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© 2017 Beyond the Arc, Inc.
Customer Journey Analytics
2017
Steven Ramirez, CEO
The main points
• Make a journey map (an actual picture)
• Validate it with business metrics and analytics
◦ Is each step real? (Customer point of view)
◦ Is each step measureable? (Business point of view)
◦ Use predictive analytics to find causes and message points
• Get customer feedback at each point
◦ Surveys
◦ Predictive analytics shows key drivers tied to desired outcomes
• Track business metrics
◦ While keeping in mind that customer perceptions may not align
with internal business statements and objectives
2
Why link journey with analytics?
The customer journey is important, but not enough
• Customers have always had experiences
• What steps make up the experience? What steps lead to positive emotions?
• What steps do we think lead to greater lifetime value?
Business analytics are important, but not enough
• Businesses have always had operations and analytics
• Counts and sums are simple analytics
Customer journey analytics are strategic and tactical
• Detailed personal data is more widely available
• Businesses can create experience platforms that tie together the journey and the analytics
• Each customer’s individual pathway can now be addressed
• Predictive analytics identify personal targeting and important message levers
3
Big data makes it personal
• As the data gets bigger, it
contains a higher volume
of more specific
customer interactions
◦ General advertising
◦ Segmented marketing
◦ Personalized contact
◦ Individually targeted and
custom messaged
4
A customer journey map
5
Shopifynation.com
Not always linear
6
Although the map may be drawn in a line
• The customer journey is not always linear
• Has multiple points of interaction
• Has multiple ways of interacting with the customer
Many paths lead to the same endpoint
7
3-D customer journey analytics
8
Customer
Journey
Mapping
Name the steps in
the journey and
make a picture
Customer
Journey
Analytics
Use data to
understand causes
of behavior
Business
Metrics
Bridge business and
customer views
using analytics
It’s the customer’s journey
that creates the customer’s experience
The cumulative effect of all touchpoints in the journey is
the experience, and it matters to the customers
• To maintain this, the company needs to keep track of
◦ The customer point of view
◦ The customer journey touch points
◦ Analytics that uncover causes of behavior
◦ The business operations that support the touchpoints
◦ And what it takes to make the business happen
9
• What are the biggest points of pain for the customer
along the journey?
◦ Lots of complaints, frustration, friction
◦ Very emotional conversations
◦ Anger
• What are the risky spots for the business?
◦ Points of greatest profit
◦ Points of greatest loss
◦ Loss of lifetime value
10
Maximizing the value of the customer journey
Focus first on
• Resolving higher pain
• Resolving higher loss
• Involving more
customers
Choosing where to start
11
- Business Profit +
-CustomerPain+
Pain and Profit
Use analytics to tie friction to value
• The squeaky wheel gets the grease. The
one who raises a hand gets answered.
◦ But most wheels aren’t squeaking. Most
people don’t raise a hand.
◦ And they might be perfectly fine.
• Use sentiment analysis combined with
business metrics to put customer
comments in context.
◦ Emerging trend?
◦ Bad apple?
◦ Valuable segment?
◦ Suggestion for improvement?
◦ Trolling
◦ Compliment?
12
Sentiment Analysis
• API classification
◦ Watson
◦ IBM Bluemix
◦ Amazon
◦ Google
• Custom models
◦ Python NLTK
◦ Stanford NLP
• Hybrid systems
13
Analytics
can insert new insights
at every step of the journey
14
A customer journey… is an analytics journey
15
Customer journey map Business analytics map
See online advertisement Create demand, which segments to target
Purchase product Acquire customers, cost per customer,
Track best campaigns, best segments
Receive welcome letter Onboarding customers
30-day / 90-day expected behavior model
Get weekly email, visit website Send and track communications
Behavioral tracking
Make more purchases Track sales
KPI dashboard
Predict and measure customer lifetime
value
Purchase in response to an ad about a
related product
Cross-sell models target related items
Upsell models target more profitable items
A customer journey… is an analytics journey
16
Customer journey map Business analytics map
Interact with customer service Customer service staffing, hot topics, time
to get to the right answer
Receive satisfaction feedback survey Customer satisfaction measurement
Experiences with happy employees Employee satisfaction and management
Refer a friend Customer loyalty
Make more purchases Track sales
KPI dashboard
Predict and measure customer lifetime
value
Switch to a competitor, or reduce spend
with us
Customer retention models, messaging,
actions
Receive email with coupon and switch back Win-back models and targeted campaigns
Acquire customers: be careful with incentives
• Use the customer journey map to verify the acquisition plan
• Descriptive data is used to build
models showing best prospects
◦ Initial targeting
◦ Incentives may not be needed,
or may not need to be as high
◦ Retargeting if not acquired
• 2nd-best prospects
◦ May need more incentive
◦ Lift models take into account cost of acquisition and expected
profitability
18
19
Married people
who do not
have our credit
card
Single people who do not have
our credit card and who have
paid greater than 20% of their
loan
People who have $2000 or less on our
credit card, who also come to the
branch (rather than banking primarily
online)
Acquire customers:
by finding patterns
Acquire customers: by targeting them
• A campaign manager might select likelihood values from
80 to 100, thus taking the top 20% of prospects for the
campaign.
