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Getting the right information
is essential to making the right decisions.
Good research can help you make the right
decisions by providing you with the right
information.....
Key Driver Analysis:
With Key Driver Analyses, the focus is placed
on identifying the “key drivers” of satisfaction,
loyalty, or retention. The goal of this type
of analysis is to identify the smallest set
of attributes (performance/features/attributes)
that has the greatest capacity to alter/improve
overall satisfaction, loyalty, or retention
– those elements that are most important in
driving satisfaction/loyalty/retention. In
general, we use two broad categories of methods
are used:
- Indirect Methods – “back room” statistical
and/or mathematical methods used to identify
key drivers. Three of the more common
methods used to identify underlying relationships
and relative importance are correlations,
factor analysis, and multiple regression.
These types of methods can often be easily
used with existing CSM databases and are
minimally intrusive. However, the results
are limited to the quality/depth of the
information available as well as the multicollinearity
of the data.
- Direct Methods – methods used to identify
key drivers directly from customers in
a separate research initiative. Some of
the more common methods used to identify
relative importance are importance ratings,
trade-off methods (rank ordering, constant
sum, and pair preference), and card sorts.
These types of methods require separate/additional
research, but greatly maximize the likelihood
of discovering new issues because they
are not limited by the information currently
in-house.
Satisfier/Dissatisfier
Analysis™:
The Satisfier/Dissatisfier Profile™ is a method
of analyzing customer satisfaction, loyalty,
or retention information developed by Bosma Research International. The Profile
reveals the extent to which meeting or not
meeting customer expectations across specific
performance attributes affects overall satisfaction,
loyalty, or retention. In particular, the
Profile identifies satisfiers (things that,
if done well, create satisfaction, loyalty,
or retention) and dissatisfiers (things that,
if done poorly, create dissatisfaction, loyalty,
or retention).
The Profile can best be described as a composite
representation of the specific aspects that
promote satisfaction/loyalty/retention as
well as the aspects that tend to arouse dissatisfaction/disloyalty/defection.
The power of the Profile can be viewed in
the following two examples.
The Results of a Traditional
Key Driver Analysis:
The traditional key driver analysis can identify
the relative importance of Scale of Operations,
Aircraft, In-flight Service, and On-Time Performance
as key drivers of overall customer satisfaction
for this market segment.

The Results of the Same
Scenario Using a Satisfier/Dissatisfier Analysis™:
An analysis of the same scenario using a Satisfier/Dissatisfier
Analysis™ reveals that with this particular
market segment, the negative impact and/or
consequences of not meeting customers’ expectations
across these four service areas is substantially
greater than the potential increase to be
gained. It becomes very clear that there is
little room for error across any of these
four service areas with this customer group.
As a result, a service priority for the airline
would likely need to be doing things right
the first time with this customer group.

The Results of the Same
Satisfier/Dissatisfier Analysis™ for
a Different Segment:
This second example presents both the power
and capacity of the Profile to identify clear
differences in service/product expectations
across different market segments.

Structural Equation
Modeling (SEM):
SEM is an analytic procedure used to test the
directional relationship among variables in
a customer satisfaction, loyalty, or retention
model. The first step in the process is to
develop a structural (conceptual) model that
best represents your understanding of the
underlying relationships and relative importance
of the different variables. Factor analysis
and multiple regression can be used to help
you develop your model. The second step is
then to test/examine the statistical relationship
among the variables using statistical procedures
such as LISREL or AMOS.
Developing A Structural
Model – The structural model represents
your hypothesis about the relationships among
the individual attributes/variables (performance/features/attributes)
as well as the sets of scales/constructs that
have evolved from combinations of the attributes.
A structural model might be constructed as
follows:

Building The Measurement
Model – The second step is then to
test/examine the statistical relationship
among the variables using statistical procedures
such as LISREL or AMOS. It is during this
phase of SEM that the statistical/mathematic
relationships among individual attributes/variables
(performance/features/attributes) and the
sets of scales/constructs developed are generated.
SEM can provide insights into the relationships
that exist within a model:
- variables that are related with neither
one having an impact on the other one
or another
- variables that are related in which one
of the variables is an influencer of the
other
Market Segmentation:
Market segmentation is about defining markets
and competitive environments in ways that
are relevant for understanding and influencing
the competitive behavior of customers. It
is the process of categorizing customers (or
potential customers) into segments that are
maximally homogeneous within each group while
being maximally heterogeneous between groups
and then deciding which group(s) offer the
greatest opportunity for a given product/service.
Many businesses today spend a great deal of
time and effort conducting segmentation and
customer satisfaction studies as a means of
understanding current/potential customer behavior,
targeting service/product delivery “hot spots”,
and building customer loyalty. All too often,
segmentation and customer satisfaction measurement
activities are conducted independently of
one another, and they often fail to create
a clear linkage between customer loyalty strategies
and organizational effectiveness, bottom-line,
and process effectiveness measures. A comprehensive
customer measurement system needs to have
all of these components integrated.
By definition market segmentation is the process
of categorizing consumers into groups or “segments”
that are maximally homogeneous within each
group (based on some unique set of distinguishing
characteristics) while, at the same time,
being maximally heterogeneous between groups.
In general, there are two approaches/types
to segmentation:
- Descriptive Segmentation – segmentation
conducted to identify and/or describe
the differences between different groups
of consumers – provide little or no basis
for understanding customer behavior or
changing choice behavior.
- Predictive Segmentation – segmentation
conducted to provide understanding of
the differences between different groups
of consumers and through that understanding
provide a means of predicting and changing
choice behavior.
Trade-Off Analysis:
Trade-off analysis allows you to study the
impact of product/service features, pricing,
packaging, and competitive changes all at
the same time. Begun as a technique named
Conjoint Analysis back in the 70's, trade-off
analysis is a family of marketing research
techniques that can tell you the collective
set of product/service features that can be
built into a new product to generate the most
sales, or which price will maximize your gross
profit and market share, or who will be your
core customer for this new product, or how
many you can expect to sell in the first year.
In essence, trade-off analysis allows the researcher
to throw all of his/her options into a carefully
constructed questionnaire. Respondents are
then asked a series of product purchase intent
questions. The data are then subjected to
a variety of advanced statistical procedures
which are then used to create mathematical
models – these models allow decision makers
to simulate the marketplace in great detail
and with surprising accuracy.
Trade-off models can be very useful and allow
us to answer a variety of questions, some
of which include:
- Which product/service features and/or
combinations of product/service features
should we include in the final product?
- What price should we charge? Who should
we be selling the product/service to?
- To what extent do customers make trade-offs
between product, price, service, and brand
attributes? What is the geographic distribution
of likely customers?
- How can we increase/establish market share?
How can we ensure that our current customers
stay our customers?
In the context of a new product development
study, trade-off analysis can also be used
to help develop an overall strategy for introducing
a new produce/service to the marketplace.
Trade-off models can be used to obtain answers
to following types of questions:
- Which of the potential product/service
configurations should we pursue?
- What value propositions should be offered
for a given product/service configuration?
- What positioning should be used for each
product/service configuration for a new
entrant relative to its competitors?
- Where should a new company deploy first?
- What marketing tactics should a new entrant
to the marketplace pursue to maximize
market share and presence?
- What target markets should the new entrant
pursue?
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