Data Quality: A Comprehensive Guide

Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Learning Objectives
Understanding SNAPS Data Strategy content
related to Data Quality
Understand all components of a Data Quality
Management Plan and how this work fits into
the overall efforts of the CoC
Discuss the roles that CoCs, HMIS Leads, and
agencies play in implementing a Data Quality
Management Plan
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Session Overview/Agenda
SNAPS Data Strategy and Data Quality
Purpose and Intent of a Data Quality Program
Review each of the four components of a Data
Quality Program
Discuss roles, responsibilities and potential
next steps for your community
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
 
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
SNAPS Data Strategy and Data Quality
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
SNAPS Data Strategy to Improve Data
And Performance
SNAPS strategy is intended to be aspirational
These are not standards that HUD intends
to monitor projects for compliance
Focus on ensuring CoCs have data driven
local planning and work towards ending
homelessness
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
SNAPS Data Strategy to Improve Data
And Performance
CoCs should work with HMIS lead and agencies
to
Review the Strategy
Set local goals and performance indicators
Identify what changes, if any, they need to
make to their work to move closer to
implementing HUD’s vision
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
SNAPS Data Strategy to Improve Data
And Performance
There are three unique strategies
For the purposes of today’s session we will
just highlight strategy 2, since it focuses on
data quality
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
SNAPS Strategy #2
Communities operate data systems that allow
for 
accurate, comprehensive and timely data
collection
, usage and reporting
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
SNAPS Strategy #2
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Data Quality
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Definition of Data Quality
Data quality refers to the reliability and
comprehensiveness of your community’s
data
Components of data quality include
Timeliness
Completeness
Accuracy
Consistency
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Current Requirements for DQ
Section 4.2.2 of the HMIS Technical Standards
(2004)
“PPI collected by a CHO must be relevant to the
purpose for which it is to be used. To the extent
necessary for those purposes, 
PPI should be
accurate, complete and timely.
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Proposed and Forthcoming Guidance
Section 580.37 of the HMIS Proposed Rule
(2011) 
“..HMIS Leads must set data quality benchmarks
for CHOs, including bed coverage rates and
service-volume coverage rates.”
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Data Quality Plans
In anticipation of the HMIS Final Rule,
increasing need for data informed decision
making and in response to NOFA scoring
criteria for the CoC Program, many CoCs have
created data quality plans
Plans often consist of 
Baseline expectations for completeness,
timeliness
Monitoring protocols for reviewing accuracy
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
So why a DQ Monitoring Program?
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Elements of a Data Quality Program
1.
CoC HMIS Data Quality Plan
2.
Enforceable agreements
3.
Monitoring and reporting
4.
Compliance processes
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Preparing for the DQ Program
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Identifying Your Baseline
Important to take stock of where you are
now
Do you know how many of the homeless
assistance and homelessness prevention projects
in your CoC, are actively participating in HMIS?
Baseline for bed coverage
Have you recently run data completeness reports
for your full HMIS implementation? 
Baseline data
completeness
When CoC leaders, project staff and HMIS Lead
staff review reports, does the data seem accurate?
Baseline for accuracy
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Step 1: Ensure CoC’s Commitment
Important to clarify up front what the
expectations are for the data quality program
CoC will need to review and approve the DQ Plan
CoC should also be heavily involved in determining
expectations for monitoring and compliance
This work cannot and should not fall just on
the shoulders of the HMIS Lead Agency
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Key Considerations in Step 1
How will the CoC enforce expectations for
data quality?
Will these expectations extend to all
homeless assistance and homeless
prevention programs in the community?
How frequently will the CoC leadership
