Ecommerce merchandising is changing.
Retailers in the early 2000’s were focused solely on bringing offline merchandising principles online, a trend that accelerated thanks to the pandemic. Today, top ecommerce brands are moving beyond traditional practices to create truly omnichannel user experiences. Retailers are analyzing data based on user actions, optimizing product rankings with machine learning, and personalizing their websites at the user level.
This article will highlight and explain the most important ecommerce merchandising strategies used today — from optimizing product pages to using data to personalize user experiences — so you can ensure your website is ready for the shift.
Ecommerce merchandising is the practice of displaying products strategically on a website to increase findability, conversions, and revenue.
But great online merchandising isn’t only about displaying products enticingly — it’s also about optimizing your path to purchase no matter where users enter your website or where they are in that path.
The good news is that a better customer experience and lifts in key business metrics go hand in hand. When you make it easier for customers to find the products they’re looking for, the more likely they are to purchase those products from you.
Every strategy we discuss here will be centered around those goals.
While ecommerce was once just a new spin on traditional retail, the reality is that omnichannel has completely changed the game for merchandising.
Simply bringing in-store merchandising online doesn’t cut it anymore: customers expect more from both, and the lines are blurred between the two. Today, shoppers expect convenience, personalized experiences, and instant gratification — no matter where they are.
As ecommerce merchandising evolves into omnichannel, there are several trends and pivots in strategy that are evolving along with it:
Applying insights to customer behavioral data, retailers are now able to personalize and optimize shopping experiences like never before.
Every click on your ecommerce site is a vote for a product’s attractiveness, and every search query is an opportunity to learn how users actually behave on your site and what they’re looking for.
This is why the best product search engines built on AI and machine learning help you collect and leverage first-party customer data to ensure the right shopping experience no matter the channel or device.
A poor site experience translates into lost revenue. With high expectations for site performance and ease of use, the majority of shoppers will leave a site if they can’t easily and quickly find the products they’re looking for.
“As an online merchandiser develops their site, they must constantly keep the customer in mind for ease of use and functionality,” explains customer experience expert Shep Hyken. “You can spend a lot of time and money working on the selling, copywriting, and marketing, but when the customer finally gets to the site, the experience must be easy, convenient and frictionless — or all will be for nothing.”
Manual merchandising work becomes very tedious and time-consuming when product catalogs grow to thousands of products.
“Merchandisers spend a lot of time in suboptimal or aging online merchandising tools, putting out fires,” said Amanda Brooks, former product manager and ecommerce lead at Best Buy Canada. “And without enough hours in the day, teams end up cutting other activities like strategic planning or digging into insights to really drive KPIs.”
It’s here where AI-based searchandising — the strategic placement of items within search queries with the goal of optimizing for a business metric — can be helpful.
Rather than merchants needing to manually adjust search results to boost products that offer a higher profit margin or bury products that are less attractive to customers, a product discovery platform can optimize results and set rules automatically based on a number of inputs such as clickstream data, product attribute, or inventory management. Those rules can apply to both search results and browsing pages to provide a consistent shopping experience.
The result? Ecommerce teams have the time to proactively create new strategies to drive KPIs and improve customer experience.
Even as the pandemic gets further behind us, shopper expectations have forever shifted.
Customers want to know the products they need in-store are in stock before they venture out in person. They want different options for fulfillment, such as Buy Online, Pickup in Store (BOPIS), and different options for returns, such as BORIS.
And those who are returning to in-store shopping are likely to be doing more research online ahead of time.
“[Researching online ahead of time] of course existed before, though it was always a bit tricky to measure the extent,” said Brooks. “[The pandemic] really forced a lot of people to get comfortable with that online browsing and shopping experience. As a result, I don’t think we can underestimate the importance of your onsite experience feeding your in-store demand.”
Successful ecommerce merchandising today takes these omnichannel needs into account, providing ways to remove friction not just from the digital shopping experience but from the experience in all contexts and formats.
“Digital merchandisers also often need to consider the offsite experience for omnichannel marketing campaigns,” continued Brooks. “They’re thinking about visual assets and linking strategies and copy to ensure that those experiences are seamless for their customers.”
To win at ecommerce merchandising during a down economy, you must take your strategy seriously, specifically in the following areas:
To sell more products, you must ensure users can find the products they’re looking for — fast. It’s easy to view internal site search and merchandising as two separate entities, but in modern ecommerce, that’s no longer accurate.
Whether you’ve invested in search, merchandising, or both, the time has come to shift away from looking at both of these necessary systems as free-standing silos. Instead, work toward integrating them into a seamless, omnichannel process that continuously learns from your buyers — a system that is worthy of continual investment and improvement.
