SlideShare uma empresa Scribd logo
1 de 45
Visual Analytics Best
     Practices

                     Sasha Pasulka
  Senior Manager, Product Marketing
     spasulka@tableausoftware.com
                          #tableau8
What is Visual
Analytics?
“Visual analytics is the representation
and presentation of data that exploits
our visual perception abilities in order
to amplify cognition.”
                         - Andy Kirk, author of “Data
                         Visualization: a successful design
                         process”
Let’s Look at Some Data
            I                    II                  III                  IV
       x        y           x        y          x        y           x        y
           10        8.04       10       9.14       10        7.46       8        6.58
           8         6.95       8        8.14       8         6.77       8        5.76
           13        7.58       13       8.74       13       12.74       8        7.71
           9         8.81       9        8.77       9         7.11       8        8.84
           11        8.33       11       9.26       11        7.81       8        8.47
           14        9.96       14        8.1       14        8.84       8        7.04
           6         7.24       6        6.13       6         6.08       8        5.25
           4         4.26       4         3.1       4         5.39       19       12.5
           12       10.84       12       9.13       12        8.15       8        5.56
           7         4.82       7        7.26       7         6.42       8        7.91
           5         5.68       5        4.74       5         5.73       8        6.89
Let’s Look at Some Data
            I                    II                    III                       IV
       x        y           x        y          x         y           x              y
           10        8.04       10       9.14        10        7.46              8             6.58
           8         6.95       8        8.14         8        6.77              8             5.76
           13        7.58       13       8.74        13       12.74              8             7.71
           9         8.81       9        8.77         9        7.11              8             8.84
           11        8.33       11       9.26        11        7.81              8             8.47
           14        9.96       14        8.1        14        8.84              8             7.04
           6         7.24       6        6.13         6        6.08              8             5.25
           4         4.26       4         3.1         4        5.39          19                12.5
           12       10.84       12       9.13        12        8.15              8             5.56
           7         4.82       7        7.26         7        6.42              8             7.91
           5         5.68       5        4.74         5        5.73              8             6.89


                                                              Property                                    Value
                                                    Mean of x in each case               9 (exact)

                                                    Variance of x in each case 11 (exact)

                                                    Mean of y in each case               7.50 (to 2 decimal places)

                                                    Variance of y in each case           4.122 or 4.127 (to 3 decimal places)

                                                    Correlation between x and
                                                                              0.816 (to 3 decimal places)
                                                    y in each case

                                                    Linear regression line in            y = 3.00 + 0.500x (to 2 and 3
                                                    each case                            decimal places, respectively)
Let’s Look at Some Data … Visually




                          “Anscombe’s Quartet”
                          Source: Wikipedia
Agenda
1. Human Perception and Cognition
2. Visual Analysis Cycle
3. Visualization Best Practices
Human Perception &
Cognition
Humans Are Slow at Mental Math
               34
             X 72
       ------------------
We’re Faster When We Use the World
               34
             X 72
       ------------------

             68
            1
          23 80
       ------------------

            2448
Much Faster
               34
             X 72
       ------------------

             68
            1
          23 80
       ------------------

            2448
We’re Faster When We Can “See” Data
We’re Faster When We Can “See” Data
We’re Faster When We Can “See” Data
Preattentive Visual Attributes
Visual Interruptions Make People Slow
Visual Interruptions Make People Slow
The Cycle of Visual
Analysis
The Cycle of Visual Analysis
Supporting the Cycle

• Incremental: allow people to easily and incrementally change the data
  and how they are looking at it

• Expressive: there is no single view for all tasks and all data

• Unified: leverage the revolutionary changes in database technology

• Direct: make the tool disappear so the user can directly interact with
  the data


                 click                        click
Visualization Best
Practices
Best Practices Overview
1.   Representing data for humans
2.   Color
3.   Maps
4.   Creating dashboards
Types of Data
•   Qualitative (nominal / categorical)
    •   Arizona, New York, Texas
    •   Sarah, John, Maria
    •   Coors, Bud Light, Stella Artois

