SlideShare a Scribd company logo
1 of 59
Download to read offline
For more information and citations regarding the examples in this presentation,
see the book "Predictive Analytics: The Power to Predict Who Will Click, Buy,
Lie, or Die" by Eric Siegel (http://www.thepredictionbook.com). Most of the
various examples shown are covered in the book - so, for greater detail about each
case study named, see its reference/citation - search by organization name within
the book's Notes PDF, available online at http://www.PredictiveNotes.com.
0
With 10 events a year globally, Predictive Analytics World delivers vendor-
neutral sessions across verticals such as banking, financial services, e-commerce,
entertainment, government, healthcare, manufacturing, high technology,
insurance, non-profits, publishing, and retail.
Predictive Analytics World industry events include PAW Business, PAW
Financial, PAW Government, PAW Healthcare, PAW Workforce, and PAW
Manufacturing.
Why bring together such a wide range of endeavors? No matter how you use
predictive analytics, the story is the same: Predictively scoring customers,
employees, students, voters, patients, equipment, and other organizational
elements optimizes performance. Predictive analytics initiatives across industries
leverage the same core predictive modeling technology, share similar project
overhead and data requirements, and face common process challenges and
analytical hurdles.
Info: http://www.predictiveanalyticsworld.com
Attendees may receive a copy of the audiobook version at no charge by simply
emailing me directly to request: eric@predictionimpact.com
2
Predictive analytics educational/infotainment geek rap video:
http://www.PredictThis.org
3
4
5
Canadian Tire examples, from "What Does Your Credit-Card Company Know
About You?" New York Times, May 12, 2009. http://www.nytimes.com/
2009/05/17/magazine/17credit-t.html
6
Canadian Tire examples, from "What Does Your Credit-Card Company Know
About You?" New York Times, May 12, 2009. http://www.nytimes.com/
2009/05/17/magazine/17credit-t.html
7
People who “like” curly fries on Facebook are “more intelligent.”
Reference for most examples in this presentation are in the Notes PDF for Eric
Siegel's book, "Predictive Analytics." For each example's reference/citation,
search by organization name within the book's Notes PDF, available at
www.PredictiveNotes.com
8
Neighborhoods of San Francisco that exhibit higher rates of certain crimes also
exhibit higher demand for Uber rides.
9
10
12
13
A crummy predictive model delivers big value. It’s like a skunk with bling.
Simple arithmetic shows the bottom line profit of direct mail, both in general and
then improved by predictively targeting (and only contacting 25% of the list). The
less simple part is how the predictive scores are generated for each individual in
order to determine exactly who belongs in that 25%. For details on how this
works, see Chapter 1 of the book "Predictive Analytics: The Power to Predict
Who Will Click, Buy, Lie, or Die" (http://www.thepredictionbook.com).
Put another way, predicting better than guessing is often sufficient to generate
great value by rendering operations more efficient and effective. For details on
how this works, see the Introduction and Chapter 1 of the book "Predictive
Analytics: The Power to Predict Who Will Click, Buy, Lie, or Die" (http://
www.thepredictionbook.com).
14
15
This singular, universally applicable force improves every large-scale thing we do
—how we build things, sell things, and prevent bad things from happening—
because every function benefits from prediction. As its deployment takes hold
across industries, we have moved beyond engineering the infrastructure that
manages big data to implementing the science that taps its contents for more
intelligent
Has emerged as a commonplace business practice necessary to sustain
competitive advantage.
$6.5 billion within a couple years
84% of marketing leaders intend to increase the role of predictive analytics in
marketing over the next 12 months (Forbes)
U.S. shortage of analytics experts at 140,000 in the near-term
LinkedIn’s first/second “Hottest Skills That Got People Hired” is “statistical
analysis and data mining”
16
17
18
A crummy predictive model delivers big value. It’s like a skunk with bling.
19
Does contacting the customer make them more likely to respond?
MEDICAL:
Will the patient survive if treated?
"My headache went away!“ Proof of causality by example.
Driving medical decisions with personalized medicine: selecting treatment, e.g.,
treating heart failure with betablockers
Personalized medicine. Naturally, healthcare is where the term treatment
originates. While one medical treatment may deliver better results on average
than another, personalized medicine aims to decide which treatment is best suited
for each patient, since a treatment that helps one patient could hurt another. For
example, to drive beta-blocker treatment decisions for heart failure, researchers
"use two independent data sets to construct a systematic, subject-specific
treatment selection procedure." (Claggett et al 2011) Certain HIV treatment is
shown more effective for younger children. (McKinney et al 1998) Cancer
20
a.k.a., net lift modeling and persuasion modeling
21
22
US BANK EXAMPLE
Business case: Direct mail for a home-equity line of credit
Approach: Target campaign with an uplift model
… to existing customers (i.e., a cross-sell marketing campaign)
Resulting improvements over prior conventional analytical approach:
Campaign ROI increased over 5 times previous campaigns (75% to 400%)
Cut campaign costs by 40%
Increase incremental cross-sell revenue by over 300%
Decrease mailings to customers who would purchase whether
contacted or not, and customers who would purchase only if not contacted.
Sources: Radcliffe & Surry (2011), Tsai (2010), Patrick Surry (Pitney Bowes
Business Insight), Michael Grundhoefer (US Bank)
23
25
Two articles I wrote provide more details on the Obama campaign's use of
predictive analytics (one a reprint of the pertinent section in my book):
http://www.thefiscaltimes.com/Articles/2013/01/21/The-Real-Story-
Behind-Obamas-Election-Victory
http://bigthink.com/experts-corner/team-obama-mastered-the-science-of-
mass-persuasion-and-won
Then check out this video of a Predictive Analytics World presentation by one of
the hands-on leads on this Obama project, which gets more technical:
http://www.predictiveanalyticsworld.com/patimes/video-pinpointing-
persuadables-convincing-right-customers-right-voters/
27
Telenor: world’s 7th largest mobile operator - 159 million subscribers
Improvements are relative to their existing best-practice retention models.
Case study presented at Predictive Analytics World, February 2009, San
Francisco.
Case study and graph courtesy of Pitney Bowes Business Insight.
29
Marcus Wohlsen, “San Francisco startup makes data science a sport.” The Seattle
Times, April 14, 2012.
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
“Last Week Tonight” with John Oliver, May 8, 2016:
https://youtu.be/0Rnq1NpHdmw
48
49
50
51
After 150 Years, the American Statistical Association Says No to p-values:
http://www.kdnuggets.com/2016/03/asa-says-no-p-values.html
"Even if something is published in the flagship journal of the leading association of research psychologists, there's no
reason to believe it. The system of scientific publication is set up to encourage publication of spurious findings."
- Andrew Gelman, professor of statistics and political science at Columbia University
http://www.slate.com/articles/health_and_science/science/2013/07/
statistics_and_psychology_multiple_comparisons_give_spurious_results.2.html
52
Free white paper: www.predictiveanalyticsworld.com/signup-uplift-whitepaper.php
More updated version thereof is Chapter 7 of “Predictive Analytics” (www.thepredictionbook.com)
Or see the (much more) technical papers that chapter cites - see under Chapter 7 of the book's Notes PDF, available online at http://www.PredictiveNotes.com.
See also: http://www.predictiveanalyticsworld.com/patimes/personalization-is-back-how-to-drive-influence-by-crunching-numbers/
53
For more on vast search, see Chapter 3 of Predictive Analytics by Eric Siegel (www.thepredictionbook.com). For further citations on this topic, also see the final
portion that chapters Notes (citations), available as a PDF online at www.PredictiveNotes.com.
Also on a broadly-accessible level, see chapter seven, "Dead Fish Don't Read Minds," of "How Not to Be Wrong: The Power of Mathematical Thinking," by Jordan
Ellenberg.
Video: www.predictiveanalyticsworld.com/patimes/video-the-power-and-peril-of-predictive-analytics/
See also: http://www.predictiveanalyticsworld.com/patimes/breakthrough-avert-analytics-treacherous-pitfall/3366/
See also Elder Research's short, friendly video illustrating target shuffling:
http://www.elderresearch.com/target-shuffling-video
For a more technical treatment, in addition to Elder and Bullard's paper cited on the slide above, see "Handbook of Statistical Analysis and Data Mining
Applications" by Nisbet et al - second edition only - Chapter 20, "SIGNIFICANCE vs LUCK in the age of MINING.” Coincidentally, I used "BS” in earlier
versions of this talk before knowledge of similar vocabulary in that new edition of the “Handbook” and elsewhere J. Here’s a quote from that chapter:
Replication is supposed to be a hallmark of scientific integrity. The concern over this lapse of ‘scientific accuracy/integrity’ has been growing for
some time, especially over the past 3 years, such that the University of Washington (Seattle) is offering a new course for Spring 2017 titled "Calling
Bullshit in the Age of Big Data" Among the Learning / Behavioral Objectives for this course is the following: ‘After taking this course, you will be
able to provide a statistician or fellow scientist with a technical explanation of why a claim or conclusion is ‘in error’. Below are three links that go
to this new course, including a syllabus:
• http://callingbullshit.org/syllabus.html#Big;
• http://www.recode.net/2017/2/19/14660236/big-data-bullshit-college-course-university-
washington;
• https://www.statnews.com/2017/02/17/science-fights-alternative-facts/
One more link:
http://www.slate.com/articles/health_and_science/science/2016/01/amy_cuddy_s_power_pose_research_is_the_latest_example_of_scientific_overreach.html
54
55
57
58

