A-B Testing: Difference between revisions

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A/B testing (also known as bucket testing or split-run testing) is a user experience research methodology. A/B tests consist of a randomized experiment with two variants, A and B. It includes application of statistical hypothesis testing or "two-sample hypothesis testing" as used in the field of statistics. A/B testing is a way to compare two versions of a single variable, typically by testing a subject's response to variant A against variant B, and determining which of the two variants is more effective. ([https://en.m.wikipedia.org/wiki/A/B_testing Source])
'''A/B Testing''', also known as split testing, is a method used in controlled experiments to compare two versions of a variable, typically denoted as A and B. It is commonly employed in fields such as marketing, web design, and user experience research. By randomly assigning participants to either version A or B, researchers can assess which variant performs better based on predefined metrics such as click-through rates, conversion rates, or user engagement. A/B testing allows for data-driven decision-making by providing insights into the effectiveness of changes made to a product or service.
 
==On Youtube==
 
Eric mentions '''A/B Testing''' in an appearance on [https://youtu.be/XbKXeVOUQYY?t=1532 Impact Theory] in the context of adding “differential diagnosis” to our educational toolkit:
 
<blockquote>
'''Eric:''' "One of the things I believe is that we're not taught subjects in a way that maximally benefits the largest number of learners. We're taught subjects due to the political economy of making these subjects take a very long time, and rewarding the specialty that might have been the career choice of the person teaching it."
 
'''Tom:''' "So what teaching method would optimize for the greatest number of learners?"
 
'''Eric:''' "Well, first of all, differential diagnosis, like, are you a visual learner or are you an auditory learner?"
 
'''Tom:''' "And we now segment them out."
 
'''Eric:''' "Right, and, you know, you start to understand—you present several different styles, you know let's do some A/B Testing—like, you go to your optometrist: Is this better like this? Or like this? Right, and so you start to understand somebody's learning style and learning profile."
</blockquote>
 
{{#widget:YouTube|id=XbKXeVOUQYY|start=1532}}
 
 
[[Category:Concepts]]
[[Category:Psychology]]

Latest revision as of 05:17, 31 March 2024

A/B Testing, also known as split testing, is a method used in controlled experiments to compare two versions of a variable, typically denoted as A and B. It is commonly employed in fields such as marketing, web design, and user experience research. By randomly assigning participants to either version A or B, researchers can assess which variant performs better based on predefined metrics such as click-through rates, conversion rates, or user engagement. A/B testing allows for data-driven decision-making by providing insights into the effectiveness of changes made to a product or service.

On Youtube[edit]

Eric mentions A/B Testing in an appearance on Impact Theory in the context of adding “differential diagnosis” to our educational toolkit:

Eric: "One of the things I believe is that we're not taught subjects in a way that maximally benefits the largest number of learners. We're taught subjects due to the political economy of making these subjects take a very long time, and rewarding the specialty that might have been the career choice of the person teaching it."

Tom: "So what teaching method would optimize for the greatest number of learners?"

Eric: "Well, first of all, differential diagnosis, like, are you a visual learner or are you an auditory learner?"

Tom: "And we now segment them out."

Eric: "Right, and, you know, you start to understand—you present several different styles, you know let's do some A/B Testing—like, you go to your optometrist: Is this better like this? Or like this? Right, and so you start to understand somebody's learning style and learning profile."