• Or a campaign manager might target by segment.
20
A/B Testing
Simple:
• Compare your current
message (A)
to a new one (B)
• Use the most popular one
More sophisticated:
• Vary the messaging by
◦ Channel
◦ Channel Combination
◦ Sequence
◦ Season or timeframe
Acquire customers: by testing messages
21
A B
A B
Onboarding customers
• Map the customer journey
◦ What steps lead up to acquisition?
◦ What steps are critical to onboarding?
◦ What have focus groups and surveys revealed?
• Find the causes behind purchases in the first 28 days (4 weeks)
◦ Based on acquisition data
◦ If they don’t behave as expected, use more aggressive engagement strategy
• Find the causes behind purchases in the first 91 days (13 weeks)
Find the causes of dissatisfaction in the first 91 days
◦ Based on acquisition data, 30-day prediction, and first 3 months of behavior
◦ If they don’t behave as expected, use more aggressive communications strategy
◦ Base communications on causes identified in the model and from the map
◦ Address the gaps in their behavior
22
Cross-sell, up-sell
• Increase customer lifetime value by broadening the scope of
their purchases
• Business analytics find higher margin products
• Predictive analytics find
◦ Products that customers buy together
◦ Customers who have one product but don’t yet have the second
◦ Ranking which customers are most likely to get the second product
◦ Most important variable predicting the behavior that can be used
as levers in messaging.
23
Customer lifetime value
• Identify your best customers, then treat them better
◦ Decile them to find the top performers
24
1 2 3 4 5 6 7 8 9 10
Value of decile All deciles treated equally
Customer service
No business is perfect
• Treat valuable customers well
• Track what customers are talking about
• Shorten the time it takes to get to the right answer
• Use text analytics to automatically extract the hot topics
• Shorten response time to problems in the field
25
Customer retention and churn
• Make a plan in the customer journey map for how to
handle customer departure
◦ How do you know when they’re gone?
◦ Canceling a subscription is obvious, but what about retail?
• Predictive models can tell who is likely to leave in the
next 28 days, and why
◦ Prepare retention offers for those likely to use a call center
◦ Prepare incentives for customers who have “expired”
• Use win-back predictions; customer acquisition models
that also know your past behavior
26
Add analytic insights along the journey
• Validate the journey map with business metrics and analytics
◦ Is each step real? (Customer point of view)
◦ Is each step measureable? (Business point of view)
◦ Use predictive analytics to find causes and message points
• Get customer feedback at each point
◦ Use open ended questions as well as structured metrics
◦ Don’t get caught up on using a single metric
◦ Capture the “why”
• Use analytics to
◦ Systematically quantify what customers say in their own words
◦ Find trending topics
◦ Understand cause and effect
27
Thank you
Steven J. Ramirez, CEO
Beyond the Arc, Inc.
Office 1.877.676.3743
Email sramirez@beyondthearc.com
Digital beyondthearc.com
@beyondthearc
Facebook.com/beyondthearc
Slideshare.net/beyondthearc
29
Disclaimer and copyright
©2017, Beyond the Arc, Inc. All rights reserved
This document provides our commentary and analysis. The information contained herein is of a
general nature and is not intended to address the circumstances of any particular individual or entity.
Although we endeavor to provide accurate and timely information, there can be no guarantee that
such information is accurate as of the date it is received or that it will continue to be accurate in the
future. No one should act on such information without appropriate professional advice after a
thorough examination of the particular situation. No warranty expressed or implied.
The information provided in this presentation is not intended nor should be used as a substitute for
legal advice or other expert opinions and services in specific situations.
This material may not be distributed.
Other company, product, and service names may be trademarks or service marks of others.
