Squeezing More Revenue From Your Marketing Dollars
March 10, 2015 by Julia·
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This post from Paul Gorman originally appeared in March 2015 on Renaissance Executive Forums.
Marketing pioneer, John Wanamaker, once said “Half the marketing money I spend on advertising is wasted; the trouble is I just don’t know which half.”
I’m not going to tell you how to completely and totally fix that problem, but there is a way to significantly increase your revenue and, at the same time, reduce how much you spend on marketing and direct mail. We can do that through the power of the computer, big data and predictive analysis.
What Is Predictive Analysis?
We all know what big data is and you probably have an enormous amount of it stored on your computers or in an archive. Predictive analysis mines that data, turning it into information that can be acted on. By mining the historical data that you keep collecting, we can pull out information from the data and find statistical relationships and meaning that best describe the past behavior of your customers. We then apply that knowledge to predict future customer behavior and improve the bottom line of your business.
Probably the best known application of predictive analysis is your own FICO score, a measure of consumer credit risk. Your FICO score rates you as a consumer. Almost everybody has a FICO score even if they are not aware that they do. It gives your lender a way to predict the probability that you will default on your loan and the likelihood that he will get his money back. The higher your score, the less likely you are to default on your debt, and, therefore, you represent less of a risk to the lender. As a result, with a high FICO score you can typically qualify for better terms when you buy a house or car, or apply for any other kind of loan. With a low FICO score you may be able to obtain a loan, but it may be financially painful for you because you’ll have to pay a premium to make up for the lender’s risk.
Where Is Predictive Analysis Applied?
Predictive analysis can be applied to a myriad of fields besides credit, marketing and direct mail. One example of where predictive analysis is paying big dividends is law enforcement. For instance, the San Diego County Sheriff has a small staff of analysts applying predictive analysis in order to help reduce jail overcrowding as a result of recidivism. This not only reduces jail overcrowding, but reduces taxpayer expenses as well.
A few other examples include: stock market trading; safety and failure analysis; employee retention; fraud detection; network intrusion detection; and political campaigning with voter persuasion modeling.
How Can Predictive Analysis Help Your Business?
Direct mail marketing is one important area where predictive analysis excels and can pay big dividends to your business. In this case, after mining the data and applying our predictive analysis techniques, we can assign probabilities or scores to each individual in your database, and can rank them according to the likelihood of their behavior or actions. Now we can easily tell who your best customers are, ranked from top to bottom. This is an objective measure, not subjective, and allows us to separate the “wheat from the chaff.” Subjectively though, you still have the option of including Uncle Bill in the list if you want to, even though he is way down in the bottom half, and just loves the free buffet.
If we already have a direct mail list, we can then match that list against what we now know. This produces a more optimal mailing list, one typically far superior to the one created in almost any other way. For instance, if we have a million people in our database, but are mailing to only half of them, we can now be very sure that we are mailing to only the top half. The cream has risen to the top. (I love mixing metaphors.)
Once we have that information, we can then even further refine our superior mailing list and begin to predict what each customer is most likely to respond to. That way, instead of just shot-gunning one or two offers to all half million of our best customers, we can actually segment them into categories, and tailor our marketing much more precisely to appeal to each segment. The best number of segments and types of offers can also be found through predictive analysis.
Altogether, the results of this approach are to (a.) market to those customers whom we know are our best customers; (b.) present tailored offers to those customers in a way that they are most likely to respond; and (c.) actually take control of our direct marketing campaigns and dollars by choosing not only who to market to, but also who not to market to. As hard as not mailing to someone may be – such as Uncle Bill – we can now objectively know that the customers way down our mailing list are probably just not worth the stamp. This, of course, reduces marketing costs.
Example 1 – Mailing Better Customers
Here is an example using our database of 1 million people. Let’s assume that that you mail to half of them, and it costs $2 to mail to each one. You have observed that your response rate is 1%, and the average revenue produced by each customer who responds is $200.
Profit = Revenue – Cost
Profit = $1,000,000 – $1,000,000 = $0
So, why are we doing direct mail again?
