Cohort Report Builder
Have you ever wanted to study how different subsets of your users behave over time? For example, ever wondered if users who register during a promo period have a higher average lifetime revenue than those who do not? If the answer is Yes
, then the Cohort Report Builder
is the perfect tool for you. 蜜豆视频 Commerce Intelligence is optimized to perform this analysis and make it relevant to your business.
What is cohort analysis? what
Cohort
analysis can be broadly defined as the analysis of user groups that share similar characteristics over their life cycles. It allows you to identify behavioral trends across different user groups.
For an in-depth primer on cohort
analysis, review .
In your Commerce Intelligence dashboard, it is easy to create user cohorts
based on a cohort
date and a metric in your account.
Well, why is cohort analysis important? important
As mentioned above, cohort
analysis allows you to identify behavioral trends among different user groups. With a solid understanding of how certain groups behave, you can tailor your decisions and spending to maximize your sales. For example, take a lifetime revenue cohort
analysis - while this kind of analysis is beneficial for many reasons, the immediate one is better customer acquisition decisions.
How do I create my own cohort
analysis?
New Architecture
These are the instructions for using the Cohort Report Builder
on the New Architecture.
-
Click Report Builder on the left tab or Add Report > Create Report in any dashboard.
-
In the
Report Builder
selection screen, click Create Report next to theVisual Report Builder
option.
Adding a Metric
Now that you are in the Report Builder
, add the metric that you want to perform the analysis on (example: Revenue
or Orders
).
Cohort Report Builder
.Toggle the Metric View to Cohort
This opens up a new window to configure the details of the Cohort
Report.
Five specifications are needed to build a Cohort
report:
- How to group the
cohorts
- The
cohort
time period - The number of
cohorts
to view - The minimum amount of data each
cohort
must contain - Time range after
cohort
occurrence
1. Grouping cohorts
Cohorts
are grouped by a timestamp, like registration date or first order date.
cohort
date. For an analysis that requires this, you can use the Standard report builder
instead.2. Cohort
time period
Choose the time period to group cohorts
by. In other words, which part of the timestamp that you selected above is most important; the week
, month
, quarter
, or year
? Your report displays data in whatever interval that you select here
3. and 4. Set the number of cohorts
to view and how much data each cohort
must have
These parameters help you view only the cohorts
that you are interested in, and the handy Preview
box at the bottom of the window shows you exactly what cohorts display in your report.
By default, the current cohort
is not included unless you change the minimum amount of data required for each cohort
to 0
. In this case, the cohort
for the current time period includes only partial data.
5. Time Range After Cohort
Occurrence
This feature allows you to set the time range of data that you view for the selected cohorts
. For example, if you want to view 24 monthly cohorts
based on customer's first order date
, but you are only interested in the first 3 months of data for each cohort
, you can set the number of cohorts to view
to 24
and the time range after cohort occurrence
to 3
.
The interval for this value changes with whatever you selected in the cohort time period
and the value is set to 12
by default; the value does not change unless you click on the calendar icon to edit it.
Other notes
-
Filters: applied to your metrics remain intact when you toggle between
Standard
andCohort
views. -
See
Perspectives
.
Example
Here is an example to pull it all together. In this example, I want to check out order behavior after a cohort
鈥檚 first purchase to see if that cohort is coming back to make repeat purchases in the next six months.
Legacy Architecture
Legacy Architecture personalinfo
Below are instructions specific to the legacy version of the Cohort Report Builder
. If you are interested in using the new version, see New Architecture for more information about migrating to an Commerce Intelligence New Architecture account.
How do I create my own cohort
analysis? create
Cohort
analysis in action! Here, you can see revenue growing over time on a cumulative and per-user basis.
This section walks you through creating your own cohort
analysis. For examples (and animated GIFs demonstrating the process), look at the Examples section of this topic.
-
Click Report Builder on the left tab or Add Report > Create Report in any dashboard.
-
In the
Report Builder Selection
screen, click Create Report next to theCohort Analysis
option.
Adding a metric
Now that you are in the Cohort Report Builder
, add the metric (example: Revenue
or Number of orders
) on which you want to perform the analysis.
