  {"id":36452,"date":"2018-11-13T19:56:42","date_gmt":"2018-11-14T00:56:42","guid":{"rendered":"https:\/\/digital.hbs.edu\/platform-rctom\/submission\/paypals-use-of-machine-learning-to-enhance-fraud-detection-and-more\/"},"modified":"2018-11-13T19:56:42","modified_gmt":"2018-11-14T00:56:42","slug":"paypals-use-of-machine-learning-to-enhance-fraud-detection-and-more","status":"publish","type":"hck-submission","link":"https:\/\/d3.harvard.edu\/platform-rctom\/submission\/paypals-use-of-machine-learning-to-enhance-fraud-detection-and-more\/","title":{"rendered":"PayPal&#8217;s Use of Machine Learning to Enhance Fraud Detection (and more)"},"content":{"rendered":"<p>This essay will begin by focusing on how and why PayPal is leveraging machine learning in fraud detection today. It will then consider additional potential applications of machine learning across the customer journey, and how these applications may serve to reduce costs and increase customer engagement.<\/p>\n<p>As of today, PayPal primarily leverages machine learning to enhance its risk management and fraud detection capabilities. Online transaction fraud is a huge and growing concern that is \u201cexpected to reach $25bn by 2020, which means that $4 in every $1,000 will be fraudulent.\u201d[1] From a profitability standpoint, being able to detect fraudulent transactions is imperative for PayPal since payment processing is a low margin business where revenues are split among multiple players: issuing banks, networks, merchant bank, payment gateways, and processors (See <strong><b>Exhibit 1<\/b><\/strong>). [2] From a customer engagement and retention standpoint, PayPal must ensure that good customers are able to complete their transactions (no false positives). Going forward, frictionless consumer payment experiences will be key for PayPal to defend its incumbent position in an industry with growing competition (e.g. Apple Pay, Amazon Pay, Visa Checkout, etc.).<\/p>\n<p>Why is machine learning being used to enhance fraud detection? Traditionally, financial institutions automatically flagged transactions as \u201chigh risk\u201d based on a set of clearly defined rules (See <strong><b>Exhibit 2<\/b><\/strong>), and then either denied or manually reviewed flagged transactions. However, this traditional approach to fraud detection is falling short given the:<\/p>\n<ol>\n<li>Increased availability of data and humans\u2019 inability to leverage it all (vs. increased effectiveness of machine learning when faced with more data). [3]<\/li>\n<li>Increased complexity and types of data (See <strong><b>Exhibit 3<\/b><\/strong>), and inability to capture relationships with a discrete set of rules.<\/li>\n<li>Human errors and bias. [4]<\/li>\n<li>Increased sophistication of fraudsters (many of whom are actually leveraging machine learning themselves).<\/li>\n<li>High incidence of false positives, which reduce sales (and revenues) and increase manual reviews and thus operating costs. [5] [6]<\/li>\n<\/ol>\n<p>To maintain its leading-edge position in risk management, PayPal acquired the fraud detection start-up Simility in June 2018. Simility uses the following approach to build fraud detection models: [7]<\/p>\n<ol>\n<li>Use unsupervised models to find clusters and identify anomalies<\/li>\n<li>Manually review and label them<\/li>\n<li>Train a supervised model using the labels<\/li>\n<\/ol>\n<p>It is also worth highlighting that Simility continues to believe that human intelligence plays a role in fraud detection. Their basic premise is that human intelligence is being used to create new fraud techniques every day, and models that have been trained on past data may either miss those transactions or take too long to incorporate the pattern into their model. [8]<\/p>\n<p>As I reflect on the future of online fraud and consider an e-commerce ecosystem in which the use of machine learning and payment method tokenization is widespread, I wonder whether we will ever reach the point of almost inexistent fraud or whether fraudsters will continuously be able to find loopholes.