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Transcription:

Marketing Analytics A Practitioner s Guide to Marketing Analytics and Research Methods

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Marketing Analytics A Practitioner s Guide to Marketing Analytics and Research Methods Ashok Charan NEW JERSEY LONDON SINGAPORE BEIJING SHANGHAI HONG KONG TAIPEI CHENNAI

Published by Library of Congress Cataloging-in-Publication Data British Library Cataloguing-in-Publication Data system now known or to be invented, without written permission from the publisher.

In memory of my father To my mother With love and heartfelt gratitude

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Preface The digital age has transformed the very nature of marketing. Armed with smartphones, tablets, PCs and smart TVs, consumers are increasingly hanging out on the internet. Cyberspace has changed the way they communicate, and the way they shop and buy. This fluid, decentralized and multidirectional medium is changing the way brands engage with consumers. At the same time, technology and innovation, coupled with the explosion of business data, has fundamentally altered the manner we collect, process, analyse and disseminate market intelligence. The increased volume, variety and velocity of information enables marketers to respond with much greater speed, to changes in the marketplace. Market intelligence is timelier, less expensive, and more accurate and actionable. Anchored in this age of transformations, Marketing Analytics is a practitioner s guide to marketing management in the 21st century. The text devotes considerable attention to the way market analytic techniques and market research processes are being refined and reengineered. Given its focus on the methods adopted by practitioners, the book is tailored to the needs of marketing professionals. It is ideal too for business management students who wish to pursue careers in consumer marketing. Marketing Analytics is structured into six parts brand, consumer, product, advertising, price and promotion, and retail. Collectively the 22 chapters cover the key aspects of managing brands and categories. Part I deals with brand, brand image and brand equity. It covers the analytic methods used for developing brand and marketing strategies. Part II deals with qualitative and quantitative research methods, with emphasis on how these conventional research processes are embracing online platforms. It covers customer segmentation, customer

viii Marketing Analytics satisfaction and customer value management. It also addresses how consumer panels, consumer analytics and big data enhance our understanding of consumers and their buying behaviour. Part III is centred on product. It deals with the entire new product development process from ideation, concept and product development to product launch. It covers the analytic methods and procedures that are deployed to screen ideas, concepts and products, at each phase of the NPD process. Part IV is all about advertising. It covers the theories of advertising, how new media is transforming the way brands engage with consumers, digital marketing, and research methods for copy testing and advertising tracking. Part V deals with price, promotion and market mix modelling. It covers a variety of pricing research methods, and techniques for promotions evaluation. The chapter Market Mix Modelling deals with statistical methods of analysis of historical data, to assess the impact of various marketing activities on sales. The concluding part, retail, covers retail tracking, retail analytics, sales and distribution, and category management. It focusses on the use of metrics and analytic techniques to develop sales and distribution plans, and manage categories. The text also includes seven case studies that have been crafted to facilitate a deeper understanding of the subject. For more information on the topics covered in the various chapters and appendices, visit the book s website at: http://bizfaculty.nus.edu/site/bizakc/marketinganalytics. At this site you can access lecture presentations, and soft copies of tables and charts pertaining to the cases in the book. It also serves as the location for introducing fresh content and revisions to the text. I wrote Marketing Analytics with the practitioner in mind. It is intended to impart a thorough understanding of research methods and analytic techniques, to guide you as you craft market strategies, and execute your day to day tasks. I hope that you enjoy reading it, and that it serves you well.

Acknowledgement My love for marketing grew at what was then a small newly created department at Hindustan Lever. There I had access to a wealth of information in an environment that was conducive to learning. It was in this department, and subsequently at Nielsen, that I acquired the knowledge that made it possible for me to write this book. I remain indebted to several individuals during my years in the industry, and particularly my team at Nielsen for their support, and to the Nielsen Company for nurturing and rewarding me for 16 years. Not many years back, academia was unknown territory, and I am immensely grateful to prof. S. Vishwanathan for persuading and encouraging me to teach. A close friend, in some respects, Vish understood me better than I did myself, and he took me down a path that led me to where I am today. I am greatly indebted to Mr. Chua Hong Koon from World Scientific Publishing, for his guidance and support. I also thank his colleague, Ms. Li Hongyan, for her considerable assistance and patience in editing this text. For most of my life my mother and father have been my source of strength and stability. It is their unconditional love, sacrifice and faith that gave me an immense advantage in life, and it is to them that I dedicate this book.

