MKTG202 Marketing Research Group Report 代写
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	MKTG202 Marketing Research Group Report 代写
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	1
	MKTG202 Marketing Research
	Week 5
	Measurement and Scales Planning your
	Research Project
	2
	Progress Report B
	Progress Report B ‐ Group Report on Quantitative
	Research due: 23:59 Friday 15 September
	Maximum 1000 words, not including
	Headings
	Meta‐data (authors' names & ID's)
	Tables & Charts
	Appendices (e.g. draft questionnaire)
	References (if appropriate)
	Group submission. Each group submits one file only in
	DOC, DOCX, ODT, or RTF format (Please do not submit
	in PDF format)
	Suggested Structure
	1. Summary of business problem and qualitative
	research you have done in Week 2‐4
	• brief review of your earlier research
	
	MKTG202 Marketing Research Group Report 代写
	2. Proposed Specific Quantitative Research Question
	• What do want to find out?
	3. Proposed 3‐ 5 Key Constructs to be measured
	• Conceptual, Ostensive & Operational definitions
	4. Proposed Sampling Method
	• population of interest, sampling frame, why?
	5. Example of what your answer will look like.
	Marking Guide
	CRITERION LESS THAN SATISFACTORY SATISFACTORY GOOD
	Summary of Business
	Problem and previous
	qualitative findings
	Vague or None qualitative stage linked to
	proposed quantitative
	study
	Good summary qualitative
	& links among problem,
	qualitative and need for
	further information
	proposed here.
	Quantitative Research
	question or Research
	hypothesis
	Vague or None Research question should
	be viable
	Succinct, precise, and
	workable research
	question(s) and expected
	outcomes.
	Definitions of Key
	constructs
	Vague or None link between construct
	definitions, research
	question & expected
	outcomes
	Clear presentation of and
	differentiation between
	ostensive, constitutive and
	operational definitions
	Sampling No clear sampling
	approach or with no
	evaluation of the sampling
	method adopted
	Frame will probably get
	the desired sample,
	limited analysis of the
	reason for adopting this
	sampling method
	Clear method for capturing
	those people of interest
	with a sound explanation
	of the advantages/
	disadvantages of the
	sampling method
	Example of what key
	results may look like
	None or Vague links between research
	question(s) and likely
	outcomes.
	Clear connection between
	question, operational
	definitions & results.
	Measurement and
	Scales
	6
	30/08/2017
	2
	Scales
	NOMINAL
	ORDINAL
	INTERVAL
	RATIO
	7
	Scale development
	The process of assigning a set of descriptors (label, rank,
	number, score, etc.) to represent the range of possible
	responses to a question about a particular construct
	A scale is:
	The combined set of points that anchor the measurement
	tool
	8
	Levels of scales
	• Nominal
	• Ordinal
	• Interval
	• Ratio
	9
	Scale properties
	Assignment
	unique descriptors identify each object or level
	Order
	establishes ‘relative magnitudes’ between the descriptors,
	creating hierarchical rank‐order relationships among objects
	Distance
	absolute differences between objects or levels
	Origin
	scale includes a ‘true natural zero’
	10
	Property Description and Examples
	Assignment Unique descriptors to identify each object in a set
	Examples:
	numbers (10, 38, 44, 18, 23, etc.);
	colors (red, blue, green, pink, etc.);
	‘yes’ and ‘no’ for questions that place objects
	into mutually‐exclusive groups
	Order Establishes ‘relative magnitudes’ between the
	descriptors, creating hierarchical rank‐order
	relationships among objects
	Examples:
	First place is better than a fourth ‐ place finish;
	this person is lighter than this other person
	Property Description and Examples
	Distance Express absolute differences between objects
	Examples:
	6 children is two more than 4 children;
	30 o C is 10 degrees more than 20 o C
	Origin Includes a ‘true natural zero’ or ‘true state of
	nothing’
	Examples:
	weight or age;
	times one shops at a supermarket;
	6 children is 50% more than 4 children.