More Related Content

What's hot

The 1 Week Minimum Viable Product (MVP)
The 1 Week Minimum Viable Product (MVP)The 1 Week Minimum Viable Product (MVP)
The 1 Week Minimum Viable Product (MVP)Alexis Roqué
 
Recent Trends in Personalization at Netflix
Recent Trends in Personalization at NetflixRecent Trends in Personalization at Netflix
Recent Trends in Personalization at NetflixJustin Basilico
 
An introduction to computer vision with Hugging Face
An introduction to computer vision with Hugging FaceAn introduction to computer vision with Hugging Face
An introduction to computer vision with Hugging FaceJulien SIMON
 
Business Intelligence PowerPoint Presentation Slides
Business Intelligence PowerPoint Presentation Slides Business Intelligence PowerPoint Presentation Slides
Business Intelligence PowerPoint Presentation Slides SlideTeam
 
AI Transformation
AI TransformationAI Transformation
AI TransformationLiming Zhu
 
AI Product Thinking for Product Managers
AI Product Thinking for Product Managers AI Product Thinking for Product Managers
AI Product Thinking for Product Managers Saurabh Kaushik
 
Why Product-Led Growth is the most effective GTM strategy
Why Product-Led Growth is the most effective GTM strategyWhy Product-Led Growth is the most effective GTM strategy
Why Product-Led Growth is the most effective GTM strategyMickey Alon
 
Go-to-Market Best Practices for Startups
Go-to-Market Best Practices for StartupsGo-to-Market Best Practices for Startups
Go-to-Market Best Practices for Startupsa16z
 
AI in the Enterprise
AI in the EnterpriseAI in the Enterprise
AI in the EnterpriseRon Bodkin
 
Landscape of AI/ML in 2023
Landscape of AI/ML in 2023Landscape of AI/ML in 2023
Landscape of AI/ML in 2023HyunJoon Jung
 
DWP presentation
DWP presentationDWP presentation
DWP presentationCIPR Inside
 
Product Market Fit - How to know your product is market fit
Product Market Fit - How to know your product is market fitProduct Market Fit - How to know your product is market fit
Product Market Fit - How to know your product is market fitSaif Hassan
 
Sequential Decision Making in Recommendations
Sequential Decision Making in RecommendationsSequential Decision Making in Recommendations
Sequential Decision Making in RecommendationsJaya Kawale
 
Using Knowledge Graphs to Predict Customer Needs and Improve Quality
Using Knowledge Graphs to Predict Customer Needs and Improve QualityUsing Knowledge Graphs to Predict Customer Needs and Improve Quality
Using Knowledge Graphs to Predict Customer Needs and Improve QualityNeo4j
 
Best Practices in Product Management for V1 Web Products
Best Practices in Product Management for V1 Web ProductsBest Practices in Product Management for V1 Web Products
Best Practices in Product Management for V1 Web ProductsDan Olsen
 
Marketing Analytics to Prove Your ROI
Marketing Analytics to Prove Your ROIMarketing Analytics to Prove Your ROI
Marketing Analytics to Prove Your ROIMarketo
 
Business Ecosystem Design
Business Ecosystem DesignBusiness Ecosystem Design
Business Ecosystem DesignJan Schmiedgen
 
Value Proposition Design
Value Proposition DesignValue Proposition Design
Value Proposition DesignYves Pigneur
 

What's hot (20)

The 1 Week Minimum Viable Product (MVP)
The 1 Week Minimum Viable Product (MVP)The 1 Week Minimum Viable Product (MVP)
The 1 Week Minimum Viable Product (MVP)
 
Recent Trends in Personalization at Netflix
Recent Trends in Personalization at NetflixRecent Trends in Personalization at Netflix
Recent Trends in Personalization at Netflix
 
