Index

Marketing Accountability for Marketing and Non-marketing Outcomes

ISBN: 978-1-83867-564-6, eISBN: 978-1-83867-563-9

ISSN: 1548-6435

Publication date: 27 September 2021

This content is currently only available as a PDF

Citation

(2021), "Index", Kumar, V. and Stewart, D.W. (Ed.) Marketing Accountability for Marketing and Non-marketing Outcomes (Review of Marketing Research, Vol. 18), Emerald Publishing Limited, Leeds, pp. 319-327. https://doi.org/10.1108/S1548-643520210000018016

Publisher

:

Emerald Publishing Limited

Copyright © 2021 Emerald Publishing Limited


INDEX

Academic marketing researchers, implications for
, 43–45

Accessibility
, 288–289

Accountability, marketing

impact of advertising intensity
, 224

classification of selected articles
, 202

contributions
, 220–225

correlations and descriptive statistics
, 221

data and sample
, 217

environmental performance
, 197–198

limitations and future research directions
, 225–226

marketing actions
, 200

marketing actions impact on environmental and social performance
, 216–220

impact of marketing intensity
, 222

measures and models
, 217–220

measuring environmental and social performance
, 202–204

method
, 201–204

related frameworks
, 200–201

results
, 204, 216, 220

impact of selling, general, and administrative expenses intensity
, 223

social performance
, 198–200

Accountable
, 49–50

Accountants
, 16

Accounting
, 16, 19

equation
, 27–29

performance model
, 142–144

rules
, 21–25

Activism
, 4

Actors
, 235, 247

actor-level analysis
, 256–257

Adobe Advertising Cloud TV
, 156–160

Adobe Analytics. See Omniture SiteCatalyst

Advertising Intensity
, 217–218

Affective commitment
, 271–272

Affiliation network
, 235

Age
, 83–84

Aggregate data approaches to attribution
, 161–162

advantages and disadvantages of aggregate data
, 163–164

Aggregate store and service portfolios
, 297–301

Akaike information criterion (AIC)
, 218–220

Algorithmic approach
, 170

Algorithmic attribution models
, 171–173

Ambience
, 287–288

American Customer Satisfaction Index (ACSI)
, 51–52, 283–284

ANOVA
, 122

Antecedents of brand equity
, 77, 79–80

Artificial intelligence
, 5

Asset
, 19–20

Attention, interest, desire, and action model (AIDA model)
, 51

Attitudinal drivers of WOM
, 264

data
, 264

drivers of word of mouth
, 266–267

nature of word of mouth
, 265

simultaneous impact of
, 267–273

Attractiveness
, 286

Attribution modeling

channel analysis breadth in
, 165–169

data handling approaches in
, 156–165

experimentation and optimization of
, 174–178

optimizing
, 176–178

process for successful adoption of
, 178–180

testing efficacy of attribution models
, 174–176

Backfire effects
, 269

Backward-looking
, 5

Balance sheet
, 17

Baseline market-based assets creation
, 33

Bidirectional network ties
, 235

Big data
, 4

handling
, 182–183

Bimodal network
, 235

Binary framework
, 116

Blame
, 112

Brand deal

depth
, 87

level
, 87

Brand equity
, 6, 64–65, 75–77

data and measures
, 84–85

determinants of price and volume premium
, 81–84

distribution of revenue premium
, 89–90

and effect on price, volume, and revenue premiums
, 91–99

extended framework on brand equity and antecedents
, 77, 79–80

large number of manufacturer brands endangered
, 99–102

model fitting
, 87–89

model formulation
, 85

price vs. volume premium
, 90–91

relative importance of brand equity antecedents on price and volume premiums
, 102–105

