Why Demos?

SHARE:

“Data Driven Thinking” is a column written by members of the media community and containing fresh ideas on the digital revolution in media.

Today’s column is written by Ken Rona, PhD, V.P. Data Strategy and Client Analytics at [x+1].

data-driven-thinking-kenThe other day, I was speaking to an ad agency about use of third-party data in online advertising. Toward the end of the talk, someone asked a very interesting question: “If you have buyer propensity or behavioral data, why do you need demographics?”

Hmmm. Why do you need demographics in a world of in-market and intender data? Let me talk a little bit about why demos are useful in online ad targeting, and more specifically, for media targeting.

First, demographics act as useful proxies for life stages and interests. An individual’s life stage and interests are powerful drivers of purchase intent. In fact, demos serve as inputs to the models used to create intender/interest segments (but not in-market status). They are foundational.

Second, demographics are an efficient type of data. An ad network can use the data across a wide variety of product categories. So, get the data once, use it many times. This reduces the amount of integration you need your engineering team to do and speeds time to market for product specific targeting.

Third, demographic data is available for large portions of the internet audience. Any of the large online data providers claim to have ~ 30% of the audience. By contrast, counts for intender data are fairly small. How many people at a given time are in-market for airline flights to Mexico? As a percentage of users seen during an ad campaign, the number is certainly in the low single digits.

Fourth, demographic data will be commoditized. I am not suggesting that it will become cheap. I mean in the classic sense of a commodity; one source is as good as another and also comparable to a standard. This is not the case today. Some providers are more accurate than others, but over time, I would think that there will be little to distinguish one data provider from another. This means that, unlike the intender and in-market data, we’ll be able to “stitch” together multiple demographic providers to create a file that provides demographics for a fairly wide set of users. Each provider has a unique (but overlapping) set of users, so we are going to want to combine datasets. Demographic data is relatively easy to combine across providers. By contrast, each provider of intender and in-market data defines their own segments, meaning that we are going to need to treat each data source separately. For a longer discussion of creating an aggregate demographics database, see my article here.

Powerful predictors of likely relevance, broadly useful, for many users, simple, and standardized. All good. So, what’s the catch?

I can see three challenges on the demographic side of data. First, the cost to use demographic data has to be very affordable in order for ad networks and agencies to apply the data to all of their ad decisioning. Online data is not yet commoditized (in the classical sense), but I believe it will eventually become so.

Second, most companies don’t yet know the number of unique users each data provider can reach. The value of each providers data is additive to the extent that they provide data on unique users. If they are not providing data on unique users, then the path to commoditization begins. The providers would be supplying the same product. By definition, the data would be a commodity.

Lastly, each of the data providers have varying degrees of accuracy. Online, it is difficult to assess accuracy. You need to find a source of “truth” and advertisers are often reluctant to share their verified customer files with ad networks. Some ad networks rely on straight lift to assess the value of a data set; they don’t worry about accuracy. The problem with this approach is it tends to be brittle. Data sources that have some level of accuracy are useful for a little while they are being used to target users that they can accurately associate to a given data element. Over time, their predictive power degrades. I am a big believer in taking the time and care to find data sources that accurately represent the users’ age, income, whatever. As the accuracy of your data improves, you can be more confident in the longevity of your targeting strategy.

One last point; Should the data providers worry about commoditization of demographic data? If I were them, I would not be losing any sleep over it. In this case, I think commoditization would be good for the data providers. They would get less money per user on any given transaction, but they would truly make it up in volume and because their product has zero marginal cost this is a good thing. In the offline world, that dynamic has played out to the benefit of Acxiom, Equifax, Experian, InfoUSA, etc.

Follow [x+1] (@xplusone) and AdExchanger.com (@adexchanger) on Twitter.

Must Read

multiple sets of eyes

Amazon DSP Adds Adelaide’s Pre-Bid Attention Targeting

Advertisers can target high- and medium-attention ad inventory in Amazon DSP while filtering out low-attention placements and made-for-advertising sites.

Marketers Are Getting Used To AI In The Ad Stack

Marketers and media buyers are gradually getting more comfortable talking about ad campaigns they’re testing on large-language models like OpenAI’s ChatGPT.

For Video Publishers, Performance And AI Go Hand In Hand

In Connected TV Ad Land, proving performance is the priority for video advertisers. To drive more demonstrable reach and results, publishers are trying to expand their reach while wringing more data and AI features into their offerings. 

Privacy! Commerce! Connected TV! Read all about it. Subscribe to AdExchanger Newsletters

Independent Ad Tech Is Reframing Itself Around Cloud Hardware

Nowadays, programmatic vendors, and SSPs in particular, are carving new paths of differentiation based on their type of adoption of cloud infrastructure.

Ad Performance Hinges On Kicking Fragmentation’s Butt

As performance takes center-stage in more advertising discussions, demands to solve fragmentation and cruddy measurement are reaching a fever pitch.

AdExchanger's Big Story podcast with journalistic insights on advertising, marketing and ad tech

AI Off The Rails

A word of caution to digital advertising companies, as they go all in on AI algorithms: They need to build these solutions with ownership, governance and accountability from the start – or AI could sink them with a single mistake.