SlideShare a Scribd company logo
1 of 16
DATA COLLECTION,
MANAGEMENT
AND ANALYSIS
What kind of data is collected
through systematic observation?
Observers deployed across
the country report
responses to questions on
a uniform checklist that
assess the quality of the
election process observed,
and, in some cases, collect
vote count results for
verification.
Developing a Data Collection Plan
• What kind of information needs to be reported
on election day?
• What is the strongest nationwide mode of
communication that could be used on election
day?
• What challenges could occur on election day to
disrupt your data collection strategy?
• Will observers be able to realistically understand
and use the method of data collection?
Strategies for Rapid Reporting
• Use short forms with limited questions
• Identify the most appropriate method of
transmission
• Determine a reasonable timeline for data
collection
• Streamline and simplify bottom-to-top reporting
• Transmitting election day checklists vs. critical
incidents
Methods of Transmission
• SMS
• Phone call
– Mobile, landline, satellite
• Smartphone app
• Internet
• Fax
• Paper, hand delivery
– Usually back-up plan
Planning for 100% Reporting Rates
• Back-ups and contingency plans
– Build into trainings
• Conduct a simulation
– Test communication systems for weaknesses before
election day
• Use observer stipends strategically to encourage
response rates
– Pay observers after they have completed their
reporting duties
Reporting timelines
Reporting often happens at the end of
certain key election day processes
– Observer arrival
– Opening
– Voting
– Closing
– Counting
Internal Communication Schema
• (image)
Data Management
• Developing an observer database
– Compiling all information about field supervisors and
observers
• Creating an election day protocol
– Developing a document that outlines what you will do with
your data
• Entering the data
– Entering data from your observation forms into electronic
files
• Analyzing the data
– Inspecting, cleaning, detecting patterns and developing
explanations to your data
Database for Observer Management
• Collect information for centralized
observer database starting at recruitment
• Assign and track observer deployment
Election Day Protocol
The protocol should answer at least the following question:
• How is the data flow at the data center? What are the roles of different staff? Who
reports to the board? What is the most efficient paper handling process at the data
center?
• How will staff process incoming observer data on election day?
• How will you analyze the data? Which part of the dataset will be examined first? In
what order will the data be analyzed?
• What is the protocol if findings indicate some problems? What problems seem most
likely to occur on Election Day?
• Who will have access to your observation findings internally, and when?
• What information will be provided to outsiders?
• To whom will the data be released?
• What is the estimated time for the information to be shared?
• How will you share your findings?
Data Security
• Install basic protections. Your network should be secure from all predictable forms of
malicious attacks
• Create a network log-in protocol. You need to provide different security levels for each
person based on their defined roles, an efficient method of managing users
• Establish a storage and back-up protocol. In the event of server/ computer crash, data
back-up will allow you to recover your data and continue your election day operation
Organizing and Staffing the Data
Center
• Logistics
• Calculations for number of operators
needed
• Trainings and simulation
Simulation
Data Analysis
• Gather contextual information which will help you to interpret your data
• Develop a clear election day protocol
• Create Software to visualize the findings
Before Election Day
On Election Day
• Analyzing initial data
• Scanning the data
• Searching for systematic patterns
• Determining the impact of the problems
Quality Control
• Data management – built in verification
• Simulation as test of management and
communication structure
• Training data clerks
• Back-up plans and systems

More Related Content

Similar to presentation_systematic-methods-for-advancing-election-observation-waeon.ppt

Unit-1 part 2.pptx
Unit-1 part 2.pptxUnit-1 part 2.pptx
Unit-1 part 2.pptx
HKShab
 
Choosing a Database
Choosing a DatabaseChoosing a Database
Choosing a Database
501 Commons
 

Similar to presentation_systematic-methods-for-advancing-election-observation-waeon.ppt (20)

Using HMIS data to support program improvement
Using HMIS data to support program improvementUsing HMIS data to support program improvement
Using HMIS data to support program improvement
 
mHealth for Logistics: Solving Data Challenges Through Mobile Technology
mHealth for Logistics: Solving Data Challenges Through Mobile TechnologymHealth for Logistics: Solving Data Challenges Through Mobile Technology
mHealth for Logistics: Solving Data Challenges Through Mobile Technology
 
Transforming eTMF Management: Moving to a Data-Driven Approach
Transforming eTMF Management: Moving to a Data-Driven ApproachTransforming eTMF Management: Moving to a Data-Driven Approach
Transforming eTMF Management: Moving to a Data-Driven Approach
 
