糖心Vlog

Data Science Research Group

Statistical Methodology theme

Statistics plays a key role in bridging research between mathematics and applied data science within the department.

Research problems in statistics are relevant to a range of areas in mathematics, from measure theory to analysis and algebra, and are linked with the statistical and probabilistic foundations of Data Science and Operational Research.

Statistical methodology theme members work on a broad range research areas, including Bayesian statistics, longitudinal and survival analysis, causal inference and applied probability.

Areas of expertise

Members of this research theme have several key areas of expertise within the field:

  • Methodologies in computationally intensive Bayesian Modelling and Monte Carlo methods
  • Nonparametric and semiparametric methods for survival data - All theme members are interested in survival analysis, particularly in nonparametric/semiparametric methods for multivariate length-biased and censored data, nonparametric bivariate survival analysis, couplas, cure rate models, joint modelling of survival events and longitudinal data, covariance modelling.
  • Causal inference - Theme member Dr Bao has interests on instrumental variable methods, including Mendelian Randomization. She also works on structure mean model for longitudinal data analysis.

Theme members are also interested in the practical problems proposed by industrial partners. An important goal for the theme is to build on our existing collaborations with business partners via KTP projects (for example the KTP with Ocado), as well as links with local councils via the Catalyst project funded by HEFCE.

Our department has always understood the importance of statistics and methodology. Our late colleague, Professor George Alfred Barnard, was President of the Royal Statistical Society during his time in our department, and was awarded the Society’s Guy Medal in Gold in 1975.

We will continue to build on this dedication to statistical methodology and its impacts, by engaging in further collaborations with researchers in other areas, such as biology, sociology and computer science (for example the BIAS project currently funded by ESRC).

Recent publications

2021

  • Liang, Wei and Dai, Hongsheng (2021) '' Statistics and Probability Letters, 169. ISSN 0167-7152 (In Press)
  • Ma, Chuoxin and Dai, Hongsheng and Pan, Jianxin (2021) '' Annals of Applied Statistics. ISSN 1932-6157 (In Press)

2020

  • Bouezmarni, T and Bellegem, S and Rabhi, Y (2020) '' Canadian Journal of Statistics, 48 (3). 582 - 595. ISSN 0319-5724
  • Bouezmarni, Taoufik and Rabhi, Yassir and Fontaine, Charles (2020) '' Statistics, 54 (1). 46 - 58. ISSN 0233-1888
  • D醛bicki, Krzysztof and Liu, Peng and Michna, Zbigniew (2020) '' Journal of Theoretical Probability, 33. 2119 - 2166. ISSN 0894-9840
  • Gong, Dunwei and Pan, Feng and Tian, Tian and Yang, Su and Meng, Fanlin (2020) '' Information and Software Technology, 124. ISSN 0950-5849
  • Hulls, Paige M and de Vocht, Frank and Bao, Yanchun and Relton, Caroline L and Martin, Richard M and Richmond, Rebecca C (2020) '' Environmental Research. ISSN 0013-9351
  • Rabhi, Yassir and Asgharian, Masoud (2020) '' The Canadian Journal of Statistics. ISSN 0319-5724
  • Rabhi, Yassir and Bouezmarni, Taoufik (2020) '' Journal of the American Statistical Association, 115 (531). 1268 - 1278. ISSN 0162-1459

2019

  • Aldahmani, Saeed and Dai, Hongsheng and Zhang, Qiao-Zhen (2019) '' Statistics and Its Interface, 12 (4). 631 - 645. ISSN 1938-7997
  • Baselmans, Bart ML and Jansen, Rick and Ip, Hill F and van Dongen, Jenny and Abdellaoui, Abdel and van de Weijer, Margot P and Bao, Yanchun and Smart, Melissa and Kumari, Meena and Willemsen, Gonneke and Hottenga, Jouke-Jan and Boomsma, Dorret I and de Geus, Eco JC and Nivard, Michel G and Bartels, Meike (2019) '' Nature Genetics. ISSN 1061-4036
  • Dai, Hongsheng and Pollock, Murray and Roberts, Gareth (2019) '' Journal of Applied Probability, 56 (1). 174 - 191. ISSN 0021-9002
  • El Khoury, Louis Y and Gorrie-Stone, Tyler J and Smart, Melissa and Hughes, Amanda and Bao, Yanchun and Andrayas, Alexandria and Burrage, Joe and Hannon, Eilis and Kumari, Meena and Mill, Jonathan and Schalkwyk, Leonard (2019) '' Genome Biology, 20. ISSN 1474-7596
  • Fadina, Tolulope and Herzberg, Frederik (2019) '' Stochastics, 91 (1). 52 - 66. ISSN 1744-2508
  • Liang, Wei and Dai, Hongsheng and He, Shuyuan (2019) '' Computational Statistics and Data Analysis, 138. 155 - 169. ISSN 0167-9473
  • Mansell, Georgina and Gorrie-Stone, Tyler J and Bao, Yanchun and Kumari, Meena and Schalkwyk, Leonard S and Mill, Jonathan and Hannon, Eilis (2019) '' BMC Genomics, 20 (1). ISSN 1471-2164

Researchers

Dr Daniel Ahelegbey

Lecturer

School of Mathematics, Statistics and Actuarial Science, 糖心Vlog

Dr Oludare Ariyo

Lecturer

School of Mathematics, Statistics and Actuarial Science, 糖心Vlog

Dr Yanchun Bao

Senior lecturer

School of Mathematics, Statistics and Actuarial Science, 糖心Vlog

Dr Xu Chen

Lecturer

School of Mathematics, Statistics and Actuarial Science, 糖心Vlog

Dr Alex Diana

Lecturer

School of Mathematics, Statistics and Actuarial Science, 糖心Vlog

Dr Vasileios Giagos

Lecturer in Data Science and Statistics

School of Mathematics, Statistics and Actuarial Science, 糖心Vlog

Dr Wenxing Guo

Lecturer in Data Science and Statistics

School of Mathematics, Statistics and Actuarial Science, 糖心Vlog

Dr Jianya Lu

Lecturer in Data Science and Statistics

School of Mathematics, Statistics and Actuarial Science, 糖心Vlog

Dr Osama Mahmoud

Lecturer

School of Mathematics, Statistics and Actuarial Science, 糖心Vlog

Dr Danilo Petti

Lecturer

School of Mathematics, Statistics and Actuarial Science, 糖心Vlog

Dr Yassir Rabhi

Lecturer in Data Science and Statistics

School of Mathematics, Statistics and Actuarial Science, 糖心Vlog

Dr Igor Rodionov

Senior Lecturer

School of Mathematics, Statistics and Actuarial Science, 糖心Vlog

Dr Rishideep Roy

Lecturer

School of Mathematics, Statistics and Actuarial Science, 糖心Vlog

Dr Jackie Wong Siaw Tze

Lecturer in Actuarial Science

School of Mathematics, Statistics and Actuarial Science, 糖心Vlog

Dr Na You

Senior lecturer

School of Mathematics, Statistics and Actuarial Science, 糖心Vlog

A photo of a woman, with glasses and dark hair, working at a computer, with piles of paper and folders on her desk on her left.
Project: BIAS - Responsible AI for Labour Market Equality

The School of Mathematics, Statistics and Actuarial Science is collaborating with Lancaster University in this ESRC funded project that will create new methodologies for the creation of responsible and trustworthy algorithms used by companies for job applicant selection, reducing the bias shown by existing algorithms.

Read more about the BIAS project