Predictive analysis allows us to improve on these results. Now suppose that your predictive analyst crunches some numbers, and is able to rank your customer database from top to bottom. He finds that he can replace half of your original mailing list with better customers. As a result, your response rate increases to 1.5%. Also, because you are mailing to an optimal set of customers, you can expect that the average revenue produced jumps to $225. Now let’s see what happens.
Profit = Revenue – Cost
Profit = $1,687,500 – $1,000,000 = $687,500
Example 2 – Mail To Only The Best
The second way to improve bottom line results is to reduce the size of our mailing list, and save the money. This, of course, cuts costs. In this example, if we only mail to the top 250,000 customers, then we will have saved $500,000 in mailing costs. But that comes at a price. Since the customers we are no longer mailing to are at the bottom of the list, their response rate and average revenue is less than for the entire group of 500,000. Therefore, let’s assume that the response rate for those included in the mailing increases a little, to say 1.6% and our average revenue increases a little to $230. Let’s see what happens.
Profit = Revenue – Cost
Profit = $920,000 – $500,000 = $420,000
In this example, we probably cut our mailing list size too much, but you get the point. We saved $500,000 in costs, but only reduced our resulting revenue by $267,500. Nevertheless, we may have gone too far in our cost-cutting.
But what if you only have a $300,000 direct mail budget? Then that additional $267,500 starts to look pretty good. How can you start to make up the difference on the revenue side?
Example 3 – Tailor Offers to Value
One way to raise revenue and still keep our direct mail size and costs down is to be smarter about what we offer our customers. As mentioned above, we can better tailor our offers to better fit specific segments of our mailing list. This will improve our response rate and the average revenue per customer will increase as well. In our simple example above, improving the response rate by only 0.25% increases our revenue by about $300,000 while our mailing costs remain the same.
Here is how this could work. As a strategy, let’s still use the $500,000 direct mail budget, but segment our 250,000 mail list in to 2 groups of 125,000 each. In the top group we can expect a response rate of 1.75% and in the lower half a response rate of 1.5%. In the top group we can expect an average revenue of $250, and in the lower group average revenue of $230. Now what happens?
Profit = Revenue – Cost
Profit = ($546,875 + 431,250) – $500,000 = $478,125
So compared to our results in Example 2, we have increased our expected profit by $58,125 by minimally segmenting our database and sending two different offers, each more aligned with the needs and interests of our customers. We can probably improve even more on our results by further segmentation and tailoring.
The Bottom Line
Now direct mail starts to make sense again, and we have a way to squeeze more revenue from our marketing dollars.
Let’s recap and look at where we’ve actually come from when we started this discussion. We started with a huge mailing list, an OK response rate, an OK average revenue per customer, but zero profit from our efforts. By applying Predictive Analysis step by step through a rigorous process, we’ve actually improved both our response rate and our average per customer revenue while we reduced the size of our mailing list and cut costs.
Increased revenue. Lower costs. What’s not to like?
Stics Guide to G2E
September 8, 2014 by Julia·
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We can’t wait to see you and talk about your business intelligence and database marketing initiatives. But we also know how difficult and overwhelming it can be to see everything you’re interested in at G2E. The key to getting the most out of G2E is advance planning. Here are some must-have links to get you thru the show.
- My G2E Show Planner allows you to schedule your visits and sessions before you get to the show. You can even print your personal itinerary on site at the Sands Expo & Convention Center. Don’t forget to add Stics, Inc. to your show planner, and stop by our booth #4112.
- View Conference Sessions Check out the conference sessions you’re interested in ahead of time, then add them to
- Stics Top Ten After Hours Hang Out Spots All work and no play? Keep reading below, as we post our favorite Las Vegas locations. These are the places you will most likely find us after hours, during the show.
- your personalized itinerary.
- Don’t forget to download the G2E mobile app. G2E mobile gives you access to all of the information you need to navigate the show right from your web-enabled phone or device.
