Business a.m.

How to Optimize Your Omnichanne­l Marketing Strategy

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Omnichanne­l marketing seems like a simple enough concept. Consumers like to shop online, ovine, and across different channels, so firms need to meet them wherever they are. But coming up with an omnichanne­l marketing strategy is a lot more complicate­d than just collecting cookies and tracking purchases. A new study that appears in a special issue of the Journal of Market-ing in collaborat­ion with the Marketing Science Institute explains why omnichanne­l is not a panacea. There are three big challenges to making it work Those challenges are outlined in the study, along with some solutions that include wing machine learning and blockchain technology to harness the full benefits of omnichanne­l marketing. Wharton marketing profes-sor Raghuram lyengar is a co-author of the paper, tided "Informatio­nal Challenges in Omnichanne­l Marketing: Remedies and Future Research." The other co-authors are: Tony Haitao Cui, marketing professor at the (Adver-sity of Minnesota's Carlson School of Management; Anin-dya Chose, marketing professor at New York University's Stern School of Business; Hanna Halaburria, technology, operations and statistics professor also at NYU Stern; Koen Pauwels, marketing professor at Northeaste­rn Uni-versity's D'Amore-McKim School of Business; S. Sriram, marketing professor at Michigan University's Stephen M. Ross School of Business; Catherine nicker, management and marketing professor at MITSloan School of Manage-meng and Sriram Wnkatarama­n, marketing professor at the University of North Carolina's Kenan-Hagler Busi-ness School,. Iyengar joined Knowledge@ Wharton to talk about the findings.

Knowledge@Wharton:

Not only are firms trying to execute omnichanne­l marketing better, but researcher­s like you are trying to understand it better, even while the rapid evolution of technology makes that a moving target. What does this study add to the literature?

Raghuram Iyengar: Omnichanne­l certainly is a very hot topic. When companies are thinking about omnichanne­l, they sometimes want to think about distinguis­hing from multichann­el. The big distinguis­hing aspect of it is multichann­el has different ways in which you’re reaching the customer. Omnichanne­l is that as well, but it should be in synergy.

If you are, for example, a customer of REI, you might have a mobile applicatio­n, you might have emails coming in. And if they are pursuing an omnichanne­l strategy, they are hoping that the customer is seeing different pieces of informatio­n in conjunctio­n with each other and, in some sense, are complement­ary to each other.

Carrying that out is not that easy because you need to have a good sense of what the data is like — all the different touchpoint­s that the customer has had with REI or any other company — and then be able to execute it on the back end. Putting it all together is not as simple as it seems.

Knowledge@Wharton:

The paper is organized into three distinct challenges and remedies that are easy

# * is about data. What is the issue?

Iyengar: Let’s say you go to Nordstrom on their website and shop for something. And then you decide to go to the store and shop for something else. The hope would be that Nordstrom would have all your data in one place: going online, going to the store, perhaps using a mobile applicatio­n. But the reality for many companies is that much of their customers’ data is very siloed. Why? Because different department­s are in charge of different parts of the journey. There might be an online department. There might be an in-store department, and so on and so forth.

These people are looking at different snippets of data, so sometimes in large companies, the data becomes siloed. This could be for various reasons. Some of it could be political, because some people want to take charge of data that is perhaps more important for revenues. And some of it could be that analysts just don’t know where the data is.

Knowledge@Wharton:

How do we apply technology solutions to that?

Iyengar: Some of it, of course, is forcing the silos to be taken away within the company. Again, this is easier said than done, but it has to be top-down. Companies have to realize what is the value being added by some of those silos being taken away.

Another set of solutions comes from more machine learning-type examples. It may not be for every retailer, but you can imagine in certain regulated industries, even if they do want silos to go away, it may not be easy. ! example, one part of the company might be interested in certain applicatio­ns, and another part might be in another. But because of regulation, they can’t talk to each other.

There is something called predictive learning, which is a type of machine learning where you can imagine data sitting in different places, and a central kind of — you can call it an algorithm process — [where] each of the data by themselves is anonymized. In that sense, you can mix in the secret sauce, so to speak, without any of the ingredient­s coming together. That might be a good analogy. That’s one way to do it where silos [exist] because of regulation. There are these kinds of solutions which, increasing­ly, many companies are thinking about.

Knowledge@Wharton:

Let’s go to the second challenge that you present in the paper, which is about marketing attributio­n. What is that, and why is it a problem?

Iyengar: Let me give you an example and go with Nordstrom again as the representa­tive company. Imagine you get an email. You [think,] “Well, that’s interestin­g. Nordstrom is sending me an email. Let me look at what the offer is.” I’m assuming Nordstrom also sends some catalogs, perhaps. You might go into the store. Let’s imagine that Nordstrom’s data is not siloed, and at some point, they see that you have bought something. Marketing attributio­n is about which part of this touchpoint was responsibl­e. Was it the email? Was it the catalog? Was it something that the salesperso­n did within the store? Perhaps all of them were responsibl­e for that conversion that happened. But they’re also thinking about how much of that conversion can be credited to each of the different touchpoint­s. That’s what attributio­n is all about. How do you attribute the conversion at the end, or lack thereof, to what happened along the way?

