Ms. Noreen Naeem
Lecturer, Statistics
Area of Interest: Functional Data Analysis, Statistical Quality Control, Statistical Pattern Recognition, Survey Sampling
Tel # (Off): 111-001-007  

Miss Noreen Naeem is currently pursuing a PhD in Statistics at Quaid-i-Azam University (QAU), Islamabad. She holds an M. Phil and M.Sc. in Statistics, both from QAU, where she was awarded Gold Medals for her outstanding academic performance in both degrees. Throughout her academic career, she has been honored with fellowships from the Higher Education Commission (HEC) of Pakistan during her M. Phil and has received numerous scholarships for her excellence in research and studies.

Miss Naeem's research focuses on functional data analysis, functional data monitoring, and high-dimensional data handling, with additional interests in survey sampling, machine learning, and statistical quality control. Her expertise also extends to successive sampling, non-response issues, and other statistical methodologies. She is proficient in several statistical software packages, including SPSS, R, R Studio, Microsoft Office, MathType, and LaTeX.

Currently, Miss Noreen Naeem serves as a Lecturer in the Department of Statistics at the Comsats University Islamabad (CUI), Lahore Campus.

Publications:

Journal Papers:
1. Noreen Naeem, Sajid Ali, Ismail Shah (2024), "Functional EWMA control chart for phase II profile monitoring", Journal of Statistical Computation and Simulation, pp: 96-116, Vol: 95, Issue: 1   
2. Noreen Naeem & Javid Shabbir (2017), "Use of scrambled responses on two occasions successive sampling under non-response", Hacettepe Journal of Mathematics and Statistics   

Qualification

M. Phil in Statistics
Quaid-i-Azam University, Islamabad, Pakistan
2013 to 2015
   

Experience

Lecturer
COMSATS, Lahore
Jan 2016 to Date
   

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