review data quality reports and data analysis?  
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Step 2: Data Quality Plan and
Enforceable Agreements
DQ Plan should be focused on 
Defining data quality expectations, by data
element and by program type 
Completeness
Timeliness
Accuracy
Consistency
Outlining how data quality will be monitored
Who will monitor and when
Who will results be reported to
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Step 2: Data Quality Plan and
Enforceable Agreements
Enforceable agreements are critical
Need to be completed by all agencies
participating in HMIS
Should provide guidance on what the
consequences are for failure to meet the
standards in the DQ Plan
Identify the process for notification of failure to
meet a standard
Lay out the responsibilities of BOTH the HMIS
participating agency and the HMIS Lead and CoC
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Key Considerations in Step 2
Are the expectations and responsibilities
reasonable?
Have they been discussed in a public forum,
to allow for feedback and to generate buy-in
from the CoC?
How far back do you need to go in terms of
data quality improvements?  Are you looking
at “old” data?  How does poor data quality
impact your reporting efforts?
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Step 3: Monitoring, Reporting &
Compliance Processes
Once the HMIS Data Quality Plan has been
reviewed and approved by the CoC and
agreements are in place, it’s time to get out
there and implement
Will need to train/communicate to agencies
and users first, to ensure that all users
understand the expectations
Encourage the CoC to allow for a grace period
Transparency with results is key
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Key Considerations in Step 3
Can the HMIS Lead monitor each agency for
HMIS data quality compliance on an at least
annual basis?
Does their monitoring process integrate all 4
elements of data quality?
Completeness
Accuracy
Timeliness 
Consistency
How will monitoring results be shared with the
agency?  With the CoC?
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Step 4: CoC, Agency and HMIS
Leadership Efforts
Important to celebrate successes and to
allow room for growth
Make the connection between the HMIS DQ
efforts and other CoC lead efforts
Impact of improved data quality on the accuracy
of System Performance Measures and other local
data analysis
Impact of improved data quality on the ability to
generate a By-Name or Prioritization List, to use
HMIS for coordinated entry, etc.
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Key Considerations in Step 4
Is everyone at the CoC, agency and HMIS
Lead level clear about the role that they play
in ensuring data quality?
How has this been communicated?
How has data quality been integrated into
CoC, agency and HMIS meetings?
What are the motivations/barriers for getting
people on board?  Is special outreach or help
needed to work with agencies that do not get
HUD funding?
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Step 5: HMIS Lead’s Administration of
HMIS
HMIS Lead should complete the monitoring
on data quality
Will need to run regular data quality reports
for agencies to track progress beyond the
monitoring visit
HMIS Lead is at the center of this work and
needs to make these connections to CoC
efforts with the community
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Key Considerations in Step 5
Is the HMIS Lead regularly communicating
about progress and barriers with the data
quality program?
Has this work become an ongoing effort and
is it integrated into the regular operations of
the CoC, agencies and HMIS Lead?
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Common Pitfalls
Ignoring data quality until reports are due or
data is published
Emphasizing data quality for some staff and
not others
Failing to keep agency management informed
Failing to understand the role/importance of
end users
Not taking advantage of the potential for
quality data reporting
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
What’s Next?
Don’t wait!!  
The quality of your data now will
impact your upcoming LSA reports
Review HUD’s Strategy
Map out your baseline
Discuss these steps with your CoC
Review sample HMIS Data Quality Plans
(they’re on the web!)
Talk to other CoCs about how they’ve done
this sort of work
Spend time thinking through monitoring and
compliance
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Resources and Guidance
HUD Data Strategy (2018)
https://www.hudexchange.info/resource/5748/snaps-data-ta-
strategy-to-improve-data-and-performance/
HUD Data Quality Brief (2017)
https://www.hudexchange.info/resources/documents/coc-
data-quality-brief.pdf
HUD Data Quality Toolkit (2009)
https://www.hudexchange.info/resources/documents/huddata
qualitytoolkit.pdf
 