revenue premium
, 81

Brand value chain (BVC)
, 78

Brand value creation
, 78

Brand(s)
, 75–76

awareness
, 52

consideration
, 52

continuity
, 168–169

display sales
, 87

evaluation, CFMs for
, 64–66

feature sales
, 87

liking
, 52

management
, 77

positioning
, 77, 79–80, 83, 86, 93, 96

price deal sales
, 87

structure
, 79–80, 82–83, 93

valuation
, 30, 66

Branding
, 75–76

strategy
, 79–82, 85, 91, 93

structure
, 86

Brick-and-mortar stores

conceptual framework
, 286–289

data and methodology
, 289–295

future research implications
, 310–311

managerial and societal implications
, 309–310

related literature
, 283–285

results
, 296–306

Budget allocation
, 184

Buzz
, 9

Calculative commitment
, 272–273

California Consumer Privacy Act (CCPA)
, 162

Cash flow statement
, 17

Category assortment
, 82–83

Category characteristics
, 84, 87, 96, 99

Category-level measure
, 87

Cause-related marketing
, 4

Centrality
, 255

Channel analysis breadth in attribution modeling
, 165–169

Citizen Satisfaction Index (CSI)
, 283–284

City centers
, 280

Click
, 169

Clickstream
, 161–162

advantages and disadvantages of Clickstream data
, 162–163

dealing with challenges of data
, 164–165

Coca-Cola advertising
, 23

Coca-Cola Company
, 26

Codifiability
, 135–136

Commitment
, 271

Common alternative
, 6

Common attribution models
, 169–173

differences in marketing attribution models
, 169–171

heuristic and algorithmic attribution models
, 171–173

Community living
, 4

Complexity
, 135–136

Congruity theory
, 116

Consensus strategy
, 134

Consumer behavior
, 10

Consumer services
, 303, 305

Consumer-packaged goods (CPG)
, 76

Consumers failure perceptions and attributions
, 112–113

Coordination
, 131–132

Core set
, 133

Corporate social responsibility (CSR)
, 58, 61, 194–195, 199

composite measure of
, 218

Cost per acquisition (CPA)
, 177–178

COVID-19
, 4

Critical brand management decisions
, 79–80

Cross-network interactions
, 255–256

Custom-weighted attribution (CWA)
, 171

Customer behavior, CFMs with
, 56–61

Customer characteristics
, 83–84, 86, 96

Customer effort score (CES)
, 51–52

Customer equity (CE)
, 6, 50

Customer experience (CX)
, 274

Customer feedback metrics (CFMs)
, 50–51

impact of
, 60

for brand evaluation
, 64–66

challenges of
, 66–68

classification
, 52–54

dashboard creation, validation, and usage
, 62–64

deep dive into customer-focused feedback metrics
, 54–56

drivers of
, 59

future
, 68–70

history of
, 51–52

to make marketing more accountable
, 61–66

in McKinsey’s customer decision journey model
, 53

relation CFMs with customer behavior and firm performance
, 56–61

relation to retention
, 64

selection to include in dashboard
, 61–62

Customer influence value (CIV)
, 194–195

Customer knowledge value (CKV)
, 194–195

Customer lifetime values (CLVs)
, 6, 50, 194–195

Customer referral value (CRV)
, 194–195

Customer satisfaction
, 54–55, 270

Customer valuation
, 30

Customer-focused feedback metrics, deep dive into
, 54–56

customer satisfaction
, 54–55

net promoter score
, 55–56

other CFMs
, 56

Customer-focused metrics and analytics
, 5

Dashboard creation
, 62–64

Data handling approaches in attribution modeling
, 156–165

Density
, 255

Dependent variable
, 85

Descriptives
, 296–297

Direct traffic reduced approach
, 170

Distribution
, 296

Diversity
, 283–284

Dollar Index
, 86

Dynamic capabilities of market orientation
, 130–131

Econometrical model
, 55

Economic balance sheet of business look like
, 31–32

challenge of value arising
, 31–32

market-based assets
, 31

Economic commitment
, 272–273

Education
, 83–84

Efficacious attribution models
, 174

Ego network
, 235

Emotions
, 271

Environmental disclosure score
, 218

Environmental performance (EP)
, 8, 194, 197–198

marketing actions impact on
, 216–220

measuring
, 202–204

Extended framework on brand equity and antecedents
, 77–80

External attribution
, 113

External reporting
, 16

Facebook
, 156–160

spend
, 161

Failure and multiple loci causal agents
, 114–115

Financial accountants
, 23

Financial accounting
, 16–18

accounting conventions fail to represent economic reality
, 21–30

accounting created to solve
, 18–21

actions to measure and report intangible value
, 29–30

concerns about accounting rules
, 21–25

economic balance sheet of business look like
, 31–32

financial statements
, 32–43

IAS
, 25–26

material complaint
, 26–29

Financial performance (FP)
, 194

Financial reporting
, 5–6

Financial statements
, 32–43

adjustment for market-based assets approach
, 33–34

example of adjusting
, 34–41

implications for academic marketing researchers
, 43–45

implications for senior marketers
, 42–43

information needed to adjust
, 32–33

limitations of adjusting for market-based approach
, 40–42

Firm performance
, 8–9

CFMs with
, 56–61

intrafirm networks and
, 245

measures of
, 4–7

Firms
, 49–50, 67

balance economic profits
, 194

marketing
, 153–154

Forced commitment
, 272–273

Forward-looking
, 5

Fractional attribution. See Shapley value attribution (SVA)