Visualising montioring and evaluation data
Visualising montioring and evaluation dataVisualising montioring and evaluation data
Visualising montioring and evaluation data
 
CAPI _TRIPS_SMS
CAPI _TRIPS_SMSCAPI _TRIPS_SMS
CAPI _TRIPS_SMS
 
Amazon, apple, facebook and google
Amazon, apple, facebook and googleAmazon, apple, facebook and google
Amazon, apple, facebook and google
 
Automation of document management paul fenton webinar
Automation of document management paul fenton webinarAutomation of document management paul fenton webinar
Automation of document management paul fenton webinar
 
dimensions_of_data_quality.pptx
dimensions_of_data_quality.pptxdimensions_of_data_quality.pptx
dimensions_of_data_quality.pptx
 
How to Master your Marketing Data - Cody Crumrine, Data Aptitude
How to Master your Marketing Data - Cody Crumrine, Data AptitudeHow to Master your Marketing Data - Cody Crumrine, Data Aptitude
How to Master your Marketing Data - Cody Crumrine, Data Aptitude
 
management information system module3
management information system module3management information system module3
management information system module3
 
Data Analytics and Big Data on IoT
Data Analytics and Big Data on IoTData Analytics and Big Data on IoT
Data Analytics and Big Data on IoT
 
Survey Procedures at Mekong Development Research Institute
Survey Procedures at Mekong Development Research InstituteSurvey Procedures at Mekong Development Research Institute
Survey Procedures at Mekong Development Research Institute
 
1 Information Systems Analysis & Design,.pptx
1 Information Systems Analysis & Design,.pptx1 Information Systems Analysis & Design,.pptx
1 Information Systems Analysis & Design,.pptx
 
Production Monitoring Platform
Production Monitoring PlatformProduction Monitoring Platform
Production Monitoring Platform
 
Unit-1 part 2.pptx
Unit-1 part 2.pptxUnit-1 part 2.pptx
Unit-1 part 2.pptx
 
Introduction to data science
Introduction to data scienceIntroduction to data science
Introduction to data science
 
Real Time Data Strategy and Architecture
Real Time Data Strategy and ArchitectureReal Time Data Strategy and Architecture
Real Time Data Strategy and Architecture
 
Mis 8
Mis 8Mis 8
Mis 8
 
Choosing a Database
Choosing a DatabaseChoosing a Database
Choosing a Database
 
Introduction to MIS (Evolution of MIS)
Introduction to MIS  (Evolution of MIS)Introduction to MIS  (Evolution of MIS)
Introduction to MIS (Evolution of MIS)
 

More from ImXaib

ERD introduction in databases model.pptx
ERD introduction in databases model.pptxERD introduction in databases model.pptx
ERD introduction in databases model.pptx
ImXaib
 
SDA presentation the basics of computer science .pptx
SDA presentation the basics of computer science .pptxSDA presentation the basics of computer science .pptx
SDA presentation the basics of computer science .pptx
ImXaib
 
terminal a clear presentation on the topic.pptx
terminal a clear presentation on the topic.pptxterminal a clear presentation on the topic.pptx
terminal a clear presentation on the topic.pptx
ImXaib
 
What is Machine Learning_updated documents.pptx
What is Machine Learning_updated documents.pptxWhat is Machine Learning_updated documents.pptx
What is Machine Learning_updated documents.pptx
ImXaib
 
Grid Computing and it's applications.PPTX
Grid Computing and it's applications.PPTXGrid Computing and it's applications.PPTX
Grid Computing and it's applications.PPTX
ImXaib
 
lecture2.ppt
lecture2.pptlecture2.ppt
lecture2.ppt
ImXaib
 
lec3_10.ppt
lec3_10.pptlec3_10.ppt
lec3_10.ppt
ImXaib
 
Fullandparavirtualization.ppt
Fullandparavirtualization.pptFullandparavirtualization.ppt
Fullandparavirtualization.ppt
ImXaib
 
mis9_ch08_ppt.ppt
mis9_ch08_ppt.pptmis9_ch08_ppt.ppt
mis9_ch08_ppt.ppt
ImXaib
 
rooster-ipsecindepth.ppt
rooster-ipsecindepth.pptrooster-ipsecindepth.ppt
rooster-ipsecindepth.ppt
ImXaib
 
Policy formation and enforcement.ppt
Policy formation and enforcement.pptPolicy formation and enforcement.ppt
Policy formation and enforcement.ppt
ImXaib
 
