SlideShare a Scribd company logo
Modeling the Real Return on Marketing Investments<br />July 1, 2011<br />BY: PETER-CAIN<br />A key decision facing the brand manager is how best to allocate an often limited marketing budget across a wide set of marketing activities. This is a challenging task in a competitive market place involving complex marketing strategies, where competitor activity can often upset careful planning. The conventional approach to answering this question is the single equation marketing mix mode3l, which formulates a demand equation as a function of selected marketing drivers. Response parameters are then estimated using classical regression techniques and used to calculate ROI and inform optimal allocation of the marketing budget.<br />Such models, however, focus solely on incremental volume, often recommending a marketing budget allocation skewed towards promotional activity: short-run sales respond well to promotion, yet are less responsive to media activity – particularly for established brands. This, however, ignores the long-run view: that is, the potential brand-building properties of successful media campaigns on the one hand and the brand-eroding properties of heavy price discounts on the other. Acknowledging and quantifying these features is crucial to a complete ROI evaluation and a more strategic budget allocation.<br />To address this issue, the marketing mix model needs to be re-structured to quantify both short-run and long-run variation in the data. The former is used to calculate short-term ROI on marketing investments in the usual way. The latter measures the evolution of brand preferences over time. This generates an evolving baseline which, when combined with marketing investments and consumer tracking information, allows a quantification of long-run ROI.<br />Conventional Marketing Mix Modeling<br />Market mix modeling employs econometric techniques to quantify the contribution of a set of driver variables to the variation in a sales response variable. The model building process involves three key steps: selecting key marketing driver variables, defining the manner in which sales are linked to the driving variables and the nature of sales adjustment to the change in driving variables. This final step is known as dynamic specification, where lagged value of sales can be added and/or lags applied directly to the variables themselves. For example, advertising TVR data traditional appear in adstocked form to capture the carry-over effects that we would intuitively expect from successful media campaigns: namely, where the effects are felt beyond the period of execution due to product purchase cycles and/or media retention in the mind of the consumer.<br />Such models focus solely on the short- to medium-term returns on marketing investments. Traditional approaches to modeling the long-run impact of marketing activity build primarily on the basic dynamics mentioned above. For example, the long-run effects of television advertising are often estimated using adstocked TVR data with very high retention rates – indicative of heavy persistence of past levels of advertising weight. Alternatively, long-run effects are derived simply by multiplying the short-term effects by there, based on results in Lodish et al (1995). Promotion modeling can also be extended to incorporate the negative effects of post-promotional dips – reflecting pantry loading, where stocking up in response to promotional deals today cannibalizes product sales tomorrow.<br />All such extensions, however, miss an extremely important component of the long-run view. That is, the extent to which marketing activity can help – or hinder – the development of underlying brand strength. It is well known that advertising investments tend to generate little incremental return, yet serve to provide a long-run brand-building function. On the other hand, excessive reliance on promotions can denigrate brand image, eroding equity in the brand. How can we test for and quantify these effects? One approach is to exploit the fundamentals of time series regression analysis.<br />Advanced Marketing Mix Approaches<br />All marketing mix models involve the analysis of time-ordered sales observations. It is well known that any time series can be decomposed into trend, seasonal and cyclical components. Consequently, mix models are essentially time series models with marketing elements woven around this basic structure. The trend component represents long-run evolution of the sales series and is crucial to a well-specified marketing mix model. In the conventional approach, the trend is represented by the regression intercept plus a linear deterministic growth factor. The result is a model with a linear trending base. If no observable positive or negative growth is present, then the base is forced to follow a fixed horizontal line. Trends in sales data rarely behave in such simple deterministic ways. Many markets, ranging from Fast Moving Consumer Good (FMCG) to automotive, exhibit trends that evolve and vary over time. This is ignored in the conventional mix model. However, when it comes to understanding the long-run brand-building impact of marketing on sales, this is a serious oversight. Quantifying brand-building effects requires an understanding of how the long-run component of the time series behaves: that is, how base sales behave. This is not possible if base sales are pre-determined to follow a constant mean level or a deterministic growth path, as any true long-run variation in the data is suppressed. To overcome this, we need to specify the trend component as part of the model itself. This allows us to simultaneously extract both short and long-run variation in the data, giving a more precise picture of the evolution of long-run consumer demand and short-run incremental drivers. 