How To Measure Future Customer Value and Manage it
with E-mail
First published: Business
Intelligence Toolbox, 2/12/01
"How
To Measure Future Customer Value and Manage it with High ROI E-mail"
The following article is from
the advanced topics section; you might want to take the tutorial Comparing the Potential Value
of Customer Groups before reading it. If you would rather see a general
description of the Drilling Down method and specific benefits first, go to
the home page.
Folks, here's an honest to goodness, classic customer retention
marketing program, suitable for automation, complete with metrics
and testing methodology. This is the first program I developed for
interactive customer retention at Home Shopping
Network, averaging a 135% net ROI at 60 days, month after
month.
This is the exactly the kind of work you can do "pre-CRM" to
determine whether CRM techniques will increase the value of your customers
and by how much. Going through the following process will also
identify any special needs you may have to consider when choosing a CRM
package.
It's an example of the kind of information found in my
book, similar in format, using examples and a step by step
approach. This version is not as detailed as typical
explanations in the book (attention spans are short on the
Web).
Customer Retention
and Valuation Concepts
Have you ever heard somebody refer to his or her customer list as
a "file"? If you have, you were probably listening to someone who
has been around the catalog block a few times. Before
computers (huh?), catalog companies used to keep all their customer
information on 3 x 5 cards.
They’d rifle through this deck of cards to select customers for
each mailing, and when a customer placed an order, they would write
it on the customer’s card. These file cards as a group became
known as "the customer file," and even after everything became
computerized, the name stuck.
Who cares? It happens that while going through these cards by
hand, and writing down orders, the catalog folks began to see
patterns emerge. There was an exchange taking place, and the
data was speaking. What the data said to them, and what they
heard, were 3 things:
1. Customers who purchased recently were more likely
to buy again versus customers who had not purchased in a while
2. Customers who purchased frequently were more
likely to buy again versus customers who had made just one or two
purchases
3. Customers who had spent the most money in total
were more likely to buy again. The most valuable customers
tended to continue to become even more valuable.
So the catalog folks tested this concept, the idea past purchase
behavior could predict future results. First, they ranked all
their customers on these 3 attributes, sorting their customer
records so that customers who had bought most Recently, most
Frequently, and had spent the most Money were at the top.
These customers were labeled "best." Customers who had
not purchased for a while, had made few purchases, and had spent
little money were at the bottom of the list, labeled "worst."
Then they mailed their catalogs to all the customers, just like
they usually do, and tracked how the group of people who ranked
highest in the 3 categories above (best) responded to their
mailings, and compared this response to the group of people who
ranked lowest (worst). They found a huge difference in
response and sales between best and worst customers. Repeating
this test over and over, they found it worked every time!
The
group who ranked "best" in the 3 categories above always had higher
response rates than the group who ranked "worst." It worked so
well they cut back on mailing to people who ranked worst, and spent the money saved on mailing more often to the group who
ranked best. And their sales exploded, while their costs
remained the same or went down. They were increasing their
marketing efficiency and effectiveness by targeting to the most
responsive, highest value customers.
The Recency, Frequency, Monetary value (RFM) model works
everywhere, in virtually every high activity business. And it
works for just about any kind of "action-oriented" behavior you are
trying to get a customer to repeat, whether it’s purchases, visits,
sign-ups, surveys, games or anything else. I’m going to use
purchases and visits as examples.
A customer who has visited your site Recently (R) and Frequently
(F) and created a lot of Monetary Value (M) through purchases is
much more likely to visit and buy again. And, a high Recency /
Frequency / Monetary Value (RFM) customer who stops visiting
is a customer who is finding alternatives to your site. It
makes sense, doesn’t it?
Customers who have not visited or purchased in a while are less
interested in you than customers who have done one of these things
recently. Put Recency, Frequency, and Monetary Value together
and you have a pretty good indicator of interest in your site at the
customer level. This is valuable information for a business to
have.
Assuming the behavior being ranked (purchase, visit) using RFM
has economic value, the higher the RFM score, the more profitable
the customer is to the business now and in the future. High
RFM customers are most likely to continue to purchase and visit, AND
they are most likely to respond to marketing promotions.
The opposite is true for low RFM customers; they are the least
likely to purchase or visit again AND the least likely to respond to
marketing promotions they receive.
