A new family of distributions using a trigonometric function: Properties and applications in the healthcare sector
Heliyon, 2024•cell.com
Probability distributions play a pivotal and significant role in modeling real-life data in every
field. For this activity, a series of probability distributions have been introduced and
exercised in applied sectors. This paper also contributes a new method for modeling
continuous data sets. The proposed family is called the exponent power sine-G family of
distributions. Based on the exponent power sine-G method, a new model, namely, the
exponent power sine-Weibull model is studied. Several mathematical properties such as …
field. For this activity, a series of probability distributions have been introduced and
exercised in applied sectors. This paper also contributes a new method for modeling
continuous data sets. The proposed family is called the exponent power sine-G family of
distributions. Based on the exponent power sine-G method, a new model, namely, the
exponent power sine-Weibull model is studied. Several mathematical properties such as …
Abstract
Probability distributions play a pivotal and significant role in modeling real-life data in every field. For this activity, a series of probability distributions have been introduced and exercised in applied sectors. This paper also contributes a new method for modeling continuous data sets. The proposed family is called the exponent power sine-G family of distributions. Based on the exponent power sine-G method, a new model, namely, the exponent power sine-Weibull model is studied. Several mathematical properties such as quantile function, identifiability property, and moment are derived. For the exponent power sine-G method, the maximum likelihood estimators are obtained. Simulation studies are also presented. Finally, the optimality of the exponent power sine-Weibull model is shown by taking two applications from the healthcare sector. Based on seven evaluating criteria, it is demonstrated that the proposed model is the best competing distribution for analyzing healthcare phenomena.
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