Title: Adding the Power of Foresight to Business Intelligence
1Adding the Power of Foresight to Business
Intelligence
- A Discussion of Predictive Analytics
- Tim Daciuk
- Director, Worldwide Demo Resources
- SPSS Inc.
- Alan Payne
- Manager, Member Research and Development,
- Navy Federal Credit Union
2Agenda
- About SPSS
- From Business Intelligence to Predictive
Analytics - What is Predictive Analytics
- Why does it matter
- Summary
3Company Fundamentals Company
- Leadership
- Market leader in Predictive Analytics
- 40 years in business
- 250,000 customers
- 1,200 employees
- Global infrastructure (51 of revenue from
outside NA) - 300M in annual (2007) revenue
- NASDAQ SPSS
4A Worldwide Brand
5Company Fundamentals Customers
- Customers in more than 100 countries
- All 50 U.S. state governments
- 90 of nations top universities
- 95 of the Fortune 1000 companies
- 10 largest pharmaceutical companies
- 85 of top consumer packaged goods companies
- 10 largest market research firms
6The Data Analysis Timeline
Viability of Predictive Analytics
Business Maturity
The Data Warehouse Years
The Data Harvesting Years
The Data Anticipation Years
Inflexion point
(The age of Predictive Analytics)
(The quest for the predictive enterprise)
(The search for order in the house of data!)
Business Advantage
Start of Market Traction
Time
Phase 2
Phase 3
Phase 4
Phase 5
Phase 1
1994
2000
2003
2007
2010
1997
Dominant Market Demand
Database DW vendors
E-opportunists ERP vendors
Middleware BI vendors
Predictive Analytics BPM-centric vendors
Event Anticipation, Process Simulation KM
vendors
7The Next Phase of Business Reporting
High
Prediction What Might Happen?
Predictive Analytics
Monitoring Whats Happening Now?
Query, Reporting Search tools
Complexity
Analysis Why did it Happen?
OLAP Visualization tools
Reporting What Happened?
Query, Reporting Search tools
Business Value
Low
High
First Quarter 2007, TDWI Best Practices
Report Predictive Analytics, Extending the Value
of Your Data Warehouse Investment
8Predictive Analytics (PA) Defined
- Data driven approach to problem solving
- Focused on Business Objectives
- Leverages organizational data
- Uncovers patterns using predictive and
descriptive techniques - Uses results to help improve organizational
performance
9What Does PA Actually Do?
- Predictive Analytics uses existing data to
- Predict
- Category membership
- Numeric Value
- Group
- Cluster (group) things together based on their
characteristics - Associate
- Find events that occur together, or in a sequence
- Find outliers
- Identify cases that dont follow expected behavior
10Platform for Predictive Analytics
11Common Applications of PA
- Customer Analytics
- Identify and market to profitable
customers/prospects - Identify high value customers for acquisition and
cross-sell - Predict likelihood of defection
- Student lifecycle management
- Donor and alumni development
- Fraud and Risk Reduction
- Identify risks
- Identify fraud or suspicious activity
- Process Improvement
- Uncover the factors that lead to product failures
12Predictive Analytics What It Isnt
- Not a product, a particular piece of software, or
a given algorithm - Not a model, segmentation scheme or business
rules - Not an end product in and of itself
- Not an SQL query, an OLAP hub, or a BI Dashboard
- Not statistics per se
13Differences Between BI and PA
- BI supplies the core facts of an organization
- What?
- Reporting tables
- Core business metrics
- Factual reporting
- KPIs
- PA delivers the reasons or drivers of those facts
- Why and How?