Database schema architecture.ppt
Database schema architecture.pptDatabase schema architecture.ppt
Database schema architecture.ppt
ImXaib
 
Transport layer security.ppt
Transport layer security.pptTransport layer security.ppt
Transport layer security.ppt
ImXaib
 
Trends in DM.pptx
Trends in DM.pptxTrends in DM.pptx
Trends in DM.pptx
ImXaib
 
AleksandrDoroninSlides.ppt
AleksandrDoroninSlides.pptAleksandrDoroninSlides.ppt
AleksandrDoroninSlides.ppt
ImXaib
 
dm15-visualization-data-mining.ppt
dm15-visualization-data-mining.pptdm15-visualization-data-mining.ppt
dm15-visualization-data-mining.ppt
ImXaib
 

More from ImXaib (20)

ERD introduction in databases model.pptx
ERD introduction in databases model.pptxERD introduction in databases model.pptx
ERD introduction in databases model.pptx
 
SDA presentation the basics of computer science .pptx
SDA presentation the basics of computer science .pptxSDA presentation the basics of computer science .pptx
SDA presentation the basics of computer science .pptx
 
terminal a clear presentation on the topic.pptx
terminal a clear presentation on the topic.pptxterminal a clear presentation on the topic.pptx
terminal a clear presentation on the topic.pptx
 
What is Machine Learning_updated documents.pptx
What is Machine Learning_updated documents.pptxWhat is Machine Learning_updated documents.pptx
What is Machine Learning_updated documents.pptx
 
Grid Computing and it's applications.PPTX
Grid Computing and it's applications.PPTXGrid Computing and it's applications.PPTX
Grid Computing and it's applications.PPTX
 
Firewall.pdf
Firewall.pdfFirewall.pdf
Firewall.pdf
 
4966709.ppt
4966709.ppt4966709.ppt
4966709.ppt
 
lecture2.ppt
lecture2.pptlecture2.ppt
lecture2.ppt
 
Tools.pptx
Tools.pptxTools.pptx
Tools.pptx
 
lec3_10.ppt
lec3_10.pptlec3_10.ppt
lec3_10.ppt
 
ch12.ppt
ch12.pptch12.ppt
ch12.ppt
 
Fullandparavirtualization.ppt
Fullandparavirtualization.pptFullandparavirtualization.ppt
Fullandparavirtualization.ppt
 
mis9_ch08_ppt.ppt
mis9_ch08_ppt.pptmis9_ch08_ppt.ppt
mis9_ch08_ppt.ppt
 
rooster-ipsecindepth.ppt
rooster-ipsecindepth.pptrooster-ipsecindepth.ppt
rooster-ipsecindepth.ppt
 
Policy formation and enforcement.ppt
Policy formation and enforcement.pptPolicy formation and enforcement.ppt
Policy formation and enforcement.ppt
 
Database schema architecture.ppt
Database schema architecture.pptDatabase schema architecture.ppt
Database schema architecture.ppt
 
Transport layer security.ppt
Transport layer security.pptTransport layer security.ppt
Transport layer security.ppt
 
Trends in DM.pptx
Trends in DM.pptxTrends in DM.pptx
Trends in DM.pptx
 
AleksandrDoroninSlides.ppt
AleksandrDoroninSlides.pptAleksandrDoroninSlides.ppt
AleksandrDoroninSlides.ppt
 
dm15-visualization-data-mining.ppt
dm15-visualization-data-mining.pptdm15-visualization-data-mining.ppt
dm15-visualization-data-mining.ppt
 

Recently uploaded

MuleSoft Integration with AWS Textract | Calling AWS Textract API |AWS - Clou...
MuleSoft Integration with AWS Textract | Calling AWS Textract API |AWS - Clou...MuleSoft Integration with AWS Textract | Calling AWS Textract API |AWS - Clou...
MuleSoft Integration with AWS Textract | Calling AWS Textract API |AWS - Clou...
MysoreMuleSoftMeetup
 
會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文
會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文
會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文
中 央社
 
SURVEY I created for uni project research
SURVEY I created for uni project researchSURVEY I created for uni project research
SURVEY I created for uni project research
CaitlinCummins3
 
Personalisation of Education by AI and Big Data - Lourdes Guàrdia
Personalisation of Education by AI and Big Data - Lourdes GuàrdiaPersonalisation of Education by AI and Big Data - Lourdes Guàrdia
Personalisation of Education by AI and Big Data - Lourdes Guàrdia
EADTU
 

Recently uploaded (20)

MuleSoft Integration with AWS Textract | Calling AWS Textract API |AWS - Clou...
MuleSoft Integration with AWS Textract | Calling AWS Textract API |AWS - Clou...MuleSoft Integration with AWS Textract | Calling AWS Textract API |AWS - Clou...
MuleSoft Integration with AWS Textract | Calling AWS Textract API |AWS - Clou...
 