1 The result is a marketing mix model with a truly evolving baseline. <br />An example for an FMCG face cleansing product is illustrated in Figure 1.<br />Modeling the Long-Run Effects of Marketing<br />Evolutionary or dynamic baseline mix models open the way to long-run analysis. This is simply because it is then possible to evaluate whether marketing activity plays a role in driving base sales evolution. If so, it can then be said to exert a long-run or trend-setting impact, in addition to any short-run incremental contribution. For example, it is well known that incremental returns to TV advertising tend to be small. However, successful TV campaigns also serve to build trial, stimulate repeat purchase and maintain healthy consumer brand perceptions.<br />In this way, advertising can drive and sustain the level of brand base sales. Conversely, excessive price promotional activity tends to influence base sales evolution negatively – via denigrating brand perceptions. Only by quantifying such indirect effects can we evaluate the true ROI to marketing investments and arrive at an optimal strategic balance between them.<br />To estimate these effects requires linking marketing investments to brand perceptions through to long-run base demand from marketing mix analysis. In this way, a sequential path is identified measuring the indirect impact of marketing activities on long-run consumer demand. <br />The flow is illustrated in Figure 2 and some example data are illustrated in Figure3, which plots the evolving baseline o Figure 1 alongside TVR investments and brand perception data relating to product fragrance and perceived product value.<br />Calculating the Full Long-Run Impact and Total ROI<br />Estimated indirect impacts of marketing investments are part of the long-run sales trend and as such generate a stream of effects extending into the foreseeable future: positive for TV advertising and negative for heavy promotional weight. These must be quantified if we wish to measure the full extent of any indirect effects. To quantify the current value of future indirect revenue streams, we use a net present value approach. This essentially decays the value of each subsequent period’s indirect effect as loyal consumers eventually leave the category and/or switch to competing brands. A discount rate is used to reflect increasing uncertainty around future revenue.<br />The indirect ‘base-shifting’ impact over the model sample, together with the decayed present value of future revenue streams quantifies the total long-run impact of advertising and promotional investments. These are then added to the weekly revenues calculated from the short-run modeling process. Benchmarking final net revenues against initial outlays allows calculation of the total ROI to marketing investments.<br />Managerial Implications<br />The long-run modeling process delivers two key commercial benefits. Firstly, it allows improved strategic budget allocation. Results from conventional models tend to favor intensive promotional activity over media investments. This often leads to a denigration of brand equity in favor of short-run revenue gain. Factoring in long-run revenues allows us to redress this balance in favor of strategic brand-building marketing activity. Secondly, it improves media strategy. Understanding which key brand characteristics drive brand demand can help to inform the media creative process for successful long-run brand building.<br />Conclusions<br />We’ve offered an alternative approach to market mix modeling which explicitly models both the short-and long-run features of the data. Not only does this provide more accurate short-run marketing results but, when combined with evolution in intermediate brand perception measures, allows an evaluation of the long-run impact of marketing activities. This framework demonstrates two key issues.<br />Firstly, if we wish to measure long-run marketing revenues it is imperative that econometric models deal with the evolving trend or baseline inherent in most economic time series: conventional marketing mix models are not flexible enough to address this issue.<br />Secondly, it demonstrates that intermediate brand perception data can be causally linked to brand sales and used to improve long-run business performace. This directl addresses the reservations over the use of primary research data raised by Binet et al (2007).<br />Reference<br />Binet, L. and Field, P. (2007) ‘Marketing in the Era of Accountability’, IPA Datamine, World Advertising Research Centre.<br />Cain, P.M. (2005), ‘Modelling and forecasting brand share: a dynamic demand system approach’, International Journal of Research in Marketing, 22, 203-20<br />Lodish, Leonard M., Magid Abraham, Stuart Kalmenson, Jeanne Livelsberger, Beth Lubetkin, Bruce Richardson, Mary Ellen Stevens. (1995). ‘How TV advertising works: A meta-analysis of 389 real world split cable TV advertising experiments’. Journal of Marketing Research, 32 (May) 125-139.<br />Dr. Peter Cain is SVP, Head of Science and Innovation EMEA and Global Accounts at MarketShare. With over 12 years experience in the marketing industry, he brings best-practice econometric and analytical solutions across a range of verticals.<br />
Modeling the real return on marketing investments
Modeling the real return on marketing investments
Modeling the real return on marketing investments
Modeling the real return on marketing investments