30

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Customer Journey Analytics: Linking Customer Experiences to Business Metrics

  • 1. © 2017 Beyond the Arc, Inc. Customer Journey Analytics 2017 Steven Ramirez, CEO
  • 2. The main points • Make a journey map (an actual picture) • Validate it with business metrics and analytics ◦ Is each step real? (Customer point of view) ◦ Is each step measureable? (Business point of view) ◦ Use predictive analytics to find causes and message points • Get customer feedback at each point ◦ Surveys ◦ Predictive analytics shows key drivers tied to desired outcomes • Track business metrics ◦ While keeping in mind that customer perceptions may not align with internal business statements and objectives 2
  • 3. Why link journey with analytics? The customer journey is important, but not enough • Customers have always had experiences • What steps make up the experience? What steps lead to positive emotions? • What steps do we think lead to greater lifetime value? Business analytics are important, but not enough • Businesses have always had operations and analytics • Counts and sums are simple analytics Customer journey analytics are strategic and tactical • Detailed personal data is more widely available • Businesses can create experience platforms that tie together the journey and the analytics • Each customer’s individual pathway can now be addressed • Predictive analytics identify personal targeting and important message levers 3
  • 4. Big data makes it personal • As the data gets bigger, it contains a higher volume of more specific customer interactions ◦ General advertising ◦ Segmented marketing ◦ Personalized contact ◦ Individually targeted and custom messaged 4
  • 5. A customer journey map 5 Shopifynation.com
  • 6. Not always linear 6 Although the map may be drawn in a line • The customer journey is not always linear • Has multiple points of interaction • Has multiple ways of interacting with the customer
  • 7. Many paths lead to the same endpoint 7
  • 8. 3-D customer journey analytics 8 Customer Journey Mapping Name the steps in the journey and make a picture Customer Journey Analytics Use data to understand causes of behavior Business Metrics Bridge business and customer views using analytics
  • 9. It’s the customer’s journey that creates the customer’s experience The cumulative effect of all touchpoints in the journey is the experience, and it matters to the customers • To maintain this, the company needs to keep track of ◦ The customer point of view ◦ The customer journey touch points ◦ Analytics that uncover causes of behavior ◦ The business operations that support the touchpoints ◦ And what it takes to make the business happen 9
  • 10. • What are the biggest points of pain for the customer along the journey? ◦ Lots of complaints, frustration, friction ◦ Very emotional conversations ◦ Anger • What are the risky spots for the business? ◦ Points of greatest profit ◦ Points of greatest loss ◦ Loss of lifetime value 10 Maximizing the value of the customer journey
  • 11. Focus first on • Resolving higher pain • Resolving higher loss • Involving more customers Choosing where to start 11 - Business Profit + -CustomerPain+ Pain and Profit
  • 12. Use analytics to tie friction to value • The squeaky wheel gets the grease. The one who raises a hand gets answered. ◦ But most wheels aren’t squeaking. Most people don’t raise a hand. ◦ And they might be perfectly fine. • Use sentiment analysis combined with business metrics to put customer comments in context. ◦ Emerging trend? ◦ Bad apple? ◦ Valuable segment? ◦ Suggestion for improvement? ◦ Trolling ◦ Compliment? 12
  • 13. Sentiment Analysis • API classification ◦ Watson ◦ IBM Bluemix ◦ Amazon ◦ Google • Custom models ◦ Python NLTK ◦ Stanford NLP • Hybrid systems 13
  • 14. Analytics can insert new insights at every step of the journey 14
  • 15. A customer journey… is an analytics journey 15 Customer journey map Business analytics map See online advertisement Create demand, which segments to target Purchase product Acquire customers, cost per customer, Track best campaigns, best segments Receive welcome letter Onboarding customers 30-day / 90-day expected behavior model Get weekly email, visit website Send and track communications Behavioral tracking Make more purchases Track sales KPI dashboard Predict and measure customer lifetime value Purchase in response to an ad about a related product Cross-sell models target related items Upsell models target more profitable items
  • 16. A customer journey… is an analytics journey 16 Customer journey map Business analytics map Interact with customer service Customer service staffing, hot topics, time to get to the right answer Receive satisfaction feedback survey Customer satisfaction measurement Experiences with happy employees Employee satisfaction and management Refer a friend Customer loyalty Make more purchases Track sales KPI dashboard Predict and measure customer lifetime value Switch to a competitor, or reduce spend with us Customer retention models, messaging, actions Receive email with coupon and switch back Win-back models and targeted campaigns