Data Quality 101: What is Data Quality
Mike Lindsay, ICF
Natalie Matthews, Abt
Slide Note
Embed
Share

Delve into the intricacies of data quality with Mike Lindsay, Natalie Matthews, and Abt in this informative session. Explore key aspects such as the components of a Data Quality Management Plan, roles of different entities, and SNAPS Data Strategy for improving data and performance to support local planning efforts. Gain insights on implementing HUD's vision through strategic actions and goal-setting.

  • Data quality
  • Data management
  • SNAPS Data Strategy
  • HUD vision
  • Homelessness

Uploaded on Oct 06, 2024 | 0 Views


Download Presentation

Please find below an Image/Link to download the presentation.

The content on the website is provided AS IS for your information and personal use only. It may not be sold, licensed, or shared on other websites without obtaining consent from the author.If you encounter any issues during the download, it is possible that the publisher has removed the file from their server.

You are allowed to download the files provided on this website for personal or commercial use, subject to the condition that they are used lawfully. All files are the property of their respective owners.

The content on the website is provided AS IS for your information and personal use only. It may not be sold, licensed, or shared on other websites without obtaining consent from the author.

E N D

Presentation Transcript


  1. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt

  2. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt Learning Objectives Understanding SNAPS Data Strategy content related to Data Quality Understand all components of a Data Quality Management Plan and how this work fits into the overall efforts of the CoC Discuss the roles that CoCs, HMIS Leads, and agencies play in implementing a Data Quality Management Plan

  3. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt Session Overview/Agenda SNAPS Data Strategy and Data Quality Purpose and Intent of a Data Quality Program Review each of the four components of a Data Quality Program Discuss roles, responsibilities and potential next steps for your community

  4. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt

  5. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt SNAPS Data Strategy and Data Quality

  6. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt SNAPS Data Strategy to Improve Data And Performance SNAPS strategy is intended to be aspirational These are not standards that HUD intends to monitor projects for compliance Focus on ensuring CoCs have data driven local planning and work towards ending homelessness

  7. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt SNAPS Data Strategy to Improve Data And Performance CoCs should work with HMIS lead and agencies to Review the Strategy Set local goals and performance indicators Identify what changes, if any, they need to make to their work to move closer to implementing HUD s vision

  8. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt SNAPS Data Strategy to Improve Data And Performance There are three unique strategies For the purposes of today s session we will just highlight strategy 2, since it focuses on data quality

  9. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt SNAPS Strategy #2 Communities operate data systems that allow for accurate, comprehensive and timely data collection, usage and reporting

  10. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt SNAPS Strategy #2

  11. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt Data Quality

  12. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt Definition of Data Quality Data quality refers to the reliability and comprehensiveness of your community s data Components of data quality include Timeliness Completeness Accuracy Consistency

  13. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt Current Requirements for DQ Section 4.2.2 of the HMIS Technical Standards (2004) PPI collected by a CHO must be relevant to the purpose for which it is to be used. To the extent necessary for those purposes, PPI should be accurate, complete and timely.

  14. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt Proposed and Forthcoming Guidance Section 580.37 of the HMIS Proposed Rule (2011) ..HMIS Leads must set data quality benchmarks for CHOs, including bed coverage rates and service-volume coverage rates.

  15. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt Data Quality Plans In anticipation of the HMIS Final Rule, increasing need for data informed decision making and in response to NOFA scoring criteria for the CoC Program, many CoCs have created data quality plans Plans often consist of Baseline expectations for completeness, timeliness Monitoring protocols for reviewing accuracy

  16. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt So why a DQ Monitoring Program?

  17. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt Elements of a Data Quality Program 1. CoC HMIS Data Quality Plan 2. Enforceable agreements 3. Monitoring and reporting 4. Compliance processes

  18. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt Preparing for the DQ Program

  19. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt Identifying Your Baseline Important to take stock of where you are now Do you know how many of the homeless assistance and homelessness prevention projects in your CoC, are actively participating in HMIS? Baseline for bed coverage Have you recently run data completeness reports for your full HMIS implementation? Baseline data completeness When CoC leaders, project staff and HMIS Lead staff review reports, does the data seem accurate? Baseline for accuracy

  20. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt Step 1: Ensure CoC s Commitment Important to clarify up front what the expectations are for the data quality program CoC will need to review and approve the DQ Plan CoC should also be heavily involved in determining expectations for monitoring and compliance This work cannot and should not fall just on the shoulders of the HMIS Lead Agency

  21. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt Key Considerations in Step 1 How will the CoC enforce expectations for data quality? Will these expectations extend to all homeless assistance and homeless prevention programs in the community? How frequently will the CoC leadership review data quality reports and data analysis?