More Related Content

PPTX
How Market Mix Modeling Can Impact Cross-Channel Budget and Business Planning
PDF
Media mix modeling with social media roi bla
PDF
Notes Version: How Market Mix Modeling Can Impact Cross-Channel Budget and Bu...
PDF
The Smart Cube | Marketing Mix Modeling: An Old Remedy for New Ills
PDF
Market Mix Models: Shining a Light in the Black Box
PDF
Channel Sales Are Driven by 5 Core Factors
PDF
Top 20 Reasons Why Agent-based Modeling is Disrupting Marketing Mix
PPTX
Innovations in Market Mix Modelling
How Market Mix Modeling Can Impact Cross-Channel Budget and Business Planning
Media mix modeling with social media roi bla
Notes Version: How Market Mix Modeling Can Impact Cross-Channel Budget and Bu...
The Smart Cube | Marketing Mix Modeling: An Old Remedy for New Ills
Market Mix Models: Shining a Light in the Black Box
Channel Sales Are Driven by 5 Core Factors
Top 20 Reasons Why Agent-based Modeling is Disrupting Marketing Mix
Innovations in Market Mix Modelling

What's hot (20)

PDF
ROI - Taking Measure of Your Marketing Efforts
PPTX
Meaningful metrics for annual marketing plans
PPTX
Chapter 7 by Debasish Brahma
DOCX
STRATEGIC MARKETING Shivaji University Syllabus
DOC
Marketing Stategy
DOCX
Marketing plan wikipedia- good
PDF
'Next Gen' Joint Marketing Planning
PDF
Key Metrics for Your Channel Marketing Management Platform
PPTX
Sales force Effectiveness and Productivity Overview SummaryV2
PPTX
Relationship and sales management
PPTX
Creative Marketing Review | Relationship Marketing
PDF
Marketing mix modelling
PDF
How-To Guide: Marketing Resource Management
PDF
Marketing Resource Management How-To Guide
PDF
SIP Design Process summary
DOCX
Designing Sales Comp.V3.Final.031709
PPT
Chapter 15
PPTX
Brand ROI & the 5 Dimensions of the Future of Metrics
PDF
ATL BTL research paper
DOCX
Strategy
ROI - Taking Measure of Your Marketing Efforts
Meaningful metrics for annual marketing plans
Chapter 7 by Debasish Brahma
STRATEGIC MARKETING Shivaji University Syllabus
Marketing Stategy
Marketing plan wikipedia- good
'Next Gen' Joint Marketing Planning
Key Metrics for Your Channel Marketing Management Platform
Sales force Effectiveness and Productivity Overview SummaryV2
Relationship and sales management
Creative Marketing Review | Relationship Marketing
Marketing mix modelling
How-To Guide: Marketing Resource Management
Marketing Resource Management How-To Guide
SIP Design Process summary
Designing Sales Comp.V3.Final.031709
Chapter 15
Brand ROI & the 5 Dimensions of the Future of Metrics
ATL BTL research paper
Strategy
Ad

Similar to Modeling the real return on marketing investments (20)

PDF
MarketingMixModel this relates to the.pdf
PPTX
Marketing ROI Measurement
PPTX
Marketing Strategies on Building a Brand
PDF
Medical Office Marketing ROI Measurment
PDF
Where we are with marketing ROI measurement
PPTX
Shows approach which expands the breadth of what marketing-mix models c
PPT
Marketing Mix Models In a Changing Environment
PDF
Marketing Optimization in Financial Services
PDF
B2 b marketing measurment
PDF
Innovations in marketing effectiveness measurement
PDF
Amit Satsangi Analytics Portfolio
PDF
Measuring the Lonng-Term Effects of Advertising
PDF
Accenture: Interactive-pov-precision-marketing-analytics Feb 2013
PPTX
Brandfinanceforumpauwelsmarketingaccountabilityhowmarketingdrivesbrandandfirm...
PDF
Lottery marketing effectiveness case study
PDF
Econometrics for marketing
PDF
Hansa cequity creating power customers (global)
PDF
Hansa Cequity Creating Power Customers (Global)
PPT
Pauwelsreturnonmarketinginvestment
PDF
2005 june ap_insights
MarketingMixModel this relates to the.pdf
Marketing ROI Measurement
Marketing Strategies on Building a Brand
Medical Office Marketing ROI Measurment
Where we are with marketing ROI measurement
Shows approach which expands the breadth of what marketing-mix models c
Marketing Mix Models In a Changing Environment
Marketing Optimization in Financial Services
B2 b marketing measurment
Innovations in marketing effectiveness measurement
Amit Satsangi Analytics Portfolio
Measuring the Lonng-Term Effects of Advertising
Accenture: Interactive-pov-precision-marketing-analytics Feb 2013
Brandfinanceforumpauwelsmarketingaccountabilityhowmarketingdrivesbrandandfirm...
Lottery marketing effectiveness case study
Econometrics for marketing
Hansa cequity creating power customers (global)
Hansa Cequity Creating Power Customers (Global)
Pauwelsreturnonmarketinginvestment
2005 june ap_insights
Ad

