Double Award Win for RichRelevance and Shop Direct at the Retail Systems Awards 2016

Last night RichRelevance and Shop Direct were crowned as leaders at The Retail Systems Awards at the Millennium Hotel, in Mayfair, London.

RichRelevance won ‘Online Solution of the Year’ for its personalisation project with innovative retailer, Shop Direct. The winning solution was chosen for the superior online shopping experiences created for very.co.uk customers. Shop Direct were also crowned ‘Retailer of the Year’ for their Personalisation initiatives with RichRelevance.

Retail Systems Awards

Now into their 11th year, the Retail Systems Awards recognise technology excellence and innovation within the retail sector. Winning entries come from retailers and technology suppliers who are leading the way in areas such as mobile, online, payments, loyalty and personalisation.

The awards ceremony was attended by retail and technology industry leaders from across the UK. The Retail Systems’ judging panel included Clare Joel, Head of IT, French Connection Group, Nadine Sharara, E-Commerce & CRM Director, Moët Hennessy, Sharon Peters, Programme Manager International Supply Chain, Marks and Spencer and Michelle Stevens, Editor, Retail Systems.

Congratulations to all the other winners of the Retail Systems Awards. A great night was had by all and we’re proud to have been among other industry leaders from across the UK at the awards ceremony in Mayfair, London.

 

Global Consumer Attitudes Towards In-Store Technology

RichRelevance research unveils consumer attitudes towards in-store technology are markedly similar across America, Britain and Europe, except when it comes to facial recognition.

Whilst American and British shoppers welcomed a lot of shopping experiences they were the most creeped out by personalization initiatives involving facial recognition. Out of all the countries surveyed, the French were identified as the most open to in-store technology, with the highest cool ratings against questions.

As depicted in the infographic, all the nations surveyed agree that being able to scan products on their mobile device in-store to read product reviews is the coolest trend. 79% of Americans, 76% of French, 73% of Germans and 62% of British, all think this capability is ‘cool’.

However, differences appear when facial recognition is concerned with the French being the only nation surveyed to think it’s cool to be identified as a high value shopper via facial recognition technologies (62%) verses all the other nations surveyed in agreement it’s quite creepy – US 67%, UK 75% and Germany 43% creepy.

While 40% of British and Americans are keen on digital screens in dressing rooms, the survey found the French and Germans are even more enthusiastic with over 65% of French and 61% of Germans thinking it’s cool. Likewise interactive mirrors which model outfits were considered 42% cool in the UK, verses 63% cool in France and 58% cool for Germany.

Even where shoppers were creeped out by certain initiatives in-store, the French were less ‘creeped’ out than their British, American and German counterparts. For example where 75% of British, 64% of American and 48% of Germans would not like to be greeted by a sales person who identify them via their mobile phone or app as they enter the store, only 36% of French are turned off by this idea.

It’ll be interesting to see how attitudes change in the forthcoming year in particular with virtual reality technologies becoming more widely adopted by retailers to enhance shopping experiences in-store.

Find out more about the Creepy/Cool survey here.

RichRelevance - Kicking Off Holiday Shopping Infographic

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Decoding Your Recommendations Performance

Product recommendations, also known as “recs,” are a cornerstone to an effective ecommerce merchandising strategy. When fully optimized, recs typically increase retailer revenues by up to 5%. That’s a substantial contribution when extrapolated across annual sales in the hundreds of millions or even billions of dollars. However, one thing I’ve noticed while navigating the world of ecommerce personalization is that the word “performance” is often misused in the context of recs. The reality is that there are multiple meanings to this word, and for each meaning, there is a discrete method for assessing its relationship with your shoppers and your revenue. So, let’s decode your recs performance.

At RichRelevance, we group performance into three analytical categories: value, engagement, and cohort analyses. While each type is useful, each tells us vastly different things. Misappropriating the type, like confusing an engagement analysis for a value analysis, can lead to disastrous business decisions. I’m here to protect you from making such mistakes.

First, let me summarize the three types of analysis:

  1. Value Analysis: this indicates the incremental revenue impact of recs, and is usually the report of most interest to retailers. The key metrics are typically revenue per session (RPS), conversion, average order value (AOV), and the lift contribution is determined by running an A/B or multivariate test that compares key performance indicators (KPIs) of populations based on their exposure to recs.
  2. Engagement Analysis: this quantifies shopper utilization of recs, and can be a signal for relevance. The key metrics are recs sales and clickthrough rate (CTR). Recs sales represents the sale of items clicked on in recommendations.
  3. Cohort Analysis: this profiles the spend patterns of shoppers that choose to use recommendations vs. those that do not—comparing the RPS, conversion, and AOV of shoppers based on their engagement with recs.

