Title: Primary Market Research
1Primary Market Research
2Module 4b Objectives
- Participants will
- define population, sample and sampling
- identify target population for PMR
- explain the rationale for choosing sampling
method and size - justify use of non-probabilistic sampling for
PMR - explain application of non-probabilistic sampling
to PMR.
3Sampling andPrimary Market Research
- Main input for product-planning Needs and
expectations of Product customers - Product customers end-users, clinicians,
caregivers, and/or other stakeholders - Primary market research captures relevant
information from all of them
4Target or Reference Population
- Group of people/objects that meet the criteria or
have the characteristics relevant to research
purpose - For PMR All product customers that possess the
information, knowledge and experience we are
seeking plus other pre-defined criteria such as- - low vision, wheeled chair user, left-handed,
(human factors) - working women, elderly over 65 living alone....
( demographics)
5Population Types
- Homogeneous Population
- Group members with relevant characteristics are
uniformly distributed throughout a Homogeneous
population. - Ex End-users of AugCom devices having similar
experience and perspectives on use.
6Population Types contd.
- Heterogeneous population
- Distinct sub-groups make up a Heterogeneous
population relevant characteristics are
uniformly distributed within sub-groups, not
across sub-groups - Ex Population comprised of users of AugCom
devices, their caregivers and clinicians, all
having related but different perspectives on
device use
7Heterogeneity vs. Homogeneity
- The information that people possess and which is
sought by PMR Dependent or Outcome variable - The variety in the information comes from
differences between people on other
characteristics age, experience. independent
variables - Ind. Variables gtdistinct subgroups gt
Heterogeneity in the population
8What is Sampling?
- Sample -part or subset of the whole group or
target population that research is focusing on. - Sampling - procedure by which to choose elements
(people or objects) from the target population to
make up a sample that has the same
characteristics as the parent group. - Purpose to describe or draw conclusions about
the population through the sample, without having
to study the entire group.
9Sample Characteristics
- Sample data should let us confidently draw
conclusions about population, so a sample should
represent the target population characteristics.
- Representation is required in experiment-based
research, because it allows accurate statistical
generalizations about the population. - In PMR, the reason for representation is to
increase our credibility in using sample findings
to describe the larger target population, rather
than statistical generalizations.
10Sample Characteristics
- In a sample representing a heterogeneous
population subgroups will have the same relative
frequency proportions as in the population with
respect to relevant characteristics. - Ex The number of wheelchair users, clinicians
and caregivers in a mixed focus group sample
should reflect their proportions relative to each
other in the larger, mixed population
11Sample Size is Important
- How many to include (sample size) is important
for representing populations. - Smaller the sample, more difficult to assure
inclusion of members of the smaller sub-groups of
population. - Especially true of heterogeneous samples.
- Ex. Those who use specific features like switch
scanning might not get into a small mix of AugCom
users.
12Restrictions on Sample Size
- Practical constraints reduce potential sample
size - Target population is reduced to accessible
population, for not everyone is accessible for
sampling. Ex. people in remote areas. - Not everyone in the accessible population can or
will participate. - Not everyone selected will show up.
13Sample size for PMR
- Experimental Research Statistical analysis
methods define the minimum sample size required
for accurate generalization. - PMR Optimal sample size is guided by
- Information needs. Ex In designing this
product, do we need broad coverage of all
features or narrow, in-depth focus on specific
features? - Sample type. Heterogeneous samples needs to be
bigger. - Cost, logistics scheduling, availability
14Sampling MethodsTwo Choices
- Random or probability sampling
- Non-probabilistic Sampling
15Random orProbability Sampling
- The preferred way of Experiment-based research.
- Most reliable way (i.e., with least error) of
generalizing from sample data - No selector bias. Every person/object selected
from the population has an equal chance of being
included in the sample. - Types Simple random, systematic, stratified,
disproportional, cluster Portney Watkins,
1993
16Random Sampling Procedures
- Simple Random Start by choosing an element at
random from the target population, continue to do
so until the desired number of elements are
selected for the sample. Use of a random number
table is a good tool to draw elements - Others also draw elements randomly from the
target population, but a pre-defined condition
modifies the drawing. See next slide.
17Modified Forms of Random Sampling
- Systematic randomly draws every nth element
from an organized target population. Ex. from a
telephone directory, a dictionary of words - Stratified randomly draws from sub-groups or
strata. Ex. randomly choose 5 students from every
classroom of a school - Cluster/ multistage randomly draws pre-defined
clusters of elements. Ex. Draw n schools
from city schools, then m classes in each
school. Others ..
18Non-Probabilistic Sampling
- Population units have unknown probabilities of
being included in the sample. - Allows for selector bias
- Often a necessary alternative due to reality
constraints cost, timeliness, sample size,
access to target population, - Types Convenience, Quota, Purposive, Snowball.
19Purposive Sampling
- Researcher hand-picks people/objects
purposefully allowing pre-defined
characteristics/ criteria (Ex. special human
factors) to be included in the sample. - Its logic and power highly suit PMR research
purpose more concerned with validly describing
the sample and target population, than with
statistical generalization. - Often used successfully in qualitative
evaluations.