An introduction to computer vision with Hugging Face
An introduction to computer vision with Hugging FaceAn introduction to computer vision with Hugging Face
An introduction to computer vision with Hugging Face
 
Business Intelligence PowerPoint Presentation Slides
Business Intelligence PowerPoint Presentation Slides Business Intelligence PowerPoint Presentation Slides
Business Intelligence PowerPoint Presentation Slides
 
AI Transformation
AI TransformationAI Transformation
AI Transformation
 
AI Product Thinking for Product Managers
AI Product Thinking for Product Managers AI Product Thinking for Product Managers
AI Product Thinking for Product Managers
 
RTB Bid Landscape in Adform
RTB Bid Landscape in AdformRTB Bid Landscape in Adform
RTB Bid Landscape in Adform
 
Why Product-Led Growth is the most effective GTM strategy
Why Product-Led Growth is the most effective GTM strategyWhy Product-Led Growth is the most effective GTM strategy
Why Product-Led Growth is the most effective GTM strategy
 
Go-to-Market Best Practices for Startups
Go-to-Market Best Practices for StartupsGo-to-Market Best Practices for Startups
Go-to-Market Best Practices for Startups
 
AI in the Enterprise
AI in the EnterpriseAI in the Enterprise
AI in the Enterprise
 
Landscape of AI/ML in 2023
Landscape of AI/ML in 2023Landscape of AI/ML in 2023
Landscape of AI/ML in 2023
 
DWP presentation
DWP presentationDWP presentation
DWP presentation
 
Product Market Fit - How to know your product is market fit
Product Market Fit - How to know your product is market fitProduct Market Fit - How to know your product is market fit
Product Market Fit - How to know your product is market fit
 
UTILITY OF AI
UTILITY OF AIUTILITY OF AI
UTILITY OF AI
 
Sequential Decision Making in Recommendations
Sequential Decision Making in RecommendationsSequential Decision Making in Recommendations
Sequential Decision Making in Recommendations
 
Using Knowledge Graphs to Predict Customer Needs and Improve Quality
Using Knowledge Graphs to Predict Customer Needs and Improve QualityUsing Knowledge Graphs to Predict Customer Needs and Improve Quality
Using Knowledge Graphs to Predict Customer Needs and Improve Quality
 
Best Practices in Product Management for V1 Web Products
Best Practices in Product Management for V1 Web ProductsBest Practices in Product Management for V1 Web Products
Best Practices in Product Management for V1 Web Products
 
Marketing Analytics to Prove Your ROI
Marketing Analytics to Prove Your ROIMarketing Analytics to Prove Your ROI
Marketing Analytics to Prove Your ROI
 
Business Ecosystem Design
Business Ecosystem DesignBusiness Ecosystem Design
Business Ecosystem Design
 
Value Proposition Design
Value Proposition DesignValue Proposition Design
Value Proposition Design
 

Similar to Predictive Analytics Presentation Citations and References

Uplift Modeling: Optimize for Influence and Persuade by the Numbers
Uplift Modeling: Optimize for Influence and Persuade by the NumbersUplift Modeling: Optimize for Influence and Persuade by the Numbers
Uplift Modeling: Optimize for Influence and Persuade by the NumbersRising Media Ltd.
 
Trust & Predictive Technologies 2016
Trust & Predictive Technologies 2016Trust & Predictive Technologies 2016
Trust & Predictive Technologies 2016Edelman
 
CS309A Final Paper_KM_DD
CS309A Final Paper_KM_DDCS309A Final Paper_KM_DD
CS309A Final Paper_KM_DDDavid Darrough
 
[REPORT PREVIEW] The AI Maturity Playbook: Five Pillars of Enterprise Success
[REPORT PREVIEW] The AI Maturity Playbook: Five Pillars of Enterprise Success[REPORT PREVIEW] The AI Maturity Playbook: Five Pillars of Enterprise Success
[REPORT PREVIEW] The AI Maturity Playbook: Five Pillars of Enterprise SuccessAltimeter, a Prophet Company
 
Big data hype (and reality)
Big data hype (and reality)Big data hype (and reality)
Big data hype (and reality)Abhi Rana
 
Business Analytics A Certain Something
Business Analytics A Certain SomethingBusiness Analytics A Certain Something
Business Analytics A Certain SomethingLogicalis
 
Business analytics a certain something
Business analytics   a certain somethingBusiness analytics   a certain something
Business analytics a certain somethingLogicalis
 
Running title TRENDS IN COMPUTER INFORMATION SYSTEMS1TRENDS I.docx
Running title TRENDS IN COMPUTER INFORMATION SYSTEMS1TRENDS I.docxRunning title TRENDS IN COMPUTER INFORMATION SYSTEMS1TRENDS I.docx
Running title TRENDS IN COMPUTER INFORMATION SYSTEMS1TRENDS I.docxanhlodge
 
P 01 ins_analytics_ai_in_life_case_studies_2017_10_16_v12
P 01 ins_analytics_ai_in_life_case_studies_2017_10_16_v12P 01 ins_analytics_ai_in_life_case_studies_2017_10_16_v12
P 01 ins_analytics_ai_in_life_case_studies_2017_10_16_v12Vishwa Kolla
 
The REAL Impact of Big Data on Privacy
The REAL Impact of Big Data on PrivacyThe REAL Impact of Big Data on Privacy
The REAL Impact of Big Data on PrivacyClaudiu Popa
 
BDW16 London - Amjad Zaim, Cognitro Analytics: How Deep is Your Learning
BDW16 London - Amjad Zaim, Cognitro Analytics: How Deep is Your Learning BDW16 London - Amjad Zaim, Cognitro Analytics: How Deep is Your Learning
BDW16 London - Amjad Zaim, Cognitro Analytics: How Deep is Your Learning Big Data Week
 
eBook - Data Analytics in Healthcare
eBook - Data Analytics in HealthcareeBook - Data Analytics in Healthcare
eBook - Data Analytics in HealthcareNextGen Healthcare
 
91422, 1134 AM Printhttpscontent.uagc.eduprintMcNe.docx
91422, 1134 AM Printhttpscontent.uagc.eduprintMcNe.docx91422, 1134 AM Printhttpscontent.uagc.eduprintMcNe.docx
91422, 1134 AM Printhttpscontent.uagc.eduprintMcNe.docxAbhinav816839
 
Sogeti on big data creating clarity - Report 1-4 on Big Data - Sogeti ViNT
 Sogeti on big data creating clarity - Report 1-4 on Big Data - Sogeti ViNT Sogeti on big data creating clarity - Report 1-4 on Big Data - Sogeti ViNT
Sogeti on big data creating clarity - Report 1-4 on Big Data - Sogeti ViNTRick Bouter
 
