Cookies help us display personalized product recommendations and ensure you have great shopping experience.

By using this site, you agree to the Privacy Policy and Terms of Use.
Accept
SmartData CollectiveSmartData Collective
  • Analytics
    AnalyticsShow More
    data analytics
    How Data Analytics Can Help You Construct A Financial Weather Map
    4 Min Read
    financial analytics
    Financial Analytics Shows The Hidden Cost Of Not Switching Systems
    4 Min Read
    warehouse accidents
    Data Analytics and the Future of Warehouse Safety
    10 Min Read
    stock investing and data analytics
    How Data Analytics Supports Smarter Stock Trading Strategies
    4 Min Read
    predictive analytics risk management
    How Predictive Analytics Is Redefining Risk Management Across Industries
    7 Min Read
  • Big Data
  • BI
  • Exclusive
  • IT
  • Marketing
  • Software
Search
© 2008-25 SmartData Collective. All Rights Reserved.
Reading: The Uncanny Valley of Big Data
Share
Notification
Font ResizerAa
SmartData CollectiveSmartData Collective
Font ResizerAa
Search
  • About
  • Help
  • Privacy
Follow US
© 2008-23 SmartData Collective. All Rights Reserved.
SmartData Collective > Analytics > Predictive Analytics > The Uncanny Valley of Big Data
Predictive AnalyticsPrivacy

The Uncanny Valley of Big Data

DavidMSmith
DavidMSmith
6 Min Read
SHARE

Three articles in recent weeks have touched on an important issue related to Big Data and predictive analytics: sometimes, the results can be downright creepy. It’s kind of like the “Uncanny Valley” in computer animation: the reason why the human characters in Pixar animations are cartoon-like and not human-like is because trying to make animated humans photorealistic generally results in uncomfortable reactions from the viewer.

Three articles in recent weeks have touched on an important issue related to Big Data and predictive analytics: sometimes, the results can be downright creepy. It’s kind of like the “Uncanny Valley” in computer animation: the reason why the human characters in Pixar animations are cartoon-like and not human-like is because trying to make animated humans photorealistic generally results in uncomfortable reactions from the viewer. The animations might look realistic, but something in our animal brain knows something isn’t quite right, and it’s just … creepy.

The same thing can happen where the rubber meets the road of Big Data and predictive analytics: when offers or suggestions are made to individuals. You’ve probably had an experience similar to mine: after searching the web for a hotel deal in Vegas, suddenly every ad that appeared next to the blogs and websites I regularly read was for a Vegas-related deal. Creeeepy. (And also not particularly useful: after that trip I had no particular plans to return to Vegas anytime soon, yet the ads kept coming.)

A similar tale was related in the New York Times over the weekend. In the story “How Companies Learn Your Secrets” (reg. req.), statistician Andrew Pole (working for the retailer Target) described how he’d created a predictive model to identify from shopping habits when a shopper was likely to be pregnant. When the father of a young Target shopper saw the baby-related coupons sent to his daughter, he was outraged:

More Read

But for scientists, tracking birds as they perform those feats…
Could book lovers finally be willing to switch from pages to…
Streamline service operations and reduce costs
Some Interesting Analyses
Science Needs to Be Less Certain

“My daughter got this in the mail!” [said the father]. “She’s still in high school, and you’re sending her coupons for baby clothes and cribs? Are you trying to encourage her to get pregnant?”

It turns out the daughter actually was pregnant at the time, unbeknownst to her father. The creepy aspect here: why should a corporation be able to know (or rather, infer) such a personal fact, when close family members do not? Intriguingly, Target solved this problem by mixing future offers to identified pregnant shoppers with unrelated coupons, say, for lawnmowers or wineglasses. By deliberately making the predictions worse, the response was better: “as long as we don’t spook her, it works”, said Pole. Personally, I wish web-advertisers would do the same thing. Not only do I not care about Vegas hotels anymore, the absence of other ads precludes the serendipity of discovering other products I might actually like, but which my activity history might not suggest. In a follow-up interview, article author Charles Duhigg suggested other areas where this technique might help alleviate the “creep factor”.

In a similar vein, this week’s Esquire profiles Tibco’s CEO Vivek Ranadivé. Amongst several examples of the importance of collecting multiple streams of data to improve predictions from analytics, comes this anecdote about football fans visiting Oakland’s Oracle Arena:

At the end of the third quarter, when the computer system showed that the concession stand near his seats had too many hot dogs, it could send him a buy-one-get-one-free offer — because it also knows that he sometimes buys hot dogs at games.

The right information to the right people at the right time in the right context. (Fans creeped out by this could opt out.)

This may be another example where moving the predictions outside the uncanny valley might prevent fans being creeped out.

Finally, another New York Times article from earlier this month, “The Age of Big Data” (reg. req.) looks into the lives and impacts of some of the “rock stars” of Big Data applications. While lauding many of the benefits of analytics on Big Data, it also strikes a cautionary tale at the end of the article:

Big Data has its perils, to be sure. With huge data sets and fine-grained measurement, statisticians and computer scientists note, there is increased risk of “false discoveries.” The trouble with seeking a meaningful needle in massive haystacks of data, says Trevor Hastie, a statistics professor at Stanford, is that “many bits of straw look like needles.”

This is a great point: treating analytics as a “black box process” — data in, predictions out — can lead to inapproprate predictions (more to the “zombie” side than the “angel” side of the Uncanny Valley). It takes the statistical expertise of a data scientist to ensure that such predictive analytics are creating sensible predictions … and to help companies avoid the Uncanny Valley of Big Data.

(Read more articles from this blog on big data and predictive analytics.)

Share This Article
Facebook Pinterest LinkedIn
Share

Follow us on Facebook

Latest News

protecting patient data
How to Protect Psychotherapy Data in a Digital Practice
Big Data Exclusive Security
data analytics
How Data Analytics Can Help You Construct A Financial Weather Map
Analytics Exclusive Infographic
AI use in payment methods
AI Shows How Payment Delays Disrupt Your Business
Artificial Intelligence Exclusive Infographic
financial analytics
Financial Analytics Shows The Hidden Cost Of Not Switching Systems
Analytics Exclusive Infographic

Stay Connected

1.2KFollowersLike
33.7KFollowersFollow
222FollowersPin

You Might also Like

When Distributions Go Bad

1 Min Read
Image
AnalyticsPredictive Analytics

Coming Trends in Analytics Application and Implementation

3 Min Read

How many software packages is too much?

1 Min Read

Top Ten Predictions for 2011 from IDC

5 Min Read

SmartData Collective is one of the largest & trusted community covering technical content about Big Data, BI, Cloud, Analytics, Artificial Intelligence, IoT & more.

ai in ecommerce
Artificial Intelligence for eCommerce: A Closer Look
Artificial Intelligence
AI chatbots
AI Chatbots Can Help Retailers Convert Live Broadcast Viewers into Sales!
Chatbots

Quick Link

  • About
  • Contact
  • Privacy
Follow US
© 2008-25 SmartData Collective. All Rights Reserved.
Go to mobile version
Welcome Back!

Sign in to your account

Username or Email Address
Password

Lost your password?