20Non-Probabilistic Sampling Other Forms
- Quota sampling pre-establishes inclusion of a
certain quantity or quotaof elements in its
sub-groups to represent the corresponding
population subgroup characteristics - Snowball or chain samples are built as the
researcher carries out the selection process,
getting referrals through sample members. - Convenience Sampling includes elements based on
availability Ex. every one that you can stop at
a supermarket parking lot
21Information Needs for PMR
- Context Product planning and development
- Sample data are used for -
- Formative Purpose - Data on needs and
expectations guide designing decisions while
product is still in development in the
forming - Summative Purpose - Data on product evaluation
help end-of-the-development (disseminating/
marketing) decisions.
22Sampling Considerations for PMR
- PMR needs information both for Formative and
Summative decisions - PMR Samples should include
- -information-rich cases
- - preferably from every population sub- group.
- However..
- 3. Product customer universe is often
heterogeneous with a considerable number of
important subgroups.
23Sampling Considerations for PMR
- In light of its information needs, using
Probability Sampling for PMR might imply - Either a small sample that excludes an important
minority subgroup - Or a sample of cost prohibitive magnitude that
includes all important groups. - Purposive sampling is a more useful alternative
for constructing valid PMR samples of optimal
size.
24Sampling Considerations for PMR
- Useful alternatives
- Maximum variant sample mixed group with
information-rich cases drawn from every subgroup
of heterogeneous population. - Ex Group of Hearing aid users, caregivers and
clinicians - b. Separate homogeneous samples of
information-rich members for each subgroup - Ex caregiver samples, user samples,
manufacturer samples
25Sampling Considerations for PMR
- c. Intensity samples include cases that
intensely, but not extremely, manifest the
information.Ex industry experts related to
Wheeled mobility technology - d. Random purposeful samples smaller random
samples from a larger purposeful group.
Increases credibility in generalizing not
statistically to the target group - e. Others Critical case, snowball Patton,
1990
26A Practical Sampling Alternative
- Combine purposive, quota and snowball sampling
into your sampling rationale VIEW Example - Before recruiting, prepare a Sampling frame or
matrix to define how you will draw
information-rich cases and distribute them in
your sample. - Define column and row headings by the different
criteria (or characteristics) levels. Ex columns
to represent physical ability levels (high and
low) to operate an AAC device, rows for
environmentaldemands (high and low) on device use
27A Practical Sampling Alternative contd
- 3. Define quotas or optimal numbers of people
to fill the cells with, after weighing the
corresponding proportions known or estimated of
target population subgroups against reality
(time, cost and logistical) constraints - 4. Fill each cell purposively with the desired
numbers by recruiting people that meet criteria
as defined. Use Snowball strategy for
recruitment,if necessary.
28Where Do You Use Samples in PMR?
- PMR collects information through
- -focus groups interviews
- -surveys
- -one-on-one or telephone interviews
-
29Recruitment
- Sampling frame defines what and how many specific
types of people you want to include - Recruitment implements the selection
plan. -contact individuals - -get commitment
- -schedule and logistics
30Recruitment Challenges
- Quite often, not everyone approached by recruiter
meets the criteria, and not everyone that meets
the criteria is readily identifiable or
accessible. - Use the Snowball approach. Get people through a
chain referral process to fill in the pre-set
sampling frame. - This adds the snowball rationale to the
purposive-quota rationale begun at the sample
planning stage.
31Recruitment Guidelines
- Define sampling matrix first and then select
people by recruiting. Plans for criteria,
population characteristics, number, etc. should
precede recruitment, so rational adjustments can
be made when the plan cannot be fully achieved. - Over-sample- allow for bigger proportion of
underrepresented segments - Over-recruit - counteract sample attrition
anticipate logistical, scheduling problems. - Recruitment takes time - start early
32Sampling for PMRAn Example
- The attached example of sampling protocols for
the caller-connect device illustrates the
foregoing rationale for focus group interviews
33Sampling protocols The Case of the Caller
-connect Device
- Purpose of the Focus Group interviews To obtain
information useful for Concept Refinement - features/characteristics of a device that meets
the need of people that leave telephone off the
hook for various reasons stress, functional
limitations, cognitive impairment, forgetfulness
by older and child family members
34Sampling protocols The case of the Caller
-connect Device
- Step one define target population
- driving question is What features should make
up this "off-the-hook" device? - seeks input for a "universal design"
- universe to include expertise from specific
"groups" e.g. families with children/elderly
leaving phone off the hook with various
functional needs and with relevant demographics.
- Basically, purposive sampling makes sense.
35Sampling protocols The case of the Caller
-connect Device
- Step two make a sampling plan or chart and
define what proportions to include - hearing "all" subgroups of interest impractical
Alternatively, define several independent subsets
of universe and then draw a sampling chart for
each subset - 3 groups defined -- persons with disabilities,
elderly, younger adults with children
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38Related Issues
- Questions, Comments, Suggestions?