Recasting_The_Role_of_Big_Data w S. Bennett
Recasting_The_Role_of_Big_Data w S. BennettRecasting_The_Role_of_Big_Data w S. Bennett
Recasting_The_Role_of_Big_Data w S. BennettBarry R. Hix
 
2 Chapter 1 The Where, Why, and How of Data Collection Busines.docx
2 Chapter 1  The Where, Why, and How of Data Collection Busines.docx2 Chapter 1  The Where, Why, and How of Data Collection Busines.docx
2 Chapter 1 The Where, Why, and How of Data Collection Busines.docxlorainedeserre
 
GSAMPerspectives7-BigData-Edition
GSAMPerspectives7-BigData-EditionGSAMPerspectives7-BigData-Edition
GSAMPerspectives7-BigData-EditionGang Li
 
Analytical thinking 8 - June 2012
Analytical thinking 8 - June 2012Analytical thinking 8 - June 2012
Analytical thinking 8 - June 2012Charlotte Skornik
 

Similar to Predictive Analytics Presentation Citations and References (20)

1305 track 3 siegel
1305 track 3 siegel1305 track 3 siegel
1305 track 3 siegel
 
1115 track2 siegel
1115 track2 siegel1115 track2 siegel
1115 track2 siegel
 
Uplift Modeling: Optimize for Influence and Persuade by the Numbers
Uplift Modeling: Optimize for Influence and Persuade by the NumbersUplift Modeling: Optimize for Influence and Persuade by the Numbers
Uplift Modeling: Optimize for Influence and Persuade by the Numbers
 
Trust & Predictive Technologies 2016
Trust & Predictive Technologies 2016Trust & Predictive Technologies 2016
Trust & Predictive Technologies 2016
 
CS309A Final Paper_KM_DD
CS309A Final Paper_KM_DDCS309A Final Paper_KM_DD
CS309A Final Paper_KM_DD
 
[REPORT PREVIEW] The AI Maturity Playbook: Five Pillars of Enterprise Success
[REPORT PREVIEW] The AI Maturity Playbook: Five Pillars of Enterprise Success[REPORT PREVIEW] The AI Maturity Playbook: Five Pillars of Enterprise Success
[REPORT PREVIEW] The AI Maturity Playbook: Five Pillars of Enterprise Success
 
Big data hype (and reality)
Big data hype (and reality)Big data hype (and reality)
Big data hype (and reality)
 
Business Analytics A Certain Something
Business Analytics A Certain SomethingBusiness Analytics A Certain Something
Business Analytics A Certain Something
 
Business analytics a certain something
Business analytics   a certain somethingBusiness analytics   a certain something
Business analytics a certain something
 
Running title TRENDS IN COMPUTER INFORMATION SYSTEMS1TRENDS I.docx
Running title TRENDS IN COMPUTER INFORMATION SYSTEMS1TRENDS I.docxRunning title TRENDS IN COMPUTER INFORMATION SYSTEMS1TRENDS I.docx
Running title TRENDS IN COMPUTER INFORMATION SYSTEMS1TRENDS I.docx
 
P 01 ins_analytics_ai_in_life_case_studies_2017_10_16_v12
P 01 ins_analytics_ai_in_life_case_studies_2017_10_16_v12P 01 ins_analytics_ai_in_life_case_studies_2017_10_16_v12
P 01 ins_analytics_ai_in_life_case_studies_2017_10_16_v12
 
The REAL Impact of Big Data on Privacy
The REAL Impact of Big Data on PrivacyThe REAL Impact of Big Data on Privacy
The REAL Impact of Big Data on Privacy
 
BDW16 London - Amjad Zaim, Cognitro Analytics: How Deep is Your Learning
BDW16 London - Amjad Zaim, Cognitro Analytics: How Deep is Your Learning BDW16 London - Amjad Zaim, Cognitro Analytics: How Deep is Your Learning
BDW16 London - Amjad Zaim, Cognitro Analytics: How Deep is Your Learning
 
eBook - Data Analytics in Healthcare
eBook - Data Analytics in HealthcareeBook - Data Analytics in Healthcare
eBook - Data Analytics in Healthcare
 
91422, 1134 AM Printhttpscontent.uagc.eduprintMcNe.docx
91422, 1134 AM Printhttpscontent.uagc.eduprintMcNe.docx91422, 1134 AM Printhttpscontent.uagc.eduprintMcNe.docx
91422, 1134 AM Printhttpscontent.uagc.eduprintMcNe.docx
 
Sogeti on big data creating clarity - Report 1-4 on Big Data - Sogeti ViNT
 Sogeti on big data creating clarity - Report 1-4 on Big Data - Sogeti ViNT Sogeti on big data creating clarity - Report 1-4 on Big Data - Sogeti ViNT
Sogeti on big data creating clarity - Report 1-4 on Big Data - Sogeti ViNT
 
Recasting_The_Role_of_Big_Data w S. Bennett
Recasting_The_Role_of_Big_Data w S. BennettRecasting_The_Role_of_Big_Data w S. Bennett
Recasting_The_Role_of_Big_Data w S. Bennett
 
2 Chapter 1 The Where, Why, and How of Data Collection Busines.docx
2 Chapter 1  The Where, Why, and How of Data Collection Busines.docx2 Chapter 1  The Where, Why, and How of Data Collection Busines.docx
2 Chapter 1 The Where, Why, and How of Data Collection Busines.docx
 
GSAMPerspectives7-BigData-Edition
GSAMPerspectives7-BigData-EditionGSAMPerspectives7-BigData-Edition
GSAMPerspectives7-BigData-Edition
 
Analytical thinking 8 - June 2012
Analytical thinking 8 - June 2012Analytical thinking 8 - June 2012
Analytical thinking 8 - June 2012
 

More from Databricks

DW Migration Webinar-March 2022.pptx
DW Migration Webinar-March 2022.pptxDW Migration Webinar-March 2022.pptx
DW Migration Webinar-March 2022.pptxDatabricks
 
Data Lakehouse Symposium | Day 1 | Part 1
Data Lakehouse Symposium | Day 1 | Part 1Data Lakehouse Symposium | Day 1 | Part 1
Data Lakehouse Symposium | Day 1 | Part 1Databricks
 
Data Lakehouse Symposium | Day 1 | Part 2
Data Lakehouse Symposium | Day 1 | Part 2Data Lakehouse Symposium | Day 1 | Part 2
Data Lakehouse Symposium | Day 1 | Part 2Databricks
 
Data Lakehouse Symposium | Day 2
Data Lakehouse Symposium | Day 2Data Lakehouse Symposium | Day 2
Data Lakehouse Symposium | Day 2Databricks
 