FTA
, 170

General Data Protection Regulation (GDPR)
, 162

Generally accepted accounting principles (GAAP)
, 17–18

German Federal Statistical Office
, 289

Global Financial Crisis
, 21–22

Google
, 156–160

Google Ads
, 161

Google Analytics
, 156–160

Granularity
, 5

Greenhouse gas (GHG)
, 8, 218

Handelsverband Deutschland (HDE)
, 281

Heterogeneity among store and service provider categories
, 302–305

Heuristic approach
, 170

Heuristic attribution models
, 171–173

Hierarchical Bayes model
, 275

Hierarchical interaction
, 170

Hierarchical interaction attribution (HIA)
, 171, 173

Household

affluence
, 83–84

size
, 83–84

HR professionals
, 24

Hypothesized model
, 139

Identifiable asset
, 19

Income statement
, 17

Independent variables
, 85–87

Indirect economic value
, 194–195

Industry-level CFMs
, 53–54

Inner city
, 280, 284

attractiveness
, 283–284

Instagram
, 156–160

Intangible assets
, 22, 27

Inter-organizational networks
, 8–9

Internal attribution
, 113

Internal reporting
, 16

International Accounting Standards (IAS)
, 25–26

International Accounting Standards Board (IASB)
, 17–18, 25

International Integrated Reporting Framework (IRF)
, 200–201

International Organization for Standardization (ISO)
, 66

Interorganizational networks
, 246–247

Intrafirm networks
, 8–9

and firm performance
, 245

Key performance indices (KPIs)
, 51–52

Last touch attribution (LTA)
, 155, 170

Latent Dirichlet allocation (LDA)
, 69

Lead
, 171

Learning
, 131–133

Level of analysis
, 249, 256–257

Linking marketing
, 5

Locus
, 114

Managerial accounting. See also Financial accounting
, 16–17

Manufacturer brand

joint effect of store image and manufacturer brand equity
, 118–123

in product failures
, 114–115

Market asset
, 6

Market exploration
, 133, 140

Market orientation
, 7, 49–50, 130, 132, 150–151

accounting performance model
, 142–144

capabilities
, 130–136

capability
, 140

data
, 139–140

exploration
, 133, 141

framework
, 136–139

fundamental market orientation capabilities
, 132–136

limitations and future research
, 147

measures
, 140–142

research method
, 139–142

results
, 142–146

self-reported performance model
, 145–146

tacitness
, 135, 141

tests of measure validity and reliability
, 142

theoretical contribution
, 146–147

Market-based assets approach
, 31

adjusting level of assets related to marketing
, 34

adjustment for
, 33–34

baseline market-based assets creation
, 33

estimating marketing investments and marketing expenses
, 33–34

limitations of adjusting for market-based approach
, 40–42

Marketers
, 5–6

Marketing
, 3, 10

academia
, 4

adjusting level of assets related to
, 34

analytics
, 4

expenses
, 33–34

intensity
, 217–218

investments
, 33–34

mix
, 84, 87, 99

SNR review in
, 235–247

Marketing accountability
, 194

marketing accountability for marketing and nonmarketing outcomes
, 3–4

measures of firm performance
, 4–7

measures of social interaction
, 7–9

measures related to societal outcomes
, 9–10

Marketing Accountability Standards Board (MASB)
, 30

brand investment
, 76

Marketing actions
, 200

impact on environmental and social performance
, 216–220

