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Glossaries

Cohort Analysis

What is Cohort Analysis in Growth Hacking?

Cohort analysis is a data analytics technique used in growth hacking to track and compare the behavior of groups of users (cohorts) over time, helping businesses understand user engagement, retention, and growth patterns.

Synonyms: User Cohort Analysis, Customer Cohort Analysis, Retention Cohort Analysis, Growth Metrics Analysis

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Why Cohort Analysis is Important for Growth Hackers

Cohort analysis is a crucial tool for growth hackers because it provides deep insights into user behavior and product performance. By grouping users based on shared characteristics or experiences, such as sign-up date or acquisition channel, growth hackers can:

  1. Identify trends and patterns in user engagement
  2. Measure the effectiveness of marketing campaigns and product changes
  3. Optimize user retention strategies
  4. Make data-driven decisions to improve overall growth

How to Perform Cohort Analysis for Growth

To conduct a cohort analysis:

  1. Define your cohorts (e.g., users who signed up in January, February, etc.)
  2. Choose metrics to track (e.g., retention rate, revenue, feature adoption)
  3. Analyze data over time to identify patterns and trends
  4. Compare cohorts to understand the impact of changes or campaigns
  5. Use insights to inform growth strategies and product improvements

Examples of Cohort Analysis in Growth Hacking

  1. User Retention: Track how many users from each monthly sign-up cohort remain active after 30, 60, and 90 days.
  2. Revenue Growth: Compare the average revenue per user (ARPU) of cohorts acquired through different marketing channels.
  3. Feature Adoption: Analyze how quickly cohorts adopt new features after their release.
  4. Onboarding Optimization: Measure the impact of onboarding changes on user activation rates for different cohorts.

Frequently Asked Questions

  • What's the difference between cohort analysis and segmentation?: Cohort analysis focuses on tracking groups over time, while segmentation divides users based on specific attributes without necessarily considering time.
  • How often should I perform cohort analysis?: It depends on your business, but monthly or quarterly analyses are common for tracking long-term trends.
  • Can cohort analysis predict future user behavior?: While it can't predict with certainty, cohort analysis can reveal patterns that help forecast potential future behaviors.
  • What tools can I use for cohort analysis?: Popular tools include Google Analytics, Mixpanel, Amplitude, and custom SQL queries for more advanced analyses.
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