Data Lakehouse Symposium | Day 4
Data Lakehouse Symposium | Day 4Data Lakehouse Symposium | Day 4
Data Lakehouse Symposium | Day 4Databricks
 
5 Critical Steps to Clean Your Data Swamp When Migrating Off of Hadoop
5 Critical Steps to Clean Your Data Swamp When Migrating Off of Hadoop5 Critical Steps to Clean Your Data Swamp When Migrating Off of Hadoop
5 Critical Steps to Clean Your Data Swamp When Migrating Off of HadoopDatabricks
 
Democratizing Data Quality Through a Centralized Platform
Democratizing Data Quality Through a Centralized PlatformDemocratizing Data Quality Through a Centralized Platform
Democratizing Data Quality Through a Centralized PlatformDatabricks
 
Learn to Use Databricks for Data Science
Learn to Use Databricks for Data ScienceLearn to Use Databricks for Data Science
Learn to Use Databricks for Data ScienceDatabricks
 
Why APM Is Not the Same As ML Monitoring
Why APM Is Not the Same As ML MonitoringWhy APM Is Not the Same As ML Monitoring
Why APM Is Not the Same As ML MonitoringDatabricks
 
The Function, the Context, and the Data—Enabling ML Ops at Stitch Fix
The Function, the Context, and the Data—Enabling ML Ops at Stitch FixThe Function, the Context, and the Data—Enabling ML Ops at Stitch Fix
The Function, the Context, and the Data—Enabling ML Ops at Stitch FixDatabricks
 
Stage Level Scheduling Improving Big Data and AI Integration
Stage Level Scheduling Improving Big Data and AI IntegrationStage Level Scheduling Improving Big Data and AI Integration
Stage Level Scheduling Improving Big Data and AI IntegrationDatabricks
 
Simplify Data Conversion from Spark to TensorFlow and PyTorch
Simplify Data Conversion from Spark to TensorFlow and PyTorchSimplify Data Conversion from Spark to TensorFlow and PyTorch
Simplify Data Conversion from Spark to TensorFlow and PyTorchDatabricks
 
Scaling your Data Pipelines with Apache Spark on Kubernetes
Scaling your Data Pipelines with Apache Spark on KubernetesScaling your Data Pipelines with Apache Spark on Kubernetes
Scaling your Data Pipelines with Apache Spark on KubernetesDatabricks
 
Scaling and Unifying SciKit Learn and Apache Spark Pipelines
Scaling and Unifying SciKit Learn and Apache Spark PipelinesScaling and Unifying SciKit Learn and Apache Spark Pipelines
Scaling and Unifying SciKit Learn and Apache Spark PipelinesDatabricks
 
Sawtooth Windows for Feature Aggregations
Sawtooth Windows for Feature AggregationsSawtooth Windows for Feature Aggregations
Sawtooth Windows for Feature AggregationsDatabricks
 
Redis + Apache Spark = Swiss Army Knife Meets Kitchen Sink
Redis + Apache Spark = Swiss Army Knife Meets Kitchen SinkRedis + Apache Spark = Swiss Army Knife Meets Kitchen Sink
Redis + Apache Spark = Swiss Army Knife Meets Kitchen SinkDatabricks
 
Re-imagine Data Monitoring with whylogs and Spark
Re-imagine Data Monitoring with whylogs and SparkRe-imagine Data Monitoring with whylogs and Spark
Re-imagine Data Monitoring with whylogs and SparkDatabricks
 
Raven: End-to-end Optimization of ML Prediction Queries
Raven: End-to-end Optimization of ML Prediction QueriesRaven: End-to-end Optimization of ML Prediction Queries
Raven: End-to-end Optimization of ML Prediction QueriesDatabricks
 
Processing Large Datasets for ADAS Applications using Apache Spark
Processing Large Datasets for ADAS Applications using Apache SparkProcessing Large Datasets for ADAS Applications using Apache Spark
Processing Large Datasets for ADAS Applications using Apache SparkDatabricks
 
Massive Data Processing in Adobe Using Delta Lake
Massive Data Processing in Adobe Using Delta LakeMassive Data Processing in Adobe Using Delta Lake
Massive Data Processing in Adobe Using Delta LakeDatabricks
 

More from Databricks (20)

DW Migration Webinar-March 2022.pptx
DW Migration Webinar-March 2022.pptxDW Migration Webinar-March 2022.pptx
DW Migration Webinar-March 2022.pptx
 
Data Lakehouse Symposium | Day 1 | Part 1
Data Lakehouse Symposium | Day 1 | Part 1Data Lakehouse Symposium | Day 1 | Part 1
Data Lakehouse Symposium | Day 1 | Part 1
 
Data Lakehouse Symposium | Day 1 | Part 2
Data Lakehouse Symposium | Day 1 | Part 2Data Lakehouse Symposium | Day 1 | Part 2
Data Lakehouse Symposium | Day 1 | Part 2
 
Data Lakehouse Symposium | Day 2
Data Lakehouse Symposium | Day 2Data Lakehouse Symposium | Day 2
Data Lakehouse Symposium | Day 2
 
Data Lakehouse Symposium | Day 4
Data Lakehouse Symposium | Day 4Data Lakehouse Symposium | Day 4
Data Lakehouse Symposium | Day 4
 
5 Critical Steps to Clean Your Data Swamp When Migrating Off of Hadoop
5 Critical Steps to Clean Your Data Swamp When Migrating Off of Hadoop5 Critical Steps to Clean Your Data Swamp When Migrating Off of Hadoop
5 Critical Steps to Clean Your Data Swamp When Migrating Off of Hadoop
 
Democratizing Data Quality Through a Centralized Platform
Democratizing Data Quality Through a Centralized PlatformDemocratizing Data Quality Through a Centralized Platform
Democratizing Data Quality Through a Centralized Platform
 
Learn to Use Databricks for Data Science
Learn to Use Databricks for Data ScienceLearn to Use Databricks for Data Science
Learn to Use Databricks for Data Science
 
Why APM Is Not the Same As ML Monitoring
Why APM Is Not the Same As ML MonitoringWhy APM Is Not the Same As ML Monitoring
Why APM Is Not the Same As ML Monitoring
 
The Function, the Context, and the Data—Enabling ML Ops at Stitch Fix
The Function, the Context, and the Data—Enabling ML Ops at Stitch FixThe Function, the Context, and the Data—Enabling ML Ops at Stitch Fix
The Function, the Context, and the Data—Enabling ML Ops at Stitch Fix
 
Stage Level Scheduling Improving Big Data and AI Integration
Stage Level Scheduling Improving Big Data and AI IntegrationStage Level Scheduling Improving Big Data and AI Integration
Stage Level Scheduling Improving Big Data and AI Integration
 
