Direct marketing campaigns are truly effective when you
precisely target customers likely to buy from you. This is done by Profiling
and Modeling prospects and clients.
Dumb mass mailings are replaced with “surgical” campaigns
that market to specific customers with accuracy using technology that is now
available. Today, it’s possible to
collect an enormous amount of information about customers, but to use it
effectively you use it in “profiling” and “modeling”.
Both of these techniques are ways of applying external data
to possible clients. They can be used to
prospect for business or to zero-in on existing customers for your
mailing. The goal is to predict behavior
based on what you know about your customers.
These two methods are not mutually exclusive, and marketers
often use them together. The difference
is that profiling data is overlaid against an existing client database, and has
a long life span. It can be used for several mailings, and in contrast modeling
is used to sharpen the focus of a specific mailing.
In profiling start with the premise that you don’t want to
deal with a customer segment, but rather an individual customer. Break up your client segment into clients who
share similar tastes and buying habits.
Then use demographic and behavioral information to create a useful
snapshot of the customer.
Begin to gather this information from your existing customer
database noting such things as frequency of purchases, buying habits, responses
to marketing offers, and repeat purchases. Then start with your perceived
prospects using alternate sources of data from purchased sources. Use all this data to break your customers
into clusters that share purchasing traits.
Obviously, profiling and modeling add to the cost of your
mailing project. You may wonder why you shouldn’t just stick to the old method
of “recency-frequency-monetary” (RFM) analysis. The reason is that for RFM to
work effectively you need data on the client’s purchasing habits, and that’s
the rub! It only works for your existing
customer and is of no use in finding potential clients.
What makes profiling/modeling cost effective is found in
three current trends.
- Rising
mailing costs.
- Computers
able to compute mountains of data rapidly.
- Higher
quality customer data available.
In the past, direct marketers could mail out 400,000
mailings to find a strong market of 40,000 (1 customer out of 10 mailings was
average). The dramatic increase in the
cost of paper and postage has made this practice prohibitively expensive.
Computers today are capable of doing millions of
computations per second. This makes
analyzing mountains of data possible and not unthinkable anymore.
Higher quality customer data is more available today, and
there are more sources available for obtaining it than ever before.
The result is that you can afford to do a lot of
number-crunching before you spend a penny on postage. You can also weed out the useless names and
mail only to your most likely prospects.
There are 6 factors to consider when building customer
profiles:
- Affinity
profiling – analyzes current buying habits to better match customer to
product. Knowing what kinds of product a particular customer is buying
gives you the ability to build an “affinity matrix” showing what related
products would stimulate more sales from him/her.
- Demographic
and psychographic data is also used for profiling. Demographics tells you
a client is a 29-year-old, unmarried, male who earns $45,000 and drives a
2-year old Lexus. Psychographic
data suggests that single young men who buy status-symbol cars are
excellent prospects for other highly visible status products. Combining the two types of data yields a
customer profile to someone marketing, say, the latest cellular phone.
- Lifestyle
Coding is used to enhance basic demographic information. Simply put – people in certain
demographic categories will likely have similar hobbies and other
interests.
- Mapping
is another useful tool in building customer profiles. Census data, topographic information,
geographic coordinates, and zip code+4 postal data can be fed into a
computer yielding maps that can be color coded to certain characteristics
of consumers in particular neighborhoods.
- Cluster
Coding is a popular means of grouping people by lifestyle
characteristics. Remember hearing
the terms “Urban Up-and-Comers, Settled In, and White Picket Fence” used
to describe market segments? These
are known as “clusters”, each given a score according to affluence, social
position, activities, and aspirations.
- Survey
data – can be used to enhance demographic, lifestyle, and other data to
build a profile. This is collected
directly from your customers via application forms, surveys, and credit
histories. This provides a more
personal portrait of the customer than merely census or demographic data.
The Direct Marketer of today has become more of a “surgeon”
than a “shotgun hunter”. It’s no longer
cost-effective to shoot at 400,000 prospects to get 40,000 clients, and with
computers it’s easier to slice-and-dice data today.
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