Most retailers stumble with using engagement or cohort analyses interchangeably as indicators of value. I get it; these reports are readily available, whereas conducting a true value analysis requires an A/B test which can take weeks and expose the retailer to undue opportunity costs. However, the reality is that these reports don’t convey the incremental benefit of recommendations, and here’s why:

Disassociating Engagement and Value Analyses
An engagement analysis tells us how much shoppers use recs and, to some extent, indicates relevance. If the recommendations are random, shoppers won’t click or buy from the retailer. That said, striving to maximize recs sales or CTR is equal to saying that recommendations are the most important piece of content on your site—and we all know that they’re not. What’s most important is getting shoppers to convert with the highest level of spend. Recs merely support that objective.

In fact, certain kinds of recs engagement can have a neutral or negative impact on your business. It’s the responsibility of the recommendation technology and how it’s configured to mitigate these instances. To shed more light on the matter, here are three events you should be aware of that explain why value is not a function of recs engagement or sales:

  • Overlap: Sale of items that would have happened anyway, even in the absence of recommendations. Frankly, the vast majority of sales that happen through recommendations aren’t incremental, so indiscriminately increasing recs sales does not guarantee more cash in your coffers.
  • Cannibalization: Reduction in AOV due to the presence of recs. If recommendations cause a shopper to buy a cheaper SKU than they otherwise would have purchased, that takes money out your pocket as a retailer.
  • Shopper Distraction: Reduction in conversion due to recs. If recommendations are optimized to attract as many clicks as possible, they can bait shoppers to click in perpetuity until they become fatigued and leave your site without converting. No one wants this.

And of course, we have copious amounts of data to demonstrate that maximizing recs engagement has a detrimental impact on revenue. We’ve plotted recs CTR and recs sales against RPS lift for a multitude of RichRelevance A/B tests, and the resulting scatterplot shows no positive correlation between engagement and incremental revenue. In fact, the data suggests that at extreme levels of recs engagement, RPS lift can be severely compromised. For more details, view this interesting TED Talk on the “paradox of choice”, which implies that oversaturating a shopping experience with product options and baiting shoppers into excessive exploration can result in non-conversion.

Quite simply, it’s not about maximizing recs engagement; it’s about driving the right level of engagement that minimizes the aforementioned events and maximizes your per session revenue.

Disassociating Cohort and Value Analyses
A cohort analysis tells us the RPS, conversion and AOV of shoppers that choose to use recs versus those that do not. Most often the shoppers that choose to use recommendations have substantially higher key performance indicators (KPIs), which can lead one to presume an extreme level of benefit from recs. That said, please consider that although recommendations do generate substantial revenue lift when properly optimized, a cohort analysis does very little to quantify that impact.

In the business-to-consumer world, shoppers that utilize recommendations tend to have higher spend propensities, so it’s not uncommon for recs users to have 2x the RPS of non-recs users. Intuitively, this makes sense. When dealing with household consumers, willingness to engage with your catalog is a primer for purchase intent. In the business-to-business (B2B) world, the inverse is true. B2B buyers have predictable requisition lists that they rarely deviate from. Consider an office manager that’s restocking his company’s office supplies or an IT manager that’s purchasing specific laptop models for her business. These professionals know exactly what they want, order in bulk, and do not use recommendations.

So, these non-recs users have high RPS, conversion, and AOV. Conversely, the recs users represent those shoppers that are less committed—those that may or may not know what they want, and if they do convert, it’s with much less spend. For sites like Staples, Office Depot, or Dell, these are most usually your household consumers, and a cohort analysis would report much lower KPIs all around. Therefore, due to a self-selection bias, whether a cohort analysis shows higher or lower KPIs for recs users is independent of the value the recs technology actually delivers. Rather, it’s indicative of the types of users that decide to use recommendations.

Are recs impacting your best shoppers? Do recs help monetize individuals least likely to convert, or do they have broad resonance across all levels of spend in your shopper base?

So, there you have it—your performance analyses decoded to help you learn a bunch more about your recs and answer these questions: Who is using recs (Cohort Analysis)? How much are they using it (Engagement Analysis)? What incremental value does this utilization provide (Value Analysis)?

Are You Accurately Measuring Your Site Search Performance?

Take a moment and think about how you interact with your mobile device, how do you research or make purchases on your mobile phone? You’ll quickly realize that your path to purchase most often begins with a keyword search, which often is vastly  different than how you navigate a dot-com site or your local brick and mortar retailer. Infact, 56% of all retail searches occur on mobile devices. Mobile access has changed the way we as consumers interact with the world and it has significantly changed the path to purchase. Mobile was once used for showrooming purposes, sending retailers into a tailspin about how to ensure shoppers didn’t browse in store and convert elsewhere. Today, our challenge is different, mobile devices and behaviors have evolved, they’re more intelligent and more capable to handle  a complete shopping journey. While showrooming and browsing behaviors still occur, the completion of the purchase on the mobile device is accounting for more and more of a retailer’s revenue. According to Internet Retailer, mobile commerce is growing at 3 times the rate of US ecommerce overall, accounting for more than $104 billion in 2015.

Today’s challenge is focused on how retailers  ensure that customers are finding what they’re looking for on mobile devices so that they ultimately convert. This  begs the question, how well is your site search performing? Are your customers finding what they seek? Is your site search delivering a customer centric and mobile considerate experience? What metrics are you using to determine it’s success or failure?

