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Publications

(Note: * denotes students/postdocs advised/co-advised, # denotes visiting students advised/co-advised)

Refereed Journal Articles Published and In-Press

  1. Peng, X.* and Wang, H. (2023). Inference for joint quantile and expected shortfall regression, Stat, 12(1), e619. https://doi.org/10.1002/sta4.619
  2. Peng, X.* and Wang, H. (2022). A Generalized Quantile Tree Method for Subgroup Identification, Journal of Computational and Graphical Statistics, DOI: 10.1080/10618600.2022.2032723
  3. Xu, W.#Wang, H. and Li, D. (2022). Extreme quantile estimation for single index modelStatistica Sinica, 32, 893-914.
  4. Gao, T., Xu, Y., Wang, H., Sun, Q., Xie, L. and Cao, F. (2022). Combined Impacts of Climate Variability Modes on Seasonal Precipitation Extremes Over China. Water Resour Manage 36, 2411–2431. https://doi.org/10.1007/s11269-022-03150-z
  5. Tang, Y., Wang, Y., Wang, H. and Pan, Q. (2022). Conditional marginal test in high dimensional quantile regression, Statistica Sinica, 32, 1-24, doi:https://doi.org/10.5705/ss.202019.0304
  6. Wang, W.Sun, Y.Wang, H. (2023). Latent group detection in functional partially linear regression modelsBiometrics79280291https://doi.org/10.1111/biom.13557
  7. Lee, J., Sun, Y. and Wang, H. (2021). Spatial cluster detection with threshold quantile regression. Environmetrics, 32(8), e2696. https://doi.org/10.1002/env.2696
  8. Zhang, Y#Wang, H. and Zhu, Z (2022). Single-index thresholding in quantile regression, Journal of the American Statistical Association (Theory and Methods), 117:540, 2222-2237, DOI: 10.1080/01621459.2021.1915319
  9. Agarwal, G., Sun, Y. and Wang, H. (2021). Copula-based Multiple Indicator Kriging for non-Gaussian Random FieldsSpatial Statistics, Volume 44, 100524, ISSN 2211-6753
  10. Li, X., Wang, L. and Wang, H (2021). Sparse learning and structure identification for ultra-high-dimensional image-on-scalar regression, Journal of the American Statistical Association (Theory and Methods), 116:536, 1994-2008, DOI: 10.1080/01621459.2020.1753523
  11. Yu, T., Xiang, L. and Wang, H (2020). Quantile regression for survival data with covariates subject to detection limits, Biometrics, 1–12, DOI: 10.1111/biom.13309.
  12. Hu, Y., Wang, H, He, X. and Guo, J. (2021). Bayesian joint-quantile regression, Computational Statistics, 36, 2033–2053, DOI: 10.1007/s00180-020-00998-w
  13. Gao, Z.*, Tang, Y.* , Wang, H., Wu, G., and Lin, J. (2020). Automatic identification of curve shapes with applications to ultrasonic vocalization, Computational Statistics and Data Analysis, 148, 106956. DOI: 10.1016/j.csda.2020.106956
  14. He, F., Wang, H. and Tong, T. (2020). Extremal quantile regression for Weibull-type tails, Statistica Sinica, 30, 1357-1377, DOI: 10.5705/ss.202018.0073.
  15. Tang, Y.*, Wang, H., Sun, Y. and Hering, A. S. (2019). Copula-based semiparametric models for spatiotemporal data, Biometrics, 7511561167, DOI:10.1111/biom.13066.
  16. Zhang, Y.#Wang, H. and Zhu, Z. (2019). Quantile-regression-based clustering for panel dataJournal of Econometrics, DOI: 10.1016/j.jeconom.2019.04.005.
  17. Li, F.*, Tang, Y.* and Wang, H. (2019). Copula-based semiparametric analysis for time series data with detection limits, Canadian Journal of Statistics, 47, 438-454, DOI:10.1002/cjs.11503.
  18. Zhang, Y.#Wang, H. and Zhu, Z. (2019). Robust subgroup identification, Statistica Sinicadoi:10.5705/ss.202017.0179.
  19. Wang, H., Feng, X. and Dong, C. (2019). Copula-based quantile regression for longitudinal dataStatistica Sinica, 29, 245-264, DOI: 10.5705/ss.202016.0135.
