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Instrument
4
Child Welfare Study to Enhance Equity with Data
(CW-SEED) Demonstration Guide
The demonstration
guide will help the CW-SEED project team understand how and to what
extent local child welfare agencies and other organizations involved
with child welfare agencies collect and use quantitative and
qualitative data to examine equity in child welfare services and
family outcomes. The respondents will include staff from the child
welfare agency, partner agencies, and community organizations. The
observation guide will complement the interviews. Whenever
possible, interviewers will ask staff to demonstrate how data
practices work to support the agency or organization’s efforts
to advance equity.
The
average estimated public reporting burden for this collection of
information is about 60 minutes per observation of the
demonstration. Providing information is voluntary, and all
responses that are collected are kept private to the extent
permitted by law.
An
agency may not conduct or sponsor, and a person is not required to
respond to, a collection of information unless it displays a
currently valid Office of Management and Budget (OMB) control
number. The OMB number for this information collection is
xxxx-xxxx, and the expiration date is xx/xx/20xx.
CW-SEED
Demonstration Guide
Key
definitions:
Data:
For this conversation, we are defining data as information that
is collected about individuals and families that come into
contact with the child welfare system. Examples include
information about age, gender identity, disability, and
race/ethnicity, as well as descriptive information such as
household structure, or the events that led to a child being
placed in out-of-home care. In this study we are particularly
interested in information agencies are collecting that can help
assess and address equity, or inequities, in the child welfare
system at the local level.
Data
practices: We use the term data practices to broadly
encompass all activities that involve data, including data
planning, collection, access, and analysis; use of statistical
tools and algorithms; and data reporting and dissemination.
Unless otherwise specified, when thinking about data practices,
please consider practices across the continuum of child welfare
services, from prevention to addressing issues of child abuse and
neglect, through permanency or other discharges (such as, aging
out).
Data
lifecycle: The data life cycle refers to the sequence
of stages a particular unit of data goes through. In CW-SEED, we
consider the data life cycle to include data planning,
collection, data quality assessment, data organization, analysis,
equity assessment, reporting, and dissemination. Feedback could
then inform subsequent rounds of data planning, collection, and
so on.
Equity:
The consistent and systematic fair, just, and impartial
treatment of all individuals, including individuals who belong to
underserved communities that have been denied such treatment,
such as Black, Latino, and Indigenous and Native American
persons, Asian Americans and Pacific Islanders and other persons
of color; members of religious minorities; lesbian, gay,
bisexual, transgender, and queer (LGBTQ+) persons; persons with
disabilities; persons who live in rural areas; and persons
otherwise adversely affected by persistent poverty or inequality.
(Consistent
with Executive Order (EO) 13985 [Advancing
Racial Equity and Support for Underserved Communities Through the
Federal Government])
Underserved
communities:
Populations sharing a particular characteristic, as well as
geographic communities, that have been systematically denied a
full opportunity to participate in aspects of economic, social,
and civic life. (Consistent with EO 13985 [Advancing
Racial Equity and Support for Underserved Communities Through the
Federal Government])
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Brief
Script
1. Introduce
the moderator and co-facilitator
Thank
you again for taking the time to demonstrate [name of data
system/process/tool/analysis/reporting process] for us. My name is
[NAME,] and my colleague is [NAME]. We are from Mathematica, an
independent research firm, and we are here to learn about [DATA
PRACTICE OF INTEREST].
2. Explain
the project and purpose of discussion
I am going to start out by giving
you a bit of background and talk about why we wanted to meet with you
today. We are conducting the Child Welfare Study to Enhance Equity
with Data (CW-SEED) project for the Office of Planning, Research, and
Evaluation in the Administration for Children and Families at the
U.S. Department of Health and Human Services. This project is
designed to understand how data practices may be implemented by child
welfare agencies to advance equity and address inequities. By data
practices we mean the planning, collection, access, and analysis; use
of statistical tools and algorithms; and data reporting and
dissemination. Findings from this study are intended to identify
emerging practices and lessons learned.
We
are interested in hearing about the approaches, processes,
challenges, and facilitators to using data practices to advance
equity in your [AGENCY/ORGANIZATION]. We are interviewing leaders,
supervisors, direct service and data staff from the child welfare
agency, partner agencies, and community organizations about the data
practices they are engaging in to advance equity. We are also
speaking with members of advisory groups that work with
[AGENCY/ORGANIZATION].
We have provided a copy of the
Consent Form. I’m going to review the content of that form
before we begin.
3. Privacy
and recording [Read
this section verbatim]
We expect this demonstration to
take up no more than 60 minutes. Before we start, I want to let you
know that your participation is voluntary. We will use the
information we observe and you share with us to write a summary of
what we have learned. We will not connect your name to any of your
responses, so please feel free to talk openly about your opinions. We
will keep your identity private to the extent permitted by law.
We will be taking notes, but we
also want to record the conversation to make sure we capture the
information you share accurately when we write reports. We will
destroy the recording at the end of the project. If
you want to say anything that you do not want recorded, please let me
know, and I will be glad to pause the recorder and stop taking notes.
There
are no consequences if you choose not to participate in this
discussion. If you do not know the answer to a question, please say
so, and we will simply move on. You do not have to answer any
questions that you don’t want to answer.
We also ask that you keep the
discussion private, and do not share what we discuss here with others
outside this room.