Stics’ Top Ten After Hours Hang Out Spots
All work and no play? Stics suggest the top ten places you will most likely find us after hours, during the show. This list is great for non-locals who want a good meal recommendation or just want to hang out with us nerds.
- We love burgers and couldn’t pick just one place. So our first pick is actually two. Bachi Burger in Henderson or Summerlin and Burger Bar at Mandalay Bay.
- Peppermill still has that classic Las Vegas feel and some of the best food.
- Firefly tapas are always a good way to enjoy good food and good conversation.
- Hofbrauhaus – Oktoberfest is in full swing.
- La Creperie at Paris Las Vegas is inspired by walk-up sidewalk creperies that line the streets of Paris.
- Vegas Indoor Skydiving – Earn your wings and experience bodyflight during a simulated skydive experience in the heart of the Las Vegas Strip.
- The Bar at Times Square at New York New York has great dueling pianos.
- Exotics Racing School is a chance to drive their fleet of Ferrari, Lamborghini, Aston Martin, Porsche, McLaren, Audi, Mercedes and Nissan on a race track.
- You’ll definitely find Christy at Bautistas listening to the accordion player.
- The Adventure Dome at Circus Circus if acres after acres of fun.
The Data Fact Gap
August 6, 2014 by Julia·
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As professionals, we all know that technology has changed the way we do business. Whether you find the increased dependence on new technology as good or bad often depends on how effectively the tools are used. Over the years, this problem has been illustrated in many ways by Stics and a variety of other experts.
This particular Fact Gap illustration was first attributed to the Gartner Group. It will help us describe how data technologies are, on the one hand, progressing and on the other, creating new data analysis problems.
The “Data Fact Gap” was created by the explosion of available digital information accumulated in recent years. With technology system advances, increased data storage capacity and Internet usage it is now easy to collect mountains of data. While the volume of retained data has grown exponentially and spread across all industries, so have the data management challenges it created and the even greater marketing opportunities that mostly lie dormant.
This abundance of data creates new problems that force database marketers to devote a lot of time and resources to filtering information into data segments so decision makers can frame a concept, problem or question. While this approach is intuitive to the human brain, it does limit our ability to make a fully informed decision from all available data.
Why You Need Good Data
Intuitively we often think we already know what our customers want. However, that is not always the case. When we make business decisions by filtering our data down to a few variables we miss the more accurate and complete view of the data. Without hard data, there’s no way to be sure truly objective decisions are being made. Worse, because we think we’re making objective decisions, we often don’t seek an outside perspective.
What we really need is an objective analysis, wielding as many customer factors and data points as possible. This approach helps us see the potential hidden below the common database marketing analysis.
Statistical Predictive Analytics Solves the Problem
One way to harness the data explosion and make better marketing and business decisions is to use predictive analytics. Predictive analytics uses the science of statistics and is capable of considering unlimited facets of a situation. Predictive analytics for marketing can increase a marketing campaign’s return on investment by 10 times compared to a typical SQL analysis that might only evaluate (about) five variables. It takes the data that you already have and gives you information you can use in your marketing campaigns, such as:
- Identifying customers you are currently marketing to who are unprofitable or about to reach the end of their customer lifetime value
- Identify high value customers hiding in your database or prospects you are not marketing to
- Suggest more profitable marketing programs
- Identify the lifetime value of various members in your customer base
Statistical modeling with predictive analytics is proven to help make more informed decisions and increase profit margins.
Stics lives on the front lines of customer data knowledge generation. We have a deep understanding of the problems and opportunities created by the data explosion. For that reason, we discourage installing expensive applications that might not provide quick answers to important questions that drive revenue and profitability. We know that with seasoned expertise, a leading statistical technology platform and focused services like ours, it is possible to bridge the data gap and quickly and easily improve the performance of your marketing campaigns.
Stics offers innovative solutions that provide deeper insight into your customer and loyalty database for greater marketing return on investment. We welcome inquiries and are happy to answer questions. We’re waiting to talk to you. Let us know what’s on your mind.