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Author Ashok Charan Associate Professor, NUS Business School, National University of Singapore (ashokcharan.com) Ashok is the creator of Destiny, an advanced FMCG business simulator, which he uses for teaching marketing courses to business students and marketing practitioners. A marketing veteran, he has over 25 years of industry experience in general management, corporate planning, business development, market research and marketing. Prior to joining the NUS Business School, Ashok worked with Nielsen and Unilever. At Nielsen, he assumed a number of roles including Managing Director for Singapore, and Regional Area Client Director Asia Pacific. His experience spans both business and consumer marketing, and he remains active in consulting in the areas of market research, analytics and data integration. Ashok is an engineering graduate from the Indian Institute of Technology, Delhi, and a post-graduate in business management (PGDM) from the Indian Institute of Management, Calcutta.

Contents Preface vii Acknowledgement ix Author xi PART I BRAND Chapter 1 Brand and Brand Image 3 Pink Diamonds? 4 Lesson from the Summer of 1985 6 Brand 7 Positioning 9 Brand Image Tracking 12 Image Profiling 14 Perceptual Mapping 19 Chapter 2 Brand Equity 23 ZEN versus ipod 24 Benefits of Brand Equity 26 The Loyalty Pyramid 27 Net Promoter Index and Net Advocacy Index 33 Brand Equity Models 34 Computing the Brand Equity Index 36 Data Interpretation and Analysis 37 Drivers of Brand Equity 39 Brand Image 43 Case Inulas 46 Overview Brand Equity Model 48 Case I Shopper Trends Food and Grocery Shopping in Singapore 51

xiv Marketing Analytics PART II CONSUMER Chapter 3 Segmentation 69 Schizophrenic Consumers 69 Need-States 71 Segmentation 71 A Priori Segmentation Methods 75 Post hoc Segmentation Methods 77 Segmentation Analysis 78 Targeting 83 Chapter 4 Qualitative Research 85 Difference between Qual and Quant 86 Consumer Generated Media and Conventional Market Research 88 Applications of Qualitative Research 92 Exploratory 92 Explanatory or Diagnostic 93 Evaluative 93 Qual with Quant Research 94 Product Development 94 Creative Development 95 Motivational Research, Semiotics, Usage & Attitude 95 Packaging Development 97 The Qualitative Advantage 97 Watchouts 97 Modes of Data Collection 99 Group Discussions 99 Interviews 100 Observation 101 Online Qual 102 Research Design and Preparation 109 Projective and Enabling Techniques 111 Word Association 113 Third Party Questioning 113

Contents xv Sentence Completion 114 Personification 114 Brand Mapping 115 Drawing and Collage 115 Bubble Drawings 116 Role-Playing 116 Laddering 117 Body Language 118 Guidelines for Moderating Groups 121 Analysis and Interpretation 122 Chapter 5 Quantitative Research 125 Problem Definition 126 Research Design 127 Questionnaire Design 127 Information Needs 130 Sampling 134 Data Collection 135 The Analysis Process 141 Interpretation and Recommendation 142 Chapter 6 Customer Satisfaction and Customer Value 147 Impact of Retention and Attrition 147 Evolution of Customer Satisfaction 149 Customer Satisfaction and Employee Satisfaction 150 Customer Loyalty 151 Customer Satisfaction Research 153 Transaction Survey 155 Relationship Survey 158 Drivers of Customer Loyalty and Satisfaction 160 Interpretation and Recommendation 164 The Kano Model 167 Customer Value 173 Customers Purchasing Philosophy 174