Simplify Data Conversion from Spark to TensorFlow and PyTorch
Simplify Data Conversion from Spark to TensorFlow and PyTorchSimplify Data Conversion from Spark to TensorFlow and PyTorch
Simplify Data Conversion from Spark to TensorFlow and PyTorch
 
Scaling your Data Pipelines with Apache Spark on Kubernetes
Scaling your Data Pipelines with Apache Spark on KubernetesScaling your Data Pipelines with Apache Spark on Kubernetes
Scaling your Data Pipelines with Apache Spark on Kubernetes
 
Scaling and Unifying SciKit Learn and Apache Spark Pipelines
Scaling and Unifying SciKit Learn and Apache Spark PipelinesScaling and Unifying SciKit Learn and Apache Spark Pipelines
Scaling and Unifying SciKit Learn and Apache Spark Pipelines
 
Sawtooth Windows for Feature Aggregations
Sawtooth Windows for Feature AggregationsSawtooth Windows for Feature Aggregations
Sawtooth Windows for Feature Aggregations
 
Redis + Apache Spark = Swiss Army Knife Meets Kitchen Sink
Redis + Apache Spark = Swiss Army Knife Meets Kitchen SinkRedis + Apache Spark = Swiss Army Knife Meets Kitchen Sink
Redis + Apache Spark = Swiss Army Knife Meets Kitchen Sink
 
Re-imagine Data Monitoring with whylogs and Spark
Re-imagine Data Monitoring with whylogs and SparkRe-imagine Data Monitoring with whylogs and Spark
Re-imagine Data Monitoring with whylogs and Spark
 
Raven: End-to-end Optimization of ML Prediction Queries
Raven: End-to-end Optimization of ML Prediction QueriesRaven: End-to-end Optimization of ML Prediction Queries
Raven: End-to-end Optimization of ML Prediction Queries
 
Processing Large Datasets for ADAS Applications using Apache Spark
Processing Large Datasets for ADAS Applications using Apache SparkProcessing Large Datasets for ADAS Applications using Apache Spark
Processing Large Datasets for ADAS Applications using Apache Spark
 
Massive Data Processing in Adobe Using Delta Lake
Massive Data Processing in Adobe Using Delta LakeMassive Data Processing in Adobe Using Delta Lake
Massive Data Processing in Adobe Using Delta Lake
 

Recently uploaded

Smarteg dropshipping via API with DroFx.pptx
Smarteg dropshipping via API with DroFx.pptxSmarteg dropshipping via API with DroFx.pptx
Smarteg dropshipping via API with DroFx.pptxolyaivanovalion
 
Week-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interactionWeek-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interactionfulawalesam
 
Invezz.com - Grow your wealth with trading signals
Invezz.com - Grow your wealth with trading signalsInvezz.com - Grow your wealth with trading signals
Invezz.com - Grow your wealth with trading signalsInvezz1
 
VidaXL dropshipping via API with DroFx.pptx
VidaXL dropshipping via API with DroFx.pptxVidaXL dropshipping via API with DroFx.pptx
VidaXL dropshipping via API with DroFx.pptxolyaivanovalion
 
Industrialised data - the key to AI success.pdf
Industrialised data - the key to AI success.pdfIndustrialised data - the key to AI success.pdf
Industrialised data - the key to AI success.pdfLars Albertsson
 
BabyOno dropshipping via API with DroFx.pptx
BabyOno dropshipping via API with DroFx.pptxBabyOno dropshipping via API with DroFx.pptx
BabyOno dropshipping via API with DroFx.pptxolyaivanovalion
 
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service Bhilai
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service BhilaiLow Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service Bhilai
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service BhilaiSuhani Kapoor
 
CebaBaby dropshipping via API with DroFX.pptx
CebaBaby dropshipping via API with DroFX.pptxCebaBaby dropshipping via API with DroFX.pptx
CebaBaby dropshipping via API with DroFX.pptxolyaivanovalion
 
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip CallDelhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Callshivangimorya083
 
04242024_CCC TUG_Joins and Relationships
04242024_CCC TUG_Joins and Relationships04242024_CCC TUG_Joins and Relationships
04242024_CCC TUG_Joins and Relationshipsccctableauusergroup
 
VIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service Amravati
VIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service AmravatiVIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service Amravati
VIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service AmravatiSuhani Kapoor
 
Ukraine War presentation: KNOW THE BASICS
Ukraine War presentation: KNOW THE BASICSUkraine War presentation: KNOW THE BASICS
Ukraine War presentation: KNOW THE BASICSAishani27
 
Log Analysis using OSSEC sasoasasasas.pptx
Log Analysis using OSSEC sasoasasasas.pptxLog Analysis using OSSEC sasoasasasas.pptx
Log Analysis using OSSEC sasoasasasas.pptxJohnnyPlasten
 
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptxEMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptxthyngster
 
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130Suhani Kapoor
 
Unveiling Insights: The Role of a Data Analyst
Unveiling Insights: The Role of a Data AnalystUnveiling Insights: The Role of a Data Analyst
Unveiling Insights: The Role of a Data AnalystSamantha Rae Coolbeth
 
Generative AI on Enterprise Cloud with NiFi and Milvus
Generative AI on Enterprise Cloud with NiFi and MilvusGenerative AI on Enterprise Cloud with NiFi and Milvus
Generative AI on Enterprise Cloud with NiFi and MilvusTimothy Spann
 
Brighton SEO | April 2024 | Data Storytelling
Brighton SEO | April 2024 | Data StorytellingBrighton SEO | April 2024 | Data Storytelling
Brighton SEO | April 2024 | Data StorytellingNeil Barnes
 
Schema on read is obsolete. Welcome metaprogramming..pdf
Schema on read is obsolete. Welcome metaprogramming..pdfSchema on read is obsolete. Welcome metaprogramming..pdf
Schema on read is obsolete. Welcome metaprogramming..pdfLars Albertsson
 
Dubai Call Girls Wifey O52&786472 Call Girls Dubai
Dubai Call Girls Wifey O52&786472 Call Girls DubaiDubai Call Girls Wifey O52&786472 Call Girls Dubai
Dubai Call Girls Wifey O52&786472 Call Girls Dubaihf8803863
 

Recently uploaded (20)

Smarteg dropshipping via API with DroFx.pptx
Smarteg dropshipping via API with DroFx.pptxSmarteg dropshipping via API with DroFx.pptx
Smarteg dropshipping via API with DroFx.pptx
 
Week-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interactionWeek-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interaction
 
