Cohort Analysis: Beginners Guide to Improving Retention (2024)

When building an app, long-term success does not mean only getting someone to download your app. It means also getting them to make repeat visits. How do you measure that accurately? Using vanity metrics like download counts, daily active users (DAU), or monthly active users (MAU) only measures growth and retention superficially. To dig deeper into how users spend time in your app, you should use Cohort Analysis.

What is Cohort Analysis?

Cohort analysisis a subset of behavioral analyticsthat takes the data from a given eCommerce platform, web application, or online game and rather than looking at all users as one unit, it breaks them into related groups for analysis. These related groups, or cohorts, usually share common characteristics or experiences within a defined time-span.

Cohort analysis is a tool to measure user engagement over time. It helps to know whether user engagement is actually getting better over time or is only appearing to improve because of growth.

Cohort analysis proves to be valuable because it helps to separate growth metrics from engagement metrics as growth can easily mask engagement problems. In reality, the lack of activity of the old users is being hidden by the impressive growth numbers of new users, which results in concealing the lack of engagement from a small number of people.

Cohort Analysis Example

Let’s understand using cohort analysis with an example – daily cohort of users who have launched an app first time and revisited the app in the next 10 days.

Cohort Analysis: Beginners Guide to Improving Retention (1)

From the above retention table – Triangular chart, we can infer the following

  • 1358 users launched an app on Jan 26. Day 1 retention was 31.1%, day 7 retention was 12.9%, and day 9 retention was 11.3%. So on the 7th day after using the app, 1 in 8 users who launched an app on Jan 26 were still active users on the app.
  • Out of all of the new users during this time range (13,487 users), 27% users are retained on day 1, 12.5% on day 7, and 12.1% on day 10.

Furthermore, there are two main benefits of reading the above cohort table:

  • product lifetime (as depicted vertically down in the table) – comparing different cohorts at the same stage in their life cycle – we can see what % of people in a cohort are coming back to app after 3 days and so on. The early lifetime months can be linked to the quality of your onboarding experience and the performance of customer success team, and
  • user lifetime (as depicted horizontally to the right of the table) – seeing the long term relationship with people in any cohort – to ascertain how long people are coming back and how strong or how valuable that cohort is. This can be presumably linked to something like the quality of the product, operations, and customer support.

Whatever the evaluation key metrics you define for the business, cohort analysis lets you view how the metrics develop over the customer lifetime as well as over the product lifetime.

Cohort Analysis to Improve Customer Retention

Cohort analysis involves looking at the groups of people, over time, and observing how their behavior changes. For instance, if we send out an email notification to 100 people, some may buy the product on day 1, less on day 2, even fewer on day 3, and so on. But, if we send another email to 100 people, after few weeks, they’ll be buying the product on their “day 0”while the first sent email might show its prevalent lag effect on the buying decision.

Cohort Data

In order to track how users behave over time or how the same behavior differs for different cohorts, cohort analysis helps to compare these people by the way / time they were acquired or by the retention of those users over time.

But, how to break the group of users into cohorts for cohort analysis – can be done in two ways:

  • Acquisition Cohorts: divide users by when they signed up first for your product. For your app users, you might break down your cohorts by the day, the week or the month they launched an app, and thereby track daily, weekly or monthly cohorts.
    In this case, by measuring the retention of these cohorts, you can determine how long people continue to use your app from their start point.
  • Behavioral Cohorts: divide users by the behaviors they have (or haven’t) taken in your app within a given time period. These could be any number of discrete actions that a user can perform – App Install, App Launch, App Uninstall, Transaction or Charged, or any combination of these actions / events.
    In this case, a cohort can be a group of users who did certain actions within a specified timeframe – say, within first 3 days of app use. You can then monitor how long different cohorts stay active in your app after they perform certain actions.

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Let’s see how you can use both acquisition and behavioral cohorts to determine exactly what your users are doing and when they’re doing it.

Acquisition Cohorts: Finding Problem Moments in Your App

Revisiting the above daily cohort – which is an acquisition cohort.
Cohort Analysis: Beginners Guide to Improving Retention (2)
One way to visualize this information is to chart out a retention curve, showing the retention of these cohorts over time. The chart makes incredibly easy to infer when users are leaving your product.
Cohort Analysis: Beginners Guide to Improving Retention (3)This retention curve immediately reflects an important insight – about 75% of the users stop using the app after the 1st day. After that initial large drop, a second brisk drop occurs after 5th day – to under 12%, before the curve starts to level off after 7th day, leaving about 11% of original users still active in the app at day 10.

The above retention curve indicates that users are not getting quickly to the core value of the app, resulting in drop-offs. Hence, it’s evident to improve the onboarding experience to get the user to the core value as quickly as possible, thereby boosting the retention.