  20. Li, D. and Wang, H. (2019). Extreme quantile estimation for autoregressive modelsJournal of Business & Economic Statistics, 37, 661-670
  21. Tang, Y.*, Wang, H. and Barut, E. (2018). Testing the presence of significant covariates through conditional marginal regressionBiometrika, 105, 57-71.
  22. Wang, H., McKeague, I. and Qian, M. (2018). Testing for marginal linear effects in quantile regression, Journal of the Royal Statistical Society: Series B, 80, 433-452.
  23. Tang, Y.*, Wang, H. and Liang, H. (2018). Composite estimation for single-index model with responses subject to detection limitsScandinavian Journal of Statistics, 45, 444-464, DOI: 10.1111/sjos.12307.
  24. Yang, X. et al. (2018). Gastrin Protects Against Myocardial Ischemia/Reperfusion Injury via Activation of RISK (Reperfusion Injury Salvage Kinase) and SAFE (Survivor Activating Factor Enhancement) Pathways, Journal of the American Heart Association, 7:e005171.
  25. Gao, T., Wang, H. and Zhou, T. (2017). Changes of extreme precipitation and nonlinear influence of climate variables over Monsoon region in ChinaAtmospheric Research, 197, 379-389.
  26. Hu, J., Zhang, L.# and Wang, H. (2016). Sequential model selection based segmentation to detect DNA copy number variationBiometrics, 72, 815-826.
  27. Sun, Y., Wang, H. and Fuentes, M. (2016). Fused Lasso for spatial and temporal quantile function estimationTechnometrics, 58, 127-137.
  28. Wang, K.* and Wang, H. (2016). Optimally combined estimation for tail quantile regressionStatistica Sinica, 26, 295-311.
  29. Yang, Y., Wang, H. and He, X. (2016). Posterior inference in Bayesian quantile regression with asymmetric Laplace likelihood (Discussion Paper). International Statistical Review, 84, 327-344.
  30. Zhou, M.*, Wang, H. and Tang, Y. (2015). Sequential change point detection in linear quantile regression modelsStatistics and Probability Letters, 100, 98-103.
  31. Zhang, L.#Wang, H. and Zhu, Z. (2017). Composite change point estimation for bent line quantile regressionAnnals of the Institute of Statistical Mathematics, 69, 145-168.
  32. Tang, Y. and Wang, H. (2015). Penalized regression across multiple quantiles under random censoring. Journal of Multivariate Analysis, 141, 132-146.
  33. Pang, L.*, Lu, W. and Wang, H. (2015). Local Buckley-James estimation for the heteroscedastic accelerated failure time model. Statistica Sinica, 25, 863-877.
  34. Dupis, D., Sun, Y. and Wang, H. (2015). Detecting change-points in extremes. Statistics and Its Interface, 8, 19-31.
  35. Jang, W.* and Wang, H. (2015). A semiparametric Bayesian approach for quantile regression with clustered data. Computational Statistics and Data Analysis, 84, 99-115.
  36. Bernhardt, P. W.*, Zhang, D. and Wang, H. (2015). A fast EM algorithm for fitting joint models of a binary response and multiple longitudinal covariates subject to detection limits. Computational Statistics and Data Analysis, 85, 37-53.
  37. Zhang, L.#Wang, H. and Zhu, Z. (2014). Testing for change points due to a covariate threshold in regression quantiles. Statistica Sinica, 24, 1859-1877.
  38. Wang, H. and Wang, L. (2014). Quantile regression analysis of length-biased survival data. Stat, 3, 31-47.
  39. Jiang, L.*, Bondell, H. and Wang, H. (2014). Interquantile shrinkage and variable selection in quantile regression. Computational Statistics and Data Analysis, 69, 208-219.
  40. Bernhardt, P. W.*, Wang, H. and Zhang, D. (2014). Flexible modeling of survival data with covariates subject to detection limits via multiple imputation. Computational Statistics and Data Analysis, 69, 81-91.
  41. Wang, H. and Li, D. (2013). Estimation of extreme conditional quantiles through power transformation. Journal of the American Statistical Association (Theory and Methods), 108, 1062-1074.