  • 17. Acquire customers: be careful with incentives • Use the customer journey map to verify the acquisition plan • Descriptive data is used to build models showing best prospects ◦ Initial targeting ◦ Incentives may not be needed, or may not need to be as high ◦ Retargeting if not acquired • 2nd-best prospects ◦ May need more incentive ◦ Lift models take into account cost of acquisition and expected profitability 18
  • 18. 19 Married people who do not have our credit card Single people who do not have our credit card and who have paid greater than 20% of their loan People who have $2000 or less on our credit card, who also come to the branch (rather than banking primarily online) Acquire customers: by finding patterns
  • 19. Acquire customers: by targeting them • A campaign manager might select likelihood values from 80 to 100, thus taking the top 20% of prospects for the campaign. • Or a campaign manager might target by segment. 20
  • 20. A/B Testing Simple: • Compare your current message (A) to a new one (B) • Use the most popular one More sophisticated: • Vary the messaging by ◦ Channel ◦ Channel Combination ◦ Sequence ◦ Season or timeframe Acquire customers: by testing messages 21 A B A B
  • 21. Onboarding customers • Map the customer journey ◦ What steps lead up to acquisition? ◦ What steps are critical to onboarding? ◦ What have focus groups and surveys revealed? • Find the causes behind purchases in the first 28 days (4 weeks) ◦ Based on acquisition data ◦ If they don’t behave as expected, use more aggressive engagement strategy • Find the causes behind purchases in the first 91 days (13 weeks) Find the causes of dissatisfaction in the first 91 days ◦ Based on acquisition data, 30-day prediction, and first 3 months of behavior ◦ If they don’t behave as expected, use more aggressive communications strategy ◦ Base communications on causes identified in the model and from the map ◦ Address the gaps in their behavior 22
  • 22. Cross-sell, up-sell • Increase customer lifetime value by broadening the scope of their purchases • Business analytics find higher margin products • Predictive analytics find ◦ Products that customers buy together ◦ Customers who have one product but don’t yet have the second ◦ Ranking which customers are most likely to get the second product ◦ Most important variable predicting the behavior that can be used as levers in messaging. 23
  • 23. Customer lifetime value • Identify your best customers, then treat them better ◦ Decile them to find the top performers 24 1 2 3 4 5 6 7 8 9 10 Value of decile All deciles treated equally
  • 24. Customer service No business is perfect • Treat valuable customers well • Track what customers are talking about • Shorten the time it takes to get to the right answer • Use text analytics to automatically extract the hot topics • Shorten response time to problems in the field 25
  • 25. Customer retention and churn • Make a plan in the customer journey map for how to handle customer departure ◦ How do you know when they’re gone? ◦ Canceling a subscription is obvious, but what about retail? • Predictive models can tell who is likely to leave in the next 28 days, and why ◦ Prepare retention offers for those likely to use a call center ◦ Prepare incentives for customers who have “expired” • Use win-back predictions; customer acquisition models that also know your past behavior 26
  • 26. Add analytic insights along the journey • Validate the journey map with business metrics and analytics ◦ Is each step real? (Customer point of view) ◦ Is each step measureable? (Business point of view) ◦ Use predictive analytics to find causes and message points • Get customer feedback at each point ◦ Use open ended questions as well as structured metrics ◦ Don’t get caught up on using a single metric ◦ Capture the “why” • Use analytics to ◦ Systematically quantify what customers say in their own words ◦ Find trending topics ◦ Understand cause and effect 27
  • 27.
  • 28. Thank you Steven J. Ramirez, CEO Beyond the Arc, Inc. Office 1.877.676.3743 Email sramirez@beyondthearc.com Digital beyondthearc.com @beyondthearc Facebook.com/beyondthearc Slideshare.net/beyondthearc 29
  • 29. Disclaimer and copyright ©2017, Beyond the Arc, Inc. All rights reserved This document provides our commentary and analysis. The information contained herein is of a general nature and is not intended to address the circumstances of any particular individual or entity. Although we endeavor to provide accurate and timely information, there can be no guarantee that such information is accurate as of the date it is received or that it will continue to be accurate in the future. No one should act on such information without appropriate professional advice after a thorough examination of the particular situation. No warranty expressed or implied. The information provided in this presentation is not intended nor should be used as a substitute for legal advice or other expert opinions and services in specific situations. This material may not be distributed. Other company, product, and service names may be trademarks or service marks of others. 30