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首页> 外文期刊>American Journal of Applied Mathematics and Statistics >Forecasting Household Credit in Kenya Using Bayesian Vector Autoregressive (BVAR) Model
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Forecasting Household Credit in Kenya Using Bayesian Vector Autoregressive (BVAR) Model

机译:使用贝叶斯向量自回归(BVAR)模型预测肯尼亚的家庭信用

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This research paper use Bayesian VAR framework to forecast the household credit in the dynamic market of foreign remittances inflow to Kenya. The Bayesian VARs model in this study employs the sims-Zha prior to estimate. Bayesian vector autoregressive (BVAR) uses Bayesian methods to estimate a vector autoregressive (VAR). In that respect, the difference with standard VAR models lies in the fact that the model parameters are treated as random variables, and prior probabilities are assigned to them. This study employed data from the Kenyan Market for the period January 2005-December 2017. The forecast results were compared with the standard ARIMA model and the findings confirm that the BVAR approach outperforms the ARIMA model. Financial institutions can therefore use Bayesian VAR and other Bayesian models in predicting credit uptake given several micro-economic conditions. Banks should also find ways of tapping into these remittances especially those that pass through informal channels to improve their earnings from processing fees and also enhance the financial inclusion agenda through increasing account opening and loan uptake.
机译:本研究使用贝叶斯VAR框架来预测流入肯尼亚的外国汇款动态市场中的家庭信贷。本研究中的贝叶斯VAR模型在估计之前采用了Sims-Zha。贝叶斯向量自回归(BVAR)使用贝叶斯方法来估计向量自回归(VAR)。在这方面,与标准VAR模型的区别在于,将模型参数视为随机变量,并为它们分配了先验概率。本研究采用了肯尼亚市场2005年1月至2017年12月的数据。将预测结果与标准ARIMA模型进行了比较,研究结果证实BVAR方法优于ARIMA模型。因此,在多种微观经济条件下,金融机构可以使用贝叶斯VAR和其他贝叶斯模型来预测信贷吸收。银行还应找到利用这些汇款的方法,特别是通过非正式渠道进行的汇款,以提高其来自手续费的收入,并通过增加开户和增加贷款来增强金融普惠议程。

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