The only way any of us can understand online audiences is through data. Companies like Nielsen and comScore have traditionally gathered that data by tracking a sample over time. But increasingly, what we know about audiences comes to us through servers.

Servers collect vast amounts of information on what consumers are doing online every second of every day. To some businesses, this Big Data speaks for itself and offers a crystal-clear lens with which to see and manage audiences. But much of the buzz surrounding Big Data is hype.

To make effective use of Big Data, marketers should be clear about its strengths and weaknesses. Here are five questions to keep in mind when you're seeing the marketplace through Big Data.

Census or Sample?

Big Data is often thought of as a census. If that were true, it would be great. You wouldn't have to draw a sample and carefully "weight" individual responses to reflect the population. But frequently, Big Data really means a big sample.

For instance, some companies claim that gathering data from digital set-top boxes (STBs) can create a census of the TV audience. In practice, however, STB ratings are based on samples that are cobbled together and extensively weighted to resemble the total TV audience. Those samples are large enough to offer a lot more granularity than traditional methods, but they're not close to a census.

Moreover, most big databases are adjusted in some way. You may think that the topics trending on Twitter reflect a simple headcount, but trending metrics are tweaked in ways that aren't widely reported. Providers of "currency" measures are often audited, so it's easier to know the recipe behind the numbers. But how many of the newer metrics are cooked up is a mystery. If you use them, you should assume you're not getting an unadulterated look at the audience; you're probably wearing corrective lenses.

Preference or Behavior?

Social media platforms can capture comments that reflect people's likes and dislikes, but most Big Data measures behaviors (e.g., views, downloads, shares, purchases, etc.). It's tempting to interpret behaviors as an expression of preferences. In fact, economists use choices as a measure of "revealed preferences." But people do things for all kinds of reasons.

Ask yourself, "Do people view something because they like it or because they just stumbled into it? Do they share something because they approve, disapprove, or want to build their personal brand?" Even the meaning of "likes" can be a puzzle. Is it really about liking or social affirmation or just plain fraud?

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What to Ask Yourself When Using Big Data to Understand Online Audiences

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ABOUT THE AUTHOR

image of James Webster

James Webster is a professor of Communication Studies at Northwestern University and the author of The Marketplace of Attention: How Audiences Take Shape in a Digital Age.

LinkedIn: James Webster