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Career that Tend to be Unpaid for Motorcycles Sales Loans

机译:致力于未付摩托车销售贷款的职业生涯

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Country A is in Latin America and GDP is lower than average. Prices of Japanese products such as motorcycles are on an upward trend. It was influenced by instability of the world economy. The customer selects loan payment. Among them, some customers cannot pay for the specified payment period. If this situation deteriorates, it will be difficult to recover manufacturing costs. Therefore, we analyze the characteristics of customers who loan bankruptcy. There is a weak positive correlation (0.300) between average income for each province and sales volume. There is a negative correlation (-0.542) to the main income amount and those who go bankrupt. So it can be said that people living in poor countries cannot easily buy a motorbike. Even if they make loans to purchase, they cannot pay. I divided the state data into five. It turned out that there was economic disparity. The southern region is rich and the north region is a poor region. There are many customers who cannot repay the loan to the north region. In this country, 13% of 10 million young people have not enrolled in school and are not working. In order to see the relationship between academic background and other factors, we quantified the academic qualification. There is a negative correlation between academic records and the proportion of unpaid -0.673. Therefore, I can say that the lower the academic background, the more delayed repayment of the loan. I conducted a multiple regression analysis with the loan's unrepayable party as the dependent variable. The standard partial regression coefficients were -0.543 for educational record number and -0.327 for main income. And I learned that educational background is a factor that has a big influence on judging whether it will be unpaid than main income. We analyze logistic regression on the probability that that person will be Bad with these elements. We understood what condition customers are likely to be Bad. My goal is to be able to know the percentage of probabilities that your loan can not be repaid from your profile information.
机译:国家A在拉丁美洲,GDP低于平均水平。摩托车等日本产品的价格呈上升趋势。它受到世界经济不稳定的影响。客户选择贷款。其中,一些客户无法支付指定的付款期。如果这种情况恶化,则难以恢复制造成本。因此,我们分析了贷款破产的客户的特征。每个省和销量平均收入之间存在较弱的正相关(0.300)。主要收入金额和破产的人存在负相关(-0.542)。所以可以说,生活在贫穷国家的人不容易买到摩托车。即使他们贷款购买,他们也无法支付。我将国家数据划分为五个。事实证明,有经济差异。南部地区富裕,北部地区是一个贫穷的地区。有许多客户无法向北部地区偿还贷款。在这个国家,13%的人中有1000万只年轻人没有参加学校并且不工作。为了看到学术背景与其他因素之间的关系,我们量化了学术资格。学术记录与未付 - 0.673的比例之间存在负相关性。因此,我可以说学术背景下降,偿还贷款越延迟。我用贷款的未售方方进行了多元回归分析作为从属变量。标准部分回归系数为-0.543,适用于教育记录数,主要收入为-0.327。而且我了解到,教育背景是对判断它是否会被未缴纳的主要收入有很大影响的因素。我们分析了对这些元素的概率对这些元素对的概率的回归。我们了解客户可能糟糕的情况。我的目标是能够知道您的贷款无法从您的个人资料信息偿还的概率百分比。

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