More from comms planning (20)

PDF
The consumer decision journey
PDF
Effective Briefing Program
PDF
Optimizing agency teams
PDF
Marketing sostenible. WINC
PDF
Comms planning per BCN.cat
PDF
Taller comms integra
PDF
Mefe tv. el valor de la planificación
PDF
Presentació Comms planning
PDF
"L’ús professional de les xarxes socials"
PDF
How to-fail-30th-oct-2012
PPTX
Comms Planning
PPTX
El col·legi 2.0
PDF
"Brand advertising and digital" an IAB Europe - White Paper
PDF
Blueprint organization
PDF
Programa fira dot_2012[1]
PDF
Pixels, Performance and Profits. Accenture.
PDF
The consumer decision journey
PDF
Digital life. TNS Spain
PDF
"Let the evolution begin" @comScore
PDF
The Zero Moment of Truth (Google)
The consumer decision journey
Effective Briefing Program
Optimizing agency teams
Marketing sostenible. WINC
Comms planning per BCN.cat
Taller comms integra
Mefe tv. el valor de la planificación
Presentació Comms planning
"L’ús professional de les xarxes socials"
How to-fail-30th-oct-2012
Comms Planning
El col·legi 2.0
"Brand advertising and digital" an IAB Europe - White Paper
Blueprint organization
Programa fira dot_2012[1]
Pixels, Performance and Profits. Accenture.
The consumer decision journey
Digital life. TNS Spain
"Let the evolution begin" @comScore
The Zero Moment of Truth (Google)

Recently uploaded (20)

PDF
Katrina Stoneking: Shaking Up the Alcohol Beverage Industry
PPTX
job Avenue by vinith.pptxvnbvnvnvbnvbnbmnbmbh
PPT
340036916-American-Literature-Literary-Period-Overview.ppt
PDF
Nidhal Samdaie CV - International Business Consultant
PPTX
3. HISTORICAL PERSPECTIVE UNIIT 3^..pptx
PPTX
ICG2025_ICG 6th steering committee 30-8-24.pptx
PDF
How to Get Funding for Your Trucking Business
PDF
Reconciliation AND MEMORANDUM RECONCILATION
PPTX
Board-Reporting-Package-by-Umbrex-5-23-23.pptx
DOCX
unit 2 cost accounting- Tender and Quotation & Reconciliation Statement
PPTX
HR Introduction Slide (1).pptx on hr intro
DOCX
unit 1 COST ACCOUNTING AND COST SHEET
PDF
Digital Marketing & E-commerce Certificate Glossary.pdf.................
PDF
Roadmap Map-digital Banking feature MB,IB,AB
PDF
Elevate Cleaning Efficiency Using Tallfly Hair Remover Roller Factory Expertise
PDF
pdfcoffee.com-opt-b1plus-sb-answers.pdfvi
PPTX
CkgxkgxydkydyldylydlydyldlyddolydyoyyU2.pptx
PDF
NISM Series V-A MFD Workbook v December 2024.khhhjtgvwevoypdnew one must use ...
PDF
Daniels 2024 Inclusive, Sustainable Development
PDF
Solara Labs: Empowering Health through Innovative Nutraceutical Solutions
Katrina Stoneking: Shaking Up the Alcohol Beverage Industry
job Avenue by vinith.pptxvnbvnvnvbnvbnbmnbmbh
340036916-American-Literature-Literary-Period-Overview.ppt
Nidhal Samdaie CV - International Business Consultant
3. HISTORICAL PERSPECTIVE UNIIT 3^..pptx
ICG2025_ICG 6th steering committee 30-8-24.pptx
How to Get Funding for Your Trucking Business
Reconciliation AND MEMORANDUM RECONCILATION
Board-Reporting-Package-by-Umbrex-5-23-23.pptx
unit 2 cost accounting- Tender and Quotation & Reconciliation Statement
HR Introduction Slide (1).pptx on hr intro
unit 1 COST ACCOUNTING AND COST SHEET
Digital Marketing & E-commerce Certificate Glossary.pdf.................
Roadmap Map-digital Banking feature MB,IB,AB
Elevate Cleaning Efficiency Using Tallfly Hair Remover Roller Factory Expertise
pdfcoffee.com-opt-b1plus-sb-answers.pdfvi
CkgxkgxydkydyldylydlydyldlyddolydyoyyU2.pptx
NISM Series V-A MFD Workbook v December 2024.khhhjtgvwevoypdnew one must use ...
Daniels 2024 Inclusive, Sustainable Development
Solara Labs: Empowering Health through Innovative Nutraceutical Solutions

