, USA, 2019.
R. G. Regis. A hybrid between a surrogate-assisted evolutionary algorithm and a trust region method for constrained optimization. In: M. Lopez-Ibanez (ed). Proceedings of the Genetic and Evolutionary Computation Conference Companion (GECCO 2019): 324-325, ACM, New York, NY, USA, 2019.
R. G. Regis. Surrogate-Assisted Particle Swarm with Local Search for Expensive Constrained Optimization. In: P. Korosec, N. Melab, E.G. Talbi (eds). Bioinspired Optimization Methods and Their Applications. BIOMA 2018. Lecture Notes in Computer Science, vol 10835. pp. 246-257. Springer, Cham, 2018.
R. G. Regis. A Surrogate-Assisted Approach for Expensive Equality Constrained Optimization. Proceedings of the 8th International Conference on Bioinspired Optimization Methods and their Applications (BIOMA 2018), Paris, France, 2018.
N. Bartoli, M. A. Bouhlel, I. Kurek, R. Lafage, T. Lefebvre, J. Morlier, R. Priem, V. Stilz, R. Regis. Improvement of efficient global optimization with application to aircraft wing design. 17th AIAA/ISSMO Multidisciplinary Analysis and Optimization Conference. AIAA AVIATION Forum, (AIAA 2016-4001), 2016.
R. G. Regis. Trust regions in surrogate-assisted evolutionary programming for constrained expensive black-box optimization. In: R. Datta and K. Deb (eds). Evolutionary Constrained Optimization, pp 51-94. Springer India, 2015.
R. G. Regis. An initialization strategy for high-dimensional surrogate-based expensive black-box optimization. In: L.F. Zuluaga and T. Terlaky (eds). Selected Contributions from the MOPTA 2012 Conference Series: Springer Proceedings in Mathematics & Statistics, Vol. 62, pp. 51-85. Springer NY, 2013.
R. G. Regis. Surrogate-assisted evolutionary programming for high dimensional constrained black-box optimization. In: T. Soule and J.H. Moore (eds). Genetic and Evolutionary Computation Conference (GECCO 2012) Companion Material Proceedings: 1431-1432.
C. A. Shoemaker and R. G. Regis. MAPO: using a committee of algorithm-experts for parallel optimization of costly functions. Proceedings of the 15th ACM Symposium on Parallelism in Algorithms and Architectures (SPAA ’03), San Diego, CA, 2003.
C. P. Gomes, R. G. Regis and D. B. Shmoys. An improved approximation algorithm for the partial latin square extension problem. Proceedings of the 14th Annual ACM-SIAM Symposium on Discrete Algorithms (SODA ’03), Baltimore, Maryland, 2003.
Wharton Teaching Excellence Award, University of Pennsylvania, The Wharton School, 2023
Faculty Merit Award for Teaching, Saint Joseph’s University, 2019, 2009
Faculty Merit Award for Research, Saint Joseph’s University, 2017, 2011
College of Arts and Sciences Advising Award, Saint Joseph’s University, 2017
Michael J. Morris '56 Grant for Scholarly Research, Saint Joseph’s University, 2019, 2014
Summer Research Grant, Saint Joseph’s University, 2016, 2012, 2008
Project NExT Fellow, Mathematical Association of America, 2008 – 2009
Section NExT Fellow, Eastern Pennsylvania and Delaware (EPADEL) Section of the Mathematical Association of America, 2008 – 2009
Research Assistantship, Cornell University, School of Civil & Environmental Engineering, 2003 – 2004
Research Assistantship, Cornell University, Department of Computer Science, 2000 – 2003
Teaching Assistantship, Cornell University, School of Operations Research & Industrial Engineering, 1998 – 2000
Teaching Assistantship, University of Florida, Mathematics Department, 1996 – 1998
Bank of the Philippine Islands Science Award, 1993
Member of the Philippine Team, 30th International Mathematical Olympiad (IMO), 1989
Honorable Mention and Mathematics Departmental Award, Ateneo de Manila University, Philippines, 1993
Department of Science and Technology Scholarship, Philippines, 1989 – 1993
Editorial Advisory Board Member, Engineering Optimization, 2018 – present.
Completed 190 reviews for over 40 international journals in Optimization, Operations Research, Engineering, Applied Mathematics, Computational Science, Artificial Intelligence, Machine Learning and Computing.
Organized and chaired two sessions on "Surrogate-Based and Derivative-Free Optimization" for the 2015 INFORMS Annual Meeting, Philadelphia, PA, November 2015. INFORMS is the Institute for Operations Research and the Management Sciences.
Organized and chaired three sessions on "Derivative-free and Simulation-based Optimization" for the 22nd International Symposium on Mathematical Programming (ISMP), Pittsburgh, PA, July 2015.
Organized and chaired the session on "Black-Box and Derivative-Free Optimization" for the Modeling and Optimization: Theory and Applications (MOPTA) 2014 conference at Lehigh University in Bethlehem, PA.
Organized and chaired the session on "Derivative-free and Surrogate-based Optimization" for the Modeling and Optimization: Theory and Applications (MOPTA) 2012 conference at Lehigh University in Bethlehem, PA.