•   Qualitative (ordinal)
    •   Gold, silver, bronze
    •   Excellent health, good health, poor health
    •   Love it, like it, hate it

•   Quantitative
    •   Weight (10 lbs, 20 lbs, 5000 lbs)
    •   Cost ($50, $100, $0.05)
    •   Discount (5%, 10%, 12.8%)
How Do Humans Like Their Data?
How Do Humans Like Their Data?
                            More
             Position     important


              Color

               Size

              Shape
                            Less
                          important
How Do Humans Like Their Data?

• Time: on an x-axis
• Location: on a map
• Comparing values: bar
  chart
• Exploring relationships:
  scatter plot
• Relative proportions:
  treemap
How Do Humans Like Their Data?
Orient data so people can read it
easily
Good



                          Better
Color Me Impressed
Color perception is relative, not
absolute
Color Me Impressed
Provide a consistent background
Color Me Impressed
Humans can only distinguish ~8 colors

                                  This is not
                                  helpful.
Color Me Impressed
Humans can only distinguish ~8 colors

                                  This is helpful.
Color Me Impressed
For quantitative data, color intensity
and diverging color palettes work well
Mapping to Insight
Use maps when location is relevant
Mapping to Insight
Use filled maps (“cloropleths”) for defined
areas and only ONE measure
Mapping to Insight
Filled maps won’t work for multiple
measures
Mapping to Insight
Don’t use maps just because you can
Mapping to Insight
Maps don’t have to be geographic
Mapping to Insight
Maps don’t have to be geographic
Dashboards
Dashboards bring together multiple views
Dashboards
Dashboards should pass the 5-second test
Dashboarding for the 5-second Test
•    Most important view
     goes on top or top-
     left
•    Legends go near
     their views
•    Avoid using multiple
     color schemes on a
     single dashboard
•    Use 5 views or fewer
     in dashboards
•    Provide interactivity
Dashboarding for the 5-second Test
Use your words!
• Titles
• Axes
• Key facts and
  figures
• Units
• Remove extra digits
  in numbers
• Great tooltips
Visual Analytics Best Practices

Mais conteúdo relacionado

Mais procurados

Mais procurados (20)

3 data visualization
3 data visualization3 data visualization
3 data visualization
 
Data visualization
Data visualizationData visualization
Data visualization
 
Data visualization in a nutshell
Data visualization in a nutshellData visualization in a nutshell
Data visualization in a nutshell
 
Data Visualization: Impact, Intrigue, Value Add for APLIC 2014
Data Visualization: Impact, Intrigue, Value Add for APLIC 2014Data Visualization: Impact, Intrigue, Value Add for APLIC 2014
Data Visualization: Impact, Intrigue, Value Add for APLIC 2014
 
Visualisation & Storytelling in Data Science & Analytics
Visualisation & Storytelling in Data Science & AnalyticsVisualisation & Storytelling in Data Science & Analytics
Visualisation & Storytelling in Data Science & Analytics
 
Power BI - Power Query
Power BI - Power QueryPower BI - Power Query
Power BI - Power Query
 
Data visualization in a Nutshell
Data visualization in a NutshellData visualization in a Nutshell
Data visualization in a Nutshell
 
"Introduction to Data Visualization" Workshop for General Assembly by Hunter ...
"Introduction to Data Visualization" Workshop for General Assembly by Hunter ..."Introduction to Data Visualization" Workshop for General Assembly by Hunter ...
"Introduction to Data Visualization" Workshop for General Assembly by Hunter ...
 