	BUT:
	30 o C is not 50% hotter than 20 o C because zero
	point is arbitrary
	30/08/2017
	3
	Relationships between Levels
	of scales and scale properties
	13
	Yes Yes Yes Yes Ratio
	No Yes Yes Yes Interval
	No No Yes Yes Ordinal
	No No No Yes Nominal
	Origin Distance Order
	Assign-
	ment
	Level of
	Scale
	Scale Properties
	Statistical analysis of scales
	Type of scale Numerical operation Descriptive statistics
	Nominal Counting Frequency
	Percentage
	Mode
	Ordinal Rank ordering Median
	Range
	Percentile ranking
	Interval Operations that
	preserve order and
	relative magnitude
	Mean
	Standard deviation
	Variance
	Ratio Operations on actual
	quantities
	Geometric mean
	Coefficient of
	variation
	Note: all statistics appropriate for lower‐order scales are also appropriate for
	higher‐order scales (nominal is lowest, ratio is highest)
	14
	Examples of nominal scale
	15
	Example 1:
	Please indicate your current marital status.
	__ Married __ Single __ Single never married __ Widowed
	Example 2:
	Do you like or dislike chocolate ice cream?
	____ Like ____ Dislike
	Example 3:
	Please check those health care practitioner (HCP) service areas in which you have had a
	telephone conversation with a HCP representative in the past six months. (Check as many as
	apply.)
	____ Appointments ____ Treatment at home ____ Referral to other HCP
	____ Prescriptions ____ Medical test results ____ Hospital stay
	Some other service area(s); Please specify ____________________________________
	Example of ordinal scales
	Please rank the following characteristics of the cellular
	phone service (1 is most important and 6 is the least
	important, no ties allowed)
	____ Total cost of service
	____ Reception clarity
	____ Low fixed cost
	____ Reliability of service
	____ 24‐hour customer service
	____ Size of local coverage area
	16
	Examples of interval scales
	Temperature:
	Centigrade (Celsius)
	Ice to steam: 0° – 100°
	Fahrenheit
	Ice to steam: 32° – 212°
	Kelvin
	Ice to steam: ‐273.15° – 373.15°
	Note that Zero is arbitrary in C & F scales.
	17
	Examples of interval scales
	Strongly
	Disagree
	Somewhat
	disagree
	Neither
	agree or
	disagree
	Somewhat
	agree
	Strongly
	agree
	1 2 3 4 5
	18
	Technically, a Likert scale is an Ordinal scale, but it tends to be
	treated as an Interval scale with few problems
	30/08/2017
	4
	Examples of ordinally interval scales
	19
	Statement Definitely
	agree
	Generally
	agree
	Slightly
	agree
	Slightly
	disagree
	Generally
	disagree
	Definitely
	disagree
	It is good to have charge
	accounts 6 5 4 3 2 1
	I buy many things with a
	bank (or credit) card 6 5 4 3 2 1
	I like to pay cash for
	everything 6 5 4 3 2 1
	I buy at department
	stores 6 5 4 3 2 1
	I wish my family had a lot
	more money 6 5 4 3 2 1
	For each of the following statements, please circle the response that best expresses the extent
	to which you either agree or disagree with that statement
	Is there any real difference?
	Agree Disagree
	1 2 3 4 5
	Disagree Agree
	‐2 ‐1 0 1 2
	Disagree Agree
	‐4 ‐2 0 2 4
	20
	Zero Point and Units
	of measurement are
	arbitrary in an
	Interval Scale
	Examples of ratio scales
	1. Please circle the number of children under 18 years
	of age currently living in your household.
	0 1 2 3 4 5 6 7
	(If more than 7, please specify: ____)
	2. In the past seven days, how many times did you go
	shopping at a retail shopping mall?
	____ # of times
	3. In whole years, what is your current age?
	____ # years old
	21
	Interval scales?
	1. Approximately how many times has ‘your’ bank
	charged you for an overdrawn account in the past
	year?
	___ None __ 1–2 __ 3–7 ___ 8–15 ___ 16–25 ___ More than 25
	2. Approximately how long have you lived at your
	current address?
	____<1 year ____1‐3 years  ____4‐6 years ____7‐10 years
	____11‐20 years ____ >20 years
	3. In which of the following categories does your
	current age fall?