Invezz.com - Grow your wealth with trading signals
Invezz.com - Grow your wealth with trading signalsInvezz.com - Grow your wealth with trading signals
Invezz.com - Grow your wealth with trading signals
 
VidaXL dropshipping via API with DroFx.pptx
VidaXL dropshipping via API with DroFx.pptxVidaXL dropshipping via API with DroFx.pptx
VidaXL dropshipping via API with DroFx.pptx
 
Industrialised data - the key to AI success.pdf
Industrialised data - the key to AI success.pdfIndustrialised data - the key to AI success.pdf
Industrialised data - the key to AI success.pdf
 
BabyOno dropshipping via API with DroFx.pptx
BabyOno dropshipping via API with DroFx.pptxBabyOno dropshipping via API with DroFx.pptx
BabyOno dropshipping via API with DroFx.pptx
 
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service Bhilai
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service BhilaiLow Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service Bhilai
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service Bhilai
 
CebaBaby dropshipping via API with DroFX.pptx
CebaBaby dropshipping via API with DroFX.pptxCebaBaby dropshipping via API with DroFX.pptx
CebaBaby dropshipping via API with DroFX.pptx
 
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip CallDelhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
 
04242024_CCC TUG_Joins and Relationships
04242024_CCC TUG_Joins and Relationships04242024_CCC TUG_Joins and Relationships
04242024_CCC TUG_Joins and Relationships
 
VIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service Amravati
VIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service AmravatiVIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service Amravati
VIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service Amravati
 
Ukraine War presentation: KNOW THE BASICS
Ukraine War presentation: KNOW THE BASICSUkraine War presentation: KNOW THE BASICS
Ukraine War presentation: KNOW THE BASICS
 
Log Analysis using OSSEC sasoasasasas.pptx
Log Analysis using OSSEC sasoasasasas.pptxLog Analysis using OSSEC sasoasasasas.pptx
Log Analysis using OSSEC sasoasasasas.pptx
 
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptxEMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptx
 
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130
 
Unveiling Insights: The Role of a Data Analyst
Unveiling Insights: The Role of a Data AnalystUnveiling Insights: The Role of a Data Analyst
Unveiling Insights: The Role of a Data Analyst
 
Generative AI on Enterprise Cloud with NiFi and Milvus
Generative AI on Enterprise Cloud with NiFi and MilvusGenerative AI on Enterprise Cloud with NiFi and Milvus
Generative AI on Enterprise Cloud with NiFi and Milvus
 
Brighton SEO | April 2024 | Data Storytelling
Brighton SEO | April 2024 | Data StorytellingBrighton SEO | April 2024 | Data Storytelling
Brighton SEO | April 2024 | Data Storytelling
 
Schema on read is obsolete. Welcome metaprogramming..pdf
Schema on read is obsolete. Welcome metaprogramming..pdfSchema on read is obsolete. Welcome metaprogramming..pdf
Schema on read is obsolete. Welcome metaprogramming..pdf
 
Dubai Call Girls Wifey O52&786472 Call Girls Dubai
Dubai Call Girls Wifey O52&786472 Call Girls DubaiDubai Call Girls Wifey O52&786472 Call Girls Dubai
Dubai Call Girls Wifey O52&786472 Call Girls Dubai
 