Thus, acquisition cohorts are great for identifying trends and the point when people are churning, but it’s hard to make actionable insights like – to understand why they are leaving – which requires the use of another type of cohorts, behavioral cohorts

Behavioral Cohorts: Customer Retention Analysis

A simple example of behavioral cohort can be – all users who read reviews prior to purchasing a product. This can answer interesting questions, like,

  • Are the users who read reviews have a higher conversion rate than those users who don’t read reviews, or
  • Are the users more engaged – longer sessions, more time in app, fewer drop-offs

An app user, after an app install and / or launch, makes hundreds of decisions and exhibit countless little behaviors that lead towards their decision to stay or go. These behaviors could be anything, like, using core feature Y but not using core feature Z, engaging only with notifications of type X, and so on.
Let’s test user’s behavior by comparing retention between below cohorts:
Cohort Analysis: Beginners Guide to Improving Retention (4)
Both user segments had the intention to transact on your app. But one user segment chose to proceed with the checkout, the other choose to abandon your app. What you can do to reduce the shopping cart abandonment?
Cohort analysis can get answers to the questions like:

  • When is the best time to re-engage with your users? When is the best time for remarketing?
  • What is the rate of acquisition of new users to maintain (if not increase) your app conversion rate?

From the above retention tables, you can conclude that majority of the users who had abandoned the shopping cart did not engage with the app again, not even 1 day after the acquisition date. So, you have less than 24 hours to re-target them with the new offer and increase the chances of getting revenue.

From this data, you can develop a systematic, quantitative approach to know how users can fall in love with your app – and then make it happen again and again. Also, you can make strategies to increase your retention after ascertaining what works and what doesn’t.

The power of cohort analysis lies in the fact that, it enables not only to view whichcustomers leave and when they leave, but also to understand why the customers leave your app – so that you can fix it. That’s how one can identify how well the users are being retained and also determine the primary factors driving the growth, engagement and revenue for the app.

Cohort Analysis: The Key to Improving Your App’s User Retention

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Last updated on June 11, 2024

Cohort Analysis: Beginners Guide to Improving Retention (2024)

FAQs

What is the most crucial part of a cohort analysis report? ›

Total metrics show the total indicator for the entire cohort. User retention is one, if not the most important metric on the cohort analysis report. It shows the number of users in the cohort who returned to your website in a given period of time, divided by the total number of users in the cohort.

What is cohort growth? ›

These related groups, or cohorts, usually share common characteristics or experiences within a defined time-span. Cohort analysis is a tool to measure user engagement over time. It helps to know whether user engagement is actually getting better over time or is only appearing to improve because of growth.

How do you learn cohort analysis? ›

In this case, you need to create a cohort chart. You need your various cohorts, as well as the number of users for each and a column for each day of the period you're analyzing. As you can see, the cells under each day show the portion of the original cohort for that row that you've retained on that day.

How do you measure effectiveness of retention? ›

Employee retention rate is one metric that measures staff retention. Retention rate is calculated by taking the average number of employees minus the number who left and divide that the average number of employees again. The flip-side metric of retention rate is turnover rate.

What is a good cohort retention rate? ›

A higher rate typically means that customers are satisfied with your business. This is also a good indicator of high customer loyalty. Ideally, you would want your cohort retention rate to be at 100%.

What are the common difficult issues in cohort studies? ›

Cohort members may die, migrate, change jobs or refuse to continue to participate in the study. In addition, losses to follow-up may be related to the exposure, outcome or both. For example, individuals who develop the outcome may be less likely to continue to participate in the study.

Which one is a common weakness of cohort studies? ›

Disadvantages to Prospective Cohort Studies

They are more expensive and time consuming. They are not efficient for diseases with long latency. Losses to follow up can bias the measure of association.

How to analyse customer retention? ›

First, you calculate the number of customers at the end of the period minus the number of new customers acquired during the period. Then, you divide this by the total number of customers at the start of the period and multiply by 100 to get your retention rate.

What are the two types of cohort analysis? ›

The two most common cohort categories used in this type of analysis are acquisition cohorts and behavioral cohorts. Acquisition cohorts group customers by their first contact with your product or service; they are commonly used to measure retention or churn rates over a specified period of time.

What are the three stages of the cohort model? ›

The cohort model consists of three stages: access, selection, and integration. Under this model, auditory lexical retrieval begins with the first one or two speech segments, or phonemes, reach the hearer's ear, at which time the mental lexicon activates every possible word that begins with that speech segment.

What is a cohort study for dummies? ›

Cohort studies are a type of longitudinal study—an approach that follows research participants over a period of time (often many years). Specifically, cohort studies recruit and follow participants who share a common characteristic, such as a particular occupation or demographic similarity.

How do you start a cohort study? ›

Prospective cohort study

The investigator defines the population that will be included in the cohort. They then measure the potential exposure of interest. The participants are then classified as exposed or unexposed by the investigator. The investigator then follows these participants.

How do you analyze retention rate? ›

First, you calculate the number of customers at the end of the period minus the number of new customers acquired during the period. Then, you divide this by the total number of customers at the start of the period and multiply by 100 to get your retention rate.

How do you analyze employee retention rate? ›

To calculate your employee retention rate, divide the number of employees on the last day of the given period by the number of employees on the first day. Then, multiply that number by 100 to convert it to a percentage.

What is user retention by cohort? ›

User retention by cohort shows how well your site or app retains users by cohort. A cohort is a collection of users who are grouped by some criteria. In this case, the cohort is the day the user was acquired.

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