And don’t invest hours of manual effort into ensuring what customers see in search and browse is optimized. Brooks recommends teams do two key things instead.
“The first [thing you should do to optimize a customer’s journey] is to use the behavioral customer data you’re already collecting on your site. How can you apply it to help improve the experience in an automated way? The second is to think broadly about the types of scenarios that apply to your business. What are online merchandising teams or product managers spending a lot of time optimizing for on a category or even SKU level?”
Here are further ways to optimize on-site search for sales:
Research shows that autocomplete can boost conversions by up to 24%.
Yet good autocomplete does more than estimate basic user queries. Ecommerce giants are dialing in their merchandising practices by combining Natural Language Processing (NLP) algorithms with autocomplete to present query results that approximate user intent. These algorithms are commonly used to:
Embedded product listings work great for encouraging clicks through search because they provide visual confirmation that the shopper has found the product they’re looking for.
But that’s not all: our own data tells us users are twice as likely to convert on products they’ve clicked from embedded product listings.
Here’s how to make your search bar experience as smooth as possible so you can increase your chances of hitting key business metrics this year.
Great search systems automatically re-rank search results for products most likely to lead to a conversion.
For example, maybe you suppress your low inventory products, but you know customers are still looking for a given hero SKU. If you manage by exception and boost that in results, you’re not forcing customers to dig for it and become frustrated, Brooks says.
She continued on to mention that to further enhance that experience, you could position a substitute product right beside it. In taking an approach like this, you’re adjusting maybe a handful of SKUs instead of substantially more.
And another basic example of results re-ranking is as follows:
If 40% of users who search for “laptops” purchase one model and 22% purchase another model, it would make sense to re-rank the first laptop higher (perhaps in one of the first few positions) and the second laptop closely following. Other laptops that users don’t frequently purchase should be moved down in the search results.
Great re-ranking systems, however, don’t only re-rank exact-match product results. They also re-rank attractive products that users are likely to purchase.
Take a look at these results for “cotton pads” on SEPHORA for example:
Although “cleansing sheets” and “exfoliating wipes” are not part of the search query, SEPHORA knows their users frequently purchase them along with or instead of cotton pads. So, they’ve included them in the results pages.
Recent research shows that 82% of consumers are willing to share some type of personal data for more personalized service. As in, they want you to cater their shopping experience to them.
Personalization should affect every facet of your ecommerce merchandising search strategy — from your autosuggest results to the products you rank for any search query. As in the milk example above, if a user tends to buy organic milk over regular milk, organic milk should appear first for that user.
Great personalization is more than simple segmentation covering demographic data like gender or age. It’s about learning your individual customers’ preferences based on their historical data and previous interactions with your site.
With every search, click, bounce, add-to-cart, and purchase, your users are telling you what products they prefer to buy. It’s your job to use hyper-personalization strategies to show them more of those products and drive ecommerce KPIs.
Poor navigation has the same negative effects as poor search.
When users can’t find the products they’re looking for, they assume they aren’t sold on the site and leave (many never to return). Especially on mobile devices, poor navigation can pose a huge problem.
In a mobile ecommerce usability study conducted by Baymard, 50 of the world’s top ecommerce sites were scored based on their navigational usability. The results were less than favorable:
Over 50% of the sites studied were ranked poorly (in the orange or red in the graph above) for mobile navigation, showing that even the top companies still have a way to go to ensure that their customers can find their products through traditional browsing methods.
Following these navigation guidelines will ensure your site isn’t in the red:
Faceted search is essential for increasing conversions on broad queries like “women’s dresses” or “laptops” and for products with multiple features.
They allow search results to be broken down and filtered into subcategories to make finding the right product faster and easier than browsing through thousands of results.
Understand what product features your users care about most — whether it’s color, size, brand, or something else — and display them on the page such that users don’t have to work to find them.
Also, facets should be dynamic, meaning that they should vary based on the context of the search query. For instance, if a user is searching for “blazer,” you may decide to display facets like “fit” and “jacket style” higher in the navigation. If they’re searching for “pants,” facets like “inseam” and “front style” would be ranked higher.
Ecommerce stores can now combine personalization with faceted search to provide even faster navigation experiences to users. Take this grocery website as an example:
For a search query like “milk”, you may decide to include a “Nutrition” facet with filters like “fat free,” “kosher,” and “gluten free” in your navigation.
This works fine for new users, but what if you know one of your users likes organic milk? Most sites would simply show the user the same filters in the same order. But with personalization, these filters (and other related filters, like “kosher”) can be re-ranked to make it easy for the user to select what they care about:
Some users come to your site open-minded. Some may be looking for a specific, in-season product, and some may be looking for a product they purchased before.
