MEASURING DIRECT MARKETING EFFECTIVENESS 445
In the customer’s mind, five elements determine the value of a loyalty programme: cash
value, the number of options, aspiring value, relevance and convenience. The value should be
calculated as a percentage discount on the amount a consumer has to spend to be able to get
the reward. A free trip to a Caribbean island or a new car has a higher aspiring value than
a discount on a phone bill. Customers should also be able to choose from different benefits.
A programme is only relevant if the aspired benefit is within reach; if it takes years to collect the
necessary air miles to make a free trip it will not be of any relevance to a customer. If it takes
a lot of administration, whether for the customer or the retailer, a loyalty programme has a
small chance of success. This is what is meant by ‘convenience’.
Measuring direct marketing effectiveness
Direct marketing and interactive marketing are behaviour-oriented in nature, and therefore
research into the effectiveness of direct and interactive marketing campaigns will invariably
be tests of ‘counting’ behavioural response, e.g. the number of people responding to a free
phone number in a DRTV commercial.
Evidently, all communications effectiveness tests are aimed at subsequently improving the
communications effort. In direct marketing, which is essentially database-driven, the optimi-
sation of a direct mailing campaign can be based on response scoring models, i.e. a procedure
in which a number of indicators of behavioural response in the past are combined. A well-
known response scoring model is the RFM-model. For all customers in a database, three
behavioural response parameters are measured:
Recency: the time elapsed since the last purchase.
Frequency: the frequency with which a customer places an order.
Monetary value: the average amount of money a customer spends per purchase.
Obviously, the shorter the time elapsed since a customer placed an order, the more frequently he
or she buys something; and the higher the average amount of money spent, the more positive the
expected response is following the next mailing campaign.^70 For each of the three variables,
a number of categories can be defined, and each category can be given a ‘value’ or score rep-
resenting the importance of each category for future response. This is illustrated in Table 13.3.
Evidently, the values attached to each category are, to a certain extent, arbitrary, but they
can also be derived from the analysis of past response behaviour. The RFM values can now
be used selectively to mail those members of the target group that have the highest score on
one or two of the three factors, or on a combination of all three. It can, for instance, be
decided to mail only those customers that have a score of at least 80 on the recency value,
as well as a score of 30 on the frequency factor. Response scoring models can improve the
effectiveness of mailing or e-mailing campaigns. It is advisable, however, to pre-test a campaign
before sending it out to a sample of target group members.
Table 13.3 The RFM-model
Recency Score Frequency Score Monetary value Score
Last 6 months 100 Once a year 0 Less than €100 0
7–12 months 80 Between 2 and 4 times a year 30 More than €100 20
13–24 months 60 More than 4 times a year 70
25–36 months 30
37 months or more 0
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