AIM of Education-Teachers Training-2024.ppt
AIM of Education-Teachers Training-2024.pptAIM of Education-Teachers Training-2024.ppt
AIM of Education-Teachers Training-2024.ppt
 
Sternal Fractures & Dislocations - EMGuidewire Radiology Reading Room
Sternal Fractures & Dislocations - EMGuidewire Radiology Reading RoomSternal Fractures & Dislocations - EMGuidewire Radiology Reading Room
Sternal Fractures & Dislocations - EMGuidewire Radiology Reading Room
 
Graduate Outcomes Presentation Slides - English (v3).pptx
Graduate Outcomes Presentation Slides - English (v3).pptxGraduate Outcomes Presentation Slides - English (v3).pptx
Graduate Outcomes Presentation Slides - English (v3).pptx
 
Spring gala 2024 photo slideshow - Celebrating School-Community Partnerships
Spring gala 2024 photo slideshow - Celebrating School-Community PartnershipsSpring gala 2024 photo slideshow - Celebrating School-Community Partnerships
Spring gala 2024 photo slideshow - Celebrating School-Community Partnerships
 
24 ĐỀ THAM KHẢO KÌ THI TUYỂN SINH VÀO LỚP 10 MÔN TIẾNG ANH SỞ GIÁO DỤC HẢI DƯ...
24 ĐỀ THAM KHẢO KÌ THI TUYỂN SINH VÀO LỚP 10 MÔN TIẾNG ANH SỞ GIÁO DỤC HẢI DƯ...24 ĐỀ THAM KHẢO KÌ THI TUYỂN SINH VÀO LỚP 10 MÔN TIẾNG ANH SỞ GIÁO DỤC HẢI DƯ...
24 ĐỀ THAM KHẢO KÌ THI TUYỂN SINH VÀO LỚP 10 MÔN TIẾNG ANH SỞ GIÁO DỤC HẢI DƯ...
 
VAMOS CUIDAR DO NOSSO PLANETA! .
VAMOS CUIDAR DO NOSSO PLANETA!                    .VAMOS CUIDAR DO NOSSO PLANETA!                    .
VAMOS CUIDAR DO NOSSO PLANETA! .
 
8 Tips for Effective Working Capital Management
8 Tips for Effective Working Capital Management8 Tips for Effective Working Capital Management
8 Tips for Effective Working Capital Management
 
DEMONSTRATION LESSON IN ENGLISH 4 MATATAG CURRICULUM
DEMONSTRATION LESSON IN ENGLISH 4 MATATAG CURRICULUMDEMONSTRATION LESSON IN ENGLISH 4 MATATAG CURRICULUM
DEMONSTRATION LESSON IN ENGLISH 4 MATATAG CURRICULUM
 
Observing-Correct-Grammar-in-Making-Definitions.pptx
Observing-Correct-Grammar-in-Making-Definitions.pptxObserving-Correct-Grammar-in-Making-Definitions.pptx
Observing-Correct-Grammar-in-Making-Definitions.pptx
 
COMMUNICATING NEGATIVE NEWS - APPROACHES .pptx
COMMUNICATING NEGATIVE NEWS - APPROACHES .pptxCOMMUNICATING NEGATIVE NEWS - APPROACHES .pptx
COMMUNICATING NEGATIVE NEWS - APPROACHES .pptx
 
Analyzing and resolving a communication crisis in Dhaka textiles LTD.pptx
Analyzing and resolving a communication crisis in Dhaka textiles LTD.pptxAnalyzing and resolving a communication crisis in Dhaka textiles LTD.pptx
Analyzing and resolving a communication crisis in Dhaka textiles LTD.pptx
 
ESSENTIAL of (CS/IT/IS) class 07 (Networks)
ESSENTIAL of (CS/IT/IS) class 07 (Networks)ESSENTIAL of (CS/IT/IS) class 07 (Networks)
ESSENTIAL of (CS/IT/IS) class 07 (Networks)
 
Mattingly "AI & Prompt Design: Named Entity Recognition"
Mattingly "AI & Prompt Design: Named Entity Recognition"Mattingly "AI & Prompt Design: Named Entity Recognition"
Mattingly "AI & Prompt Design: Named Entity Recognition"
 
