{"id":1245,"date":"2021-07-27T16:58:06","date_gmt":"2021-07-27T16:58:06","guid":{"rendered":"https:\/\/nilg.ai\/?p=1245"},"modified":"2022-09-16T09:26:09","modified_gmt":"2022-09-16T09:26:09","slug":"insights-in-ai-applied-to-credit-scoring","status":"publish","type":"post","link":"https:\/\/nilg.ai\/pt\/202107\/insights-in-ai-applied-to-credit-scoring\/","title":{"rendered":"Insights in AI applied to Credit Scoring"},"content":{"rendered":"<p><img decoding=\"async\" class=\"aligncenter size-large wp-image-1246\" src=\"https:\/\/nilg.ai\/wp-content\/uploads\/2022\/06\/pexels-cottonbro-3944405-1024x683.jpg\" alt=\"\" width=\"1024\" height=\"683\" \/><\/p>\n<p>Having access to liquidity has been a major issue for humankind for financing both personal life aspects (e.g., housing, cars, college) and for business initiatives (e.g., starting, growing, and expanding a business). The amount of uncertainty that both faces of this exchange &#8211; i.e., the creditor and the prospective debtor &#8211; face are paramount. On the one hand, the creditor tries to fill in all blanks about the prospect&#8217;s capacity to pay the loan requesting additional information, information that in some cases is difficult to obtain by the debtor, resulting in lost opportunities for both sides. On the other hand, the prospect faces a black box interaction, with an approval process that happens behind doors and whose criteria aren\u2019t clear, so the prospective debtor cannot work on adjusting her score.<\/p>\n<p>Artificial Intelligence has played a major role in solving the first side of the equation -the creditor side-, bringing an objective and reproducible credit score estimation of the prospective debtor, at the expense of bringing further opacity to the process for the prospective debtor. In this blog post, we will go through the current paradigm and how we could tackle it differently to perform a more comprehensive approach, identifying current limitations as well as potential solutions from an AI point of view. The ideas described in this article can be applied to both financial entities and subscription-based business models that face default as a source of involuntary churn.<\/p>\n<p><a href=\"https:\/\/nilg.ai\/wp-content\/uploads\/2021\/07\/Credit-Scoring-AI.svg\"><img decoding=\"async\" class=\"aligncenter size-full wp-image-1249 attachment-svg\" src=\"https:\/\/nilg.ai\/wp-content\/uploads\/2021\/07\/Credit-Scoring-AI.svg\" alt=\"\" \/><\/a><\/p>\n<p><span style=\"font-weight: 400;\">Traditional credit scoring uses blackbox methods -either a human that is out of reach from the end-client or a statistical model- which weights various factors including demographic factors, payment history and other financial indicators. This traditional approach will deny credit to consumers without considering the possibility to adjust their current situation or other extenuating factors. In this sense, it\u2019s modeled as the likelihood at the time of approval of a prospective debtor to pay in full or default. We observe two main limitations:<\/span><\/p>\n<ol>\n<li style=\"font-weight: 400;\"><b>One-side interaction:<\/b><span style=\"font-weight: 400;\"> the interaction tends to be one-sided with small room for negotiation. Debtors and creditors should be able to update their terms &amp; conditions to maximize the chance of a mutually beneficial interaction. A hard rejection will move the client to a different institution, being a fully-wasted opportunity for the creditor that could be -in some cases- easily transformed into an approval to a different kind of deal.