In part 1 of this series on predictive analytics, we discussed the variety of data, particularly unstructured and semi-structured data, and the three types of predictive analytics. We also touched upon the approach of continual optimization of a predictive analytics system for it to become more and more accurate. With those basic concepts in place, we’re ready to take a tour of the various applications of predictive analytics as it’s used in businesses today. You can think of this as the hall of fame of predictive analytics.
The viability of this service is evident with investment from the likes of Google, and an analyst firm working for the CIA. In fact, it’s being used by the US government right now, to get intelligence on the crisis in Syria, to find out if the Syrian Electronic Army (SEA) is linked to Iranian hacker groups. In this initiative, Recorded Future evaluated 300,000 Web sources, including websites popular with hackers, for information on the rise of the SEA from their beginnings in 2011 to the present. It concluded that there were differences in attack patterns between Iranian and Syrian groups, and ruled out a connection between them.
If there’s one company that’s fast becoming the poster child of predictive analytics today, it’s Recorded Future. Here’s a fun video explaining how Recorded Future works:
While what they’re doing is important, it’s the ‘how’ part that we’re interested in. Sift Science uses big data, and machine learning to assign a fraud score to users. Since it’s based on machine learning, the method of prediction isn’t set, but rather, adapts to fraudsters’ changing tactics. While this methodology is very capable in itself, Sift Science delivers the knockout punch by leveraging the 1 million different fraud patterns from its database of customers, and applies that combined intelligence to each individual customer.
The company claims that the system today can detect up to 90 percent of the fraud happening on its customers’ sites, which is an impressively high accuracy rate. This can be a huge cost benefit to customers, and the investors concur.
While ad platforms have always sought to be non-intrusive, relevant, and even desirable to consumers, the combination of mobile devices, and predictive analytics promises to give advertising a leap as significant as the shift from banners to pay-per-click search ads. Here’s a video of Bill Gross himself explaining how UberAds works, with an interesting example of how it can show a targeted movie ad to a Tom Cruise fan at just the right time.
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Target Data CEO, Ross Shelleman believes that the time of moving a home is the best time for marketers to wean off prospects from competitors, or reinforce loyalty to their own brand. He also admits that Target Data doesn’t gather any new data, but what it does is to build a sophisticated system of aggregating, and sorting existing data to make it usable for its customers. What Target Data does may not be sexy, but it’s an inspiring example of how predictive analytics is being used to revitalize traditional businesses. Here’s an interview of Ross Shelleman, where he takes us behind the scenes with Target Data:
One of the co-founders of SalesPredict, Kira Radinsky, is actively involved in academics related to predictive analytics. She recently teamed up with Eric Horvitz from Microsoft on a project to predict disease outbreaks by scanning two decades of New York Times articles, and other online data like Wikipedia. They used tools like DBpedia, WordNet, and OpenCyc to analyze text content and understand the semantic relationship between words. The result was a prediction model with 70 to 90 percent accuracy, which if developed further can be invaluable to social outreach organizations, and health institutions. Kira starts her Ph.D abstract with a quote from Mark Twain that ‘the past does not repeat itself, but it rhymes.’ Here’s an audio interview of Kira that may not be of the best quality, but if you’ve read this far you may be inspired by her passion for predictive analytics.
As these examples show, predictive analytics is being used across many industry verticals to change the way we do business. It still takes data scientists to do the groundwork in a product that uses predictive analytics, but it’s interesting to see the collaboration between academicians and entrepreneurs, bringing predictive analytics out of the science labs and into mainstream business.
In the next post, we’ll look at a few more examples of companies using predictive analytics, after which we’ll discuss how this data is visualized. I hope you’re enjoying the ride. Stay tuned.
If you enjoyed reading this, be sure to check out the other posts in this series:
Part 1 – Predictive Analytics: No More the Way of the Analytics Ninjas
Part 3 – 4 More Businesses on the Frontier of Predictive Analytics
Part 4 – 3 Insanely Great Dashboards from Recorded Future
Part 5 – Stripping Down the Gorgeous Sift Science Dashboard
Part 6 – 9 Ways We Use Predictive Analytics Without Even Knowing It
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