Data visualization
Data visualizationData visualization
Data visualization
 
Tableau Software - Business Analytics and Data Visualization
Tableau Software - Business Analytics and Data VisualizationTableau Software - Business Analytics and Data Visualization
Tableau Software - Business Analytics and Data Visualization
 
Data Visualization
Data VisualizationData Visualization
Data Visualization
 
Data Analaytics.04. Data visualization
Data Analaytics.04. Data visualizationData Analaytics.04. Data visualization
Data Analaytics.04. Data visualization
 
data mining
data mining data mining
data mining
 
Power BI Data Modeling.pdf
Power BI Data Modeling.pdfPower BI Data Modeling.pdf
Power BI Data Modeling.pdf
 
Tableau Visual Guidebook
Tableau Visual GuidebookTableau Visual Guidebook
Tableau Visual Guidebook
 
DATA VISUALIZATION
DATA VISUALIZATIONDATA VISUALIZATION
DATA VISUALIZATION
 
Data Visualization Tools
Data Visualization Tools Data Visualization Tools
Data Visualization Tools
 
Storytelling with Data
Storytelling with Data Storytelling with Data
Storytelling with Data
 
Power BI Overview
Power BI Overview Power BI Overview
Power BI Overview
 
Power bi
Power biPower bi
Power bi
 

Semelhante a Visual Analytics Best Practices

Eric E Monson, Text->Data 08 Nov 2012
Eric E Monson, Text->Data 08 Nov 2012Eric E Monson, Text->Data 08 Nov 2012
Eric E Monson, Text->Data 08 Nov 2012
emonson
 
Principles and Practices of Data Visualization
Principles and Practices of Data VisualizationPrinciples and Practices of Data Visualization
Principles and Practices of Data Visualization
KianJazayeri1
 
Practical Data Visualization
Practical Data VisualizationPractical Data Visualization
Practical Data Visualization
Angela Zoss
 
Information Visualization for Health Care
Information Visualization for Health CareInformation Visualization for Health Care
Information Visualization for Health Care
Krist Wongsuphasawat
 

Semelhante a Visual Analytics Best Practices (20)

Information Visualization for Medical Informatics
Information Visualization for Medical Informatics Information Visualization for Medical Informatics
Information Visualization for Medical Informatics
 
Info vis 4-2012-part1
Info vis 4-2012-part1Info vis 4-2012-part1
Info vis 4-2012-part1
 
Info vis 12-2012-v17-shneiderman
Info vis 12-2012-v17-shneidermanInfo vis 12-2012-v17-shneiderman
Info vis 12-2012-v17-shneiderman
 
Google nyc-6-3-2011
Google nyc-6-3-2011Google nyc-6-3-2011
Google nyc-6-3-2011
 
Information Visualization: See Patterns, Gain Insights & Make Decisions
Information Visualization: See Patterns, Gain Insights & Make DecisionsInformation Visualization: See Patterns, Gain Insights & Make Decisions
Information Visualization: See Patterns, Gain Insights & Make Decisions
 
Information Visualization for Knowledge Discovery
Information Visualization for Knowledge DiscoveryInformation Visualization for Knowledge Discovery
Information Visualization for Knowledge Discovery
 
Info vis 4-22-2013-dc-vis-meetup-shneiderman
Info vis 4-22-2013-dc-vis-meetup-shneidermanInfo vis 4-22-2013-dc-vis-meetup-shneiderman
Info vis 4-22-2013-dc-vis-meetup-shneiderman
 
Powerhouse Factories, Data Analysis
Powerhouse Factories, Data AnalysisPowerhouse Factories, Data Analysis
Powerhouse Factories, Data Analysis
 
Humanizing Data Analysis
Humanizing Data AnalysisHumanizing Data Analysis
Humanizing Data Analysis
 
Eric E Monson, Text->Data 08 Nov 2012
Eric E Monson, Text->Data 08 Nov 2012Eric E Monson, Text->Data 08 Nov 2012
Eric E Monson, Text->Data 08 Nov 2012
 
Tableau tech activist conference
Tableau   tech activist conferenceTableau   tech activist conference
Tableau tech activist conference
 
Sampling: An an often overlooked art in exploratory data analysis
Sampling: An an often overlooked art in exploratory data analysisSampling: An an often overlooked art in exploratory data analysis
Sampling: An an often overlooked art in exploratory data analysis
 