- Predictive associations
- Optimized models
- Causal reporting
- KPPs Key Performance Predictors
14Predictive Analytics Text Added to Data
15The Predictive Advantage
- Theres analyticsand analytics
- Core Analytics / BI
- Predictive Analytics
16IDC - Independent Financial Impact Studies
- The median ROI for the projects that
incorporated predictive technologies was 145,
compared with a median ROI of 89 for those
projects that did not. - Source IDC, Predictive Analytics and ROI
Lessons from IDCs Financial Impact Study
17Why Predictive Analysis is Critical
Beforeanalytics
Afteranalytics 21 18 12 10 60
Banner ad click through rates 0.3 Mail
response rates 0.5 Merchandising response
rates 0.2 Conversion rates (post-response)
0.9 Buyer repeat rates 2.0
- - Performance of analytics targeted to certain
consumers cross-industry and channel, research
from Forrester, Jupiter, Amazon.com and Ovum (DM
Review, Feb 11, 2003)
18Data Heart of the Predictive Enterprise
Customer Contact Channels
Text data Up to 40better predictions
- Attitudinal data
- - Opinions
- Preferences
- Needs
- Desires
- Interaction data
- - Offers
- Results
- Context
- Clickstreams
- Notes
Web data Up to 20better predictions
Website Email Phone Mail Branch ATM Agent Mobile
Attitudes Up to 30better predictions
Marketing Attitudinal Interaction Web Call-center
Operational
Customer View
- Behavioral data
- - Orders
- - Transactions
- Payment history
- Usage history
- Descriptive data
- Attributes
- Characteristics
- Self-declared info
- (Geo)demographics
19Where PA Fits In Your Organization
Analyze data to provide insight and predict the
future
Recommend the mostappropriate actionto take
Store detailed data on customers, events, etc.
Operational processes and systems
20Keys to Success
- Define the right strategic objective
- Get the right resources
- Plan, develop and implement the solution
- Socialize the results throughout the organization
21A Predictive Analytics SuccessNavy Federal
Credit Union
- Alan Payne
- Manager, Member Research and Development
- Navy Federal Credit Union
22Outline
- Business needs
- Selection process with SPSS
- What we have
- Case looking at satisfaction
- Going forward
23Business Needs
- 1st Data Analysis
- Utilize a tool to help make sense of the data we
have and are gathering (exploratory analysis and
reporting) - 2nd Prediction
- Begin to utilize the tool and data to begin
generating predictive analytics (regression,
trees, clusters etc.) - 3rd Action
- Initiate predictive analytics in a production
environment (response, segmentation, and
predictive models)
24Business Needs
- 1st Data Analysis
- Utilize a tool to help make sense of the data we
have and are gathering (exploratory analysis and
reporting) - 2nd Prediction
- Begin to utilize the tool and data to begin
generating predictive analytics (regression,
trees, clusters etc.) - 3rd Action
- Initiate predictive analytics in a production
environment (response, segmentation, and
predictive models)
25Selection Process with SPSS
- 1st Software
- I needed a tool that could be used out of the box
- 2nd Company
- I required a company that would respond to me
- 3rd Usage
- I had to have a product that staff at various
levels of knowledge could use immediately - 4th Scalability
- The product had to scale as we move from
understanding data to implemented predictive
analytics - 5th Service
- World-class training
26What We Have
SPSS Statistics Regression/Trees/other models
SPSS Statistics - Tables
27What We Have
Text Analysis/Complex Samples
SPSS Statistics Regression/Trees/other models
SPSS Statistics - Tables
28What We Have
Clementine
Text Analysis/Complex Samples
SPSS Statistics Regression/Trees/other models
SPSS Statistics - Tables
29What We Have
Text Analysis/Complex Samples
SPSS Statistics Regression/Trees/other models
SPSS Statistics - Tables
30A Case Study Looking at Satisfaction
31A Case Study Looking at Satisfaction
Text Analysis/Complex Samples
SPSS Statistics Regression/Trees/other models
SPSS Statistics - Tables
32A Case Study Looking at Satisfaction
Text Analysis/Complex Samples
SPSS Statistics Regression/Trees/other models
SPSS Statistics - Tables