<\/span><\/li>\n<li style=\"font-weight: 400;\"><b>One-shot decision:<\/b><span style=\"font-weight: 400;\"> assuming the decision and conditions are a one-shot process. We should consider credit scoring strategies that continuously re-assess the default probability and adjust new conditions accordingly.<\/span><\/li>\n<\/ol>\n<p><span style=\"font-weight: 400;\">So, our view on Artificial Intelligence applied to credit scoring is a dynamic interaction, where the model suggests and re-assesses conditions to maximize the mutual benefits on a continuous basis.<\/span><\/p>\n<h1><a href=\"https:\/\/nilg.ai\/wp-content\/uploads\/2021\/07\/Credit-Scoring-AI-Our-view.svg\"><img decoding=\"async\" class=\"aligncenter size-full wp-image-1250 attachment-svg\" src=\"https:\/\/nilg.ai\/wp-content\/uploads\/2021\/07\/Credit-Scoring-AI-Our-view.svg\" alt=\"\" \/><\/a><\/h1>\n<h2><span style=\"font-weight: 400;\">Modeling and data<\/span><\/h2>\n<p><span style=\"font-weight: 400;\">So, we can formalize a credit scoring model as a function that, given the prospective debtor, the creditor conditions and the request loan characteristics predicts a valuable KPI for decision making such as the default probability, the expected ROI, etc.<\/span><\/p>\n<p style=\"text-align: center;\"><img decoding=\"async\" src=\"https:\/\/nilg.ai\/wp-content\/ql-cache\/quicklatex.com-d8b1a08b2b02094a6cd7a184589efe30_l3.png\" class=\"ql-img-inline-formula quicklatex-auto-format\" alt=\" &#102;&#32;&#58;&#58;&#32;&#100;&#101;&#98;&#116;&#111;&#114;&#44;&#32;&#92;&#58;&#32;&#99;&#114;&#101;&#100;&#105;&#116;&#111;&#114;&#44;&#32;&#92;&#58;&#32;&#108;&#111;&#97;&#110;&#32;&#92;&#58;&#32;&#99;&#111;&#110;&#100;&#105;&#116;&#105;&#111;&#110;&#115;&#32;&#92;&#114;&#105;&#103;&#104;&#116;&#97;&#114;&#114;&#111;&#119;&#32;&#75;&#80;&#73; \" title=\"Rendered by QuickLaTeX.com\" height=\"16\" width=\"351\" style=\"vertical-align: -4px;\"\/><\/p>\n<p><span style=\"font-weight: 400;\">Just for illustrative purposes, such information may comprise:<\/span><\/p>\n<ul>\n<li><b>Debtor:<\/b><\/li>\n<li style=\"list-style-type: none;\">\n<ul>\n<li style=\"font-weight: 400;\"><span style=\"font-weight: 400;\">Demographic: age, profession, education, etc.<\/span><\/li>\n<li style=\"font-weight: 400;\"><span style=\"font-weight: 400;\">Financial records: income and spending, debts, mortgages, etc.<\/span><\/li>\n<\/ul>\n<\/li>\n<li style=\"font-weight: 400;\"><b>Creditor:<\/b><span style=\"font-weight: 400;\"> portfolio, cash flow, market indicators, etc.<\/span><\/li>\n<li style=\"font-weight: 400;\"><b>Loan conditions:<\/b><span style=\"font-weight: 400;\"> the amount of money loaned, spread, annual percentage rate, timeline, guarantors, consequences in case of contract breach, etc.<\/span><\/li>\n<\/ul>\n<p><span style=\"font-weight: 400;\">We can use any model to encode the aforementioned function (e.g., scorecards, decision trees, neural networks).