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A Cross‐Sectional Study on the Occurrence of Maternal Mortality in Some Selected Hospitals in Kumasi Metropolis Using Zero‐Inflated Negative Binomial

Background: Maternal mortality is one of the most devastating and emotionally distressing occurrences that can be experienced by a family or society. The objective of the study was to investigate the risk factors associated with maternal mortality across the various sub‐metros using zero‐inflated models.Methods: The study used secondary data obtained from eight health facilities within Kumasi metropolis from 2018 to 2022. The zero‐inflated negative binomial (ZINB) is useful when dealing with count outcomes that show greater variability than would be expected in a standard Poisson distribution, a phenomenon known as overdispersion.Results: The maternal mortality rates (MMRs) for 2018 to 2022 were 427.53, 385.68, 284.21, 323.74, and 440.78 per 100,000 live births, respectively, in the Kumasi metropolis. The study found unsafe abortion, sepsis, tuberculosis, hemorrhage, and hypertension to be significantly associated with maternal mortality.Conclusion: We recommend a continuous health education campaign to encourage pregnant women to seek prompt medication when they suspect sepsis, hypertension, tuberculosis, and hemorrhage. Also, awareness about the risk associated with unsafe abortions should be promoted.

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New Modified Gompertz Probability Distribution With Flexible Hazard Functions

This paper introduces a new probability model called the modified Gompertz distribution from the base Gompertz distribution by combining its hazard function with first and second degree polynomial (linear and quadratic) functions. The new probability model is found to have more flexible hazard shapes with strictly increasing, strictly decreasing, and bumping behaviors. Properties of the new probability model are derived and discussed. Simulation studies and data fitting are conducted. The modified Gompertz distribution is found to fit better to four datasets as compared to the base Gompertz distribution and also six other models which are Topp‐Leone Gompertz, Generalized Gompertz, Exponentiated Gompertz Exponential, Power Gompertz, Gompertz Ampadu Lomax, and Exponential Generalized Extended Gompertz probability distributions. The modified Gompertz distribution is a contribution to the field of statistical theory, having very interesting shapes of hazard function can have applications to survival, waiting time, and reliability data analyses. Any statistical inference from simulation study and data fitting to real‐world data can possibly lead to new knowledge in applied probability, statistics, and application field such as life science, health, and engineering. Generalization to higher order polynomial functions is recommended for future research. Applications of the models to data from various fields can be studied.

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Extended Rayleigh Probability Distribution to Higher Dimensions

In this paper, we have derived and studied new probability distributions by extending the 2‐dimensional Rayleigh distribution (RD). First, we extend the RD to 3 dimensions and then generalize it to k dimensions for any positive integer k ≥ 3. The distributions are named the 3‐dimensional Rayleigh distribution (3‐DRD) and k‐dimensional Rayleigh distribution (k‐DRD), respectively. For both 3‐DRD and k‐DRD, detailed mathematical and statistical properties including derivations of the corresponding cumulative distribution, probability density, survival, and hazard functions, moments, moment generating functions, mode, skewness, kurtosis, and differential entropy are obtained in closed forms. Parameter estimation is done for both models using the maximum likelihood estimation method and some statistical properties of the estimator are discussed for each case. Interestingly, the commonly known Normal, Rayleigh, Maxwell–Boltzmann, chi‐square, gamma, and Erlang distributions are related to the newly developed extended RDs as special cases. For the 3‐DRD, plots of cumulative distribution, probability density, survival, and hazard functions are exhibited, a simulation study is carried out, and random samples are generated using the standard accept–reject (AR) algorithm to check the efficiency of the maximum likelihood estimates of the parameter. Moreover, the new 3‐DRD model is fitted to one simulated and three real datasets, revealing good performance compared to four existing Rayleigh‐based distributions. This study will contribute new knowledge to the field of applied statistics and probability, and the findings will be used as a basis for future research in the field.

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Flexible Lévy-Based Models for Time Series of Count Data with Zero-Inflation, Overdispersion, and Heavy Tails

The explosion of time series count data with diverse characteristics and features in recent years has led to a proliferation of new analysis models and methods. Significant efforts have been devoted to achieving flexibility capable of handling complex dependence structures, capturing multiple distributional characteristics simultaneously, and addressing nonstationary patterns such as trends, seasonality, or change points. However, it remains a challenge when considering them in the context of long-range dependence. The Lévy-based modeling framework offers a promising tool to meet the requirements of modern data analysis. It enables the modeling of both short-range and long-range serial correlation structures by selecting the kernel set accordingly and accommodates various marginal distributions within the class of infinitely divisible laws. We propose an extension of the basic stationary framework to capture additional marginal properties, such as heavy-tailedness, in both short-term and long-term dependencies, as well as overdispersion and zero inflation in simultaneous modeling. Statistical inference is based on composite pairwise likelihood. The model’s flexibility is illustrated through applications to rainfall data in Guinea from 2008 to 2023, and the number of NSF funding awarded to academic institutions. The proposed model demonstrates remarkable flexibility and versatility, capable of simultaneously capturing overdispersion, zero inflation, and heavy-tailedness in count time series data.

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