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A Comparison of Count Regression Models on Modeling of Instructors Publication Factors: Application of Ethiopian Public Universities

机译:教师发布因素建模中的计数回归模型比较:埃塞俄比亚公立大学的应用

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Instructors' publication (IP) is one of a major activity in higher education institutes. Currently, IP faced problem both high prevalence and severity in Ethiopian public universities. Publication was affected approximately around 352 (73.9%) instructors have not done publication in Ethiopian public universities even if there is a problem in both developing and developed countries. Since, the outcomes from IP factors are mostly discrete variable; they are often modeled using advanced count regression models. It is therefore, the purpose of this study was to determine the appropriate count regression model that efficiently fit the IP data and further to identify the key risk factors contributing significantly to IP in public universities in Ethiopian. The data were collected between November 2015 through November 2016 from selected thirteen (13) public universities in Ethiopian through both questionnaires and interview. A cross sectional study design was employed using IP data. A simple random sampling technique was applied to the population of Ethiopian public universities to obtain a sample of 13 universities or 476 individual instructors were selected. The average age of the 476 participants were found to be 30 years with 31 (6.5%) being females and 445 (93.5%) being males. The count outcomes obtained were modeled using count regression models which included Poisson, Negative Binomial, Zero-Inflated Negative Binomial (ZINB), Zero-Inflated Poisson (ZIP) and Poisson Hurdle regression models. In order to compare the performance and the efficiency of the listed count regression models with respect to the IP data, the various model selection methods such as the Vuong Statistic (V) and Akaikes Information Criterion (AIC) were used. The ZINB count regression model with reference to the values of the Vuong Statistic and AIC were selected as the most appropriate and efficient count regression model for modeling IP data. Based on the ZINB model the variables age, experience, average work-load, association member and motivation to work were statistically significant risk factors contributing to IP in Ethiopian public universities.
机译:教师出版物(IP)是高等教育机构的一项主要活动。当前,在埃塞俄比亚的公立大学中,知识产权面临着很高的普及率和严重性。出版受到影响,即使在发展中国家和发达国家都存在问题,大约有352名(73.9%)的讲师尚未在埃塞俄比亚的公立大学完成出版。由于知识产权因素的结果大多是离散变量;它们通常使用高级计数回归模型进行建模。因此,本研究的目的是确定合适的计数回归模型,以有效地拟合IP数据,并进一步确定在埃塞俄比亚的公立大学中对IP产生重大影响的关键风险因素。这些数据是在2015年11月至2016年11月之间通过问卷调查和访谈从埃塞俄比亚选定的十三(13)所公立大学收集的。使用IP数据进行横断面研究设计。一种简单的随机抽样技术被应用于埃塞俄比亚的公立大学,获得了13所大学的样本,或选择了476名个人教员。研究发现476名参与者的平均年龄为30岁,其中女性为31岁(6.5%),男性为445位(93.5%)。使用计数回归模型对获得的计数结果进行建模,包括Poisson,负二项式,零膨胀负二项式(ZINB),零膨胀Poisson(ZIP)和Poisson Hurdle回归模型。为了比较所列计数回归模型相对于IP数据的性能和效率,使用了各种模型选择方法,例如Vuong统计(V)和Akaikes信息标准(AIC)。参考Vuong Statistic和AIC的值的ZINB计数回归模型被选为最合适,最有效的IP数据建模模型。基于ZINB模型,年龄,经验,平均工作量,协会成员和工作动机等变量是埃塞俄比亚公立大学中影响IP的统计学显着风险因素。

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