<\/span><\/p>\n<p><span style=\"font-weight: 400;\">As mentioned in the previous section, our view on credit scoring considers not just the end decision (i.e., approval vs. rejection) but the adjustment of the loan conditions to ensure a mutually beneficial outcome. So, an AI model should use the aforementioned function to discover the conditions that maximize your KPI<\/span><\/p>\n<p style=\"text-align: center;\"><img decoding=\"async\" src=\"https:\/\/nilg.ai\/wp-content\/ql-cache\/quicklatex.com-24187a80ce4df8348b070d423caa1b8b_l3.png\" class=\"ql-img-inline-formula quicklatex-auto-format\" alt=\" &#108;&#111;&#97;&#110;&#32;&#92;&#58;&#32;&#99;&#111;&#110;&#100;&#105;&#116;&#105;&#111;&#110;&#115;&#32;&#92;&#105;&#110;&#32;&#92;&#44;&#32;&#97;&#114;&#103;&#109;&#97;&#120;&#32;&#92;&#58;&#32;&#102;&#40;&#100;&#101;&#98;&#116;&#111;&#114;&#44;&#32;&#92;&#58;&#32;&#99;&#114;&#101;&#100;&#105;&#116;&#111;&#114;&#44;&#32;&#92;&#58;&#32;&#108;&#111;&#97;&#110;&#32;&#92;&#58;&#32;&#99;&#111;&#110;&#100;&#105;&#116;&#105;&#111;&#110;&#115;&#41; \" title=\"Rendered by QuickLaTeX.com\" height=\"19\" width=\"489\" style=\"vertical-align: -5px;\"\/><\/p>\n<p><span style=\"font-weight: 400;\">So, we can transform a rejection to an initial submission into approval of an alternative. Please note that while we are simplifying the search for the loan condition adjustment, the model could as well suggest changes to the debtor information. For instance, it could suggest that the easier way of approving the credit is to increase the debtor&#8217;s salary by a certain amount, or by reduce his monthly expenses. We prioritize changes on load conditions because they can be applied instantly while looking for approval through the client\u2019s adjustment tend to require longer feedback loops.<\/span><\/p>\n<p><span style=\"font-weight: 400;\">However, regardless of our KPI or modeling strategy, we need to be careful about corner cases such as predicting that by lowering the interest rate to zero the chance of a client paying will maximize, leading to a zero profit for the creditor. Similarly, increasing the interest to infinity to maximize profit, but in practice, leads to prospects turning down the loan or getting into bankruptcy. If you\u2019re facing this issue, take a look at causal modeling and monotonic models or simply embed some domain-driven constraints in the decision process.<\/span><\/p>\n<div class=\"course-cta\">\n\t\t<div class=\"course-cta-img\"><img decoding=\"async\" width=\"582\" height=\"903\" src=\"https:\/\/nilg.ai\/wp-content\/uploads\/2022\/08\/4-194x301@3x.png\" class=\"attachment-full size-full\" alt=\"\" srcset=\"https:\/\/nilg.ai\/wp-content\/uploads\/2022\/08\/4-194x301@3x.png 582w, https:\/\/nilg.ai\/wp-content\/uploads\/2022\/08\/4-194x301@3x-193x300.png 193w, https:\/\/nilg.ai\/wp-content\/uploads\/2022\/08\/4-194x301@3x-300x465.png 300w\" sizes=\"(max-width: 582px) 100vw, 582px\" \/><\/div>\n\t\t<div class=\"course-cta-content\"><h6>Course, Templates<\/h6><h3>Data Ignite<\/h3>\n\t\t\t<p>Create bulletproof AI solutions following our methodology.<\/p>\n\t\t\t<a href=\"https:\/\/nilg.ai\/pt\/product\/data-ignite\/\" class=\"cta_btn\">Saber mais<\/a>\n\t\t<\/div>\n\t<\/div>\n<h2><span style=\"font-weight: 400;\">Making credit approval transparent and fair<\/span><\/h2>\n<p><span style=\"font-weight: 400;\">When dealing with credits, the ability to explain why a certain loan was not conceived, as well as the conditions that were not met, plays a central role. It is not only relevant for those in the receiving end, but also for those who could profit from the deal, if it had happened.<\/span><\/p>\n<p><span style=\"font-weight: 400;\">When one models the problem by changing the conditions and context of a client one can infer counterfactual explanations and come up with a hypothesis on how the client could be accepted, and what needs to be changed versus the reality.