Running A/B experiments for SEO, as opposed to for users, is a complicated subject. There’s a lot of confusion over things like test design, controlling for external factors and some of the tools that can help you run experiments. This is a guide that covers all of that and more along with case studies and example tests.
There’s a lot to cover, so feel free to jump ahead to any of the sections that interest you the most:
What is SEO A/B testing and how to design SEO split-tests?
Knowing what impact a change to your website has had on organic traffic from search engines can be challenging to measure.
Merely making a change to your website and looking at the impact of metrics like rankings and click-through rates (CTR) isn’t good enough.
Unless you can control for external factors, there’s no way of knowing whether the changes in rankings or CTR are because of the change you made or some other external factors. See below.
Making a change and reviewing metrics is often referred to as before and after testing. While before and after testing is better than not measuring anything at all, it’s not a controlled test and you can’t use it to draw firm conclusions – it’s easy to be misled and think that your change was responsible for the observed impact, when it could just as well have been a competitor changing their site, or many other external factors.
In addition to not having a control group of pages in before and after testing, the fact that the length of time it takes for search engines to crawl your site and take the changes into account is also unpredictable complicates the analysis. It could be instant or it could take weeks. That makes looking at data, like traffic or rankings, and trying to line it up with a change you made near impossible.
Controlled SEO split-testing is when you split a group of statistically similar pages into control, and variant groups then make a change to the variant pages.
You can compare the organic performance of both groups against each other and against an expected forecasted level of traffic had no change been made to the site.
Below I’ll walk you through how the SEO A/B testing process works, share some case studies and answer some frequently asked questions.
What types of websites can run SEO experiments?
Some websites, and parts of websites, aren’t suitable for running SEO split tests. To be able to run tests, there are two primary requirements:
How much traffic? That’s a good question, and it depends on your website. Generally speaking, the more stable your traffic patterns are, the easier it will be to run experiments with less traffic. The more irregular the traffic to your website is, the more traffic you will need to build a robust traffic model.
In general, we work with sites that have at least hundreds of pages on the same template and at least 30,000 organic sessions per month to the group of pages you want to test on. This does not include traffic to one-off pages such as your homepage.
Is it possible to test if you have less traffic? We’ve got some customers that test on sections of their site that only get a couple of thousand sessions per month, but the changes in traffic need to be much higher to be able to reach statistical significance.
The more traffic and more pages you have, the easier it will be to reach statistical significance and the smaller the detectable effect can be.
Although not an exhaustive list, some example types of sites that are good for testing are:
How to design an SEO A/B test
There are five parts to designing an SEO test:
I’m going to walk you through each step.
Selecting what pages to test on
The first thing you need to do is find a group of pages on the same template. For instance, on an ecommerce website, you could select a group of category pages or product pages; on a travel site, you could use destination pages or flights pages. See the example travel site below.
In reality, it’s unlikely that we would ever run a test on only six pages, but the principles are the same whether there are six, 600 or 6 million pages. Keeping it simple will make it easier to explain everything, especially when we get to the test analysis section.
Creating a hypothesis for your experiment
Although there are many differences between SEO testing and user testing (we’ll get onto that later), one common thing they both have is it’s essential to start with a solid hypothesis before you begin.
I like to use this hypothesis frameworkfrom Conversion.com. You can see how I’ve applied the framework to the flight’s page template below as an example.
We know that: Google gives different levels of importance to content depending on its position on the page.
We believe that: Moving the content higher in the page will increase the importance of that text and therefore the relevancy of the page for our target keywords.
We’ll know by testing: Pages with content lower on the page compared to pages with the content higher on the page and observing organic traffic to each group of pages and measuring the difference in organic traffic.
Selecting control and variant pages (bucketing)
Once you know what you want to test, you next have to decide which pages will be control pages and which will be variants.
Deciding which pages should be in each bucket is one of the most important, yet least understood, parts of SEO testing. There are two main criteria to consider:
SearchPilot has a proprietary bucketing algorithm that automatically creates buckets that match both of those criteria.
Making the change to variant pages
After the buckets have been selected, the change needs to be made to just the variant bucket of pages. Once the change has been made, there will be two different templates live at the same time, but there will only be one version of each page.
Notice that half of the flight pages in the example below have the content higher on the template. Those are the variant pages.
The fact that there is only one version of each page is a crucial point to note. It’s a common point of confusion for people new to SEO testing or those used to running user based A/B tests.
Regardless of whether a user or a search engine requests a page, they will see the same thing. This is covered in more detail in the section on the difference between SEO A/B testing and user A/B testing.
Measuring the impact of the experiment
The explanation I’m about to go through is a deliberate attempt to simplify the math(s) involved in SEO A/B testing. Our engineering team has spent more than five years building a neural network to analyse SEO experiment results, so it’s unrealistic that I’ll be able to give a comprehensive explanation in a blog post. Still, I’ll do my best to cover the basics.
You can also read how we doubled the sensitivity of our SEO A/B testing platform by moving to our neural network instead of the causal impact model that we used to use.