  22. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt Step 2: Data Quality Plan and Enforceable Agreements DQ Plan should be focused on Defining data quality expectations, by data element and by program type Completeness Timeliness Accuracy Consistency Outlining how data quality will be monitored Who will monitor and when Who will results be reported to

  23. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt Step 2: Data Quality Plan and Enforceable Agreements Enforceable agreements are critical Need to be completed by all agencies participating in HMIS Should provide guidance on what the consequences are for failure to meet the standards in the DQ Plan Identify the process for notification of failure to meet a standard Lay out the responsibilities of BOTH the HMIS participating agency and the HMIS Lead and CoC

  24. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt Key Considerations in Step 2 Are the expectations and responsibilities reasonable? Have they been discussed in a public forum, to allow for feedback and to generate buy-in from the CoC? How far back do you need to go in terms of data quality improvements? Are you looking at old data? How does poor data quality impact your reporting efforts?

  25. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt Step 3: Monitoring, Reporting & Compliance Processes Once the HMIS Data Quality Plan has been reviewed and approved by the CoC and agreements are in place, it s time to get out there and implement Will need to train/communicate to agencies and users first, to ensure that all users understand the expectations Encourage the CoC to allow for a grace period Transparency with results is key

  26. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt Key Considerations in Step 3 Can the HMIS Lead monitor each agency for HMIS data quality compliance on an at least annual basis? Does their monitoring process integrate all 4 elements of data quality? Completeness Accuracy Timeliness Consistency How will monitoring results be shared with the agency? With the CoC?

  27. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt Step 4: CoC, Agency and HMIS Leadership Efforts Important to celebrate successes and to allow room for growth Make the connection between the HMIS DQ efforts and other CoC lead efforts Impact of improved data quality on the accuracy of System Performance Measures and other local data analysis Impact of improved data quality on the ability to generate a By-Name or Prioritization List, to use HMIS for coordinated entry, etc.

  28. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt Key Considerations in Step 4 Is everyone at the CoC, agency and HMIS Lead level clear about the role that they play in ensuring data quality? How has this been communicated? How has data quality been integrated into CoC, agency and HMIS meetings? What are the motivations/barriers for getting people on board? Is special outreach or help needed to work with agencies that do not get HUD funding?

  29. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt Step 5: HMIS Lead s Administration of HMIS HMIS Lead should complete the monitoring on data quality Will need to run regular data quality reports for agencies to track progress beyond the monitoring visit HMIS Lead is at the center of this work and needs to make these connections to CoC efforts with the community

  30. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt Key Considerations in Step 5 Is the HMIS Lead regularly communicating about progress and barriers with the data quality program? Has this work become an ongoing effort and is it integrated into the regular operations of the CoC, agencies and HMIS Lead?

  31. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt Common Pitfalls Ignoring data quality until reports are due or data is published Emphasizing data quality for some staff and not others Failing to keep agency management informed Failing to understand the role/importance of end users Not taking advantage of the potential for quality data reporting

  32. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt What s Next? Don t wait!! The quality of your data now will impact your upcoming LSA reports Review HUD s Strategy Map out your baseline Discuss these steps with your CoC Review sample HMIS Data Quality Plans (they re on the web!) Talk to other CoCs about how they ve done this sort of work Spend time thinking through monitoring and compliance

  33. Data Quality 101: What is Data Quality Mike Lindsay, ICF Natalie Matthews, Abt Resources and Guidance HUD Data Strategy (2018) https://www.hudexchange.info/resource/5748/snaps-data-ta- strategy-to-improve-data-and-performance/ HUD Data Quality Brief (2017) https://www.hudexchange.info/resources/documents/coc- data-quality-brief.pdf HUD Data Quality Toolkit (2009) https://www.hudexchange.info/resources/documents/huddata qualitytoolkit.pdf

Related


More Related Content

giItT1WQy@!-/#giItT1WQy@!-/#giItT1WQy@!-/#giItT1WQy@!-/#giItT1WQy@!-/#giItT1WQy@!-/#