33A Case Study Looking at Satisfaction
Text Analysis/Complex Samples
SPSS Statistics Regression/Trees/other models
SPSS Statistics - Tables
34A Case Study Looking at Satisfaction
Text Analysis/Complex Samples
SPSS Statistics Regression/Trees/other models
SPSS Statistics - Tables
35A Case Study Looking at Satisfaction
Text Analysis/Complex Samples
SPSS Statistics Regression/Trees/other models
SPSS Statistics - Tables
36A Case Study Looking at Satisfaction
Text Analysis/Complex Samples
SPSS Statistics Regression/Trees/other models
SPSS Statistics - Tables
37Going Forward
- Tools are in place
- Able to expand our predictive analytics
- Infrastructure is in place to begin pushing
models - Staffing development is in place (entry to
expert)
Clementine
Text Analysis/Complex Samples
SPSS Statistics Regression/Trees/other models
SPSS Statistics - Tables
38Results
- Board approved significant internal investments
- Going from 100 branches to 160 in three years
- 2 new call centers (Winchester, VA and Pensacola,
FL) - Over 1,500 new employees
- Statistically significant improvements in access
to Navy Federal by members - Statistically raised member satisfaction
- 2 SD above top banks (ACSI)
- Developed custom products and services
- Increase in holdings
- 25 billion in Oct. 2005 to almost 36 billion
today
39Other Examples of the Success of Predictive
Analytics
40Natexis Assurance Increases Productivity
- Background
- Insurance division of the French Groupe Banque
Populaire - Business goals
- Increase effectiveness of marketing and account
managers in branches - Solution
- Implemented Predictive Marketing to target high
value customers in marketing campaigns, and
generate targeted leads for advisors
- 46 cost reduction on investment product campaign
- 55 more policies sold
- 109 more revenue, since customers made higher
investments - Bottom line1.6 Million Euro additional revenue
on a single campaign
41Fortis Bank Increases Conversion Rates
- Background
- International financial service provider in
banking and insurance. Among the twenty biggest
financial institutions in Europe. - Market capitalization EUR 39 billion
- Business goals
- Build success in implementing targeted direct
marketing campaigns - while reducing the total campaign circulation
and rise in conversion - Solution
- Create better target group selections and more
relevant offers that fit in better with the
wishes and expectations of individual customers.
Results
- Modelling gives the marketing team the
possibility of predicting the effectiveness of
campaigns in advance - Reduction in the total campaign volumes by 20
- Increase in conversion of 50 to 75
42Richmond Police Department
- Background
- Established 1807 - one of the first law
enforcement agencies in US - 12 policing sectors, serving 200,000
- Business goals
- Proactively reduce crime by using data to predict
staff likely hot spots - Present officers with real-time data displayed in
geographic maps - Reduce staffing costs
- Solution
- Merge and analyze data resources (weather,
events) - Build model to characterize and predict criminal
activity, incl. locales/times - Display results in an interactive GIS
Results
- Proven model identifies actionable crime patterns
- Reduced crime
- Reduced staffing costs
- E.g. New Years Eve (2003/4)
- 49 reduction in random gunfire incidents
- 246 increase in weapons seized
43Questions
44What Have We Covered?
- Predictive Analytics Defined
- What is the difference between BI and predictive
analytics - Data Analysis Timeline
- Where is the evolutionary place of predictive
analytics - The Methodology for Predictive Analytics
- How to bring a PA mindset to business problems
- How to Move from Research to Action
- How to apply PA insight to proactive initiatives
45What Do We Know?
- Predictive analytics does not replace BI
- Predictive analytics leverages data investments
already in place - Predictive analytics unlocks the hidden potential
residing in data stores - Navy Federal has shown the power of predictive
analytics put into action - http//www.cutimes.com/article.php?article40946
46Contact Information
- Visit www.spss.com for general information
- Michael Doane mdoane_at_spss.com