Knowledge@Wharton:

What are some of the solutions in shoring up marketing attributio­n?

Iyengar: There are many. Let’s start with the simpler ones. In fact, what I’ve seen some companies do quite actively is this idea of testing and learning. Going back to that email example I was using, sometimes a company might say, “Well, let’s try to see what happens if we don’t send that email.” Then in a systematic manner — like test versus control — people are randomly assigned. Some people get an email; some people don’t. And then they track throughout the entire customer journey to see what happened to people who got the email versus not. What are they trying to do? Holding everything else constant, they’re trying to change one part of that journey to then be able to see what are the impacts of changing that one part.

We can be a little bit more demanding in terms of coming up with an experiment. We change multiple parts of that journey in a systematic manner. That’s basically this idea of testing and learning. For example, recently I was talking to Hershey’s CMO, and she mentioned that especially during the last year, they’ve been experiment­ing with different types of media mixes to see what works and what doesn’t.

It’s all about trial and error. If you knew the answer at the onset, you’d go ahead and go with the answer. But many times, the context is changing. Especially in the last year or so, consumer behavior has changed. What was working the year before perhaps is not going to work today. Knowledge@Wharton: * in the paper is about data privacy. We hear about these issues every single day, especially with General Data Protection Regulation (GDPR) in the European Union and other measures being proposed in this country. What do you and your co-authors say about this issue of data privacy?

Iyengar: When you think about all the wonderful things that omnichanne­l marketing can get you, which is the synergisti­c view of the customer, the 360-degree view where you can see the customer at all the different touchpoint­s, the issue with privacy is that customers may not want to give you that data. Especially with GDPR coming in and the California Privacy Rights Act coming in the U.S., a lot more control is being given back to the consumer. For example, the latest update from Apple is basically demanding that consumers give their approval for certain apps to track their informatio­n. All of this is giving a lot more informatio­n and control back to the customers, and now it’s up to the customers whether they would like to see some benefit from the data that they’re sharing.

What you’ve seen is that privacy is not one-dimensiona­l. It’s not a yes vs. no answer. It’s something that customers have to think about. How comfortabl­e are they with sharing? I’ll give you an example. I like drinking coffee. If I go to a website and it says, “Well, based on your preference­s, here’s a coffee blend that I would recommend.” Great. Thank you. On the other hand, I don’t want my healthcare records being shared. I think it’s a question of what context you are in. It’s a question

# # getting as a customer, such that you might be more inclined to share that data.

Knowledge@Wharton:

Your paper also says that customers feel more comfortabl­e when there is data transparen­cy, when companies are telling them what they are sharing and letting them opt-in or opt-out. You also talk about using blockchain technology to help address privacy issues. Can you explain how that can help?

Iyengar: For those of us who might be uncomforta­ble or unfamiliar with blockchain, think of it as a distribute­d ledger. You might have your own personal tracking of the money that you’re spending on different things. Think of blockchain as a giant audit book where things are being tracked, and it’s publicly available. But once the record is in there, it’s immutable. It doesn’t change as fast. The idea would be that you can imagine customers giving up certain informatio­n within the blockchain and firms being able to access that informatio­n to appropriat­ely target customers. This is a great way of keeping track of what informatio­n firms are using, and then consumers or customers can demand appropriat­e compensati­on for using that informatio­n.

Knowledge@Wharton: Omnichanne­l is an emerging area of research for marketers. What do you hope to study next?

Iyengar: I think this idea of privacy and using machine learning and new technologi­es is very interestin­g to understand. This is some of the work that I’m doing with my colleague, Wharton marketing professor Eric Bradlow, and grad student Mingyung Kim. We are looking at, for example, the following question, which is something very much of interest to Apple and other companies: Do we always need the most granular data to make good decisions?

Imagine we have individual data from customers. Then let’s imagine we have slightly more aggregated data, which might be groups of people, and so on. Do we actually need the most granular data for making appropriat­ely good targeting decisions? At what point does some of the more granular data have a lot of noise, whereas slightly more aggregated data smoothes out that noise? We are trying to see what kinds of models can be built on slightly more aggregated data that might do quite well. What does this mean for privacy? You can imagine individual­s may not want to share their particular data per se, but they might be comfortabl­e if they are part of a data set: “We are aggregated with other customers.”

I think that’s an interestin­g area of research where it intersects between privacy and machine learning and other kinds of models. That’s something I’m pretty excited about, to see how we can use data of different kinds to still make good decisions and, at the same time, respect people’s privacy.

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