2019
DOI: 10.3390/su11030699
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An Empirical Comparison of Machine-Learning Methods on Bank Client Credit Assessments

Abstract: Machine learning and artificial intelligence have achieved a human-level performance in many application domains, including image classification, speech recognition and machine translation. However, in the financial domain expert-based credit risk models have still been dominating. Establishing meaningful benchmark and comparisons on machine-learning approaches and human expert-based models is a prerequisite in further introducing novel methods. Therefore, our main goal in this study is to establish a new benc… Show more

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Cited by 144 publications
(107 citation statements)
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“…More researchers agree with the triple bottom line theory of "economy, environment and society", namely sustainable development theory. Also, with the advent of the era of big data, digital finance [29], big data finance [6], supply chain finance [30] and other financial topics [31] have attracted researchers' attention. The emergence of relevant literature indicates that people's interest in this research field is increasing.…”
Section: Conclusion and Discussionmentioning
confidence: 99%
“…More researchers agree with the triple bottom line theory of "economy, environment and society", namely sustainable development theory. Also, with the advent of the era of big data, digital finance [29], big data finance [6], supply chain finance [30] and other financial topics [31] have attracted researchers' attention. The emergence of relevant literature indicates that people's interest in this research field is increasing.…”
Section: Conclusion and Discussionmentioning
confidence: 99%
“…All reported p-values are two-sided, and significance was set as a p-value of < 0.05. Logistic regression (LR) can be used to discover a linear relationship between independent variables X and a binary dependent variable Y [27,28]. LR transforms log-odds to probability using the logistic function.…”
Section: Analysis Methodsmentioning
confidence: 99%
“…We used a grid search algorithm to find optimal hyperparameters including a number of layers, hidden nodes, learning rate, batch size, and epoch number. Therefore, we applied Adam's [35] optimization algorithm, which is considered one of the best results and is faster than others [28,36]. To avoid overfitting, we used a dropout regularization technique that can avoid learning spurious features at hidden nodes.…”
Section: Analysis Methodsmentioning
confidence: 99%
“…Perhaps the most popular reason to explain algorithms is their large and growing social impact. ML has been used to help evaluate loan applications (Munkhdalai et al 2019) and student admissions (Waters and Miikkulainen 2014), predict criminal recidivism (Dressel and Farid 2018), and identify military targets (Nasrabadi 2014), to name just a few controversial examples. Failure to properly screen training datasets for biased inputs threatens to automate injustices already present in society (Mittelstadt et al 2016).…”
Section: Justice As (Algorithmic) Fairnessmentioning
confidence: 99%