Cohort Report Builder
.Selecting the cohort date date
The next step is to specify the cohort date
. This is the date by which your users are grouped. For example, this might be User's first order date
or User's registration date
.
created at
) as the cohort date
.Setting the interval and time period
Next, set the Interval
and Time Period
.
Interval
The Interval
option allows you to set the length
of your cohorts
. For example, if this is set to Month
, your report is measured in months.
You can change how these intervals are displayed on the x-axis using the Duration menu.
Time Period
Use the Time Period
menu to choose the specific user cohorts
to analyze. You can show every cohort
, choose from a list, specify a time range, or define a rolling time range of cohorts
to include. For example, if you used the Specific Cohorts
option, you can select specific months to include in the analysis:
If you are grouping you cohorts
by registration date and then selected April, May, and June in the Specific Cohorts
list, any users who registered in those months would be included.
Defining the X-axis
Under duration
, you can define the chart鈥檚 X-axis settings. That is, how many time periods each data point represents and how many data points to include in the analysis.
Selecting the counting members
table
If you opted to group users by a cohort date
that has been joined from another table, you may see a counting members in the 鈥 table
option.
Look at an example to understand this setting. Suppose you built a report cohorting a Revenue
metric by Customer's registration date
. You also wanted to use the perspective Average value per cohort member
to see the revenue per buyer over time. To find the average value per buyer, you need to decide on the number of buyers to divide by. Is it the number of registered customers in your customers
table, or is it the number of distinct buyers in your orders table
for the same period?
This setting answers that question. Counting members in the customers
table includes all customers (whether they made a purchase, ever) in the average. Counting members in the orders
table includes only customers who made a purchase.
Selecting a perspective perspective
After you have defined the metric and how you want to analyze it, you can select the perspective
you want to use.
Just above the report visualization is a dropdown of perspective
settings.
See Perspectives.
Examples of cohort analysis examples
Now that you have gone through how to create a cohort
analysis, look at some examples.
I want to know how my user cohorts
are growing over time.
In this example, you analyzed the Revenue
metric, grouped your cohorts by the customer's first order date
, and selected the 8 most recent cohorts
(defined in the Time Period
menu) to include in the analysis. To see how the cohorts grew over time, you used the Cumulative Average Value per Cohort Member
perspective
.
I want to know, on average, how many orders a user makes at different points in their lifetime.
![Average number of orders users make at different points in their lifetimes](鈥/鈥/assets/cohort2.gif
For this example, you analyzed the Number of orders
metric, grouped your cohorts by the customer's first order date
, and included the eight most recent cohorts (defined in the Time Period
menu) in the analysis. To see the average number of orders for each cohort, you changed the perspective
to Average Value per Cohort Member
.
I want to understand how a user鈥檚 future purchasing activity compares to their first month鈥檚 activity with the business.
Perspectives
perspectives
Standard
This shows the incremental contribution of a given cohort group at any given point in their life cycle. (example: The 鈥淲eek 6鈥 point displays all data points made by users in their sixth week.)
Average Value per Cohort Member
This divides the Standard cohort
analysis in (1) by the number of users in each cohort
group. This can be useful for comparing cohort performances on an apples-to-apples basis, as not all cohort groups may include the same number of users. For example, the average week 6 revenue per user from a certain cohort
.
Cumulative
This perspective
shows the traditional cohort
analysis on a cumulative
basis. In other words, it shows the total contribution of a given cohort to date at any given point in their life cycle. For example, the cumulative revenue after six weeks of users from a certain cohort.
Cumulative Average Value per Cohort Member
This divides the Cumulative
analysis in (3) by the number of users in each cohort
group. It shows the average lifetime contribution (often average lifetime revenue) per cohort
member at each period in the cohort's
life. For example, the average lifetime revenue after six months of users that joined in June.
Percent of First Value (show first value)
This analyzes the aggregate cohort
contribution at a specific time in a cohort's
life cycle as a percentage of their contribution in the first period. For example, the month 6 revenue divided by the month 1 revenue of users that joined in June.
Percent of First Value (hide first value)
This is the same as the perspective
above, except that the first time period value of 100% is hidden.
Wrapping up finish
The Cohort Report Builder
is optimized for grouping users by a common cohort date
. You might be interested in grouping the users by a similar activity or attribute. 蜜豆视频 recommends checking out this tutorial on qualitative cohorts to get started.