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Pranav Quasi Gamma Distribution: Properties and Applications
by
Shafi, Sumeera
, Hassan, Anwar
, Wani, Samee Ahmad
, Shafi, Shaista
in
Mathematical models
/ Maximum likelihood estimation
/ Parameters
/ Probability distribution functions
/ Research Article
/ Statistical analysis
2020
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Pranav Quasi Gamma Distribution: Properties and Applications
by
Shafi, Sumeera
, Hassan, Anwar
, Wani, Samee Ahmad
, Shafi, Shaista
in
Mathematical models
/ Maximum likelihood estimation
/ Parameters
/ Probability distribution functions
/ Research Article
/ Statistical analysis
2020
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Pranav Quasi Gamma Distribution: Properties and Applications
Journal Article
Pranav Quasi Gamma Distribution: Properties and Applications
2020
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Overview
We have developed Pranav Quasi Gamma Distribution (PQGD) as a mixture of Pranav distribution (
θ
) and Quasi Gamma distribution (2,
θ
). We obtained various necessary statistical characteristics of PQGD. The flexibility of proposed model is clear from graph of hazard function. The reliability measures of proposed model are also obtained. Sample estimates of unknown parameters are obtained by making use of maximum likelihood estimation method. We have also carried out the simulation study for comparing our model with its related models. We then tested the significance of mixing parameter. Finally, applications to real-life data sets is presented to examine the significance of newly introduced model.
Publisher
Springer Netherlands,Springer Nature B.V
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