<\/span><\/p>\n<p><span style=\"font-weight: 400;\">Various models have been developed to conceptualize reasons and explanations on the decisions made, an interesting example of this is the model made by <\/span><a href=\"https:\/\/scholar.google.com\/citations?user=mezKJyoAAAAJ&amp;hl=en\"><span style=\"font-weight: 400;\">Cynthia Rudin<\/span><\/a><span style=\"font-weight: 400;\">\u2019s team for the FICO Data Challenge. The strategy groups features by subscales and attributes to each of these subscales a miniature model (with a softmax). These miniature models are non-linear and thus, by doing so, one can build a tree-like model with machine learning under the hood. A demo of their work can be seen <\/span><a href=\"http:\/\/dukedatasciencefico.cs.duke.edu\/\"><span style=\"font-weight: 400;\">here<\/span><\/a><span style=\"font-weight: 400;\">.<\/span><\/p>\n<p><img decoding=\"async\" class=\"aligncenter size-full wp-image-1523\" src=\"https:\/\/nilg.ai\/wp-content\/uploads\/2021\/07\/xficoai_schema.png\" alt=\"\" width=\"804\" height=\"242\" srcset=\"https:\/\/nilg.ai\/wp-content\/uploads\/2021\/07\/xficoai_schema.png 804w, https:\/\/nilg.ai\/wp-content\/uploads\/2021\/07\/xficoai_schema-300x90.png 300w, https:\/\/nilg.ai\/wp-content\/uploads\/2021\/07\/xficoai_schema-768x231.png 768w, https:\/\/nilg.ai\/wp-content\/uploads\/2021\/07\/xficoai_schema-600x181.png 600w\" sizes=\"(max-width: 804px) 100vw, 804px\" \/><\/p>\n<p><span style=\"font-weight: 400;\">From the picture above we can see that the delinquency is a subscale that can be given by those four features and that is contributing to the risk factor (warmer colors represent a higher risk). I would recommend the reader to read Cynthia\u2019s newest article on black box models: \u201c<\/span><a href=\"https:\/\/scholar.google.com\/citations?view_op=view_citation&amp;hl=en&amp;user=mezKJyoAAAAJ&amp;citation_for_view=mezKJyoAAAAJ:WgvcDLhf7hwC\"><span style=\"font-weight: 400;\">Stop explaining black box machine learning models for high stakes decisions and use interpretable models instead<\/span><\/a><span style=\"font-weight: 400;\">\u201d<\/span><\/p>\n<p><span style=\"font-weight: 400;\">Despite all advantages that machine learning models carry, they are also associated with biases. It may be the data you&#8217;re using is already biased, the historical decisions made by humans are biased, or the sampling chosen is not representative, or you may be using the wrong algorithm or KPI for the specific problem. The fact is that there will always be some type of bias, and in credit scoring, we have to guarantee that our models are not tending to a specific race, or gender, for example. Note that biased decisions aren&#8217;t only prejudicial for the end customer but also for the financial institution. Having models that rely on spurious correlations will eventually lead to catastrophic failure.