Step one – building a model
Before the test begins, we need to understand the organic traffic patterns to the control and variant pages historically before any changes are made. To do this, we use historical data to the two groups of pages (usually about 100 days of data) and use that to build a model.
In the image above, you’ll see there are four lines, two are solid, actual traffic to control and variant pages, and two dotted lines, the models for the control and variant pages that we built using the existing historical data.
At this point, we have a few critical pieces of data that we need for SEO testing:
Step two – creating a forecast
To build a forecast we use the models to predict what we think the traffic to these groups of pages would be in the future if we made no changes to either set of pages.
The image above shows the forecast for both groups of pages that were built using the models.
Now that we have a forecast of what we think should happen to the pages with no change, we can go ahead and launch the test and compare the real traffic to the forecasts.
Step three – monitoring the results
To explain how we monitor the results, we need to zoom into a day by day view. The easiest way to explain that is to embed the slides below. It would be hard to follow using individual images.
As you will see in the slides, we need to compare the forecasted traffic against the real traffic of each group of pages. We also compare the control pages’ real traffic to the variant pages’ real traffic.
Again, I want to stress that this is an oversimplification of the process. In reality, SearchPilot does all of this at the same time.
Although the slides only showed three data points, if the trend of actual traffic to the variant pages being higher than the control and the forecast continues, the result would look something like the graph below.
As you can see, there was a period where the forecast and actual traffic were aligned, and this is normal because search engines need time to crawl your website. That’s why you will often see a pattern of no change at first, followed by separation in traffic as Google considers the change. Depending on your website, search engines may crawl your website several times an hour, or it could take a week before they notice.
Step four – reaching statistical significance
The graph above is only half of the picture. It shows that there was a difference in the traffic, but it doesn’t tell us whether or not we should trust the result. To know that, we need a test to reach statistical significance.
It’s beyond the scope of this blog post to explain what statistical significance is or how it’s measured, but SearchPilot calculates this automatically for you. If you’ve seen any of our SEO A/B testing case studies, you will be familiar with the fan-shaped charts that we show.
Below is an explanation of how to read those charts.
Unlike the previous charts, which show the day-by-day traffic levels (actual and forecasted), this chart shows the cumulative total impact over time, as calculated by our modelling process. The shaded area represents our 95% confidence range on this cumulative figure.
You’ll notice that early on, the shaded area of the chart straddles above and below the x-axis. At the beginning of a test, it’s more or less 50⁄50 whether a change is positive or negative. As the test continues and we gather more data, the shaded area may trend in a particular direction.
Eventually, the test may reach statistical significance if all of the shaded area is above or below the x-axis in the case of a positive or negative test, respectively. At this point, we become statistically confident in the result – typically at the 95% level, meaning there is less than a 5% chance of this result being observed if we had not changed anything.
Now that I’ve given you an overview of what SEO split testing is, I want to answer some of the most frequently asked questions.
What’s the difference between user A/B testing and search engine A/B testing?
By far, one of the most common questions we get is some version of:
“Isn’t this just the same as user testing?”
That’s not surprising given product teams and marketers have been doing user A/B testing for a long time, but there are some key differences.
Testing for users is relatively simple. You make two versions of a page you want to test, and your testing platform will randomly assign users to either the A or B version of the page.
Users metrics like conversion rate are then compared, and a winner will be declared if there is a statistically significant difference between the two pages.
We can’t do SEO A/B testing in that way for a couple of reasons:
The image below shows it clearly, with user testing we see two versions of each page, with SEO testing there is only one.
Server-side vs client-side testing
One of the other differences between user testing and SEO testing is the way that the changes are made to the page.
One of the known drawbacks of client-side A/B testing tools is “flickering”. Users will often see the old version of the page before it quickly changes to the new version.
That’s pretty important if the point in the test is to see what Google thinks of the change.
For those reasons, SearchPilot is a server-side SEO A/B testing platform, that way, we can be sure that search engines see the changes that we are making and we get the full benefit of those changes.
You can see how SearchPilot works in the image below.
How do you account for external factors like Google updates and seasonality?
Another common question is how we know that any change in organic traffic is due to the change that we made and not external factors like seasonality, Google updates, competitors changing their websites, other sitewide changes, link building, TV campaigns etc. during the test.
I previously mentioned that the way pages are divided into control, and variant pages is essential.
To illustrate this point, I’m going to walk through a simple example of a pet website that wants to run a test on its product page template.
The site has 36 different product pages split between 6 different animal categories.
Like most websites, not all pages get the same amount of traffic and some pages are more seasonal than others.
To run a test, they’ll need a control group of pages with 18 product pages and a variant group with 18 pages.
If we do the bucketing correctly, there should be 18 pages in each group. Each group will have similar levels of organic traffic, and they will be statistically similar to each other.
If you were to just randomly assign pages as control or variants, you might accidentally introduce a bias to the experiment. I’ll walk you through how that might happen and the effect it would have on understanding the results of a test.
