{"id":49587,"date":"2016-08-19T00:00:00","date_gmt":"2016-08-19T00:00:00","guid":{"rendered":"https:\/\/www.techopedia.com\/predictive-analytics-in-the-real-world-what-does-it-look-like\/"},"modified":"2017-06-19T17:22:04","modified_gmt":"2017-06-19T17:22:04","slug":"predictive-analytics-in-the-real-world-what-does-it-look-like","status":"publish","type":"post","link":"https:\/\/www.techopedia.com\/2\/32054\/trends\/big-data\/predictive-analytics-in-the-real-world-what-does-it-look-like","title":{"rendered":"Predictive Analytics in the Real World: What Does It Look Like?"},"content":{"rendered":"
Predictive analytics<\/a> isn\u2019t a brand-new technology, but it is one that has just started to come into its own in recent years. Thanks to advances in how big data<\/a> can now be collected and handled, exploring that data and using predictive analytics is moving within reach of more organizations than ever before. But what does that really mean for the organizations who are using it? We talked to David Sweenor, the Global Analytics Product Manager for Dell Statistica, a predictive analytics software designed to make data analytics<\/a> faster, more accessible and more usable for business.\n<\/p>\n Techopedia: Can you explain a bit about what predictive analytics can do for a business, and what it takes to move beyond analyzing data and predicting future results to actually translating that information into action? David Sweenor:<\/strong><\/em> Statistica has been around for over 30 years as a predictive analytics platform that’s deployed in all industries. I’ll give you a few examples of what it can do for a business. One of our customers in Mexico provides micro-loans. If a user wants to apply for credit, they go to a website, enter their information, and a predictive model<\/a> delivers a real-time score that determines whether they should be given a loan. This is important because in many parts of the world, traditional credit bureaus like FICO, Experian and Equifax are either non-existent or unreliable. Additionally, the banking laws also differ so the company can supplement some of their more traditional data with social media data for example, and can create a predictive model that provides a better risk profile of the applicant. In doing so, the company was able to reduce their default rates by over 80 percent. That\u2019s game-changing for a lender and it\u2019s something that\u2019s not possible if you\u2019re not connecting to and analyzing all the data that\u2019s available. That’s just one of the many examples we have in the banking world.\n<\/p>\n
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