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Marketing Mix Modeling
By
Jerry W. Thomas
Business magazines and websites are abuzz with news about the value of marketing
mix modeling as a way to help companies maximize returns on their marketing
investments (ROMI). Despite the currency of this topic in the media, the concepts
and tools of marketing mix modeling date back at least 30 to 40 years. The topic
is of growing interest partly because of the corporate world’s interest
in growing topline revenue. The last couple of decades have witnessed unparalleled
cost cutting and staff reductions among the Fortune 500 in the U.S. The opportunities
for further cost reductions are diminishing in number and scale, so the pressure
for long-term financial performance from public markets can only be met by renewed
emphasis on new products and revenue growth.
A second reason for the growing interest in marketing mix modeling is the proliferation
of new media (i.e., new ways to spend the marketing budget), including the Internet,
online communities, search engines, event marketing, sports marketing, viral
marketing, cell phones, and text messaging, etc. No one knows how to accurately
measure the potential value of these many new ways to spend one’s marketing
dollars. To grow revenue and profits, corporate executives need to understand
the types of marketing investments that are most likely to produce viable, long-term
revenue growth. That is, what combination of marketing and advertising investments
will generate the greatest sales growth and/or maximize profits? Eureka! Marketing
mix modeling might provide some answers to these challenging problems.
What exactly is marketing mix modeling? The term is widely used and applied
indiscriminately to a broad range of marketing models used to evaluate different
components of marketing plans, such as advertising, promotion, packaging, media
weight levels, sales force numbers, etc. These models can be of many types,
but multiple regression is the workhorse of most marketing mix modeling. Regression
is based on a number of inputs (or independent variables) and how these relate
to an outcome (or dependent variable) such as sales or profits or both. Once
the model is built and validated, the input variables (advertising, promotion,
etc.) can be manipulated to determine the net effect on a company’s sales
or profits.
If the president of a company knows that sales will go up $10 million for every
$1 million he spends on a particular advertising campaign, he can quickly determine
if additional advertising investment makes economic sense. But, in a broader
sense, a deep understanding of the variables that drive sales and profits upwards
is essential to determining an optimal strategy for the corporation. So, marketing
mix modeling can assist in making specific marketing decisions and tradeoffs,
but it can also create a broad platform of knowledge to guide strategic planning.
From a conceptual perspective, there are two main strategies to pursue in
marketing mix modeling. One is longitudinal; the other is cross-sectional or
side-by-side analysis. In longitudinal analyses, the corporation looks at sales
and profits over a number of time periods (months, quarters, years), compared
to the marketing inputs in each of those time periods. In the cross-sectional
approach, the corporation’s various sales territories each receive
different marketing inputs at the same time, or these inputs are systematically
varied across the sales territories, and are compared to the sales and profit
outcomes. Both methods are sound, and both have their place. Often, some
combination of the two methods is the most efficient.
Regardless of method, marketing mix modeling can be successful only if accurate
and highly specific data are available upon which the modeling can be based.
The greatest barrier to successful modeling is always a lack of relevant,
specific, accurate data. So, the first step in any modeling effort is designing
the data warehouse that will support the modeling. The next step is collecting
and cleaning all of the historical data and entering it into the data
warehouse, and then cleaning and entering new data on a continuing basis.
Clean, accurate, highly specific data is absolutely essential to successful
modeling. The data must be specific to individual brands and product lines, not
the company as a whole. Attempting to model at the corporate (or aggregate)
level rarely works because what’s going on in one part of the company is
canceling out or confounding what is going on elsewhere in the company. Here
are some types of data to consider when developing the data warehouse:
-
Economic data. Employment and unemployment,
discretionary income, inflation rates, gross domestic product, interest rates,
energy costs, etc. An understanding of the effects of general economic
variables is vital to building sound models.
-
Industry data. What are the trends in the specific
industry? Is the market for the product or service growing? What is the rate of
growth? Is international trade affecting the industry? Are important geographic
differences evident within the industry?
-
Product category data. What are the trends in the
specific product category? For example, is the refrigerated soy milk category
growing? At what rate? How does this growth vary by geographic region? What are
the trends by brand?
-
Product lines and SKUs (Stock Keeping Units). What is
the history of each major brand within the category? What new products or new
SKUs have been introduced, and when, for each major brand? What is the history
of private label brands and SKUs in the category?
-
Pricing data. A history of average prices for each
SKU in the category is essential. Pricing is almost always an important
variable.
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Distribution levels. What is the history of
distribution levels for each product and SKU? What is the quality of that
distribution? Average number of shelf facings per SKU?
-
Retail depletions. It’s essential to have a
clean measure of sales to end-users, undistorted by fluctuations in
inventories. Factory shipments are worthless for modeling purposes, in most
instances. Retail take-away (or retail depletions) in dollars and in units
(ounces, pounds, cases, etc.) is the most common measure of sales to consumers.
The goal is to accurately measure sales to ultimate users (the people the
marketing efforts are focused upon).
-
Advertising measures. Money spent on media
advertising is seldom useful by itself. The media advertising must be
translated into television GRP (gross rating point) equivalents, or some other
common “currency.” That is, the print advertising, the radio
advertising, the online advertising, etc. must all be converted into common
units of measure (typically, television GRP equivalents). The money spent by
specific media type (adjusted for comparative effectiveness) is another way of
weighting media inputs as variables. All of this is apt to prove worthless,
however, if copy-testing scores are not included for each of the ads. A media
plan of 100 GRPs per week might have no effect if a weak commercial is run, but
might have great effect if a terrific commercial is aired. Likewise, the exact
media schedule is important, and the length of time each commercial is on the
air must be considered because of wear-out effects.