00 intro
00 intro00 intro
00 intro
 
Graphical Data Exploration
Graphical Data ExplorationGraphical Data Exploration
Graphical Data Exploration
 
Principles and Practices of Data Visualization
Principles and Practices of Data VisualizationPrinciples and Practices of Data Visualization
Principles and Practices of Data Visualization
 
Database performance made easy
Database performance made easyDatabase performance made easy
Database performance made easy
 
Practical Data Visualization
Practical Data VisualizationPractical Data Visualization
Practical Data Visualization
 
Information Visualization for Health Care
Information Visualization for Health CareInformation Visualization for Health Care
Information Visualization for Health Care
 
Eda sri
Eda sriEda sri
Eda sri
 
Data Visualisation for Data journalism at Melbourne University
Data Visualisation for Data journalism at Melbourne UniversityData Visualisation for Data journalism at Melbourne University
Data Visualisation for Data journalism at Melbourne University
 

Mais de Tableau Software

IT Summit - Modernizing Enterprise Analytics: the IT Story
IT Summit - Modernizing Enterprise Analytics: the IT StoryIT Summit - Modernizing Enterprise Analytics: the IT Story
IT Summit - Modernizing Enterprise Analytics: the IT Story
Tableau Software
 

Mais de Tableau Software (20)

Enabling Governed Data Access with Tableau Data Server
Enabling Governed Data Access with Tableau Data Server Enabling Governed Data Access with Tableau Data Server
Enabling Governed Data Access with Tableau Data Server
 
Seven Trends in Government Business Intelligence
Seven Trends in Government Business IntelligenceSeven Trends in Government Business Intelligence
Seven Trends in Government Business Intelligence
 
Data analytics for university students
Data analytics for university studentsData analytics for university students
Data analytics for university students
 
Get Data Smart
Get Data Smart Get Data Smart
Get Data Smart
 
Four ways data is improving healthcare operations
Four ways data is improving healthcare operationsFour ways data is improving healthcare operations
Four ways data is improving healthcare operations
 
Six Trends in Retail Analytics
Six Trends in Retail Analytics Six Trends in Retail Analytics
Six Trends in Retail Analytics
 
Top 10 Cloud Trends for 2017
Top 10 Cloud Trends for 2017Top 10 Cloud Trends for 2017
Top 10 Cloud Trends for 2017
 
AskAndy Anything 2016
AskAndy Anything 2016AskAndy Anything 2016
AskAndy Anything 2016
 
5 Reasons to Move Your BI to the Cloud
5 Reasons to Move Your BI to the Cloud5 Reasons to Move Your BI to the Cloud
5 Reasons to Move Your BI to the Cloud
 
The Top 8 Trends for Big Data in 2016
The Top 8 Trends for Big Data in 2016The Top 8 Trends for Big Data in 2016
The Top 8 Trends for Big Data in 2016
 
Big Risks Requires Big Data Thinking
Big Risks Requires Big Data ThinkingBig Risks Requires Big Data Thinking
Big Risks Requires Big Data Thinking
 
IT Summit - Modernizing Enterprise Analytics: the IT Story
IT Summit - Modernizing Enterprise Analytics: the IT StoryIT Summit - Modernizing Enterprise Analytics: the IT Story
IT Summit - Modernizing Enterprise Analytics: the IT Story
 
Modern Manufacturing: 4 Ways Data is Transforming the Industry
Modern Manufacturing: 4 Ways Data is Transforming the IndustryModern Manufacturing: 4 Ways Data is Transforming the Industry
Modern Manufacturing: 4 Ways Data is Transforming the Industry
 
7 Trends in the Cloud
7 Trends in the Cloud7 Trends in the Cloud
7 Trends in the Cloud
 
An Analytics Culture Drives Performance in Asia Pacific Organizations
An Analytics Culture Drives Performance in Asia Pacific Organizations An Analytics Culture Drives Performance in Asia Pacific Organizations
An Analytics Culture Drives Performance in Asia Pacific Organizations
 
