  {"id":2720,"date":"2015-11-22T22:26:56","date_gmt":"2015-11-23T03:26:56","guid":{"rendered":"https:\/\/digital.hbs.edu\/platform-digit\/submission\/fighting-fraud-using-machines\/"},"modified":"2015-11-22T22:27:24","modified_gmt":"2015-11-23T03:27:24","slug":"fighting-fraud-using-machines","status":"publish","type":"hck-submission","link":"https:\/\/d3.harvard.edu\/platform-digit\/submission\/fighting-fraud-using-machines\/","title":{"rendered":"Fighting fraud using machines"},"content":{"rendered":"<p>In 2011, a group of former Google engineers formed Sift Science. Using algorithms, machine learning, and statistics, they are helping businesses fight online fraud. Sift Science launched through Y-Combinator and has raised a total of $24mn. Its clients range from small websites to high traffic platforms such as Airbnb, Instacart, Twitter, and Zillow. Sift Science\u2019s competitive advantage lies in its ability to use machine learning to recognize fraudulent patterns (more than 1mn identified to date) and proactively address fraud incidents. Its business model is strengthened when new clients join the platform resulting in direct network effects.<\/p>\n<p>The mechanics of Sift Science are based on machine learning and the vast data generated by its clients\u2019 websites. Sift Science monitors thousands of users and signals that occur through combinations of information. Its clients can integrate to the platform using a simple Java snippet. Sift Science collects data from third parties to paint a holistic picture of each user. Typical information includes shipment and billing address, social media posts, IP address, and device fingerprint. The company searches for patterns associated with fraudulent activity, such as chargebacks, account takeovers, and fake referrals. For example, if the billing address of a user is far away from the shipment address, Sift Science may flag the user. Similarly, Sift Science discovered that fraudsters often used Alaska as their billing address because it is the first state on dropdown bars. Customers sort through the profiles of flagged users and provide feedback on Sift Science\u2019s assessments. This process allows: a) Sift Science\u2019s algorithm to learn through new patterns; b) new customers to customize the solution based on the unique needs of their business.<\/p>\n<p><a href=\"http:\/\/19squx2sqzlk2w3lh726rs88.wpengine.netdna-cdn.com\/wp-content\/uploads\/2015\/11\/Screen-Shot-2015-11-22-at-5.15.40-PM.png\"><img loading=\"lazy\" decoding=\"async\" class=\"alignnone size-medium wp-image-2704\" src=\"http:\/\/19squx2sqzlk2w3lh726rs88.wpengine.netdna-cdn.com\/wp-content\/uploads\/2015\/11\/Screen-Shot-2015-11-22-at-5.15.40-PM-300x126.png\" alt=\"Screen Shot 2015-11-22 at 5.15.40 PM\" width=\"300\" height=\"126\" srcset=\"https:\/\/d3.harvard.edu\/platform-digit\/wp-content\/uploads\/sites\/2\/2015\/11\/Screen-Shot-2015-11-22-at-5.15.40-PM-300x126.png 300w, https:\/\/d3.harvard.edu\/platform-digit\/wp-content\/uploads\/sites\/2\/2015\/11\/Screen-Shot-2015-11-22-at-5.15.40-PM-1024x431.png 1024w, https:\/\/d3.harvard.edu\/platform-digit\/wp-content\/uploads\/sites\/2\/2015\/11\/Screen-Shot-2015-11-22-at-5.15.40-PM-600x253.png 600w, https:\/\/d3.harvard.edu\/platform-digit\/wp-content\/uploads\/sites\/2\/2015\/11\/Screen-Shot-2015-11-22-at-5.15.40-PM.png 1095w\" sizes=\"auto, (max-width: 300px) 100vw, 300px\" \/><\/a><\/p>\n<p>Sift Science creates value for customers by improving the user experience, reducing financial losses, and improving operations. Traditional fraud detection programs rely on fixed rules. For instance, a rule may flag a transaction above a certain amount or related to a geography. These fixed rules result in multiple false positives, which harm the user experience by creating unnecessary screens and transaction cancellations. Sift Science\u2019s algorithm can bring false positives down to 10%, compared to 80% of screens using traditional fixed rules. An important part of the value proposition is financial savings relating to the reduction of fraud. Compared to traditional methods, Sift Science\u2019s adaptive approach is much more effective. HotelTonight, a mobile app featuring last minute hotel deals, reduced chargebacks by 50% using the platform. Opentable reduced its manual reviews of e-gift frauds by 80%. Although Sift Science does not reveal the secret sauce of its algorithms, machine learning explains performance improvements. Fraudsters continuously change patterns, and as a result adaptive models are much more effective than rules in addressing fraud. Machine learning enables the solution to adapt to the unique needs of a business, thus being effective for all customers. Very importantly, strong network effects enable customers to benefit from each other. Using device fingerprinting, for example, Sift Science will ban a fraudulent user from all of its customers\u2019 websites. When one customer identifies a new pattern, all other customers benefit through improved performance. Lastly, Sift Science\u2019s adaptive, dynamic approach is much easier for companies to implement. Because fraud patterns are proactively flagged, customers do not have to go through the painful process of creating rules. The adaptive approach also helps customers\u2019 websites grow in a scalable way.