This document discusses optimizing retention for SaaS companies. It notes that retaining existing customers is much cheaper than acquiring new ones. It recommends focusing on customer lifetime value and the customer lifecycle stages of activation, adoption, expansion, referral, and reactivation. Key metrics for each stage are outlined. Choosing the right retention metrics involves understanding what predicts long-term customer success. The document also provides tips for running effective retention experiments by selecting targeted customer groups and ensuring experiments do not interfere with each other.
24. Activation: The goal at this stage is
to get the customer to experience
your product’s value as quickly and
then as frequently as possible.
Metric examples:
● 30-day retention, 60-day
retention, 90-day retention,
120-day retention, etc.;
● Product or onboarding
milestone completion rates;
● Speed to first value
experience.
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25. Adoption: The goal at this stage is to get
the customer to form habits around the
use of your product.
Metric examples:
● Login frequency and consistency;
● Frequency of value experience;
● Product usage (e.g., number of
HubSpot user accounts, number of
Trello cards, number of WordPress
articles, etc.);
● Renewal rate.
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27. Expansion: The goal at this stage is to
deepen engagement and loyalty, whether
that results directly in monetary gain (e.g.,
upgrading plans) or not (e.g., joining a user
group).
Metric examples:
● Monthly recurring revenue (MRR);
● Average revenue per account (ARPA);
● Engagement;
● Customer lifetime value (LTV);
● Upsell/cross-sell conversion rates.
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28. Referral: Whether they’re part of a
formal or informal referral loop, the
goal is to get the customer to
identify with your company and/or
product so heavily that they
become a marketing and sales
vehicle.
Metric examples:
● Product affinity;
● Referral or affiliate revenue;
● Loyalty rewards redemption
rate.
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29. Reactivation: The goal at this
stage is to re-engage and
reactivate those who are
demonstrating at-risk behavior
patterns or who have
completely churned.
Metric examples:
● Customer save rate;
● Customer churn rate;
● Re-engagement rate.
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32. First, the model has to assume
the definition of a “lifetime.”
For example, do you use a true
lifetime? Or something more
finite, like three years?
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33. Second, the model has to define
revenue and cost items, which can
be complicated in large SaaS
ecosystems. For example, do you
include staff salaries? Do you
include revenue sharing with other
parties?
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34. LTV = (Average Revenue Per Account x
The Difference Between Revenue and Cost
of Goods Sold) / Customer Churn Rate
35. As your retention
experimentation program
matures, you’ll adjust the
formula to account for MRR
fluctuations, non-linear churn,
and enterprise customers, for
example.
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37. There’s a whole lot of options for
SaaS customers to choose from.
Deciding what the next most
valuable action for a specific
customer is at any given time is
complicated and contextual.
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40. You have to shift your thinking from
something as simple as session-to-lead
conversion rate to something as complicated
as a specific cohort’s adoption and retention
rate for a specific product, for which you may
or may not have a reliable benchmark.
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41. Choosing the right retention metrics
comes down to one thing:
understanding what best predicts
the long-term success of your
customers.
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42. Use the customer lifecycle to loosely
define “conversion points” (e.g.,
adoption to expansion).
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44. For example:
● Customers who use Product X.
● Customers who have completed milestone Y, but not milestone Z.
● Customers who have hired a partner.
● Customers who have created more than 5 Trello cards in 24 hours.
● Customers who have sent more than 10 FreshBooks invoices this month.
● Customers who are demonstrating at-risk behavioral patterns.
● Customers who pay $XX per month in third-party fees.
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45. Another common division is high-value vs.
low-value customers. How do you get more
out of your high-value customers, and how
can you turn more low-value customers into
high-value customers?
These definitions are different for every
company, of course.
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46. What’s important is that:
1. The entire company agrees upon the
definitions of these customer states, including
the at-risk state.
2. You can clearly track movement between these
customer states.
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48. It’s easy for a customer to end up
in multiple experiments at the
same time. This isn’t inherently
bad. For example, at any given time,
you’re likely in multiple Netflix
experiments. The problem emerges
when experiments conflict with one
another, skewing the results. How
are you monitoring experiment
interference and preventing this?
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49. Are you reliably recording which
acquisition-level experiments
customers were assigned to at the
top of the funnel? This information
will be valuable to know when
assigning them to bottom-of-the-
funnel experiments.
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50. Experiment results degrade. Are
you rerunning experiments to
verify initial findings? Are you
measuring down the funnel (in
addition to your primary metric) to
identify this degradation, as well as
false negatives and false positives?
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51. Are you using balance metrics (e.g.
gross customer adds vs. net
customer adds) to ensure you’re
not gaming retention metrics? For
example, are you increasing 30-day
retention to the detriment of MRR?
It’s especially easy to unknowingly
game retention metrics at large
companies where different
departments have different key
performance indicators (KPIs).
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52. Are you acknowledging the
importance of incrementality and
recording it in your experiment
results? Your customers will take a
lot of actions, with or without your
intervention. You need to
understand the true value of your
intervention.
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53. Do you know how much
money retention marketing
made you last year?
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