	____Under 18 ____18‐25 ____26‐35 ____36‐45 ____46‐55
	____56‐65 ____Over 65
	22
	Attitude
	Measurement
	Attitude measurement
	Attitudinal measurement is difficult because it deals
	with:
	People’s thoughts, feelings, intended behaviours and
	characteristics
	The features or attributes of objects
	Concepts and ideas
	An attitude is a learned predisposition to react in some
	consistent manner
	To measure attitudes, researchers may use one of (1) the
	trilogy, (2) attitude‐towards‐object, or (3) the affect global
	approach
	24
	30/08/2017
	5
	Trilogy (tri‐part) three‐part
	Cognition
	• Thoughts & Beliefs (measure what you know)
	• A person’s information about an object, e.g., recall of
	laptop brand names
	Affect
	• Feelings (measure how you feel)
	• Summarizes overall feelings towards an object, e.g., like
	or dislike for a laptop brand
	Connation
	• Actions (or tendency towards action) (measure what you
	do, or want to do)
	• Expectations of future behaviour toward an object, e.g.,
	likelihood to purchase a laptop brand
	Attitude‐towards‐object
	See appendix to Chapter 8
	Attitude is sum of perceptions of the components of an
	object or action, weighted by the relative importance
	of each component.
	? ? ? ? ? ? ? ?
	?
	???
	Attitude as an affect‐global measure
	“Thinking about the upcoming election,
	overall, how strongly do you favour the
	Nasty Party over the Stupid Party?”
	Likert Scale
	Ordinal scale that asks respondents to indicate the
	extent to which they agree or disagree with a series of
	mental or behavioural beliefs about a given object
	Initially, five scale descriptors were used:
	Strongly agree
	Agree
	Neither agree nor disagree
	Disagree
	Strongly disagree
	28
	Likert Scales
	& related rating scales
	Likert Scale
	A modified Likert scale expands this set to six or seven
	categories.
	Characteristics of the Likert scale include:
	• Only summated rating scale that uses a set of
	agree/disagreement scale descriptors
	• Measures cognitive components; does not measure
	affective or conative components
	• Best utilised when self‐administered surveys or personal
	interviews are used to collect data
	30
	30/08/2017
	6
	Involvement = level of personal
	importance
	Cognitive
	component
	Affective
	component
	Important 
	Relevant 
	Means a lot to me 
	Valuable 
	Needed 
	Interesting 
	Exciting 
	Appealing 
	Fascinating 
	31
	Zaichkowsky, J.L. (1994) The Personal Involvement Inventory: Reduction, Revision, and Application
	to Advertising. Journal of Advertising (December)
	Zaichkowsky PII 2
	Strongly
	agree
	Agree Neither
	agree nor
	disagree
	Disagree Strongly
	disagree
	Important
	Relevant
	Means a
	lot to me
	Valuable
	Needed
	Interesting
	Exciting
	Appealing
	Fascinating
	32
	Zaichkowsky, J.L. (1994) The Personal Involvement Inventory: Reduction, Revision, and Application
	to Advertising. Journal of Advertising (December)
	Example: Personal Importance of Laptop Computer
	Strongly
	agree
	Agree Neither
	agree nor
	disagree
	Disagree Strongly
	disagree
	Important 
	Relevant 
	Means a
	lot to me
	
	Valuable 
	Needed 
	Interesting 
	Exciting 
	Appealing 
	Fascinating 
	33
	Zaichkowsky, J.L. (1994) The Personal Involvement Inventory: Reduction, Revision, and Application
	to Advertising. Journal of Advertising (December)
	Example: Personal Importance of Laptop Computer
	Strongly
	agree
	Agree Neither
	agree nor
	disagree
	Disagree Strongly
	disagree
	Important  5
	Relevant  4
	Means a
	lot to me
	 4
	Valuable  5
	Needed  5
	Interesting  3
	Exciting  2
	Appealing  3
	Fascinating  1
	34
	Zaichkowsky, J.L. (1994) The Personal Involvement Inventory: Reduction, Revision, and Application
	to Advertising. Journal of Advertising (December)
	Example: Personal Importance of Laptop Computer
	Cognitive
	component
	Affective
	component
	Important  5
	Relevant  4
	Means a lot to me  4
	Valuable  5
	Needed  5
	Interesting  3
	Exciting  2
	Appealing  3
	Fascinating  1
	Total 23  (mean = 4.6) 9  (mean = 2.25)
	35
	Zaichkowsky, J.L. (1994) The Personal Involvement Inventory: Reduction, Revision, and Application to Advertising. Journal of Advertising (December)
	Using the mean of
	several related
	items dampens out
	random error in
	responses.