How a Data-Driven Culture Improves Organizational Performance
How a Data-Driven Culture Improves Organizational Performance How a Data-Driven Culture Improves Organizational Performance
How a Data-Driven Culture Improves Organizational Performance
 
7 Ways Sports Teams Win With Sports Analytics
7 Ways Sports Teams Win With Sports Analytics7 Ways Sports Teams Win With Sports Analytics
7 Ways Sports Teams Win With Sports Analytics
 
7 trends-for-big-data
7 trends-for-big-data7 trends-for-big-data
7 trends-for-big-data
 
2015 商业智能 10 大趋势
2015 商业智能 10 大趋势2015 商业智能 10 大趋势
2015 商业智能 10 大趋势
 
As 10 principais tendências em business intelligence para 2015
As 10 principais tendências em business intelligence para 2015As 10 principais tendências em business intelligence para 2015
As 10 principais tendências em business intelligence para 2015
 

Último

Histor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slideHistor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slide
vu2urc
 
IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI Solutions
Enterprise Knowledge
 
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptxEIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
Earley Information Science
 
Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
Joaquim Jorge
 

Último (20)

GenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdfGenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdf
 
Histor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slideHistor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slide
 
[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf
 
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdfUnderstanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
 
Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024
 
Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...
 
🐬 The future of MySQL is Postgres 🐘
🐬  The future of MySQL is Postgres   🐘🐬  The future of MySQL is Postgres   🐘
🐬 The future of MySQL is Postgres 🐘
 
IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI Solutions
 
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
 
Tech Trends Report 2024 Future Today Institute.pdf
Tech Trends Report 2024 Future Today Institute.pdfTech Trends Report 2024 Future Today Institute.pdf
Tech Trends Report 2024 Future Today Institute.pdf
 
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
 
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
 
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
 
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
 
Presentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreterPresentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreter
 
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptxEIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
 
Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
 
Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
 

Visual Analytics Best Practices

  • 1. Visual Analytics Best Practices Sasha Pasulka Senior Manager, Product Marketing spasulka@tableausoftware.com #tableau8
  • 2.
  • 3.
  • 5. “Visual analytics is the representation and presentation of data that exploits our visual perception abilities in order to amplify cognition.” - Andy Kirk, author of “Data Visualization: a successful design process”
  • 6. Let’s Look at Some Data I II III IV x y x y x y x y 10 8.04 10 9.14 10 7.46 8 6.58 8 6.95 8 8.14 8 6.77 8 5.76 13 7.58 13 8.74 13 12.74 8 7.71 9 8.81 9 8.77 9 7.11 8 8.84 11 8.33 11 9.26 11 7.81 8 8.47 14 9.96 14 8.1 14 8.84 8 7.04 6 7.24 6 6.13 6 6.08 8 5.25 4 4.26 4 3.1 4 5.39 19 12.5 12 10.84 12 9.13 12 8.15 8 5.56 7 4.82 7 7.26 7 6.42 8 7.91 5 5.68 5 4.74 5 5.73 8 6.89
  • 7. Let’s Look at Some Data I II III IV x y x y x y x y 10 8.04 10 9.14 10 7.46 8 6.58 8 6.95 8 8.14 8 6.77 8 5.76 13 7.58 13 8.74 13 12.74 8 7.71 9 8.81 9 8.77 9 7.11 8 8.84 11 8.33 11 9.26 11 7.81 8 8.47 14 9.96 14 8.1 14 8.84 8 7.04 6 7.24 6 6.13 6 6.08 8 5.25 4 4.26 4 3.1 4 5.39 19 12.5 12 10.84 12 9.13 12 8.15 8 5.56 7 4.82 7 7.26 7 6.42 8 7.91 5 5.68 5 4.74 5 5.73 8 6.89 Property Value Mean of x in each case 9 (exact) Variance of x in each case 11 (exact) Mean of y in each case 7.50 (to 2 decimal places) Variance of y in each case 4.122 or 4.127 (to 3 decimal places) Correlation between x and 0.816 (to 3 decimal places) y in each case Linear regression line in y = 3.00 + 0.500x (to 2 and 3 each case decimal places, respectively)
  • 8. Let’s Look at Some Data … Visually “Anscombe’s Quartet” Source: Wikipedia
  • 9. Agenda 1. Human Perception and Cognition 2. Visual Analysis Cycle 3. Visualization Best Practices
  • 11. Humans Are Slow at Mental Math 34 X 72 ------------------
  • 12. We’re Faster When We Use the World 34 X 72 ------------------ 68 1 23 80 ------------------ 2448
  • 13. Much Faster 34 X 72 ------------------ 68 1 23 80 ------------------ 2448
  • 14. We’re Faster When We Can “See” Data
  • 15. We’re Faster When We Can “See” Data
  • 16. We’re Faster When We Can “See” Data
  • 20. The Cycle of Visual Analysis
  • 21. The Cycle of Visual Analysis
  • 22. Supporting the Cycle • Incremental: allow people to easily and incrementally change the data and how they are looking at it • Expressive: there is no single view for all tasks and all data • Unified: leverage the revolutionary changes in database technology • Direct: make the tool disappear so the user can directly interact with the data click click
  • 24. Best Practices Overview 1. Representing data for humans 2. Color 3. Maps 4. Creating dashboards
  • 25. Types of Data • Qualitative (nominal / categorical) • Arizona, New York, Texas • Sarah, John, Maria • Coors, Bud Light, Stella Artois • Qualitative (ordinal) • Gold, silver, bronze • Excellent health, good health, poor health • Love it, like it, hate it • Quantitative • Weight (10 lbs, 20 lbs, 5000 lbs) • Cost ($50, $100, $0.05) • Discount (5%, 10%, 12.8%)
  • 26. How Do Humans Like Their Data?
  • 27. How Do Humans Like Their Data? More Position important Color Size Shape Less important
  • 28. How Do Humans Like Their Data? • Time: on an x-axis • Location: on a map • Comparing values: bar chart • Exploring relationships: scatter plot • Relative proportions: treemap
  • 29. How Do Humans Like Their Data? Orient data so people can read it easily Good Better
  • 30. Color Me Impressed Color perception is relative, not absolute
  • 31. Color Me Impressed Provide a consistent background
  • 32. Color Me Impressed Humans can only distinguish ~8 colors This is not helpful.
  • 33. Color Me Impressed Humans can only distinguish ~8 colors This is helpful.
  • 34. Color Me Impressed For quantitative data, color intensity and diverging color palettes work well
  • 35. Mapping to Insight Use maps when location is relevant
  • 36. Mapping to Insight Use filled maps (“cloropleths”) for defined areas and only ONE measure
  • 37. Mapping to Insight Filled maps won’t work for multiple measures
  • 38. Mapping to Insight Don’t use maps just because you can
  • 39. Mapping to Insight Maps don’t have to be geographic
  • 40. Mapping to Insight Maps don’t have to be geographic
  • 43. Dashboarding for the 5-second Test • Most important view goes on top or top- left • Legends go near their views • Avoid using multiple color schemes on a single dashboard • Use 5 views or fewer in dashboards • Provide interactivity
  • 44. Dashboarding for the 5-second Test Use your words! • Titles • Axes • Key facts and figures • Units • Remove extra digits in numbers • Great tooltips

