This document discusses using predictive analytics to improve customer retention. It outlines that predictive analytics can be used to analyze customer data to predict which customers are most at risk of churning (canceling their service). By understanding the causes of churn, companies can personalize the customer experience for at-risk customers, such as by cross-selling additional products or targeting discounts, in order to reduce churn. The document demonstrates how a predictive analytics tool called Qubit Decipher can analyze customer data to identify high-risk acquisition channels, behaviors, keywords, and individual customers to most effectively target retention efforts. Improving retention through predictive analytics can provide significant business value in increased revenue, customer lifetime value, and word-of-mouth referrals.
2. we look at simple
‣ What are we trying to solve?
‣ How can we use predictive analytics?
‣ What data are we talking about?
‣ Demo
‣ Q&A
David Hitt
Director, Strategic Accounts
Qubit
Stephen Pavlovich
CEO & Founder
conversion.com
Agenda
3. Qubit is a global leader
in digital optimisation
Global
• Segmentation
• Analytics
• Personalisation
• Testing
4. we look at simple
What is the
retention problem?
80% of future revenue
will come from as little as
20% of existing customer
(Gartner).
Yet most companies don’t
have effective retention
programs.
Consider conversion rates online which
can be as low as 3% for new visitors.
Existing customers on the other hand can
renew at volumes greater than 80%
depending upon the brand and industry.
If we look at a wireline provider who
tends to have a churn rate of between 2 -
2.5% per month even with a modest
customer base of 5 million, that means
an estimated 1.3m customers or $2b in
revenue is lost every year. Frightening
numbers. The revenue opportunities
associated with an increase in retention
can be massive.
EXAMPLE
6. What is
predictive
analytics?
The practice of
audience profiling by
utilising existing data
sets to determine
patterns and predict
future outcomes and
visitor intent
‣ Predictive
‣ Descriptive
11. What data can be collected and
analysed?
‣ First party digital:
‣ Device
‣ Location
‣ Channel
‣ Products
‣ Price
‣ Quotes
‣ Current providers
‣ Subscription length
‣ Browsing history
‣ Keywords
‣ Demographics
‣ First party:
‣ Contact history
‣ Claim history
‣ Fault history
‣ Billing issues
‣ Address changes
‣ Third party:
‣ DMP
‣ Credit score
‣ Geographic
13. Qubit Decipher Dashboard using Tableau for visualisation
using dummy data.
Using predictive
analytics we can select
a channel (highlighted)
and determine
propensity to churn
(risk)
Red is churn, green is
renewal. Here Direct
has a very low chance
of churn, but vertical
search (highlighted) is
high.
Highest risk channel
Lowest risk channel
14. Qubit Decipher Dashboard using Tableau for visualisation
using dummy data.
In the Vertical Search channel, we
can click on a specific affiliate and
drill down a list of contacts who
entered the site through that channel,
and determine their risk of churning
15. Qubit Decipher Dashboard using Tableau for visualisation
using dummy data.
Here we can click on Paid Search,
and see the risk associated with
certain key words. From there, we
could also drill down the visitor
information to determine which
visitors are at risk.
‘Cheap Car Insurance” in this
example has a 30% chance of
churning, so we would adapt our
marketing spend accordingly.
16. Qubit Decipher Dashboard using Tableau for visualisation
using dummy data.
Next we can go to the Visitor Page
Dashboard to analyse how a user’s
actions on the site 30 days after
signup can signal their intent to
churn.
In this example, we see that
homepage visits have a low risk of
churn, where as FAQ has a high risk.
So, users visiting the FAQ page
within 30 days of signing up
represent a great opportunity to
reduce churn.
Highest risk behaviour
17. Qubit Decipher Dashboard using Tableau for visualisation
using dummy data.
Finally, we can have a
look at all the data to
determine the size of our
problem. From there, we
can drill down on entry
points to determine
which present the
biggest risk, and exactly
what that risk is.
This analysis will inform
what brands, affiliates,
keywords etc we should
be spending our
marketing budget on.
18. we look at simple
Personalising
the experience
The next 2 slides we look at
how to personalise the
experience for at risk users.
1) Personalising by cross-selling
a product that reduces
propensity to churn
2) Targeting users on the FAQ
page with a rang of
personalised and relevant
discounts to lock them in and
reduce churn.
22. The business value
‣ Customer retention
‣ Stop existing customers from moving to the competition
‣ Improved targeting of offers
‣ Know who to target with which offer based on their individual score
‣ Improved loyalty and willingness to recommend
‣ Positive word of mouth driving more conversions
‣ Increased customer lifetime value
‣ Increase average subscription period and value
‣ Optimise the partner/affiliate programme
‣ Manage partners based on true conversion value