  42. Torres, P. A.*, Zhang, D. and Wang, H. (2013). Constructing conditional reference charts for grip strength measured with error. Topics in Applied Statistics—2012 Symposium of the International Chinese Statistical Association, 299-310, Springer, New York.
  43. Bernhardt, P. W.*, Wang, H. and Zhang, D. (2013). Statistical methods for generalized linear models with covariates subject to detection limits. Statistics in Biosciences, DOI 10.1007/s12561-013-9099-4.
  44. Jiang, L.*, Wang, H. and Bondell, H. (2013). Interquantile shrinkage in regression models. Journal of Computational and Graphical Statistics, 22, 970-986.
  45. Tang, Y., Song, X., Wang, H. and Zhu, Z. (2013). Variable selection in high-dimensional quantile varying coefficient models. Journal of Multivariate Analysis, 122, 115-132.
  46. Wang, H., Zhou, J., and Li, Y. (2013). Variable selection for censored quantile regression. Statistica Sinica, 23, 145-167.
  47. Tang, Y.#Wang, H., and Zhu, Z. (2013). Variable selection in quantile varying coefficient models with longitudinal data. Computational Statistics and Data Analysis, 57, 435-449.
  48. Wang, H., Li, D. and He, X. (2012). Estimation of high conditional quantiles for heavy-tailed distributions. Journal of the American Statistical Association (Theory and Methods), 107, 1453-1464.
  49. Wang, H., Stefanski, L., and Zhu, Z. (2012). Corrected-loss estimation for quantile regression with covariate measurement error. Biometrika, 99, 405-421.
  50. Tang, Y.#Wang, H., He, X., and Zhu, Z. (2012). An informative subset estimation for censored quantile regression. TEST, 21, 635-655.
  51. Wang, H. and Feng, X. (2012). Multiple imputation for MM-regression with censored covariates. Journal of the American Statistical Association (Theory and Methods), 107, 194-204.
  52. Tang, Y.#Wang, H., Zhu, Z., and Song, X. (2012). A unified variable selection approach for varying coefficient models. Statistica Sinica, 22, 601-628.
  53. Sun, Y., Wang, H., and Gilbert, P. B. (2012). Quantile regression for competing risks data with missing cause of failure. Statistica Sinica, 22, 703-728.
  54. Pang, L.*, Lu, W., and Wang, H. (2012). Variance estimation in censored quantile regression via induced smoothing. Computational Statistics and Data Analysis, 56, 785-796.
  55. Wang, H. and Zhu, Z. (2011). Empirical likelihood for quantile regression models with longitudinal data. Journal of Statistical Planning and Inference, 141, 1603-1615.
  56. Wang, H. and Hu, J. (2011). Identification of differential aberrations in multiple-sample array CGH studies. Biometrics, 67, 353-362.
  57. Bondell, H. D., Reich, B. J., and Wang, H. (2010). Non-crossing quantile regression curve estimation. Biometrika, 97, 825-838.
  58. Reich, B. J., Bondell, H. D., and Wang, H. (2010). Flexible Bayesian quantile regression for independent and clustered data. Biostatistics, 11, 337-352.
  59. Ayers, C. R., Moorman, C. E., Deperno, C. S., Yelverton, F. H., and Wang, H. (2010). Effects of mowing on anthraquinone for deterrence of Canada geese. Journal of Wildlife Management, 74, 1863-1868.
  60. Wang, H. and Zhou, X. (2010). Estimation of the retransformed conditional mean in health care cost studies. Biometrika, 97, 147-158.
  61. Wang, H. (2009). Inference on quantile regression for heteroscedastic mixed models. Statistica Sinica, 19, 1247-1261.
  62. Wang, H. and Fygenson, M. (2009). Inference for censored quantile regression models in longitudinal studies. Annals of Statistics, 37, 756-781.
  63. Wang, H. and Wang, L. (2009). Locally weighted censored quantile regression. Journal of the American Statistical Association (Theory and Methods), 104, 1117-1128. Here are some additional remarks for the paper.
  64. Wang, H., Zhu, Z., and Zhou, J. (2009). Quantile regression in partially linear varying coefficient models. Annals of Statistics, 37, 3841-3866.