<\/p>\n<p>&nbsp;<\/p>\n<p>Beyond fraud detection, PayPal is assessing opportunities to leverage Natural Language Processing to increase the efficiency of their customer service function in the coming years. For example, by introducing well-functioning chatbots and restricting human interaction to instances when it adds unique value, PayPal could significantly reduce SG&amp;A costs without harming the customer experience. <em><i>Autonomous<\/i><\/em> research quantified this cost saving potential in their 2015 report, \u201cthe finance sector can leverage AI technology to cut 22% of operating costs.\u201d[9]<\/p>\n<p>Additionally, I believe that PayPal could further leverage machine learning in the medium term to improve its product offering to customers. The payment experience itself is becoming increasingly commoditized, and some competitors such as Amazon (with their Amazon Go \u201cno checkout\u201d grocery stores) and merchants such as Uber are even going as far as omitting it from the buyers\u2019 experience. In response to this trend, PayPal is seeking ways to increase its revenue streams and maintain brand relevance beyond the checkout button. To this end, PayPal has offered additional funding sources (e.g. PayPal Credit) and financial management capabilities (e.g. partnership with Acorns investment startup) to consumers, as well as customized loan terms (e.g. PayPal Working Capital) and end-to-end services (e.g. marketing tools, shipping) to merchants. I believe that machine learning gives PayPal the opportunity to further personalize these products for their customers. For instance, PayPal could leverage available data on a consumer\u2019s spending patterns and social presence on Venmo to: i) offer suggestions on how much he\/she should save, ii) tailor investment opportunities to his\/her wealth and risk profile, iii) tailor a merchant\u2019s product placement to his\/her preferences.[10] Additionally, the more consumers engage with these products, the better the model will become, and the more relevant the recommendations. While these machine learning applications would clearly bring value to end consumers, I wonder whether PayPal could avoid trespassing the thin line of infringing on users\u2019 privacy.<\/p>\n<p>(799 words)<\/p>\n<p><strong><b>Exhibit 1: <\/b><\/strong>Online payments processing players and fees<\/p>\n<p><a href=\"https:\/\/d3.harvard.edu\/platform-rctom\/wp-content\/uploads\/sites\/4\/2018\/11\/Exhibit-1_vf.png\"><img loading=\"lazy\" decoding=\"async\" class=\"aligncenter size-full wp-image-36221\" src=\"https:\/\/d3.harvard.edu\/platform-rctom\/wp-content\/uploads\/sites\/4\/2018\/11\/Exhibit-1_vf.png\" alt=\"\" width=\"426\" height=\"553\" srcset=\"https:\/\/d3.harvard.edu\/platform-rctom\/wp-content\/uploads\/sites\/4\/2018\/11\/Exhibit-1_vf.png 426w, https:\/\/d3.harvard.edu\/platform-rctom\/wp-content\/uploads\/sites\/4\/2018\/11\/Exhibit-1_vf-231x300.png 231w\" sizes=\"auto, (max-width: 426px) 100vw, 426px\" \/><\/a><\/p>\n<p><strong><b>Source: <\/b><\/strong><em><i>\u00a0Online Payments Processing: How Pricing Really Works<\/i><\/em>. PayPal<\/p>\n<p>&nbsp;<\/p>\n<p><strong><b>Exhibit 2: Illustration of Rules-Based Fraud Detection<\/b><\/strong><\/p>\n<p><a href=\"https:\/\/d3.harvard.edu\/platform-rctom\/wp-content\/uploads\/sites\/4\/2018\/11\/Exhibit-2_vf.png\"><img loading=\"lazy\" decoding=\"async\" class=\"aligncenter size-large wp-image-36292\" src=\"https:\/\/d3.harvard.edu\/platform-rctom\/wp-content\/uploads\/sites\/4\/2018\/11\/Exhibit-2_vf-1024x583.png\" alt=\"\" width=\"640\" height=\"364\" srcset=\"https:\/\/d3.harvard.edu\/platform-rctom\/wp-content\/uploads\/sites\/4\/2018\/11\/Exhibit-2_vf-1024x583.png 1024w, https:\/\/d3.harvard.edu\/platform-rctom\/wp-content\/uploads\/sites\/4\/2018\/11\/Exhibit-2_vf-300x171.png 300w, https:\/\/d3.harvard.edu\/platform-rctom\/wp-content\/uploads\/sites\/4\/2018\/11\/Exhibit-2_vf-768x438.png 768w, https:\/\/d3.harvard.edu\/platform-rctom\/wp-content\/uploads\/sites\/4\/2018\/11\/Exhibit-2_vf-600x342.png 600w, https:\/\/d3.harvard.edu\/platform-rctom\/wp-content\/uploads\/sites\/4\/2018\/11\/Exhibit-2_vf.png 1213w\" sizes=\"auto, (max-width: 640px) 100vw, 640px\" \/><\/a><\/p>\n<p><strong><b>Source: <\/b><\/strong>Amazon Web Services. &#8220;Fraud Detection with Amazon Machine Learning on AWS.&#8221; 22 Sept. 2017. Reading.