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  • The Frightening Science of Prediction: How Target & 10 Others Make Money Predicting Your Next Life Event(转摘)

    Here are 11 real examples of how companies are trying to predict your next life event:

    1. Predicting Pregnancy (Target): Target uses a statistical model to score every female customer on the likelihood that they are pregnant. It can accurately predict when a shopper is pregnant early in the pregnancy and her rough due date. As reported in the New York Times, Target’s data scientist is ”able to identify about 25 products that, when analyzed together, allowed him to assign each shopper a ‘pregnancy prediction’ score. More important, he could also estimate her due date to within a small window, so Target could send coupons timed to very specific stages of her pregnancy.” According to a Target data scientist who was quickly banned by the Company from talking to the press, “We knew that if we could identify them in their second trimester, there’s a good chance we could capture them for years . . . As soon as we get them buying diapers from us, they’re going to start buying everything else too.”

    2. Predicting Divorce (Credit Card Companies): In the book Super Crunchers, a Yale professor describes how a major credit card provider uses purchase data to predict divorce, which in turn, helps the company predict potential future credit problems.

    3.  Predicting Financial Problems (Canadian Tire): According to the Daily Beast: “Cardholders who purchased carbon-monoxide detectors, premium birdseed, and felt pads for the bottoms of their chair legs rarely missed a payment. On the other hand, those who bought cheap motor oil and visited a Montreal pool bar called ‘Sharx’ were a higher risk. ‘If you show us what you buy, we can tell you who you are, maybe even better than you know yourself,’ a former Canadian Tire exec said.”

    4. Predicting Your Next Vote (Obama & Romney Campaigns): Both major parties maintain broad voter databases appended with detailed demographic information. Using psychographic profiling, they are able to predict who you will vote for, how likely you are to go to the polls, and the potential for them to change your vote. Using this data, they are able to drive targeted media strategies and send volunteers to the right doors to maximize impact on the election. As reported in the Washington Post, “If you use Spotify to listen to music, Tumblr to consume content or Buzzfeed to keep up on the latest in social media, you are almost certainly a vote for President Obama. If you buy things on eBay, play FarmVille or search the web with Bing, you tend to favor former Massachusetts governor Mitt Romney.”

    5. Predicting When You Will Switch to Fedex (UPS): UPS uses data analytics to predict when customers are at risk of abandoning the company and switching to one of its competitors. Whenever a potential switcher is identified, the company tries to prevent the loss with a phone call from a salesperson.

    6. Predicting How Influential You Are (The Palms): Third party companies like Klout have built complex algorithms for assessing the social media impact of an individual. If you complain online, it’s your Klout score that will often determine the response. But now, companies like The Palms and Gilt Groupe are using these social media influence predictors to differentiate between customers. According to AdAge, “The Palms’ chief marketing officer, Jason Gastwirth, is currently building out ‘The Klout Klub,’ which ‘will allow high-ranking influencers to experience Palms’ impressive set of amenities in hopes that these influencers will want to communicate their positive experience to their followers.’ The Palms is already pulling in data from Klout and referring to it as part of their reservations process.”

    7. Predicting How Much Money You are Willing to Lose (Harrah’s):According to the Daily Beast, “With its ‘Total Rewards’ card, Harrah’s casinos track everything that players win and lose, in real time, and then analyze their demographic information to calculate their ‘pain point’—the maximum amount of money they’re likely to be willing to lose and still come back to the casino in the future. Players who get too close to their pain point are likely to be offered a free dinner that gets them off the casino floor.”

    http://scienceofrevenue.com/tag/predicting-customer-behavior/

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  • 原文地址:https://www.cnblogs.com/painmoth/p/2942583.html
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