For these reasons, RFM is
closely related to another customer direct marketing concept: LifeTime Value
(LTV). LTV is the expected net profit a customer will
contribute to your business as long as the customer remains a
customer. Because of the linkage to LTV, RFM techniques can be
used as a proxy for the future profitability of a
business.
High RFM customers represent future business
potential, because the customers are willing and interested in doing
business with you, and have high LTV. Low RFM customers
represent dwindling business opportunity, low LTV, and are a flag
something needs to be done with those customers to increase their
value.
RFM scoring of individual customers is a catalog and
TV shopping technique used to select which customers can most
profitably be promoted to. There is a more simplistic
application of RFM web sites can use to easily track the quality of
overall customer retention, without going through the effort of RFM
scoring individual customers. This tracking can be used to
measure customer retention and trigger profitable customer
retention promotions. The basic technique creates a platform
for learning the key customer behavior metrics needed to manage
customer retention, and provides a foundation for building a more
comprehensive effort down the road.
Measurement: How do I know when I have a customer
retention problem?
Here's a real life story I have seen repeated over and
over. Many companies judge their best customers by looking at
just Frequency of activity, either purchases or page views. They
set a threshold, like 25 purchases or 100 page views, and then count
the number of customers who have achieved this goal. As long
as this number of customers keeps growing, they think the business
is on track and doing fine.
Then someone with experience in database marketing
does an analysis, and the company finds out that 60% of these
"best customers" haven't purchased or visited in over 12 months! So
they desperately try to e-mail these people offers and get them to
come back, but get truly lousy response rates. The customer
relationship is already over, and the company has lost a ton of
their best customers because they have no formalized, proactive
customer retention program. These defected best customers are
a troubling sign for the future value of the business and more
or likely to follow.
Customer tracking by Frequency is a rear-view mirror,
because it doesn't take into account the future potential of a
customer to contribute to revenues. You have to track
customers by Recency to predict future value, because Recency is the
strongest indicator of future customer activity.
If you have been tracking
the loyalty of your customers as a group using the Drilling
Down visual method, the equivalent of the above scenario would
be seeing the Frequency Hurdle
Rates rising while the Recency Hurdle Rates are falling, a
classic sign of failing customer retention.
You can act to slow or prevent some of this customer
attrition by implementing a basic customer retention measurement and
management program using e-mail. The following program uses
customer Recency to categorize customers and create a framework for
profitability measurement and automation of the retention
program.
1. Choose the activity you wish to measure and
manage the future value of: purchases, page views, downloads,
click-throughs, whatever "action metric" is important to you and the
business model.
2. Choose a time metric to define customer
Recency in this activity. Blocks of 30 days are pretty
standard and also tie in with other monthly reporting and
operational cycles when databases might be updated.
Over-achievers with significant database horsepower might use weekly
data, especially if you are looking at visits and you are a
time-driven site, for example, a site focused on news. You
want the freshest data you can have to use these techniques; fresher
data = better results.
3. Identify customers who have engaged in the
activity you are measuring and determine the date these customers most Recently engaged in the activity. If you are using
30 day blocks of time, you would identify customers last engaging in
the activity in the past 30 days, in the past 31 - 60 days, in the
past 61 - 90 days, and so forth. Go out at least 6 months in
30 day blocks. After 6 months, you can have a count for
"everybody else" who has not engaged in the activity for over 6
months.
4. Print your report. This is a report of
the number of customers who last (most Recently) engaged in the
specific activity a certain number of days ago. A customer is
represented only once in any of the 30 day blocks below; remember,
we are looking only at the most Recent date the customer engaged in
the activity. An example using purchase Recency could look
like this:
Table 1 - Customer Recency of Purchase
<
= 30 days |
31
- 60 days |
61
- 90 days |
91-
120 days |
121
- 180 days |
180+
days |
5786 |
4356 |
3872 |
2577 |
1198 |
6352 |
Read: "5,786 customers last purchased within the past
30 days, 4,356 customers last purchased 31 - 60 days ago, 3,872
customers purchased 61 - 90 days ago..."
or it might look like this:
Table 2 - Customer Recency of Purchase
< = 30
days |
31 - 60
days |
61 - 90
days |
91- 120
days |
121 - 180
days |
180+
days |
1198 |
2577 |
3872 |
4356 |
5786 |
6352 |
Read: "1,198 customers last purchased within the past
30 days, 2,577 customers last purchased 31 - 60 days ago, 3,872
customers purchased 61 - 90 days ago..."