The traditional and dated way of measuring site performance (and commerce search within) by Revenue Per Session (RPS) and conversion were valid when ecommerce was simply just a dot-com site, which is not the case for today’s world. Today, it is essential to measure the performance of each individual feature that leads to a purchase/conversion. In the case of site search, success is defined by the relevance of the results delivered by a search engine to an individual user.

Search is innately unique in the respect that it is the single place in digital shopping journeys where users communicate with technology in their own words and expect a comprehensive response or set of responses. By default, search demands 1:1 communication, and is one of the most impactful places to influence and enhance the customer experience. Search is often a retailer’s first impression, especially on mobile, it is a critical opportunity to succeed by providing relevant and individualized results. Commerce Search accelerates product discovery and drives consumer conversion by delivering the most relevant results for each unique search query. The accuracy of the responses delivered by search is measured by what is known as “Findability”.

Findability a term first coined by Professor Michael Hendron, whose research indicates that nearly a third of e-commerce shoppers use site search, and 90% of buyers will probably use it. Yet these same sought after buyers only find what they seek in half of all site searches.

Since when did the retail industry accept a success rate of just 50%?

Given that search is a feature most often chosen by a determined and informed consumer who knows exactly what he/she wants, especially in ecommerce, it is essential to measure how successful the actual search experience is for that individual. This is why Findability must be a focal point of consideration when analyzing the performance of site search. Findability tells merchants whether consumers find what they are looking for and if they are ultimately pleased with those items. The conversion of these shoppers can only come if they have in fact located the items they desire. It is a cause and effect relationship, and a relationship that if treated right will thrive. When consumers trust that their searches will yield results they’re satisfied with, their search frequency and dependency simultaneously increases.

Are you measuring your site search properly? Are your customers finding what they’re looking for? Perhaps the metrics you’re currently using to determine performance are not providing you with the whole story. To get deeper insight into how to enhance your site search performance and learn more about Findability please visit https://richrelevance.com/relevance-cloud/find/ to stay in the know about our newest product launch Find™, the next generation of personalized search for an omnichannel world.

A Multichannel Identity Crisis: How to Solve Your User Matching Problems

Did you know that almost half (48%) of page views are anonymous? I suppose this wouldn’t be so concerning if it didn’t result in 13% anonymous purchases. If only online shopping were simple and mandated that users login and only had one account, this problem would be solved, unfortunately for us, this isn’t the world we live in. So how do we encourage more logins?

You could do what Priceline.com did and run a TV ad saying, “If you don’t sign-in you’ll die”, but I’m inclined to think this might be too racy for many of you. That said, they made their point, and if you do sign-in, not only will you not ‘die’ but you’ll also get a better deal.

Here are some ideas for how to increase your logins and simultaneously enhance your personalization capabilities.

Start with the 4 P’s:

  1. Product: Provide better products or features to those who login. Amazon, Wine.com, Nordstrom, Williams-Sonoma, JCPenney and many others provide product recommendations pages that are much more relevant when you are logged in.
  2. Placement: Provide personalized features in all channels including desktop web, mobile web, email, mobile app and mobile app used in-store.
  3. Price: Offer better prices or relevant discounts when logged in.
  4. Promotion: Personalize coupons, special offers and discounts. Starbucks’ mobile app is a great example. Still, many users won’t login until just before purchasing. Two ways to get the most from personalization for users who aren’t logged-in are:
    1. Soft logins: This is when a user logs-in on a device, the retailer writes their user ID to a first-party cookie, the user logs out, and the retailer continues to use their user ID for the current and subsequent visits. Many retailers put a time limit on the cookie, such as 14 days between logins.
    2. Provisional user ID: A temporary ID whose behavioral history is copied to a user profile when the user eventually does login. RichRelevance can use our third-party cookie IDs or a retailer’s session ID as the provisional ID.

User matching comes in many shapes and sizes, the complexities of data and channels have created an entirely new obstacle for retailers and brands to overcome. Some select flavors include multiple accounts per user, matching in-store and web shoppers, cross-device and cross-brand matching. While the user matching hurdle might seem unattainable, trust me it’s not. There are many ways to not only combat the user matching problem, but to also make great use of the surplus of data that becomes available with a multitude of users even if they’re the same person.
To learn more about how you can start matching users and creating more robust and complete shopper profiles download our latest white paper, The 5 Types of User Matching Challenges and How to Solve Them.

*RichRelevance analysis of 3.7 billion page views across a dozen countries on 100 of the largest websites using RichRelevance technology

All Campaigns Are Not Created Equal

About 15 years ago, I was working for a little marketing agency creating banners and ads for websites. On average, a client had around 10-12 such banners. The rule of thumb was that if a banner was relevant to about 80% of the audience, we’d build it. A “20% off everything“ for everyone campaign would surely meet this criteria. Building a banner targeted to a handful of shoppers was simply not done, it was unthinkable.

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