Marketing attribution
, 154–155, 157, 160

differences in
, 169–171

future research agenda for
, 180–185

Marketing–Performance Outcome Chain framework
, 130, 136–137, 139

hypothesized model of effects
, 138

Markov chain
, 170

Markov chain attribution (MCA)
, 171–172

Matched market testing
, 175

Matching
, 22–23

costs and revenues
, 23

Material complaint
, 26–29

Materiality
, 20

Multichannel attribution models
, 176

Multichannel data-driven attribution models

background literature
, 155–156

brand continuity
, 168–169

channel analysis breadth in attribution modeling
, 165–169

Clickstream and aggregate data approaches to Attribution
, 161–162

common attribution models
, 169–173

data handling approaches in attribution modeling
, 156–165

experimentation and optimization of attribution models
, 174–178

future research agenda for marketing attribution
, 180–185

offline-only attribution research
, 166

Omnichannel attribution research
, 167–168

online-only attribution research
, 166–167

process for successful adoption of attribution models
, 178–180

Multiloci attributions
, 113

cause of product failure
, 123

establishing multiple loci
, 117–118

failure and multiple loci causal agents
, 114–115

joint effect of store image and manufacturer brand equity
, 118–123

limitations
, 124–125

recommendations
, 125

role of manufacturer brand and store image in product failures
, 114–115

theoretical and managerial implications
, 124

theoretical background and hypotheses
, 114

Multitouch
, 169

National brands
, 90

National business systems (NBS)
, 199

Net promoter score (NPS)
, 50, 55–56

Networks

dynamics and evolution
, 256

mechanisms
, 251

mode
, 248

ties
, 235

and WOM
, 236–244

Node
, 235

Nonexhaustive list
, 52

Nonreduced traffic reduced approach
, 170

North American Industry Classification System (NAICS)
, 274–275

Offline-only attribution research
, 166

Omnichannel attribution research
, 167–168

Omnichannel frameworks
, 183

Omniture SiteCatalyst
, 167

Online-only attribution research
, 166–167

Open-ended questions
, 117

OpenStreetMap (OSM)
, 282, 289–290

Operationalization
, 290–291

Opportunity
, 171

Ordinary least squares (OLS)
, 291

Organizational theory
, 233–234

Overstating intangibles
, 18

Pixer
, 170

Place branding
, 283–284

Position-based attribution (PBA)
, 171

Price premium
, 6, 78, 85, 90–91

brand equity and effect on
, 91–99

determinants of
, 81–84

relative importance of brand equity antecedents on
, 102–105

Private label
, 76, 79–80, 82–85

Proactive market orientation
, 130

Probit
, 170

attribution
, 171

Probit model attribution (PMA)
, 172

Procter and Gamble
, 84

Product attractiveness
, 52, 136–139

Product awareness
, 52

Product failures
, 112, 114

manufacturer brand and store image in
, 114–115

Product innovativeness
, 136–139, 142

Product superiority
, 141

Product variations
, 82

Product-as-a-Service
, 133

Profit maximization
, 184

Profitability
, 142–144

Proportional hazard
, 170

Proportional hazard attribution (PHA)
, 171, 173

Purchase price allocation (PPA)
, 22

Quality vs. quantity effects in cities’ store and service provider portfolios
, 305–306