Which of the two tables above represents the business
with the most future potential? Which table represents the
business where the most customers are likely to continue engaging in
the activity being profiled?
If you guessed Table 1, you're right. Both these
tables represent businesses with a total of 24,141 customers, but
there are many more Recent customers in the Table 1 business
then there are in the Table 2 business. Since the more Recent
a customer is, the more likely they are to repeat an activity, the
business in Table 1 can expect more business out of their current
customers in the future than the business in Table 2. The
business is Table 1 has much better customer retention, and the
customers on average have higher future value. Real world
visual examples of visitor Recency comparable to the ones above can
be found here.
OK, now what? Well, if you do this exercise
every month, you can compare trends in the 30 day customer Recency
blocks and watch the customer Lifecycle
play out before your eyes. In a healthy business, the number
of customers in the most Recent block should grow faster than the
numbers in the other blocks. If the number of customers in the
most Recent block is shrinking while the numbers in the other blocks
are rising, you've got a customer retention (future value) problem,
and need to take action. Note: You don't want to see growth in
the 180+ block at all, but it's inevitable, and the longer you are
in business, the larger this number will grow. You should be
most concerned with managing (reducing) growth in the blocks from 60
days to 180 days, where you can still take effective, profitable
action.
Management: How do I do something about customer
retention problems?
Customer Retention management involves trying to drive
as many customers as you can into the most recent customer block as profitably as possible.
Think of it this way. You want customers to
remain active and Recent with you so they are generating
revenues. Some customers will do this without any special
marketing attention from you. Others will need an
incentive. High ROI customer retention programs focus on only
the customers who need an incentive. By approaching retention
this way, you avoid spending precious marketing dollars where they
are not needed and can increase them where they are needed. In
other words, if you allocate the budget away from customers with a
low likelihood to defect (the most recent customers), you can put
more money per customer to work against customers who are more
likely to defect (more distant customers).
Generally, the sweet spot for customer
retention activity, the point at which spending money retaining a
customer generates the highest ROI, is somewhere in the middle
of our chart above. Spending money on very Recent customers or
very distant customers is not usually profitable. How do you
find the sweet spot for your business?
Check out Table 3 below:
Table 3 - Response Rate by Customer Recency
< = 30
days |
31 - 60
days |
61 - 90
days |
91- 120
days |
121 - 180
days |
180+
days |
40% |
20% |
10% |
5% |
2% |
1% |
If you e-mail the exact same offer (say, $3 off
anything on the site, or a free download, or promotion of new
content) to all the customers in this table, you will get a response
rate grid similar to the one above. What's important to
understand here is not the actual numbers, because they will vary
depending on the offer and media used. What is
important to understand is the relative differences in
the response rates. You can expect the most Recent customers
to have a very high response rate, and the response rate to drop
sharply as customers get less Recent. The most Recent
customers will generally be 8 to 40 times more responsive than the
least Recent customers.
So how do you turn all this into something you can
use? You create a customer retention test, measure the
results, and turn the test into a monthly customer retention e-mail
promotion. It's a bit complex to set up the first time test,
but once you complete the test promotion, you will either have your
systems set up to measure the results every time, or you can just
run a test periodically to make sure your results are still on
track. This process can be totally automated.
Here's what you do:
1. Select an equal percentage of customers from
each of the 30 day blocks on our Recency grid above. A good
number for a test like this is a 10% random sample of
the customers in each block. It's very important the sample is
truly random. This sample will receive your promotional
e-mail; these customers are called the test group.
2. Make sure you can identify every
customer (not just the ones selected for the promotion) by their
Recency block before you do the test. Either tag their
record somehow or make sure you can determine when they last engaged
in the activity being promoted before the date the test e-mail is
sent. Customers not receiving the promotion (90% if you used
10% for the test group) are called the control group.
3. E-mail the exact same offer to each 10% of
the block group as a single promotion, making sure all other
potential variables are equal. For example, don't send the
e-mail to different Recency blocks on different days of the
week. Tabulate response by Recency block, including total
sales and cost of goods sold. If you can't get the actual cost
of goods sold, use the average for your business.
