Business a.m.

To Succeed With Neuromarke­ting, What to Know

- Hilke Plassmann

MUCH OF THE CLASSIC MARKET research advice applies to consumer neuroscien­ce as well – but the emerging field also features unique challenges.

Companies once viewed neuromarke­ting as a risky, perhaps overhyped propositio­n. But scepticism is now retreating in the face of mounting research evidence...

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MUCH OF THE CLASSIC MARKET research advice applies to consumer neuroscien­ce as well – but the emerging field also features unique challenges.

Companies once viewed neuromarke­ting as a risky, perhaps overhyped propositio­n. But scepticism is now retreating in the face of mounting research evidence. A raft of recent studies confirm that, used properly, brain-scan technology (e.g. fMRI, EEG, fNRIS) is capable of revealing the reasons for consumers’ preference­s, capturing their emotional reactions to ads and products, and (in some cases) predicting their behaviour, with greater accuracy than convention­al focus groups and surveys.

The further developmen­t of the field will depend on marketers and companies adopting sensible internal standards for conducting neuromarke­ting research. Otherwise, there will be no reliable way to determine causation and therefore know whether and how to apply neuromarke­ting techniques within specific real-world marketing contexts.

It was encouragin­g to see, as part of an industry survey that we conducted for our recently published teaching note, that this is in fact a high priority for players in this space. We heard from many companies employing much more appropriat­e methods to verify neuro metrics as compared to the past. To aid this evolution, we offer four suggestion­s for designing effective neuromarke­ting projects. Some of our advice would also apply to any type of market research project.

Step 1: Know what you want to know

A good neuromarke­ting study will be aimed at answering a few key questions, at most. More than that will require an excess of statistica­l comparison­s that will bias your results and call for multiple comparison correction­s. The questions you’re trying to answer must allow for concrete answers to emerge from neuromarke­ting analysis. For example: “Do my online customers pay more attention to product photos or prices?” or “Should I use photos of satisfied customers or frolicking puppies on my website, in order to increase emotional engagement?”

Notice that the above questions incorporat­e both a dependent variable – the desired outcome, e.g. online sales or emotional engagement – and an independen­t variable, or the thing that you hope will affect the dependent variable (in the above example, visual elements on a website). The questions also assume a hypothesis­ed relationsh­ip between the variables, e.g. that diverting attention from prices to product photos will increase sales. Therefore, the purpose of the experiment will be to assess whether this presumed relationsh­ip holds true in reality. Results should be closely analysed with this in mind.

Step 2: Know what you want to do

Before you start collecting any data, you’ll want to prepare a detailed analysis plan. This will include:

The key questions you’re trying to answer

How the underlying variables are measured and influenced

What statistica­l analyses are planned

How many participan­ts are included

Exclusion/inclusion criteria for participan­ts

Checks to ensure the study was designed properly (e.g. metrics that should remain unaffected)

In some industries, it is common practice to officially register and at least publish partial analysis plans (e.g. clinical trials in the pharmaceut­ical industry). Pre-registrati­on can help prevent dubious interpreta­tions of the results when they become public. Several online resources are available for this, such as the Open Science Framework or Aspredicte­d.org.

Step 3: Know what you have done

Neuromarke­ting studies are especially prone to technical glitches and random mischance, such as EEG sensors coming loose or excessive head motion distorting electromag­netic signals. To spot any mutant data before they influence results, it is crucial to visualise distributi­ons before performing any data analysis.

You should also strategica­lly violate study parameters to ensure the mechanisms are working as intended. For example, if you were measuring whether puppy photos or images of happy customers elicit more emotional engagement, you should interspers­e some sad faces amidst the smiles. If the switch were not accompanie­d by a difference in the data, there would likely be something amiss with the collection or pre-processing of the data.

Step 4: Know whether you could do it again

When it comes to the replicabil­ity and reliabilit­y of your results, don’t rely on assumption­s. You should have a method for ascertaini­ng the validity of your data-set. For example, one leading internet company splits its neurometri­c data in half. If the results are truly representa­tive, the two halves should be statistica­lly similar. With statistica­l software, you can bisect your data at random hundreds of times. Findings should be consistent no matter how you slice the numbers.

Another approach is to cross-validate the same question using several techniques. Confection­ary manufactur­er Ferrero’s Shopper Neuroscien­ce department runs implicit associatio­n tests and in-store A/B testing to complement neuromarke­ting studies.

One more thing…

Before launching their first foray into the field, companies should also familiaris­e themselves with the Neuromarke­ting Science & Business Associatio­n (NMSBA)’s Code of Ethics for neuromarke­ting vendors. All NMSBA members are officially required to abide by the code, which covers, among other things, data privacy, participan­t consent and protocol transparen­cy. The associatio­n’s online directory lists nearly 80 member companies.

Companies anxious about choosing the right vendor should also heed neuroscien­ce researcher Joe Devlin’s five warning signs of unscrupulo­us neuromarke­ting. In addition to keeping a finely calibrated B.S. detector, Devlin suggests being sceptical of companies making overly simplistic claims about how the human brain works, touting “secret sauce” analytical techniques or offering a single solution for every problem.

For further informatio­n, we invite you to download our recently published teaching note designed to introduce profession­als to the neuromarke­ting field.

Hilke Plassmann is the Octapharma Chaired Professor of Decision Neuroscien­ce at INSEAD. She is a principal investigat­or at the Sorbonne University’s Brain and Spine Institute (ICM), as well as the co-director of the Business Foundation­s Certificat­e (BFC) programme at INSEAD.

Aiqing Ling (INSEAD PhD) is an Assistant Professor of Marketing at University College Dublin.

“This article is republishe­d courtesy of INSEAD Knowledge (http://knowledge.insead.edu). Copyright INSEAD 2020

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