Example of bad bucketing
In the example bucketing image below, you can see that 100% of the product pages for each animal have been placed into the same bucket. For example, all of the cat products are in the variant group all of the dog pages in the control etc.
Let’s look at what happens when the test begins.
As you can see, this looks like a winning test. Traffic to the product pages in the variant group (shown in yellow) seem to have increased ever since the test began.
Unfortunately, this business got unlucky, little did they know they had launched a test on the 8th of August. They had no idea that this was International Cat Day in 2020.
This caused an influx of organic traffic to their cat product pages and as a result, made it look like the variant group’s aggregate traffic was performing better than the control pages’ aggregate traffic. In reality, there was no significant difference between the two groups, and only a subset of the variant pages was receiving more traffic than forecasted since the test began.
Not every day is something like International Cat Day, but throughout a year we need to be able to run experiments irrespective of what’s going on in the real world, for example:
This is by no means an exhaustive list. The point is that the world doesn’t stop because you want to run a controlled SEO experiment, we need to be able to accommodate the real world and work around it.
Example of good bucketing
The way we account external factors is by making sure we bucket the pages in a way that means both groups are statistically similar to each other. The example below shows a much better way of bucketing the pages.
As you can see, there’s a more even split of product types in both groups of pages. Half of the cat product pages are in the control bucket, and the other half is in the variant bucket.
Let’s compare how the test performs with the improved bucketing.
As you can see, since the test began, traffic to both groups of pages has increased (because there are cat product pages in both buckets) so it would be clear that this had nothing to do with the experiment and must be something external that is increasing organic traffic.
What type of changes can you test?
SEO testing is more than just titles and meta descriptions so I thought I would give some examples of the kind of things you can test.
SEO tests can vary in complexity. I’ve tried to give some examples below broken into beginner, intermediate and advanced and shared some case studies.
We have a whole library of SEO A/B testing case studies if you would like to see more.
We publish new case studies every two weeks; if you want to receive them, you can sign up to our SEO split-testing email list here.
Beginner SEO A/B testing examples
On-page optimisation tests are relatively simple to design and launch. Examples would be things like:
Some other beginner tests would be things like:
Intermediate SEO A/B testing examples
Intermediate tests often require a greater understanding of HTML and CSS. Some examples would be things like:
HTML structure testing
Structured data tests
Advanced SEO tests need a strong understanding of HTML, CSS and A/B testing methodology. Some examples are:
Internal linking tests
Internal linking tests require careful planning because as well as impacting the pages that you change, they affect the target pages that gain or lose internal links. You need to measure the impact on multiple groups of pages at the same time. Some examples of internal linking tests are
Some other more advanced tests are:
Why don’t we use ranking data or click-through rates?
You might have noticed that throughout all of the explanations above, I never mentioned tracking keyword rankings.
We often get asked why we don’t use rankings or Google Search Console data like click-through rates in any of our analysis. This can be surprising for an industry that is obsessed with Google rankings.
There are three primary reasons that we don’t use either for our analysis. More on that here, but the summary is:
That’s not to say we never look at that data to understand the impacts a change had, but we don’t take it into account for analysis purposes. Organic traffic is our North Star.
Why do you need a forecast? Can’t you just compare variant traffic directly against the control?
The Google slides above are a reasonable attempt to explain how we use both the control group and the variant forecast together, but I’ll try and add some more detail here.
Although the two groups of pages have similar levels of traffic, and they are statistically similar to one another, the important word to pay attention to is similar.
They are different groups of pages and may for several reasons behave differently to each other or even differently from the way they have in the past.
To get the best possible results, it’s useful to think of using the control group and the variant forecast as two complementary tools:
Both of these combined will produce more accurate results than either one used on its own.
Can you measure the impact on user behaviour & conversion rates?
If you want to measure the impact on user behaviour and search engines at the same time, we call this full-funnel testing. SearchPilot is the only platform that allows you to measure both at the same time.
I won’t explain everything here, you can read all about our full-funnel testing methodology here.
How long does it take to run SEO experiments?
The length of time it takes a test to reach statistical significance will depend on how much traffic your site gets and the size of the impact you are trying to measure.
As a general rule, positive or negative SEO experiments take 2-4 weeks to reach statistical significance, but you can often see a trend starting to appear within less than a week.
In the example below, you can see that the test took around ten days to reach statistical significance, but the trend was negative within the first couple of days.
You can read the full case study if you like: Reconfiguring Page Layout – SEO A/B Case Study
What version of the page does Google see? Is this cloaking?
I covered what version of the page Google sees in the section on the difference between user testing and SEO testing but I’ll explicitly answer the question here too.
When doing SEO A/B testing, there is only one version of the page. We are not showing different versions of the same page to users or Google.
We are making changes to a subset of pages that share the same template. This isn’t cloaking and doesn’t create any duplicate versions of the same page.
Can you use Google tag manager for SEO testing?
If you’ve made it this far, thank you for giving me your attention. I hope you know more about SEO testing than you did when you started.
Please reach out to the SearchPilot team on Twitter if there is something you think I can add clarity to or you have any questions.