	We do not use the
	scores for individual
	items, only the scale
	scores (averages)
	Modified Likert Scale
	36
	___ ___ ___ ___ ___ ___
	I am never
	influenced by
	advertisements.
	___ ___ ___ ___ ___ ___
	My friends often
	come to me for
	advice.
	___ ___ ___ ___ ___ ___
	I wish we had a
	lot more money.
	___ ___ ___ ___ ___ ___
	I buy many
	things with a
	credit card.
	Definitely
	Disagree
	Generally
	Disagree
	Slightly
	Disagree
	Slightly
	Agree
	Generally
	Agree
	Definitely
	Agree Statements
	For each of the listed statements, please check the one response that best
	expresses the extent to which you agree or disagree with that statement.
	30/08/2017
	7
	Example: Semantic Differential
	Scale
	Attractiveness:
	Sexy ___ ___ ___ ___ ___ ___ Not sexy
	Beautiful ___ ___ ___ ___ ___ ___ Ugly
	Attractive ___ ___ ___ ___ ___ ___ Unattractive
	Classy ___ ___ ___ ___ ___ ___ Not classy
	Elegant ___ ___ ___ ___ ___ ___ Plain
	37
	Example:
	Behavioural Intention Scale
	38
	Type
	of Event
	Definitely
	would
	consider
	attending
	Probably
	would
	consider
	attending
	Probably
	would not
	consider
	attending
	Definitely
	would not
	consider
	attending
	Music
	Concerts
	Popular
	Music
	Jazz Music
	Country
	Music
	Classical
	Music
	Chamber
	Music
	Juster 11‐Point Probability Scale:
	A predictive measure of future intentions
	In 1966, F. Thomas Juster argued
	that, since verbal intentions are
	simply disguised probability
	statements, then why not directly
	capture the probabilities
	themselves as measured by the
	respondents?
	Estimates the average probability
	that a population will do
	something by a future time. The
	mean response estimates the
	proportion of the population that
	will perform the action.
	39
	Score Verbal equivalent
	0 No chance, almost no chance (1 in 100)
	1 Very slight possibility (1 in 10)
	2 Slight possibility (2 in 10)
	3 Some possibility (3 in 10)
	4 Fair possibility (4 in 10)
	5 Fairly good possibility (5 in 10)
	6 Good possibility (6 in 10)
	7 Probable (7 in 10)
	8 Very probable (8 in 10)
	9 Almost sure (9 in 10)
	10 Certain, practically certain (99 in 100)
	“On a scale of 0 – 10 where 0 indicates no chance and 10
	indicates certainty, what is the chance that you will buy a
	laptop computer before the end of the year?”
	Score Verbal equivalent
	0 No chance, almost no chance (1 in 100)
	1 Very slight possibility (1 in 10)
	2 Slight possibility (2 in 10)
	3 Some possibility (3 in 10)
	4 Fair possibility (4 in 10)
	5 Fairly good possibility (5 in 10)
	6 Good possibility (6 in 10)
	7 Probable (7 in 10)
	8 Very probable (8 in 10)
	9 Almost sure (9 in 10)
	10 Certain, practically certain (99 in 100)
	40
	Averaged over a
	representative
	population, Juster
	Scale shown to be
	very accurate
	measure of future
	behaviour!
