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Muneer I. hameed muneer.i.hameed35428@st.tu.edu.iq
Mundher Abdullah Khaleel mun880088@tu.edu.iq


Abstract

We introduce a new extension distribution for Burr type X with two parameters. We called it [0,1] Truncated Invers Weibull Burr Type X Distribution. The new distribution has been expanded to become a four-parameter distribution. Several important properties of the new extension distribution are derived like the quantile function and moment. The maximum likelihood estimation is used to estimate the parameters involved. The distribution was applied to real data, which is the failure times of (50) vehicles in a time of (1000) hours. It gives a better fit compared to several other distributions. The parameters that were estimated were evaluated using simulation.

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How to Cite
hameed, M. I. ., & Khaleel, M. A. . (2022). Evaluation of the parameters of the proposed tenth truncated Weibull Burr inverse distribution using simulation (with practical application). Tikrit Journal of Administrative and Economic Sciences, 18(59, 2), 520–534. https://doi.org/10.25130/tjaes.18.59.2.31
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