xvi Marketing Analytics Value-in-Use Analysis 175 Value Assessment 177 Overview Customer Value Management 179 Chapter 7 Consumer Panels 181 Background on Consumer Panels 182 Research Methodology 184 Width and Depth of Purchase 185 Buyer Groups 188 Profile Analysis 193 Brand Loyalty (Behavioural) 194 Trial and Repeat Purchase 195 Overlap 197 Basket 198 Gain loss 200 Case Example Johnson s Body Care 204 Chapter 8 Consumer Analytics and Big Data 209 Big Data 212 Data Management Tools and Technologies 212 Consumer Analytic Techniques 218 Machine Learning Techniques 218 Data Mining 220 Sourcing from Social Media 222 Optimization/Analysis Techniques 223 Visualization 224 Cognitive Systems the 3rd Age of Computing 224 Benefits 226 People 227 Applications 228 Case II Vizag 233 Case III Hectomalt 243

Contents xvii PART III PRODUCT Chapter 9 New Product Development 267 Change 268 Innovation 270 New Product Development Process 272 Ideation 273 Knowledge Immersion 274 Consumer Immersion 276 Generating Insights 277 Generating Ideas 280 Concept Development 289 Product Development 290 Product Launch 292 Chapter 10 Product Design 295 IBM 360 295 Sensory Research 298 The Kano Model and Conjoint Analysis 301 Conjoint Analysis 302 House of Quality 317 Chapter 11 Product Validation 321 Moments of Truth 323 Launch Validation Methods 325 Simulated Test Markets 328 BASES 330 Controlled Store Test 336 Product Launch Evaluation 340 Parfitt Collins Model 341 The Bass Diffusion Model 346 Case IV Hecto Grow 353

xviii Marketing Analytics PART IV ADVERTISING Chapter 12 How Advertising Works 371 Tradition of Great Advertising 371 Advertising through the Ages 373 Advertising Mechanisms 377 Salience 378 Persuasion 380 Likeability 381 Symbolism 381 Relationship and Involvement 382 Emotion 383 Measurement Issues 384 Chapter 13 New Media 387 The Old Order Changeth 387 Uprisings 388 Lessons for Marketers 389 New Media 390 New Rules, New Perspectives 392 Levelling the Marketing Playing Field 392 The Advent of Co-creation 392 Permission Marketing 394 Riding the Long Tail 394 Inbound and Outbound Marketing 395 Turning Point for Television 396 Consumer Trends Media Consumption 397 Online Video Distribution Trends 401 Interactive Television 402 Internet Basics 404 Chapter 14 Digital Marketing 407 What Works Online 408 Building Online Assets 411

Contents xix Websites 412 Blogs 412 Internet Forums 412 Social Media 413 Content is King 413 Personalization 415 Advertising on the Net 416 Challenge Facing Low Involvement Categories 418 Challenge of Reaching the Masses 419 Digital Advertising Formats 423 Search 428 Search Engine Optimization 428 Web Analytics 432 Web Traffic Data 432 Web Intelligence 434 Controlled Website Tests 435 Chapter 15 Advertising Research 437 Copy Testing (Pre-Testing) 439 Testing Advertising Online 440 Advertising Tracking (Post-Testing) 441 Gross Rating Points 441 Audience Measurement 442 Continuous Interviewing versus Dipsticks 442 Tracking Questionnaire 443 Advertising Research Imperatives 444 Branded Memorability 445 Persuasion 447 Uniqueness 449 Likeability 450 Image and Symbolism 450 Involvement 451 Emotion 451 Communication 454 Awareness Index Model 455