The Story of Village Palampur Class 9 Free Study Material PDF
The Story of Village Palampur Class 9 Free Study Material PDFThe Story of Village Palampur Class 9 Free Study Material PDF
The Story of Village Palampur Class 9 Free Study Material PDF
 
會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文
會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文
會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文會考英文
 
UChicago CMSC 23320 - The Best Commit Messages of 2024
UChicago CMSC 23320 - The Best Commit Messages of 2024UChicago CMSC 23320 - The Best Commit Messages of 2024
UChicago CMSC 23320 - The Best Commit Messages of 2024
 
SURVEY I created for uni project research
SURVEY I created for uni project researchSURVEY I created for uni project research
SURVEY I created for uni project research
 
OS-operating systems- ch05 (CPU Scheduling) ...
OS-operating systems- ch05 (CPU Scheduling) ...OS-operating systems- ch05 (CPU Scheduling) ...
OS-operating systems- ch05 (CPU Scheduling) ...
 
Personalisation of Education by AI and Big Data - Lourdes Guàrdia
Personalisation of Education by AI and Big Data - Lourdes GuàrdiaPersonalisation of Education by AI and Big Data - Lourdes Guàrdia
Personalisation of Education by AI and Big Data - Lourdes Guàrdia
 

presentation_systematic-methods-for-advancing-election-observation-waeon.ppt

  • 2. What kind of data is collected through systematic observation? Observers deployed across the country report responses to questions on a uniform checklist that assess the quality of the election process observed, and, in some cases, collect vote count results for verification.
  • 3. Developing a Data Collection Plan • What kind of information needs to be reported on election day? • What is the strongest nationwide mode of communication that could be used on election day? • What challenges could occur on election day to disrupt your data collection strategy? • Will observers be able to realistically understand and use the method of data collection?
  • 4. Strategies for Rapid Reporting • Use short forms with limited questions • Identify the most appropriate method of transmission • Determine a reasonable timeline for data collection • Streamline and simplify bottom-to-top reporting • Transmitting election day checklists vs. critical incidents
  • 5. Methods of Transmission • SMS • Phone call – Mobile, landline, satellite • Smartphone app • Internet • Fax • Paper, hand delivery – Usually back-up plan
  • 6. Planning for 100% Reporting Rates • Back-ups and contingency plans – Build into trainings • Conduct a simulation – Test communication systems for weaknesses before election day • Use observer stipends strategically to encourage response rates – Pay observers after they have completed their reporting duties
  • 7. Reporting timelines Reporting often happens at the end of certain key election day processes – Observer arrival – Opening – Voting – Closing – Counting
  • 9. Data Management • Developing an observer database – Compiling all information about field supervisors and observers • Creating an election day protocol – Developing a document that outlines what you will do with your data • Entering the data – Entering data from your observation forms into electronic files • Analyzing the data – Inspecting, cleaning, detecting patterns and developing explanations to your data
  • 10. Database for Observer Management • Collect information for centralized observer database starting at recruitment • Assign and track observer deployment
  • 11. Election Day Protocol The protocol should answer at least the following question: • How is the data flow at the data center? What are the roles of different staff? Who reports to the board? What is the most efficient paper handling process at the data center? • How will staff process incoming observer data on election day? • How will you analyze the data? Which part of the dataset will be examined first? In what order will the data be analyzed? • What is the protocol if findings indicate some problems? What problems seem most likely to occur on Election Day? • Who will have access to your observation findings internally, and when? • What information will be provided to outsiders? • To whom will the data be released? • What is the estimated time for the information to be shared? • How will you share your findings?
  • 12. Data Security • Install basic protections. Your network should be secure from all predictable forms of malicious attacks • Create a network log-in protocol. You need to provide different security levels for each person based on their defined roles, an efficient method of managing users • Establish a storage and back-up protocol. In the event of server/ computer crash, data back-up will allow you to recover your data and continue your election day operation
  • 13. Organizing and Staffing the Data Center • Logistics • Calculations for number of operators needed • Trainings and simulation
  • 15. Data Analysis • Gather contextual information which will help you to interpret your data • Develop a clear election day protocol • Create Software to visualize the findings Before Election Day On Election Day • Analyzing initial data • Scanning the data • Searching for systematic patterns • Determining the impact of the problems
  • 16. Quality Control • Data management – built in verification • Simulation as test of management and communication structure • Training data clerks • Back-up plans and systems

Editor's Notes

  1. Go back