	Other rating scales: slider…
	41
	A. Graphic Rating Scales Usage (Quantity Descriptors):
	Never
	Use
	Use All
	the Time
	0 10 20 30 40 50 60 70 80 90 100
	Other rating scales: smiley…
	42
	B: Smiling Face Descriptors:
	1 2 3 4 5 6 7
	30/08/2017
	8
	Other rating scales: annotated rating
	scale…
	43
	1 2 3 4 5 6 7
	C. Performance Rating Scales
	Performance Level Descriptors:
	Truly
	Terrible
	Poor Fair Average Good Excellent
	Truly
	Exceptional
	Recap of key measurement design
	issues
	Construct development issues
	Scale issues
	Screening questions
	Skip question
	Ethical responsibility
	44
	Rules of thumb for scale
	development
	• Are the questions intelligible?
	• Are the scale descriptors appropriate?
	• Do the scale descriptors have discriminatory power?
	• Are the scales reliable?
	• Are the scales balanced appropriate to the research
	endeavour?
	• A neutral response option, where relevant and
	applicable?
	• What measures of central tendency apply?
	• What measures of dispersion apply?
	45
	Scale Reliability & Validity
	Three criteria for good measurement
	Reliability
	The degree to which measures are free from random error
	and therefore yield consistent results.
	Validity
	The ability of a scale to measure what was intended to be
	measured.
	Sensitivity
	The ability to accurately measure variability in stimuli or
	responses.
	47
	Reliability
	Applies to a measure when similar results are obtained
	over time and across situations.
	For example, Tailor measuring with a tape measure obtains a
	true value of length repeatedly.
	Two dimensions: repeatability and internal consistency
	Test‐retest method used to determine repeatability by
	administering the same scale at two separate points in
	time to test for stability.
	48
	30/08/2017
	9
	Validity
	To measure what we intend to measure.
	For example, Say we want to measure students’ ability to
	understand statistics …
	Construct:
	Understanding of Statistics
	Operationalisation: (Measurement)
	Quiz which focuses on memorising formulae and doing arithmetic.
	Valid? Why?
	49
	Not Valid!
	Memorising formulae and
	doing arithmetic has very
	little to do with
	understanding Statistics!
	Validity
	Three approaches to establishing validity:
	Face or content validity
	Criterion validity
	Construct validity
	50
	Establishing validity
	Face or content validity
	professional agreement that a scale’s content logically
	appears to accurately reflect what was intended to be
	measured.
	Criterion validity
	the ability of a measure to correlate with other standard
	measures of the same construct or established criterion.
	Construct validity
	the ability of a measure to provide empirical evidence
	consistent with a theory–based concept.
	51
	Face/Content validity for
	Personal Involvement Inventory?
	
	MKTG202 Marketing Research Group Report 代写
	Important
	Boring
	Irrelevant
	Unexciting
	Appealing
	Mundane
	Worthless
	Not needed
	Involving
	Means a lot
	Any other items that should
	be on the list?
	• JUDGE OTHER PEOPLE BY
	THEIR BRAND
	• EXPRESSION OF SELF
	• WANT TO HAVE
	• MUST HAVE
	52
	Face Validity ‐ are the items telling you
	the same thing?
	Content Validity – is there any missing
	part of the measure to depict the fact?
	Construct Validity for PII?
	Important
	Boring
	Irrelevant
	Unexciting
	Appealing
	Mundane
	Worthless
	Not needed
	Involving
	Means a lot
	Predicting events, or association with
	other attitudes or behaviour?
	• PURCHASE LEVEL
	• PRICE ELASTICITY (WILLING TO
	PAY MORE)
	• JUDGING OF SELF AND OTHERS
	• DETAILED KNOWLEDGE OF
	BRANDS AND APPLICATIONS
	Construct Validity – the degree to
	which a test measures what it claims
	to be measuring
	53
	Criterion Validity for PII?
	Important
	Boring
	Irrelevant
	Unexciting
	Appealing
	Mundane
	Worthless
	Not needed
	Involving
	Means a lot
	• KNOWLEDGE ABOUT PRODUCT
	CATEGORY
	• PREDICT PURCHASE
	• OPINION LEADERSHIP
	Criterion validity (concurrent validity) –
	is there any agreement of the results
	generated by this measure with the
	real‐world/known/existing standard?
	54
	30/08/2017
	10
	Reliability versus validity
	55
	MKTG202 Marketing Research Group Report 代写