评估南非建筑业中小承包商的信贷可及性预测因素

IF 0.6 Q4 MANAGEMENT
O. Balogun, J. Agumba, N. Ansary
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引用次数: 2

摘要

中小型建筑企业(SME)在南非经济中的重要性已得到认可。然而,建筑业中小企业在从金融机构获得信贷方面面临困难。此外,过去的研究未能就预测南非建筑中小企业信贷可及性的人口和社会经济因素达成共识。本研究确定了南非金融机构对建筑业中小企业信贷可及性的预测人口和社会经济因素。采用定量研究方法,通过对250家建筑业中小企业的问卷调查收集数据。预测信贷可及性的人口统计和公司概况因素被建模并设定为自变量,建筑中小企业的信贷可及度作为因变量,而与从金融机构获得的金额无关。使用社会科学统计软件包(SPSS)第22版对数据进行分析。二元逻辑回归分析用于分析获得信贷的预测因素。在第一个模型中,结果显示,无论金额如何,获得的信贷以及那些根本没有获得信贷的人,当用所建议的概念化预测因子建模时,都没有显示出获得信贷的显著预测因子。然而,在第二个模型中,当概念化的预测因素用全额和部分信贷进行建模时,结果表明,年龄组、组织中的当前职位、税号和地点是获得全额信贷的良好预测因素。这项研究的结果不能在整个南非推广,因为这项研究只在豪登省进行。这项研究的价值告诉建筑业中小企业的所有者在申请信贷时提供他们的年龄和目前在该组织的职位。他们还应提供税号和企业所在地,以提高从金融机构获得全额信贷的机会。关键词:信贷可及性、信贷可及的决定因素、全额信贷、中小企业
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating credit accessibility predictors among small and medium contractors in the South African construction industry
The importance of small and medium construction enterprises (SMEs) in the South African economy has been recognised. However, construction SMEs are faced with difficulties in accessing credit from financial institutions. Furthermore, past research has failed to reach consensus on the demographic and socio-economic factors that predict credit accessibility for construction SMEs in South Africa. This study determines the predicting demographic and socio-economic factors for credit accessibility for construction SMEs from financial institutions in South Africa. A quantitative research approach was used and data was collected, using a questionnaire survey from 250 construction SMEs who were conveniently sampled. The demographic and company profile factors predicting credit accessibility were modelled and set as the independent variables with credit accessibility to the construction SMEs as the dependent variable, irrespective of the amount obtained from financial institutions. The data was analysed using the Statistical Package for the Social Sciences (SPSS) version 22. Binary logistic regression analysis was used to analyse the predictors of obtaining credit. In the first model, the results revealed that the credit accessed irrespective of the amount and those who did not receive credit at all, when modelled with the conceptualised predictors suggested, showed no significant predictors of obtaining credit. However, in the second model, when the conceptualised predictors were modelled with full and partial credit, the results established that age group, current position in the organisation, tax number and location were good predictors of obtaining full credit. The findings of this study cannot be generalised across South Africa, as the study was conducted only in the Gauteng province. The value of this study informs owners of SMEs in the construction industry to provide their age and current position in the organisation when applying for credit. They should also provide the tax number and the location of the business in order to improve their chances of obtaining full credit from financial institutions. Keywords : Credit accessibility, determinants of credit accessibility, full credit, small and medium enterprises
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来源期刊
Acta Structilia
Acta Structilia MANAGEMENT-
自引率
14.30%
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审稿时长
18 weeks
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