<\/span><\/p>\n<p><span style=\"font-weight: 400;\">Tools like <\/span><a href=\"https:\/\/arxiv.org\/abs\/1811.05577\"><span style=\"font-weight: 400;\">Aequitas<\/span><\/a><span style=\"font-weight: 400;\">, <\/span><a href=\"https:\/\/aif360.mybluemix.net\/\"><span style=\"font-weight: 400;\">AI Fairness 360<\/span><\/a><span style=\"font-weight: 400;\">, and\u00a0 <\/span><a href=\"https:\/\/pair-code.github.io\/what-if-tool\/\"><span style=\"font-weight: 400;\">What-If<\/span><\/a><span style=\"font-weight: 400;\"> are open-source toolkits that data scientists can use to check for bias ad discrimination in machine learning models. These tools allow for informed and equitable decisions around developing and deploying predictive tools. More on these tools <\/span><a href=\"https:\/\/towardsdatascience.com\/5-tools-to-detect-and-eliminate-bias-in-your-machine-learning-models-fb6c7b28b4f1\"><span style=\"font-weight: 400;\">here<\/span><\/a><span style=\"font-weight: 400;\">.<\/span><\/p>\n<p>If you want to learn more about Fairness in AI, check our previous <a href=\"https:\/\/nilg.ai\/pt\/blog\/202008\/fairness-in-ai\/\">post<\/a>.<\/p>\n<h2><span style=\"font-weight: 400;\">Conclusion<\/span><\/h2>\n<p><span style=\"font-weight: 400;\">A change in the actual paradigm of credit attribution could benefit both parties. More deals could be made, and, more importantly, more deals can be completely fulfilled as time goes by. We live in a fast-paced world, surrounded by continuous changes and new opportunities, why would we oversimplify and assume static solutions to dynamic environments?<\/span><\/p>\n  \n\n <div class=\"author-cta\">\n\t\t<div class=\"author-cta-img\">\n\t\t    \n\t\t    <img decoding=\"async\" width=\"1024\" height=\"906\" src=\"https:\/\/nilg.ai\/wp-content\/uploads\/2022\/08\/Web-Kelwin.png\" class=\"attachment-full size-full\" alt=\"Kelwin Fernandes NILG.AI\" srcset=\"https:\/\/nilg.ai\/wp-content\/uploads\/2022\/08\/Web-Kelwin.png 1024w, https:\/\/nilg.ai\/wp-content\/uploads\/2022\/08\/Web-Kelwin-300x265.png 300w, https:\/\/nilg.ai\/wp-content\/uploads\/2022\/08\/Web-Kelwin-768x680.png 768w, https:\/\/nilg.ai\/wp-content\/uploads\/2022\/08\/Web-Kelwin-600x531.png 600w\" sizes=\"(max-width: 1024px) 100vw, 1024px\" \/>\t\t    <\/div>\n\n<div class=\"author-cta-content\">\n\t<h3>Do you want to further discuss this idea?<\/h3><p>Book a meeting with <strong>Kelwin Fernandes<\/strong><\/p>\t<a class=\"cta_btn\" onclick=\"Calendly.showPopupWidget('https:\/\/calendly.com\/d\/d4z-sb4-dg7');return false;\"  \n\">Meet Kelwin<\/a>\n\t\t\t\n\t<a href=\"https:\/\/nilg.ai\/pt\/team\/kelwin-fernandes\/\" class=\"author-cta-link\">Saber mais<\/a>\n\t\t\t<\/div>\n\t<\/div>\n\n<p><span style=\"font-weight: 400;\">If you would like to work on credit scoring solutions, or further discuss what was exposed here, feel free to <\/span><a href=\"https:\/\/nilg.ai\/pt\/contact-us\/\"><span style=\"font-weight: 400;\">contact us<\/span><\/a><span style=\"font-weight: 400;\">!<\/span><\/p>","protected":false},"excerpt":{"rendered":"<p>Having access to liquidity has been a major issue for humankind for financing both personal life aspects (e.g., housing, cars, college) and for business initiatives (e.g., starting, growing, and expanding a business). The amount of uncertainty that both faces of this exchange &#8211; i.e., the creditor and the prospective debtor &#8211; face are paramount. On [&hellip;]<\/p>\n","protected":false},"author":45,"featured_media":1246,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":{"footnotes":""},"categories":[84],"tags":[44,95,45],"class_list":["post-1245","post","type-post","status-publish","format-standard","has-post-thumbnail","hentry","category-use-case","tag-ai4business","tag-financial-services","tag-machine-learning"],"acf":[],"yoast_head":"<!