For users with an open mind (and also for users trying to find one thing), you can include trending products on your home page, like SEPHORA:
Or, you can recommend complementary items to users who have viewed or purchased similar items.
To take it further, you can use your customers’ wish list data (or even better, their clickstream data) to personalize these recommendations.
Retargeting can also be used to redirect users to product pages they’re most interested in viewing. Someone who typically shops for women’s clothes at an online retailer can be automatically redirected to the women’s category page or a collection of women’s clothing when she visits the home page.
While targeted redirects can be powerful, taking them further with personalized categories and products on that redirected page can give them an unrivaled site experience.
If your product categories are limited, you may choose to use a simplified menu with broad categories of products (like refrigerators, dishwashers, ranges, and ovens).
But if you have many categories, you may choose to use categorized mega menus:
There are some challenges that come with larger menus, such as parent/child categories and how different users interact with them.
For instance, if you’re a user on Best Buy looking to purchase sound bars for a home theater system, how would you find them on a mega menu? Would you look under the “Audio” category, or would you look under “TV” or “Home theater?”
It’s different for every user.
Ecommerce merchandising best practice, then, is to include the same subcategories under different but related parent categories. In the previous example, Best Buy lists sound bars under both.
Throughout this article, we’ve briefly discussed different ways you can use customer data to streamline ecommerce merchandising. While simple demographic segmentation can’t be classified as “personalization,” there are some basic data points you can use to optimize user experiences:
What types of products do users of different ages or genders tend to purchase? You can use this information to customize the trending products you show on your home page, the categories you recommend, the products in those categories, and more.
Do users in different parts of the world purchase different types of products? Do they purchase different types of products at different times in the year? Can you recommend products with smaller shipping costs based on the locations of your users?
Are your users first-time visitors or returning shoppers? For first time visitors, you may decide to show trending products or categories prominently on the home page to capture their attention. If they’re returning, you can show products they’ve recently viewed or recommend products based on their viewing habits.
If you know what payment methods a customer uses and what address they typically send items to, the checkout process can be simplified by autofilling this data for the customer. If a user typically purchases multiple quantities of an item, auto filling that quantity can also speed up the add-to-cart process.
Do users on different devices tend to purchase different types of products? With the right product discovery solution, you can track purchases across multiple devices and personalize each channel’s experience for the shopper.
Are you personalizing the shopping experience for all of your supported languages and locations? Or only in English? Again, the right product discovery platform covers all your personalization bases worldwide.
While segmentation only requires basic, easily trackable data, true personalization like the kind used in omnichannel ecommerce merchandising uses much more detailed data on how users interact with your site to serve next-level user experiences. Personalization is harder to get right, but the payoffs in terms of conversions and revenue are worth it.
What types of products do your users usually search for, and how do they search for them? How can you customize your user’s search experience from those habits?
Google does an amazing job at customizing search (and more importantly, autocomplete) based on past searches. For instance, if I search for “the last of us” in Google, complete the search, then type “the” into the search bar, all the results shown are related to “The Last of Us:”
You can also use your user’s search habits to personalize the products that appear for specific queries. For instance, if your users tend to search for “organic” products, you can weight your search algorithms to boost organic products for every search query.
Search habits are a great indicator of products users want to see more of, but the products they add to cart and purchase are a much better indicator. These actions should have a greater effect on the weighting of your personalization algorithms.
Using what you know about your general user population’s actions, you can quickly personalize every user’s experience from the get-go.
For instance, if you know a majority of your users like to buy “red wine” after adding “red meat” to their cart, you can rank red wines higher in the search results for “wine” after users add “red meat” to their carts.
In the same way you can personalize product recommendations and search results based on what users search and add-to-cart, you can also decrease the likelihood users see products they typically ignore after a search.
For instance, if you know a user doesn’t typically purchase cereal from “X Cereal Brand,” you can rank cereal products from that brand lower when the user searches for “cereal.”
If you have a customer loyalty program that tracks behavior across in-store and online shopping, the data on each of your users can be combined with any of the above recommendations to serve hyper-personalized experiences to each user.
While each individual personalization tactic will work to serve better user experiences to your visitors, the best personalization systems use data from every interaction a user takes on and off your website to apply it across the website as a whole.
Need help optimizing your omnichannel ecommerce merchandising strategy to drive critical business KPIs? Constructor’s AI-backed product search and discovery platform will help personalize your customer experience and generate lifts in the metrics that matter most.
Get an inside look at how our merchandiser tools help drive results without extra work.