A SYSTEMATIC REVIEW OF LENGTH-BIASED DISTRIBUTIONS: THEORY, DEVELOPMENTS AND APPLICATIONS
Length-biased distributions arise when the probability of including an observational unit in a sample is proportional to its length. They form an important special case of weighted distributions and have substantial applications in survival analysis, renewal processes, reliability studies, biomedical investigations, ecology, actuarial science and related areas. The present review provides a concise but systematic account of the theory and development of length-biased distributions, with emphasis on their mathematical formulation, historical development, statistical properties, inferential methods and applications. Special attention is given to models used in lifetime data analysis, including the Weibull length-biased distribution, Weibull length-biased exponential distribution, length-biased beta-Pareto distribution, length-biased weighted Lomax distribution, length-biased Sushila distribution, length-biased Aradhana distribution and length-biased transmuted models. The review also discusses nonparametric estimation, goodness-of-fit procedures, maximum likelihood and Bayesian estimation, and the comparative performance of length-biased models in lifetime data analysis. The study also classifies the existing literature and identifies potential areas for future research.
Golekar, N. N. (2026). A Systematic Review of Length-Biased Distributions: Theory, Developments and Applications. International Journal of Science, Strategic Management and Technology, 02(04). https://doi.org/10.55041/ijsmt.v2i4.264
Golekar, Nandini. "A Systematic Review of Length-Biased Distributions: Theory, Developments and Applications." International Journal of Science, Strategic Management and Technology, vol. 02, no. 04, 2026, pp. . doi:https://doi.org/10.55041/ijsmt.v2i4.264.
Golekar, Nandini. "A Systematic Review of Length-Biased Distributions: Theory, Developments and Applications." International Journal of Science, Strategic Management and Technology 02, no. 04 (2026). https://doi.org/https://doi.org/10.55041/ijsmt.v2i4.264.
2.Vardi, (1982). Nonparametric estimation in the presence of length bias.
3.Rajagopalan, , Ganaie, R. A., and Rather, A. A. (2019). A new length biased distribution with applications.
4.Rather, A., and Subramanian, C. (2018). Length biased Sushila distribution.
5.Ahmad, , Ahmad, S. P., and Ahmed, A. (2016). Length-biased weighted Lomax distribution: Statistical properties and application.
6.Nanuwong, N., and Bodhisuwan, W. (2014). Length biased beta-Pareto distribution and its structural properties with application.
7.Jahanshahi, M. A., Habibirad, A., Fakoor, V., and Ajami, M(2022). Some goodness-of-fit tests based on Cox’s empirical estimator under length-biased sampling.
8.Ekhosuehi, , Kenneth, G. E., and Kevin, U. K. (2020). The Weibull length biased exponential distribution: Statistical properties and applications.
9.Rather, A., and Subramanian, C. (2018). Characterization and estimation of length biased weighted generalized uniform distribution.
10.Qayoom, D., and Rather, A. A. (2024). A comprehensive study of length-biased transmuted distribution