-- This site is optimized with the Yoast SEO plugin v20.8 - https:\/\/yoast.com\/wordpress\/plugins\/seo\/ -->\n<title>Insights in AI applied to Credit Scoring - NILG.AI<\/title>\n<meta name=\"description\" content=\"Our vision on credit scoring models for financial services using Artificial Intelligence: a continuous system that promotes paying customers.\" \/>\n<meta name=\"robots\" content=\"index, follow, max-snippet:-1, max-image-preview:large, max-video-preview:-1\" \/>\n<link rel=\"canonical\" href=\"https:\/\/nilg.ai\/pt\/202107\/insights-in-ai-applied-to-credit-scoring\/\" \/>\n<meta property=\"og:locale\" content=\"pt_PT\" \/>\n<meta property=\"og:type\" content=\"article\" \/>\n<meta property=\"og:title\" content=\"Insights in AI applied to Credit Scoring - NILG.AI\" \/>\n<meta property=\"og:description\" content=\"Our vision on credit scoring models for financial services using Artificial Intelligence: a continuous system that promotes paying customers.\" \/>\n<meta property=\"og:url\" content=\"https:\/\/nilg.ai\/pt\/202107\/insights-in-ai-applied-to-credit-scoring\/\" \/>\n<meta property=\"og:site_name\" content=\"NILG.AI\" \/>\n<meta property=\"article:published_time\" content=\"2021-07-27T16:58:06+00:00\" \/>\n<meta property=\"article:modified_time\" content=\"2022-09-16T09:26:09+00:00\" \/>\n<meta property=\"og:image\" content=\"https:\/\/nilg.ai\/wp-content\/uploads\/2022\/06\/pexels-cottonbro-3944405-e1654253192443.jpg\" \/>\n\t<meta property=\"og:image:width\" content=\"2048\" \/>\n\t<meta property=\"og:image:height\" content=\"1365\" \/>\n\t<meta property=\"og:image:type\" content=\"image\/jpeg\" \/>\n<meta name=\"author\" content=\"Pedro Dias\" \/>\n<meta name=\"twitter:card\" content=\"summary_large_image\" \/>\n<meta name=\"twitter:creator\" content=\"@nilg_ai\" \/>\n<meta name=\"twitter:site\" content=\"@nilg_ai\" \/>\n<meta name=\"twitter:label1\" content=\"Written by\" \/>\n\t<meta name=\"twitter:data1\" content=\"Pedro Dias\" \/>\n\t<meta name=\"twitter:label2\" content=\"Est. reading time\" \/>\n\t<meta name=\"twitter:data2\" content=\"7 minutos\" \/>\n<script type=\"application\/ld+json\" class=\"yoast-schema-graph\">{\"@context\":\"https:\/\/schema.org\",\"@graph\":[{\"@type\":\"Article\",\"@id\":\"https:\/\/nilg.ai\/202107\/insights-in-ai-applied-to-credit-scoring\/#article\",\"isPartOf\":{\"@id\":\"https:\/\/nilg.ai\/202107\/insights-in-ai-applied-to-credit-scoring\/\"},\"author\":{\"name\":\"Pedro Dias\",\"@id\":\"https:\/\/nilg.ai\/#\/schema\/person\/719d26ecfa254d530d9623cf8802e574\"},\"headline\":\"Insights in AI applied to Credit Scoring\",\"datePublished\":\"2021-07-27T16:58:06+00:00\",\"dateModified\":\"2022-09-16T09:26:09+00:00\",\"mainEntityOfPage\":{\"@id\":\"https:\/\/nilg.ai\/202107\/insights-in-ai-applied-to-credit-scoring\/\"},\"wordCount\":1343,\"commentCount\":0,\"publisher\":{\"@id\":\"https:\/\/nilg.ai\/#organization\"},\"keywords\":[\"AI4business\",\"Financial Services\",\"Machine Learning\"],\"articleSection\":[\"Use Case\"],\"inLanguage\":\"pt-PT\",\"potentialAction\":[{\"@type\":\"CommentAction\",\"name\":\"Comment\",\"target\":[\"https:\/\/nilg.ai\/202107\/insights-in-ai-applied-to-credit-scoring\/#respond\"]}]},{\"@type\":\"WebPage\",\"@id\":\"https:\/\/nilg.ai\/202107\/insights-in-ai-applied-to-credit-scoring\/\",\"url\":\"https:\/\/nilg.ai\/202107\/insights-in-ai-applied-to-credit-scoring\/\",\"name\":\"Insights in AI applied to Credit Scoring - 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