<\/p>\n<p><a href=\"http:\/\/19squx2sqzlk2w3lh726rs88.wpengine.netdna-cdn.com\/wp-content\/uploads\/2015\/11\/frauds.png\"><img loading=\"lazy\" decoding=\"async\" class=\"alignnone size-medium wp-image-2706\" src=\"http:\/\/19squx2sqzlk2w3lh726rs88.wpengine.netdna-cdn.com\/wp-content\/uploads\/2015\/11\/frauds-300x177.png\" alt=\"frauds\" width=\"300\" height=\"177\" srcset=\"https:\/\/d3.harvard.edu\/platform-digit\/wp-content\/uploads\/sites\/2\/2015\/11\/frauds-300x177.png 300w, https:\/\/d3.harvard.edu\/platform-digit\/wp-content\/uploads\/sites\/2\/2015\/11\/frauds-600x353.png 600w, https:\/\/d3.harvard.edu\/platform-digit\/wp-content\/uploads\/sites\/2\/2015\/11\/frauds.png 671w\" sizes=\"auto, (max-width: 300px) 100vw, 300px\" \/><\/a><\/p>\n<p>When the company first launched, it offered its product for free for websites with less than 5,000 users, and charged customers with higher traffic. By being the first company to offer a free product, Sift Science managed to capture users and improve its algorithms during its early days. The company nowadays charges all customers for its products. Its pricing is volume based, by charging a few cents for each API call (devices), account creation, or card payment. Sift Science offers discounts to customers who have high monthly website traffic. So far, the company has been able to successfully capture the value it creates for customers by becoming part of their variable costs. Sift Science\u2019s operating model relies on its innovative culture, the quality of its algorithms, its collaboration with third parties, and customer data. The product is more user-friendly and effective than traditional fraud prevention systems, however, Sift Science is playing in a competitive market. The company\u2019s success will depend on its ability to keep acquiring user data and improving its algorithms.<\/p>\n<p>Sources<\/p>\n<p><a href=\"http:\/\/techcrunch.com\/2013\/03\/19\/ex-googlers-launch-sift-science-a-fraud-fighting-system-for-websites-backed-by-5-5m-in-funding-from-union-square-first-round-yc-others\/\">http:\/\/techcrunch.com\/2013\/03\/19\/ex-googlers-launch-sift-science-a-fraud-fighting-system-for-websites-backed-by-5-5m-in-funding-from-union-square-first-round-yc-others\/<\/a><\/p>\n<p><a href=\"http:\/\/diginomica.com\/2015\/10\/21\/doing-fraud-detection-the-sift-science-way-with-ceo-jason-tan\/%23.VlI4Xt-rS8X\">http:\/\/diginomica.com\/2015\/10\/21\/doing-fraud-detection-the-sift-science-way-with-ceo-jason-tan\/#.VlI4Xt-rS8X<\/a><\/p>\n<p><a href=\"http:\/\/marketingland.com\/why-marketers-should-push-for-machine-learning-based-fraud-detection-152053\">http:\/\/marketingland.com\/why-marketers-should-push-for-machine-learning-based-fraud-detection-152053<\/a><\/p>\n<blockquote class=\"wp-embedded-content\" data-secret=\"Ec4Fol1Eoe\"><p><a href=\"https:\/\/ipwatchdog.com\/2015\/11\/22\/growing-e-commerce-fraud-merchants-not-prepared-for-holidays\/id=63271\/\">In the face of growing e-commerce fraud, many merchants not prepared for holidays<\/a><\/p><\/blockquote>\n<p><iframe loading=\"lazy\" class=\"wp-embedded-content\" sandbox=\"allow-scripts\" security=\"restricted\" style=\"position: absolute; clip: rect(1px, 1px, 1px, 1px);\" title=\"&#8220;In the face of growing e-commerce fraud, many merchants not prepared for holidays&#8221; &#8212; IPWatchdog.com | Patents &amp; Intellectual Property Law\" src=\"https:\/\/ipwatchdog.com\/2015\/11\/22\/growing-e-commerce-fraud-merchants-not-prepared-for-holidays\/id=63271\/embed\/#?secret=kzmQNsGrKb#?secret=Ec4Fol1Eoe\" data-secret=\"Ec4Fol1Eoe\" width=\"600\" height=\"338\" frameborder=\"0\" marginwidth=\"0\" marginheight=\"0\" scrolling=\"no\"><\/iframe><\/p>\n","protected":false},"excerpt":{"rendered":"<p>Sift Science uses machine learning and pattern recognition to detect and prevent fraud. The company has strong network effects and has managed to create and capture value by improving its product over time.<\/p>\n","protected":false},"author":81,"featured_media":2721,"comment_status":"open","ping_status":"closed","template":"","categories":[398,984,966,985],"class_list":["post-2720","hck-submission","type-hck-submission","status-publish","has-post-thumbnail","hentry","category-direct-network-effects","category-fraud","category-fraud-detection","category-fraud-prevention"],"connected_submission_link":"https:\/\/d3.harvard.edu\/platform-digit\/assignment\/data-driven-value-creation-value-capture-and-operating-models\/","yoast_head":"<!-- This site is optimized with the Yoast SEO plugin v27.3 - https:\/\/yoast.com\/product\/yoast-seo-wordpress\/ -->\n<title>Fighting fraud using machines - Digital Innovation and Transformation<\/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-digit\/submission\/fighting-fraud-using-machines\/\" \/>\n<meta property=\"og:locale\" content=\"en_US\" \/>\n<meta property=\"og:type\" content=\"article\" \/>\n<meta property=\"og:title\" content=\"Fighting fraud using machines - Digital Innovation and Transformation\" \/>\n<meta property=\"og:description\" content=\"Sift Science uses machine learning and pattern recognition to detect and prevent fraud. 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