Pure content businesses would look to potential ad
sales generated for the "sales" metric in the following
formulas. If you perceive you have "no costs" to doing a
promotion, there is no need to do the following ROI analysis.
May I humbly submit you might consider offering something of value
(cost to you) if you're serious about getting defected customers to
return to your site, for example, great new content you have to
pay someone to write. The beauty of this method is, after the
test, you are only making an offer to those customers you are
likely to lose and most likely to get back, so you can afford
to spend more per customer on any promotion efforts.
4. Use the following formula to look for your sweet
spot. You want to do this calculation for each 30 day Recency
block in the promotion
Start: Sales Generated by Test Group minus:
Cost of Goods Sold to Test Group
minus: Cost of E-mail Promotion to Test
Group
minus: Cost
of Discount (or other incentive,
or
special content) to Test Group Equals: Promotion Profit by 30 day
customer
Recency Block Divide by: Number of customers in Test
Group Equals: Promotion Profit per Customer
by
Recency Block
5. Now, calculate the profit per customer in
each Recency block during the time period of the promotion
who did not receive the promotion. Note: this could be
done using a 10% random sample of
these people, if you wish. Given a choice, I'd use the whole
group.
Start: Sales Generated by Customers
NOT in
Promotion (Control Group) minus: Cost of Product Sold Equals:
Profit by 30 day customer
Recency
Block Divide by: The number of customers in
Control Group by Recency Block Equals: Profit per Customer by Recency
Block
6. Compare the profit per customer by Recency
block of customers in the Test Group versus customers in the Control
Group. Subtract the profit per customer in the Control Group
from the profit per customer in the Test Group. This
difference represents the profit due to your promotional efforts,
the profit existing because you spent money on one group of
customers versus the other group of customers where you spent no
money and these customers did not receive any promotion.
It should look something like this:
Table 4 - Profit per Customer by Recency Block
Recency
Block |
< = 30 days |
31-
60 days |
61-
90 days |
91-
120 days |
121- 180 days |
180+ days |
Test
Group |
$.20 |
$.30 |
$.40 |
$.20 |
-$.10 |
-$.30 |
Control
Group |
$.70 |
$.50 |
$.30 |
$.20 |
$.10 |
$0 |
Test -
Control |
-$.50 |
-$.20 |
$.10 |
$0 |
-$.20 |
-$.30 |
The most profitable 30 day block (61 - 90 days for
this example) in the promotion is your sweet spot. This is
where you should focus this customer retention promotion. Each
month, select the customers who have "rolled over" into this block
and e-mail your promotional offer to them.
For example, if the 61 - 90 day Recency block is the
most profitable for you, each month, select all customers who have
not engaged in the activity you profiled (purchases, page views,
downloads, click-throughs, whatever "action metric" you are
tracking) for 61 - 90 days, and send them your promotion.
People who respond and engage in the activity become
"30 day customers" again, and are now much more likely to
continue in the behavior after the promotion. Using this promotion
over time, you will begin to shift your whole customer base to a more
recent status. Or said another way, your business will start to look
more like the one in Table 1 rather than the business
in Table 2. You will be increasing the future
value of your customers and making money at the same time!
Once you do the work of the initial test, this simple
retention promotion becomes a very easy to execute, regular program
that can serve as the base for a building a customer retention
effort. Further testing of offers, discount levels, and so on
can be used to optimize the profitability of the promotion.
From there, automation of this promotion through the CRM engine or
other internal processes creates a highly efficient and effective
"lights out" promotion which automatically minds some of your
customer retention problems for you.
Note how linear the profits are by Recency in the
Control Group. This is why Recency in the customer base is so
important; the most Recent customers are generally the most
profitable customers. If you are wondering why the most Recent
customers were the least profitable when promoted to, you need to
understand the concept of subsidy
cost. Subsidy cost is the primary reason why the net
profit difference between the test and control groups (Test -
Control in the table above) is similar to a Bell Curve concept,
rising then rolling over and falling. Subsidy cost can be
measured and best (usually most Recent) customer programs designed
to avoid subsidy costs. There is an entire chapter devoted to
this subject, with mathematical models describing it, in the Drilling
Down book.
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