Random coefficient simultaneous equation model (RCSEM)
, 87–89

Reactive market orientation
, 130

Retail agglomerations
, 281–282, 284–285

Retail brand equity
, 112–113

Return on assets (ROA)
, 218–220

Return on investment model (ROI model)
, 56–58, 156, 160

Return on sales
, 136–139

Revenue
, 81

Revenue premium. See also Price premium
, 6, 76, 78, 81

brand equity and effect on price, volume, and
, 91–99

distribution of
, 89–90

Root mean square error of approximation (RMSEA)
, 142

Sale
, 171

Sales growth
, 142

Salesperson performance
, 8–9

social networks and
, 244–245

Same-session vs. 7-day
, 170–171

Self-brand connection (SBC)
, 273

Self-reported performance model
, 145–146

Self-reported profitability
, 142

Selling, general, and administrative expenses Intensity (SG&A Intensity)
, 217–218

Senior marketers, implications for
, 42–43

SERVQUAL
, 53

Shapley value
, 170

Shapley value attribution (SVA)
, 169–171

Sharing economy platforms
, 133

Shopping streets
, 281–282

Single touch
, 169

Social capital theory
, 245

Social disclosure scores
, 218

Social function
, 9–10

Social interaction, measures of
, 7–9

Social listening, moving to
, 68–70

Social network research (SNR)
, 8–9, 233–235

actors
, 247

antecedents of network formation and position
, 257–258

classification schema
, 251–252

compositional performance
, 253

compositional process
, 254

configurational performance
, 252–253

configurational process
, 253–254

consequences of social networks
, 249

cross-network interactions
, 255–256

beyond density and centrality
, 255

direct measures of network processes
, 258

interorganizational networks
, 246–247

intrafirm networks and firm performance
, 245

level of analysis
, 249

level of analysis
, 256–257

network boundaries
, 248–249

network dynamics and evolution
, 256

network impact
, 249–251

network mechanisms
, 251

network mode
, 248

practical considerations of
, 247–251

research agenda
, 254

research agenda and classification schema
, 251–258

review in marketing
, 235–247

selective review of marketing subareas using
, 237–243

social networks and salesperson performance
, 244–245

Social networks
, 8–9, 235

Social performance (SP)
, 8, 194, 198, 200

marketing actions impact on
, 216–220

measuring
, 202–204

Societal well-being
, 4

Stakeholders
, 49–50

Standardize reporting
, 19

Stimulus–Organism–Response model (SOR model)
, 286

Store and service portfolio
, 287

Store image

joint effect of store image and manufacturer brand equity
, 118–123

in product failures
, 114–115

Strength of weak ties (SWT)
, 233–234

Structural equation model (SEM)
, 291–295

Structural VARA
, 171

Swedish Customer Satisfaction Barometer (SCSB)
, 51–52

System dependence
, 135–136

Tacit knowledge
, 135

Tangible assets
, 27

Teachability
, 135–136

Text-mining technique
, 68

Time decay attribution (TDA)
, 171

Touch
, 169

Town center management (TCM)
, 281

Twitter
, 156–160

TwitterScraper
, 69

Underreporting of intangibles
, 18

Unidirectional network tie
, 235

Uniform resource locator (URL)
, 167

Urbanity
, 283–284

US Financial Accounting Standards Board (FASB)
, 17–18

US Patent and Trademark Office (USPTO)
, 85

Validation
, 62–64

Valuation
, 21

model
, 76

Vector autoregression (VAR)
, 170

Vector autoregression attribution (VARA)
, 171–173

Vector of dummy variables
, 86

Video-mining technique
, 68

Virtual reality
, 5

Vis-à-vis manufacturer
, 116

Voice-mining technique
, 68

Volume premium. See also Revenue premium
, 6, 78, 90–91

brand equity and effect on
, 91–99

determinants of
, 81–84

model
, 86

relative importance of brand equity antecedents on
, 102–105

Web analytics tool
, 156–160

Word of mouth (WOM)
, 8–9, 235, 249–250, 264

drivers of
, 266–267

nature of
, 265

networks and
, 236–244

YouTube
, 156–160