Predictive Analytics Presentation Citations and References

  • 1. For more information and citations regarding the examples in this presentation, see the book "Predictive Analytics: The Power to Predict Who Will Click, Buy, Lie, or Die" by Eric Siegel (http://www.thepredictionbook.com). Most of the various examples shown are covered in the book - so, for greater detail about each case study named, see its reference/citation - search by organization name within the book's Notes PDF, available online at http://www.PredictiveNotes.com. 0
  • 2. With 10 events a year globally, Predictive Analytics World delivers vendor- neutral sessions across verticals such as banking, financial services, e-commerce, entertainment, government, healthcare, manufacturing, high technology, insurance, non-profits, publishing, and retail. Predictive Analytics World industry events include PAW Business, PAW Financial, PAW Government, PAW Healthcare, PAW Workforce, and PAW Manufacturing. Why bring together such a wide range of endeavors? No matter how you use predictive analytics, the story is the same: Predictively scoring customers, employees, students, voters, patients, equipment, and other organizational elements optimizes performance. Predictive analytics initiatives across industries leverage the same core predictive modeling technology, share similar project overhead and data requirements, and face common process challenges and analytical hurdles. Info: http://www.predictiveanalyticsworld.com
  • 3. Attendees may receive a copy of the audiobook version at no charge by simply emailing me directly to request: eric@predictionimpact.com 2
  • 4. Predictive analytics educational/infotainment geek rap video: http://www.PredictThis.org 3
  • 5. 4
  • 6. 5
  • 7. Canadian Tire examples, from "What Does Your Credit-Card Company Know About You?" New York Times, May 12, 2009. http://www.nytimes.com/ 2009/05/17/magazine/17credit-t.html 6
  • 8. Canadian Tire examples, from "What Does Your Credit-Card Company Know About You?" New York Times, May 12, 2009. http://www.nytimes.com/ 2009/05/17/magazine/17credit-t.html 7
  • 9. People who “like” curly fries on Facebook are “more intelligent.” Reference for most examples in this presentation are in the Notes PDF for Eric Siegel's book, "Predictive Analytics." For each example's reference/citation, search by organization name within the book's Notes PDF, available at www.PredictiveNotes.com 8
  • 10. Neighborhoods of San Francisco that exhibit higher rates of certain crimes also exhibit higher demand for Uber rides. 9
  • 11. 10
  • 12.
  • 13. 12
  • 14. 13 A crummy predictive model delivers big value. It’s like a skunk with bling. Simple arithmetic shows the bottom line profit of direct mail, both in general and then improved by predictively targeting (and only contacting 25% of the list). The less simple part is how the predictive scores are generated for each individual in order to determine exactly who belongs in that 25%. For details on how this works, see Chapter 1 of the book "Predictive Analytics: The Power to Predict Who Will Click, Buy, Lie, or Die" (http://www.thepredictionbook.com).
  • 15. Put another way, predicting better than guessing is often sufficient to generate great value by rendering operations more efficient and effective. For details on how this works, see the Introduction and Chapter 1 of the book "Predictive Analytics: The Power to Predict Who Will Click, Buy, Lie, or Die" (http:// www.thepredictionbook.com). 14
  • 16. 15
  • 17. This singular, universally applicable force improves every large-scale thing we do —how we build things, sell things, and prevent bad things from happening— because every function benefits from prediction. As its deployment takes hold across industries, we have moved beyond engineering the infrastructure that manages big data to implementing the science that taps its contents for more intelligent Has emerged as a commonplace business practice necessary to sustain competitive advantage. $6.5 billion within a couple years 84% of marketing leaders intend to increase the role of predictive analytics in marketing over the next 12 months (Forbes) U.S. shortage of analytics experts at 140,000 in the near-term LinkedIn’s first/second “Hottest Skills That Got People Hired” is “statistical analysis and data mining” 16
  • 18. 17
  • 19. 18 A crummy predictive model delivers big value. It’s like a skunk with bling.
  • 20. 19
  • 21. Does contacting the customer make them more likely to respond? MEDICAL: Will the patient survive if treated? "My headache went away!“ Proof of causality by example. Driving medical decisions with personalized medicine: selecting treatment, e.g., treating heart failure with betablockers Personalized medicine. Naturally, healthcare is where the term treatment originates. While one medical treatment may deliver better results on average than another, personalized medicine aims to decide which treatment is best suited for each patient, since a treatment that helps one patient could hurt another. For example, to drive beta-blocker treatment decisions for heart failure, researchers "use two independent data sets to construct a systematic, subject-specific treatment selection procedure." (Claggett et al 2011) Certain HIV treatment is shown more effective for younger children. (McKinney et al 1998) Cancer 20
  • 22. a.k.a., net lift modeling and persuasion modeling 21
  • 23. 22
  • 24. US BANK EXAMPLE Business case: Direct mail for a home-equity line of credit Approach: Target campaign with an uplift model … to existing customers (i.e., a cross-sell marketing campaign) Resulting improvements over prior conventional analytical approach: Campaign ROI increased over 5 times previous campaigns (75% to 400%) Cut campaign costs by 40% Increase incremental cross-sell revenue by over 300% Decrease mailings to customers who would purchase whether contacted or not, and customers who would purchase only if not contacted. Sources: Radcliffe & Surry (2011), Tsai (2010), Patrick Surry (Pitney Bowes Business Insight), Michael Grundhoefer (US Bank) 23
  • 25.
  • 26. 25
  • 27.
  • 28. Two articles I wrote provide more details on the Obama campaign's use of predictive analytics (one a reprint of the pertinent section in my book): http://www.thefiscaltimes.com/Articles/2013/01/21/The-Real-Story- Behind-Obamas-Election-Victory http://bigthink.com/experts-corner/team-obama-mastered-the-science-of- mass-persuasion-and-won Then check out this video of a Predictive Analytics World presentation by one of the hands-on leads on this Obama project, which gets more technical: http://www.predictiveanalyticsworld.com/patimes/video-pinpointing- persuadables-convincing-right-customers-right-voters/ 27
  • 29. Telenor: world’s 7th largest mobile operator - 159 million subscribers Improvements are relative to their existing best-practice retention models. Case study presented at Predictive Analytics World, February 2009, San Francisco. Case study and graph courtesy of Pitney Bowes Business Insight.
  • 30. 29
  • 31. Marcus Wohlsen, “San Francisco startup makes data science a sport.” The Seattle Times, April 14, 2012. 30
  • 32. 31
  • 33. 32
  • 34. 33
  • 35. 34
  • 36. 35
  • 37. 36
  • 38. 37
  • 39. 38
  • 40. 39
  • 41. 40
  • 42. 41
  • 43. 42
  • 44. 43
  • 45. 44
  • 46. 45
  • 47. 46
  • 48. 47
  • 49. “Last Week Tonight” with John Oliver, May 8, 2016: https://youtu.be/0Rnq1NpHdmw 48
  • 50. 49
  • 51. 50
  • 52. 51
  • 53. After 150 Years, the American Statistical Association Says No to p-values: http://www.kdnuggets.com/2016/03/asa-says-no-p-values.html "Even if something is published in the flagship journal of the leading association of research psychologists, there's no reason to believe it. The system of scientific publication is set up to encourage publication of spurious findings." - Andrew Gelman, professor of statistics and political science at Columbia University http://www.slate.com/articles/health_and_science/science/2013/07/ statistics_and_psychology_multiple_comparisons_give_spurious_results.2.html 52
  • 54. Free white paper: www.predictiveanalyticsworld.com/signup-uplift-whitepaper.php More updated version thereof is Chapter 7 of “Predictive Analytics” (www.thepredictionbook.com) Or see the (much more) technical papers that chapter cites - see under Chapter 7 of the book's Notes PDF, available online at http://www.PredictiveNotes.com. See also: http://www.predictiveanalyticsworld.com/patimes/personalization-is-back-how-to-drive-influence-by-crunching-numbers/ 53
  • 55. For more on vast search, see Chapter 3 of Predictive Analytics by Eric Siegel (www.thepredictionbook.com). For further citations on this topic, also see the final portion that chapters Notes (citations), available as a PDF online at www.PredictiveNotes.com. Also on a broadly-accessible level, see chapter seven, "Dead Fish Don't Read Minds," of "How Not to Be Wrong: The Power of Mathematical Thinking," by Jordan Ellenberg. Video: www.predictiveanalyticsworld.com/patimes/video-the-power-and-peril-of-predictive-analytics/ See also: http://www.predictiveanalyticsworld.com/patimes/breakthrough-avert-analytics-treacherous-pitfall/3366/ See also Elder Research's short, friendly video illustrating target shuffling: http://www.elderresearch.com/target-shuffling-video For a more technical treatment, in addition to Elder and Bullard's paper cited on the slide above, see "Handbook of Statistical Analysis and Data Mining Applications" by Nisbet et al - second edition only - Chapter 20, "SIGNIFICANCE vs LUCK in the age of MINING.” Coincidentally, I used "BS” in earlier versions of this talk before knowledge of similar vocabulary in that new edition of the “Handbook” and elsewhere J. Here’s a quote from that chapter: Replication is supposed to be a hallmark of scientific integrity. The concern over this lapse of ‘scientific accuracy/integrity’ has been growing for some time, especially over the past 3 years, such that the University of Washington (Seattle) is offering a new course for Spring 2017 titled "Calling Bullshit in the Age of Big Data" Among the Learning / Behavioral Objectives for this course is the following: ‘After taking this course, you will be able to provide a statistician or fellow scientist with a technical explanation of why a claim or conclusion is ‘in error’. Below are three links that go to this new course, including a syllabus: • http://callingbullshit.org/syllabus.html#Big; • http://www.recode.net/2017/2/19/14660236/big-data-bullshit-college-course-university- washington; • https://www.statnews.com/2017/02/17/science-fights-alternative-facts/ One more link: http://www.slate.com/articles/health_and_science/science/2016/01/amy_cuddy_s_power_pose_research_is_the_latest_example_of_scientific_overreach.html 54
  • 56. 55
  • 57.
  • 58. 57
  • 59. 58