Notice: This page requires JavaScript to function properly.
Please enable JavaScript in your browser settings or update your browser.
学ぶ Experimentation and A/B Testing | Advanced and Predictive Analytics
Digital Marketing Analytics and Experimentation

bookExperimentation and A/B Testing

メニューを表示するにはスワイプしてください

A/B testing compares two versions of the same element, such as an ad, a landing page, or a subject line, to see which one performs better.

How to Design a Good A/B Test

  1. Isolate one variable: change only one thing: a headline, button color, CTA, image, or layout;
  2. Randomize your audience: ensure groups A and B are similar so differences aren't skewed;
  3. Run the test long enough: give it time to reach statistical significance;
  4. Review results objectively: the goal isn't to win, it's to learn what users respond to.
question-icon

Match the experimentation principle to its purpose:

→ Prevents selection bias;
→ Identifies the true cause of performance change;
→ Drives continuous optimization over time;
→ Ensures results are not due to chance;
→ Recommends potential areas for improvement.

クリックまたはドラッグ`n`ドロップして空欄を埋めてください

すべて明確でしたか?

どのように改善できますか?

フィードバックありがとうございます!

セクション 4.  2

AIに質問する

expand

AIに質問する

ChatGPT

何でも質問するか、提案された質問の1つを試してチャットを始めてください

セクション 4.  2
some-alt