  65. Thomas, R., Duke, S. E., Wang, H., Breen, T. E., Higgins, R. J., Linder, K. E., Ellis, P, Langford, C. F., Dickinon, P. J., Olby, N. J., and Breen, M. (2009). `Putting our heads together’-insights into genomic conservation between human and canine intracranial tumors. Journal of Neuro-Oncology, 94, 333-349.
  66. Thomas, R., Wang, H., Tsai, P. C., Langford, C. F., Fosmire, S. P., Jubala, C. M., Getzy, D. M., Cutter, G. R., Modiano, J. F., and Breen, M. (2009). Influence of genetic background on tumor karyotypes: evidence for breed-associated cytogenetic aberrations in canine appendicular osteosarcoma. Chromosome Research, 17, 365-377.
  67. Zhou, C., Wang, H., and Wang, Y. M. (2009). Efficient moments-based permutation tests. Neural Information Processing Systems (NIPS), pp. 2277-2285.
  68. Zhou, C., Hu, Y., Fu, Y., Wang, H., Huang, T. S., and Wang, Y. M. (2008). 3D face analysis for distinct features using statistical randomization. IEEE International Conference on Acoustics, Speech, and Digital Processing (ICASSP), 981-984.
  69. Wang, H. and He, X. (2008). An enhanced quantile approach for assessing differential gene expressions. Biometrics, 64, 449-457.
  70. Wang, H. and He, X. (2007). Detecting differential expressions in GeneChip microarray studies: a quantile approach. Journal of the American Statistical Association (Theory and Methods), 102, 104-112.
  71. Wang, H. and Huang, S. (2007). Mixture-model classification in DNA content analysis. Cytometry, 71A, 716-723.
  72. Wang, H., Huang, S., Shou, J., Wu, E.W., Onyia, J. E., Liao, B., and Li, S. (2006). Comparative analysis and integrative classification of NCI60 cell lines and primary tumors using gene expression profiling data. BMC Genomics, 7:166.
  73. Wang, H., He, X., Band, M., Wilson, C., and Liu, L. (2005). A study of inter-lab and inter-platform agreement of DNA microarray data. BMC Genomics, 6:71.
  74. Selvaraj, V., Bunick, D., Johnson, R. W., Wang, H., Liu, L., and Cooke, P. S. (2005). Gene expression profiling of 17ββ-Estradiol and genistein effects on mouse thymus. Toxicological Sciences, 87, 97-112.
  75. Zheng, Z., Wang, H., and Yan, M. (2001). The GDM model and survival estimation. Chinese Journal of Applied Probability and Statistics, 17, 213-216.

Other Publications

  1. Xu, W. and Wang, H. (2021), Discussion on “On studying extreme values and systematic risks with nonlinear time series models and tail dependence measures”, Statistical Theory and Related Fields, 5, issue 1, p. 26-30.
  2. Tang, Y., Barut, E. and Wang, H. (2021). High dimensional and post-selection inference, book chapter, to appear.
  3. Wang, H. and Yang, Y. (2017). Bayesian Quantile Regression in Koenker, R., Chernozhukov, V., He, X. and Peng, L. (Eds), Handbook of Quantile Regression, Chapman and Hall/CRC.
  4. Wang, H. (2016). Review of “Adaptive Design Theory and Implementation Using SAS and R (2nd ed.)”. The American Statistician, 69, 425-434.
  5. Wang, H. and Li, D. (2015). Estimation of Extreme Conditional Quantiles in Dey, D. and Yan, J. (Eds), Extreme Value Modeling and Risk Analysis: Methods and Applications (pp 319-337), Chapman and Hall/CRC.
  6. Barut, E. and Wang, H. (2015). Comments on "An adaptive resampling test for detecting the presence of significant predictors" by I. McKeague and M. QianThe Journal of American Statistical Association, 110, 1442-1445.
  7. Tang, Y., Barut, E. and Wang, H. (2023). High dimensional and post-selection inference, book chapter, to appear.
  8. Gel, Y. R., Peña, E. A. and Wang, H. (2023). Conversations with Gábor J. Székely, Statistical Science, 38, 355-367.