xx Marketing Analytics PART V PRICE AND PROMOTION Chapter 16 Price 463 At What Price Should We Sell Our Product? 463 Basics of Pricing Research 465 Importance of Realism in Pricing Research 466 Price Elasticity of Demand 466 Factors Affecting Consumers Sensitivity to Price 467 Pricing Research Methods 469 Gabor Granger 471 Van Westendorp Price Sensitivity Meter 473 Brand Price Trade-off 475 Conjoint Analysis 478 Discrete Choice Modelling 479 Case Example Rationalizing Brand 481 Chapter 17 Promotion 483 In-Store Promotion and Media 484 Types of Promotions 485 Trade Promotion 486 Consumer Promotion 488 The Need to Rationalize Promotions 488 Promotion Commotion Demotion 489 Promotion Evaluation Metrics 490 Basic Assessment of Sales Promotions 491 Market Modelling 492 Chapter 18 Market Mix Modelling 495 Design Considerations 496 Sales Response Function 497 Interaction Effects 500 Competitive Effects and Market Share Models 502 Dynamic Effects 504 Long Term Effect (Advertising) 510

Contents xxi Baseline and Incremental Volume 511 Promotions Response Model 512 Model Validity: How Good is the Fit? 515 Watchouts and Guidelines 517 Interpretation and Analysis 519 Discount Elasticity 519 Cannibalization 521 Displays and Cooperative Advertisement 522 Sales Decomposition and Due-To analysis 523 What-if Analysis 525 Case V Yakult 527 PART VI RETAIL Chapter 19 Retail Tracking 535 Founding of the Nielsen Company, and the Nielsen Code 536 Applications of Retail Tracking 537 Where to Measure Sales? 541 Retail Measurement Services 543 Define Universe 545 Retail Census 546 Sample Design and Recruitment 549 Data Collection 550 Data Processing 551 Data Projection 552 Analysis and Interpretation 555 Chapter 20 Retail Analytics 561 Outlet Group Analysis Using Tracking Data 563 Case Example Wheel and Nirma Pricing Analysis 565 Analysis Using Transaction Data 565 Customer Profile Analysis 567 Loyalty and Propensity 567

xxii Marketing Analytics Assortment Analysis 569 Case Example Evaluation of Opening of New Petrol Station 570 Chapter 21 Sales and Distribution 575 Interdependence of Demand and Supply 576 Components of Sales Width and Depth 577 Measures for Distribution (Width) 577 Sales and Distribution Priorities 579 Distribution Network Basics 579 Right Channels, Right Chains 582 Right Assortment 584 Managing Assortment 586 Battle for Shelf Space 587 Measures of Assortment 588 Number of Items Stocked 589 Sales per Point of Weighted Distribution 591 Share in Handlers 592 Average Sales per Store 592 Rate of Sales (Adjusted Average Sales per Store) 594 Cash Rate of Sales, Rate of Gross Profit 595 Portfolio Analysis 597 Fragmentation Analysis 598 Securing Retailer Support 599 Managing Stock in trade 600 Allocation of Shelf Space (Forward Stock) 602 Cost of Stockouts 604 Chapter 22 Category Management 607 Category Management Overview 608 Partnership between Retailers and Manufacturers 611 Trade Marketing 614 Origins of Category Management 615 Trade Formats FMCG 618 Categories 620

Contents xxiii Category Roles 621 Category Strategies 623 Review 624 Retail Mix 627 Price 627 Promotion and In-Store Media 628 Space Management 629 Execution 631 Benefits of Category Management 632 Case VI Little People 633 Case VII Inulas 637 APPENDICES Appendix A: Sampling 647 Sampling Methods 648 Probability Sampling 648 Simple Random Sampling 648 Systematic Sampling 648 Stratified Sampling 649 Non-Probability Sampling 650 Sample Weighting 651 Sample Size 651 Central Limit Theorem 652 Sampling Standards in Retail Measurement 654 Sample Size Random Sampling 655 Sample Size Stratified Sampling 656 Population Proportions 657 Sample and Non-Sample Errors 660 Appendix B: Gain loss Algorithms: Assumptions/Limitations 663 Standard Gain loss Algorithm 664 Nested Gain loss 667

xxiv Marketing Analytics Hierarchical Gain loss 669 Conclusion 669 References 675 Subject Index 681 Company and Product Index 692 People and Place Index 695