Title: Direct Marketing Research and Experimentation
1Direct Marketing Researchand Experimentation
2Research Serves Direct Marketers
- Fact-Finding
- Information Gathering
- Problem-Solving
- Decision-Making
3Need for Marketing Research
- Managers must have good, accurate, timely
information with which to make decisions. - Marketing research helps to gather the needed
information. - The results of research can be quantitative
and/or qualitative. - Valid research measures results not opinions.
4Problem Structure
- How much advertising is needed?
- How will the direct marketing mix be selected?
- How will our resources be utilized?
5The Nature of Research
- Surveys vs. Experiments
- A survey looks at things the way they are. A
mailed questionnaire, for example, may attempt to
profile respondents to a product offer or
promotion strategy. It may seek to anticipate
future buying intentions to determine product or
service preferences to guide pricing decisions
or to measure attitudes, interests, opinions. - An experiment is designed to measure the effect
of change. What is the effect of a product
change? What happens when a price level is raised
or lowered? What is the result of selective
promotion to specific market segments? What is
the response influence of one promotion strategy
relative to others?
6Databased Research and Analysis
- My minds made up. Dont confuse me with
facts. - A characteristic of database-driven and directed
marketing is measurement and accountability for
actions. Decisions are based on facts, not
opinions. - Direct marketers build databases from facts,
relying not so much on responses derived from
survey, but more on conclusions derived from
experimentation.
7What Do Direct Marketers Test?
- Products and Services
- Media
- Offers/Propositions
- Copy Platforms
- Creative Formats
- Timing/Seasonality
8TEST THE BIG THINGS
9Sourcing Collecting Information
- Secondary Data
- Primary Data
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11- Primary data, collected via survey, can yield
information about - Behavior
- Intentions
- Knowledge
- Socioeconomic Factors
- Attitudes and Opinions
- Motivations
- Psychological Traits
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13How to Design An Experiment
- Control
- Randomization
- Statistically-valid sample size
14How to Track Responses
15Response rate break-even analysis
- Control vs. experimental packages
- Direct marketers test or experiment with
different offers and campaign themes to determine
which one generates the greatest response rate
16 Promotion Cost ------------------------
Break-even Number of Sales Unit Profit per Sale
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18Samples Estimations
- Random sample designs
- Simple Random Samples
- Systematic Random Samples
- Stratified Random Samples
- Cluster Samples
- Replicated Samples
- Sequential Samples
- Determination of sample size
19Lets first define the four terms confidence
level (z-value) limit of error, expected (or
actual) response rate and sample size -- that
enter into the calculation         Confidence
Level (Z-value) This is the value from a normal
distribution that corresponds to the chosen
confidence level. For example, the 90, 95, 99
confidence levels correspond to z-values of 1.65,
1.96, 2.58 respectively. Â Â Â Â Â Â Â Â Limit of
Error The number of percentage points by which
the researcher is allowed to miscalculate the
actual response rate. A 20 percent limit of
error, assuming a 1 percent response rate, for
example, could result in a range of actual
response as low as 0.8 percent to as high as 1.2
percent or, 1 ? 20 of 1. Â Â Â Â Â Â Expected
(Actual) Response Rate The number of times, in
percentage, that response is expected to
occur. Â Â Â Â Â Â Sample Size The number of
observations in the experiment, or test. This
is, for example, the number of pieces mailed in a
test from which the response is to be determined.
20To illustrate the use of the above formula, one
can determine the sample size required to be
mailed as a test when the expected response rate
is 1 the desired limit of error is ? 0.2 at a
confidence level of 95. Thus R 1 ...
0.01, expressed as a decimal 1 - R 99 ...
0.99, expressed as a decimal Z 1.96,
corresponding to a 95 confidence level E
0.2 ... 0.002, expressed as a decimal N
to be determined Substituting the above values
into the formula for the determination of sample
size, provides this solution N (0.01)
(0.99) (1.96)2 (0.002)2 (0.01
(0.99) (3.8416) (0.000004)
0.03803184 0.000004 9,508 pieces
to be mailed
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22Measurement of Differences
- Hypothesis testing
- Types of errors in hypothesis testing
- Statistical evaluation of differences
23 Hypothesis Testing Hypotheses are typically
stated in negative terms that is, a null
hypothesis (H0) versus an alternative hypothesis
(Ha) in a form such as the following H0 Direct
mail response from the test promotion is at or
below direct mail response from the control
promotion. Ha Direct mail response from the test
promotion is above direct mad response from the
control promotion. The null hypothesis, then,
states that direct mail response will not be
better than the control. Our measurement sets
out to disprove this null hypothesis.
24Types of Errorin Hypothesis Testing
- Type One
- Results when the decision-maker rejects the null
hypothesis even though it is, in fact, true ...
i.e., taking an action when one shouldn't - Type Two
- Results when the decision-maker accepts the null
hypothesis when, in fact, not true ... i.e., not
taking an action when one should.
25Assume that a sample has been properly selected
and is of an
adequate size. Assume further that an experiment
has been
designed and implemented in a valid manner. It
now remains for
the direct marketer to be able to recognize the
difference in the
response rate from a test and that from a
control, with some
degree of confidence and within an acceptable
limit of error.
26 Test Control Totals Response
A C A C Non-response
B
D B D
Total mailed A B
C D A B C D N
The statistic ?2 is computed as follows ?2
N ? (A x D) - (C x B) ? - N/22 (AB) x
(CD) x (AC) x (BD) Here is a sample
calculation Test Control Totals
Response 200 100
300 Non-response
800 900 1700 Total mailed
1000 1000 2000 ?2 2,000
x ? 180,000 - 80,000? - 1,0002 1,000 x 1,000
x 300 x 1,700 ?2 38.4 ... which is significant
at the 99 level since it exceeds the critical
value in the X2 table for one degree of freedom
for a significance level of 0.001, given as 10.83
27 STRUCTURING and EVALUATING AN EXPERIMENT
- State the hypothesis
- Develop, by a priori analysis, the assumptions
required and compute the appropriate sample size - Structure and perform the experiment
- Develop, by a posteriori analysis, statistics for
judging hypothesis validity - Make the decision