Modeling the real return on marketing investments

  • 1. Modeling the Real Return on Marketing Investments<br />July 1, 2011<br />BY: PETER-CAIN<br />A key decision facing the brand manager is how best to allocate an often limited marketing budget across a wide set of marketing activities. This is a challenging task in a competitive market place involving complex marketing strategies, where competitor activity can often upset careful planning. The conventional approach to answering this question is the single equation marketing mix mode3l, which formulates a demand equation as a function of selected marketing drivers. Response parameters are then estimated using classical regression techniques and used to calculate ROI and inform optimal allocation of the marketing budget.<br />Such models, however, focus solely on incremental volume, often recommending a marketing budget allocation skewed towards promotional activity: short-run sales respond well to promotion, yet are less responsive to media activity – particularly for established brands. This, however, ignores the long-run view: that is, the potential brand-building properties of successful media campaigns on the one hand and the brand-eroding properties of heavy price discounts on the other. Acknowledging and quantifying these features is crucial to a complete ROI evaluation and a more strategic budget allocation.<br />To address this issue, the marketing mix model needs to be re-structured to quantify both short-run and long-run variation in the data. The former is used to calculate short-term ROI on marketing investments in the usual way. The latter measures the evolution of brand preferences over time. This generates an evolving baseline which, when combined with marketing investments and consumer tracking information, allows a quantification of long-run ROI.<br />Conventional Marketing Mix Modeling<br />Market mix modeling employs econometric techniques to quantify the contribution of a set of driver variables to the variation in a sales response variable. The model building process involves three key steps: selecting key marketing driver variables, defining the manner in which sales are linked to the driving variables and the nature of sales adjustment to the change in driving variables. This final step is known as dynamic specification, where lagged value of sales can be added and/or lags applied directly to the variables themselves. For example, advertising TVR data traditional appear in adstocked form to capture the carry-over effects that we would intuitively expect from successful media campaigns: namely, where the effects are felt beyond the period of execution due to product purchase cycles and/or media retention in the mind of the consumer.<br />Such models focus solely on the short- to medium-term returns on marketing investments. Traditional approaches to modeling the long-run impact of marketing activity build primarily on the basic dynamics mentioned above. For example, the long-run effects of television advertising are often estimated using adstocked TVR data with very high retention rates – indicative of heavy persistence of past levels of advertising weight. Alternatively, long-run effects are derived simply by multiplying the short-term effects by there, based on results in Lodish et al (1995). Promotion modeling can also be extended to incorporate the negative effects of post-promotional dips – reflecting pantry loading, where stocking up in response to promotional deals today cannibalizes product sales tomorrow.<br />All such extensions, however, miss an extremely important component of the long-run view. That is, the extent to which marketing activity can help – or hinder – the development of underlying brand strength. It is well known that advertising investments tend to generate little incremental return, yet serve to provide a long-run brand-building function. On the other hand, excessive reliance on promotions can denigrate brand image, eroding equity in the brand. How can we test for and quantify these effects? One approach is to exploit the fundamentals of time series regression analysis.<br />Advanced Marketing Mix Approaches<br />All marketing mix models involve the analysis of time-ordered sales observations. It is well known that any time series can be decomposed into trend, seasonal and cyclical components. Consequently, mix models are essentially time series models with marketing elements woven around this basic structure. The trend component represents long-run evolution of the sales series and is crucial to a well-specified marketing mix model. In the conventional approach, the trend is represented by the regression intercept plus a linear deterministic growth factor. The result is a model with a linear trending base. If no observable positive or negative growth is present, then the base is forced to follow a fixed horizontal line. Trends in sales data rarely behave in such simple deterministic ways. Many markets, ranging from Fast Moving Consumer Good (FMCG) to automotive, exhibit trends that evolve and vary over time. This is ignored in the conventional mix model. However, when it comes to understanding the long-run brand-building impact of marketing on sales, this is a serious oversight. Quantifying brand-building effects requires an understanding of how the long-run component of the time series behaves: that is, how base sales behave. This is not possible if base sales are pre-determined to follow a constant mean level or a deterministic growth path, as any true long-run variation in the data is suppressed. To overcome this, we need to specify the trend component as part of the model itself. This allows us to simultaneously extract both short and long-run variation in the data, giving a more precise picture of the evolution of long-run consumer demand and short-run incremental drivers. 