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Credit scoring model: A combination of genetic programming and deep learning

机译:信用评分模型:遗传程序设计和深度学习的结合

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摘要

In recent years, the market of customer lending grows rapidly, that is a reason why credit scoring becomes a core task of financial institutes. Many models based on machine learning have been widely using and providing robust performance. Because most machine learning based models are black-box, it is hard to see the relations between input data and scoring results. Therefore, this paper focuses on improving both the accuracy and the reliability of machine learning based model. Thus, we propose a hybrid idea to combine the power of deep learning network and the comprehensive genetic programming which is extracted rules to build a robust credit model. Our empirical experiment on Australian/German customer credit data sets shows that our model provides the best accuracy, highly reduce credit risk, and reliable IF-THEN rules.
机译:近年来,客户贷款市场迅速增长,这就是为什么信用评分成为金融机构的核心任务的原因。许多基于机器学习的模型已被广泛使用并提供强大的性能。因为大多数基于机器学习的模型都是黑盒,所以很难看到输入数据和评分结果之间的关系。因此,本文着重于提高基于机器学习的模型的准确性和可靠性。因此,我们提出了一种混合思想,将深度学习网络的功能与全面的遗传规划相结合,并从中提取规则以构建健壮的信用模型。我们对澳大利亚/德国客户信用数据集的经验实验表明,我们的模型提供了最佳的准确性,大大降低了信用风险以及可靠的IF-THEN规则。

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