Determinants of Bank and Non-bank Household Loans and Short- and Long- Horizon Forecast

Chang Lee, K. Kang, Junghwan Mok
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Abstract

The instability of the financial system is likely to occur when particular types of loans surge rather than all types of loans surge at the same time. A preemptive policy response requires a monitoring system based on forecasts by different loan types. The purpose of this study is to forecast household loans bycategorizingintofourtypes:bankmortgageloan,bankcreditloan,non-bank mortgage loan, and non-bank credit loan. Given the fact that there are numerous determinants and forecasting models for household loans, and that the determinants differ depending on the type of household loans, this study sets out the density forecasting algorithm based on Bayesian Machine Learning. which consists of a variable learning process, a model learning process, and a forecasting combination process. We find bank mortgage loans are largely predicted by the loan rates, the volume of apartments to be moved in, and the number of apartment units to be sold. while the key determinants of bank credit loans are the employmentrateandJeon-sepriceindex.Ontheotherhand,thenon-bankmortgage loans are largely determined by the loan rates and the ratio of apartment sales prices relative to Jeon-se prices. The non-bank credit loans are also influencedbynotonlytheemploymentrateandtheJeon-sepriceindexbutalsostock returns.
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银行和非银行家庭贷款的决定因素及短期和长期预测
当特定类型的贷款激增而不是所有类型的贷款同时激增时,金融体系可能会出现不稳定。先发制人的政策反应需要一个基于不同贷款类型预测的监测系统。本研究的目的是预测家庭贷款分为四种类型:银行抵押贷款,银行信用贷款,非银行抵押贷款和非银行信用贷款。鉴于家庭贷款有许多决定因素和预测模型,并且决定因素因家庭贷款类型而异,本研究提出了基于贝叶斯机器学习的密度预测算法。它由变量学习过程、模型学习过程和预测组合过程组成。我们发现,银行抵押贷款在很大程度上是由贷款利率、待售公寓数量和待售公寓数量来预测的。而银行信贷的关键决定因素是就业指数和物价指数。而非银行担保贷款则主要取决于贷款利率和公寓销售价格与全世房价的比率。非银行信贷贷款也不仅受到就业和全股指的影响,还受到股票回报的影响。
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来源期刊
Journal of Economic Theory and Econometrics
Journal of Economic Theory and Econometrics Economics, Econometrics and Finance-Economics and Econometrics
CiteScore
0.40
自引率
0.00%
发文量
9
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