-
Consumer promotion. Consumer (or end-user) promotions
come in many forms, but the primary characteristic of these promotions (as
compared to advertising) is the immediacy of the effects. Promotions are
designed to have powerful, short-term effects on sales. Temporary price
reductions, cents-off coupons, and buy one/get one free are examples of common
consumer promotions. These promotions must be understood, measured, and
incorporated into the models. If not fully comprehended, the promotion effects
could easily overwhelm the modeling effort.
-
Trade promotion. These promotions usually take the
form of discounts or allowances given to the trade in order to stage in-store
promotions of some type (temporary price reductions, end-aisle displays,
in-store signage, local advertising, and so on). Trade promotions must be fully
understood and included within the models because of the sales fluctuations
they cause. When the manufacturer offers one dollar off the price of each case
for 30-days (a typical trade promotion), the retailer is very likely to take
actions to increase sales of that brand.
-
Sales force effects. Every company and industry are
different, but the nature and strength of a company’s sales force (and
how it is organized, managed, and compensated) can create variables for the
marketing models. Sales organizations tend to be very expensive, so it’s
generally worthwhile to try to include sales force variables within the models.
-
Service effects. If services are an important part of
the customer’s experience in buying and/or using a product, then this
variable must be measured and incorporated into the models. For example, if a
new product must be installed by a service technician, then the interaction
between customer and technician can be a major variable, and must be tracked
with some type of customer satisfaction survey.
Depending on the industry and product category, other variables might come into
play as well. Every company and every brand are unique, and identifying all of
the relevant variables, figuring out how to measure them, and getting those
variables into the data warehouse are the most difficult parts of establishing
a successful modeling program. Most importantly, the data warehouse must be
carefully maintained over time and constantly updated, because marketing
modeling cannot be a one-time thing. The models must be calibrated and
reweighted on a regular basis, at least once a year. Many companies hire one or
more full-time employees devoted to tracking down relevant data, cleaning it,
coding it, and getting it into the data warehouse. Often, the analytical firm
guiding the modeling will place employees on-site to help insure that the data
warehouse is properly maintained.
Remember, that the modeling must be specific to an individual brand (or narrow
line of business), because what works for one brand or one company might not
work for the next brand or the next company. As a company learns what drives
its individual brands, commonalities are often found that make it easier, and
less costly, to build marketing models for its other brands.
Here are some additional rules of thumb to guide the modeling work:
-
Beware of threshold effects. Often a marketing input
(print advertising, for instance) never reaches a measurable threshold and,
therefore, does not show up as important in the models. But if the print
advertising’s budget had been slightly greater, perhaps it would have
shown up as a meaningful variable (i.e., it would have reached the threshold of
effectiveness).
-
Be sensitive to “lagged” effects. Some
marketing inputs have immediate effects, while the effects of other inputs are
“lagged” (that is, occur over time or occur at a later point in
time). For example, media advertising tends to have short-term effects on
sales, as well as longer-term effects on sales.
-
Keep it simple (at least in the beginning). Focus the
modeling efforts on a limited number of major marketing variables (the big
budget items). Don’t clutter up the models with a large number of trivial
variables that complicate and confound the modeling work. Once the major
variables are truly understood, then smaller variables can be explored.
-
Be realistic. It may take several years of diligent
effort before the marketing mix modeling begins to pay off. There are no
instant cures or short-term solutions. It is hard work, trial and error, and a
long-term search for marketing truth.
-
Seek top management commitment. Involve the senior
leadership of the corporation in the modeling effort, especially at the initial
planning stages. Their understanding of the nitty-gritty details of the
industry, the company, and the brands will help ensure the success of the
modeling effort, and will encourage the acceptance, dissemination, and use of
the results.
Who should do the modeling work? Some large companies have internal modeling
departments, but most companies will outsource the modeling and analytical
work. The modelers, ideally, should have an in-depth understanding of marketing
and marketing research, so that they really understand the complexities of the
marketing variables they are trying to simulate. True, the model builders need
statistical and mathematical skills, but without the marketing knowledge and
marketing research experience, the modeling effort is not likely to be very
successful.
Lastly, the issue of cost and ROME (return on modeling effort) must be considered.
To set up and operate a comprehensive marketing mix modeling program can cost
hundreds of thousands of dollars a year, or even millions per year for a large,
multi-brand company. Does your organization have the stomach for that kind of
ongoing investment? Will your company really use the results? Will senior management
heed the findings? Will the learning be disseminated throughout the organization
to improve strategic planning? Every company must ask itself these hard questions,
but if the answers are positive, and the company is willing to pursue objective,
scientific truth about its marketing efforts, then marketing mix modeling can
lead to sustained, long-term sales growth and to improved profitability.
Copyright © 2006 by Decision Analyst, Inc.
This article may not be copied, published, or used in any way without written
permission of Decision Analyst.
Additional Resources from Decision Analyst
To contact the author, Jerry W. Thomas, please call 1.800.262.5974 or
email him at jthomas@decisionanalyst.com.
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