<\/p>\n<p>&nbsp;<\/p>\n<p><strong><b>Exhibit 3: <\/b><\/strong>Simility\u2019s use of structured and unstructured data to reduce fraud<\/p>\n<p><a href=\"https:\/\/d3.harvard.edu\/platform-rctom\/wp-content\/uploads\/sites\/4\/2018\/11\/Exhibit-3_vf.png\"><img loading=\"lazy\" decoding=\"async\" class=\"aligncenter size-full wp-image-36309\" src=\"https:\/\/d3.harvard.edu\/platform-rctom\/wp-content\/uploads\/sites\/4\/2018\/11\/Exhibit-3_vf.png\" alt=\"\" width=\"405\" height=\"385\" srcset=\"https:\/\/d3.harvard.edu\/platform-rctom\/wp-content\/uploads\/sites\/4\/2018\/11\/Exhibit-3_vf.png 405w, https:\/\/d3.harvard.edu\/platform-rctom\/wp-content\/uploads\/sites\/4\/2018\/11\/Exhibit-3_vf-300x285.png 300w\" sizes=\"auto, (max-width: 405px) 100vw, 405px\" \/><\/a><\/p>\n<p>&nbsp;<\/p>\n<p><strong><b>Source: <\/b><\/strong><em><i>\u00a0<\/i><\/em>&#8220;Transform and Enrich Your Data.&#8221; <em><i>Simility<\/i><\/em>.<\/p>\n<p>&nbsp;<\/p>\n<p><strong><b>Endnotes<\/b><\/strong><\/p>\n<p>[1] Anderton, Kevin. &#8220;The Future of Fraud.&#8221; <em><i>Forbes<\/i><\/em>, 27 May 2016.<\/p>\n<p>[2] <em><i>Online Payments Processing: How Pricing Really Works<\/i><\/em>. PayPal<\/p>\n<p>[3] Brynjolfsson, Erik, and Andrew McAfee. &#8220;What&#8217;s Driving The Machine Learning Explosion.&#8221; <em><i>性视界 Business Review Digital Articles<\/i><\/em>.<\/p>\n<p>[4] Amazon Web Services. &#8220;Fraud Detection with Amazon Machine Learning on AWS.&#8221; 22 Sept. 2017. Reading.<\/p>\n<p>[5] &#8220;Cutting down on payment-related Fraud via Machine Learning and AI.&#8221; <em><i>China TravelNews<\/i><\/em>, 15 Aug. 2018.<\/p>\n<p>[6] &#8220;What Are Your Fraud Rules Costing You?&#8221; <em><i>Blog Against Fraud<\/i><\/em>, Kount, 27 Aug. 2014.<\/p>\n<p>[7] Sandepudi, Ravi. <em><i>A Primer on Machine Learning Models for Fraud Detection<\/i><\/em>. Simility, 28 June 2017<\/p>\n<p>[8] Sandepudi, Ravi. <em><i>A Primer on Machine Learning Models for Fraud Detection<\/i><\/em>. Simility, 28 June 2017<\/p>\n<p>[9] Kruse, Jacob, et al. <em><i>Machine Intelligence &amp; Augmented Finance<\/i><\/em>. Autonomous, Apr. 2018<\/p>\n<p>[10] Wojcik, Natalia. &#8220;Pefin, a fintech start-up, is using A.I. to offer financial advice. Just don&#8217;t call it a &#8216;robo advisor..'&#8221; <em><i>CNBC<\/i><\/em>, 9 Sept. 2017.<\/p>\n<p>&nbsp;<\/p>\n","protected":false},"excerpt":{"rendered":"<p>This essay will begin by focusing on how and why PayPal is leveraging machine learning in fraud detection today. It will then consider additional potential applications of machine learning across the customer journey, and how these applications may serve to reduce costs and increase customer engagement.<\/p>\n","protected":false},"author":11206,"featured_media":36453,"comment_status":"open","ping_status":"closed","template":"","categories":[156,4305,346],"class_list":["post-36452","hck-submission","type-hck-submission","status-publish","has-post-thumbnail","hentry","category-customer-service","category-fraud-detection","category-machine-learning","hck-taxonomy-organization-paypal","hck-taxonomy-industry-financial-services","hck-taxonomy-country-united-states"],"connected_submission_link":"https:\/\/d3.harvard.edu\/platform-rctom\/assignment\/rc-tom-challenge-2018\/","yoast_head":"<!-- This site is optimized with the Yoast SEO plugin v27.3 - https:\/\/yoast.com\/product\/yoast-seo-wordpress\/ -->\n<title>PayPal&#039;s Use of Machine Learning to Enhance Fraud Detection (and more) - Technology and Operations Management<\/title>\n<meta name=\"robots\" content=\"index, follow, max-snippet:-1, max-image-preview:large, max-video-preview:-1\" \/>\n<link rel=\"canonical\" href=\"https:\/\/d3.harvard.edu\/platform-rctom\/submission\/paypals-use-of-machine-learning-to-enhance-fraud-detection-and-more\/\" \/>\n<meta property=\"og:locale\" content=\"en_US\" \/>\n<meta property=\"og:type\" content=\"article\" \/>\n<meta property=\"og:title\" content=\"PayPal&#039;s Use of Machine Learning to Enhance Fraud Detection (and more) - Technology and Operations Management\" \/>\n<meta property=\"og:description\" content=\"This essay will begin by focusing on how and why PayPal is leveraging machine learning in fraud detection today. 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