In this article, you’ll learn:

  • What makes a good A/B testing hypothesis
  • The components of an A/B testing hypothesis
  • Best practices for better hypotheses
  • How you can start testing with confidence

Ready? Let’s dig in.

What is a hypothesis in A/B testing?


An A/B testing hypothesis is a clear, testable statement predicting how changes to a landing page or element will impact user behavior. It guides the experiment by defining what you’re testing and the expected outcome, helping determine if the changes improve metrics like conversions or engagement.

Zooming out a bit, the actual dictionary definition of a hypothesis is “a supposition or proposed explanation made on the basis of limited evidence as a starting point for further investigation.”

Wordy…

Put simply, it’s an educated guess used as a starting point to learn more about a given subject. 

In the context of landing page and conversion rate optimization, a test hypothesis is an assumption you base your optimized test variant on. It covers what you want to change on the landing page and what impacts you expect to see from that change.

Running an A/B test lets you examine to what extent your assumptions were correct, see whether they had the expected impact, and ultimately get more insight into the behavior of your target audience.

Formulating a hypothesis will help you challenge your assumptions and evaluate how likely they are to affect the decisions and actions of your prospects.

In the long run this can save you a lot of time and money and help you achieve better results.

What are the key components of an A/B testing hypothesis?


Now that you’ve got a clear definition of what an A/B testing hypothesis is and why it matters, let’s look at the ins and outs of putting one together for yourself.

In general, your hypothesis will include three key components:

  • A problem statement
  • A proposed solution
  • The anticipated results

Let’s quickly explore what each of these components involves.