Notas do Editor

  1. I like to start these sessions off with a game I call “count the nines.” So, count the nines. Raise your hand when you think you know how many nines there are on here. [pause] In fact, just go ahead and shout it out. If you know how many nines are on here, shout out the answer. [pause]
  2. NOW count the nines. How many nines do you see? Raise your hand when you know.
  3. So what is visual analytics? THAT’s visual analytics.
  4. Those are really fancy words for what you just experienced. Humans can see visual patterns very well, but only when the patterns really play to a human’s strengths.
  5. Let’s see another example. Here’s some data. The are 4 sets of data here, each with 11 sets of x-y coordinates. For the purposes of this exercise, let’s assume the x data represents, in millions, the net sales of a single retail store over the course of a month. Let’s say the y data represents, in millions, the total profit from that store. So we’re looking here at a set of points that represent profit by sales, where each point is a single store. The four data sets represent regions, say, West, Central, South and East. Let’s say you’re a manager responsible for maximizing profit at these stores. What’s your move? [pause for 10 seconds, let people try to say smart things ]
  6. OK, OK, so you’d typically have a bit more information than that when you’re making a decision. So now let’s look at some more information about these data sets. Maybe we can learn something about them from their means, or their variances. When we’re crunching numbers, we rely a lot on things like means and variances. And probably looking at correlation or doing a linear regression would help, too. It turns out that these four data sets all have the same means, the same variances, the same x-y correlations, and even boil down to an identical linear regression. So … what’s your move? [Pause for 10 seconds or so]
  7. Here are these same four data sets, plotted visually, with trend lines. Now, what’s your move? [Let the audience make some suggestions. You can chime in with things like, “Yeah, you might want to talk to the manager of the outlier in set 3 and see what she’s doing right” or “You might want to talk to the managers of some of the stores in set 4 and see why their profits are underperforming compared to stores with similar sales.”]What other pieces of information might you want? [Let them make suggestions, and if necessary you can chime in with things like “You might want to see how many orders each store is producing, or what categories of product they’re selling most, or how frequently they offer discounts.”]It would be nice to be able to encode some of that information on these graphs, like maybe have a larger circle for stores that offer, on average, larger discounts, or to be able to quickly split this data up to show sales by product category by store. Like, maybe with just one click. And then it would be nice to be able to share this view with your individual store managers, with just a couple of clicks. And it would be nice to have that view you shared update with real-time data, so those store managers could see day-by-day how their stores were performing compared to their peers, and interact with that live data to understand why their stores are succeeding or lagging. So that they are each empowered to explore the information they need to meet and exceed their profit goals. That’s what Tableau does.
  8. Humans are slow at mental math. We’re not designed to manipulate complex numbers in our heads. Go ahead and try to solve this multiplication problem in your head.
  9. If we give you a pencil and paper, all of a sudden this problem becomes a lot easier to solve. How much easier?
  10. About 5 times easier. It takes educated people an average of 50 seconds to solve this problem in their head. Give them the right tools, and suddenly it’s solved in just under 10 seconds.
  11. Which product subcategory is the most unprofitable?
  12. Which product subcategory is the most unprofitable?
  13. Now … which product subcategory is the most unprofitable?
  14. Preattentive attributes are information we can process visually almost immediately, before sending the information to the attention processing parts of our brain. This is information we process and understand almost unconsciously. These are generally the best ways to present data, because we can see these patterns without thinking too hard. If you have time/Internet/sound, show this video: http://www.youtube.com/watch?feature=player_detailpage&v=wnvoZxe95bo
  15. Show Jock’s interruption video
  16. Show Jock’s interruption video. If you have time and an internet connection, this YouTube video is great, too: http://www.youtube.com/watch?feature=player_detailpage&v=vBPG_OBgTWg
  17. Visual analysis isn’t just looking at a chart, or using colors – it’s an entire lifecycle that includes identifying and getting your data, establishing the structure of that data, choosing the best way to visualize that data, drawing conclusions or insight from those visualizations, and then getting buy-in around any conclusions supported by that data, which means you have to be able to tell a compelling story succinctly. And to help a team benefit from visual analysis, you need to support the whole cycle of visual analysis.
  18. The key words are are see, understand, and people. Tableau builds software for people, not specialists. We believe anyone should be able to harness the power of data. That’s our mission.