1 The result is a marketing mix model with a truly evolving baseline. <br />An example for an FMCG face cleansing product is illustrated in Figure 1.<br />Modeling the Long-Run Effects of Marketing<br />Evolutionary or dynamic baseline mix models open the way to long-run analysis. This is simply because it is then possible to evaluate whether marketing activity plays a role in driving base sales evolution. If so, it can then be said to exert a long-run or trend-setting impact, in addition to any short-run incremental contribution. For example, it is well known that incremental returns to TV advertising tend to be small. However, successful TV campaigns also serve to build trial, stimulate repeat purchase and maintain healthy consumer brand perceptions.<br />In this way, advertising can drive and sustain the level of brand base sales. Conversely, excessive price promotional activity tends to influence base sales evolution negatively – via denigrating brand perceptions. Only by quantifying such indirect effects can we evaluate the true ROI to marketing investments and arrive at an optimal strategic balance between them.<br />To estimate these effects requires linking marketing investments to brand perceptions through to long-run base demand from marketing mix analysis. In this way, a sequential path is identified measuring the indirect impact of marketing activities on long-run consumer demand. <br />The flow is illustrated in Figure 2 and some example data are illustrated in Figure3, which plots the evolving baseline o Figure 1 alongside TVR investments and brand perception data relating to product fragrance and perceived product value.<br />Calculating the Full Long-Run Impact and Total ROI<br />Estimated indirect impacts of marketing investments are part of the long-run sales trend and as such generate a stream of effects extending into the foreseeable future: positive for TV advertising and negative for heavy promotional weight. These must be quantified if we wish to measure the full extent of any indirect effects. To quantify the current value of future indirect revenue streams, we use a net present value approach. This essentially decays the value of each subsequent period’s indirect effect as loyal consumers eventually leave the category and/or switch to competing brands. A discount rate is used to reflect increasing uncertainty around future revenue.<br />The indirect ‘base-shifting’ impact over the model sample, together with the decayed present value of future revenue streams quantifies the total long-run impact of advertising and promotional investments. These are then added to the weekly revenues calculated from the short-run modeling process. Benchmarking final net revenues against initial outlays allows calculation of the total ROI to marketing investments.<br />Managerial Implications<br />The long-run modeling process delivers two key commercial benefits. Firstly, it allows improved strategic budget allocation. Results from conventional models tend to favor intensive promotional activity over media investments. This often leads to a denigration of brand equity in favor of short-run revenue gain. Factoring in long-run revenues allows us to redress this balance in favor of strategic brand-building marketing activity. Secondly, it improves media strategy. Understanding which key brand characteristics drive brand demand can help to inform the media creative process for successful long-run brand building.<br />Conclusions<br />We’ve offered an alternative approach to market mix modeling which explicitly models both the short-and long-run features of the data. Not only does this provide more accurate short-run marketing results but, when combined with evolution in intermediate brand perception measures, allows an evaluation of the long-run impact of marketing activities. This framework demonstrates two key issues.<br />Firstly, if we wish to measure long-run marketing revenues it is imperative that econometric models deal with the evolving trend or baseline inherent in most economic time series: conventional marketing mix models are not flexible enough to address this issue.<br />Secondly, it demonstrates that intermediate brand perception data can be causally linked to brand sales and used to improve long-run business performace. This directl addresses the reservations over the use of primary research data raised by Binet et al (2007).<br />Reference<br />Binet, L. and Field, P. (2007) ‘Marketing in the Era of Accountability’, IPA Datamine, World Advertising Research Centre.<br />Cain, P.M. (2005), ‘Modelling and forecasting brand share: a dynamic demand system approach’, International Journal of Research in Marketing, 22, 203-20<br />Lodish, Leonard M., Magid Abraham, Stuart Kalmenson, Jeanne Livelsberger, Beth Lubetkin, Bruce Richardson, Mary Ellen Stevens. (1995). ‘How TV advertising works: A meta-analysis of 389 real world split cable TV advertising experiments’. Journal of Marketing Research, 32 (May) 125-139.<br />Dr. Peter Cain is SVP, Head of Science and Innovation EMEA and Global Accounts at MarketShare. With over 12 years experience in the marketing industry, he brings best-practice econometric and analytical solutions across a range of verticals.<br />