If
the demonstration will include case-level data we would prefer to see
testing or training data, or deidentified data, if it is available.
If such data is not available, we can comply with your
[AGENCY/ORGANIZATION]’s nondisclosure requirements as needed.
Do
you have any questions on the study?
Do
you agree to participate in the study
Do
we have your permission to record the conversation for notetaking
purposes only?
I’ll
start the recording. (start
recorder only if participant(s) agree to be recorded).
Interviewer
and note taker: Whenever possible we will observe demonstrations of
data systems, processes, tools to collect data or information, and
analysis and reporting processes related to the equity work being
done by the child welfare agency and its partners. Use this
demonstration guide to collect detailed descriptions of what you
observe. The questions in the guide are separated by the type of
demonstration being conducted. Repeat sections as needed if you are
observing multiple data systems, processes, tools, analyses, or
reports.
Type
of demonstration
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Description
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Respondent
background
Only
provide responses for this section if not completed in another
interview
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Job
title
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Length
of time at agency or organization
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Job
responsibilities
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Partner
staff: Agency or organization’s relationship with child
welfare agency
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Data
system
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What
data system is being observed?
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What
data elements related to equity are collected in, stored in, or
reported from the data system? In particular, what data elements
are available on demographic, socioeconomic, and other
characteristics which can be used to assess equity among
populations, such as race/ethnicity or SOGIE data? What other
data elements are available, such as those on services or
outcomes, that can be used to assess equity among populations?
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Who
is responsible for collecting and entering the data into the data
system? Is this the same for all data, including data elements
related to equity?
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How
are equity-related data elements entered? From a drop-down menu
of options, as open text fields, and/or another way? Provide
details including menu options if applicable.
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Are
data reviewed for accuracy? What are the processes for reviewing
data for accuracy? What happens when an inconsistency is
discovered?
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Can
the data fields related to equity in this data system be skipped,
omitted, or left blank? What percentage of the fields related to
equity are missing data?
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Can
data be updated in the system? What elements are updated? Under
what circumstances? How is this done? Who can make updates?
For example, can only the assigned caseworker make updates, or
are there data quality specialists who address this? Is there an
automated process in place to make updates? If data are updated,
what happens to the previous entry? Are there dates associated
with each new data update (e.g., SOGIE category ‘Q’
on mm/dd/yyyy; but then updated to SOGIE category ‘L’
on mm/dd/yyyy, etc.)?
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Who
has access to this data? Are the data shared? If so, with who?
How is this done?
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Are
reports generated from the data? If so, what is the process for
getting the report? Who has access to these reports? How are
these reports used (such as, to reduce inequities in removals, to
improve services)?
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What
resources (manuals/guides/codebooks) are available for this data
system? What trainings, including onboarding, are available for
this data system?
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Tool
or other resource for collecting data or information related to
equity
Tools
and other resources include forms, policies, or practice guidance
case workers use to collect intake information related to equity
in a structured way.
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What
tool or resource is being observed?
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What
is the purpose of the tool or resource?
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What
data system is involved?
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What
data elements related to equity are involved?
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What
is the process for using this tool or resource? Describe in
detail.
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Who
uses this tool or resource?
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Is
the tool or resource used at a specific point during the agency
or organization’s contact with a family or child? Describe
when it is used and under what circumstances.
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What
training, guidance, or policies exist to support staff in using
the tool or resource?
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Are
there aspects of using the tool or resource that could be prone
to error or bias? If so, describe. Describe any guardrails in
place to reduce the likelihood of error or bias.
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Can
any data related to equity that is collected using this tool or
resource be skipped, omitted, or left blank? What percentage of
the fields related to equity are missing data?
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What
happens after the tool or resource has been used? Who is
responsible for these next steps?
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Is
the resulting data or information shared? If so, with whom? How
is this done?
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Is
the data or information used to generate reports? If so, how is
this done?
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Analysis
and use of algorithms
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What
analysis (or use of algorithm(s)) is being observed or reviewed?
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How
is equity included in this analysis? For example, is the
analysis conducted specifically to assess equity? Is the
analysis for a broader purpose but equity is also considered?
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What
is the unit of analysis? For example, is the analysis being
conducted on the individual, family, supervisor, office, or
regional level?
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What
data are used? Describe in detail. Include information about
how data are broken out by the different dimensions of equity
(such as race/ethnicity, SOGIE), the level of detail shared, and
which identities might be grouped together during reporting.
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What
is the process for conducting this analysis? Is the process for
conducting the analysis automated?
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Who
conducts this analysis?
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What
is the purpose of this analysis (such as, to understand
inequities to improve services)?
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How
often is this analysis conducted?
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How
easily could it be adapted to include other data element relevant
to equity, use with other datasets, etc.?
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What
training, guidance, or policies exist to support staff in
conducting the analysis?
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What
is the quality of the data? Provide examples. How frequently is
the data needed for this analysis missing?
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Are
there parts of the analysis that could be prone to error or bias?
If so, describe. Describe any processes in place to reduce the
likelihood of error or bias.
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Reporting
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What
report is being generated during this demonstration?
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What
is the purpose of the report? With whom is the report shared?
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What
is the process for generating this report? What data is used?
Describe in detail. Include information about how data are
broken out by the different dimensions of equity (such as
race/ethnicity, SOGIE), the level of detail shared, and any
identities that are grouped together.
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Who
generates this report?
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How
often is this report produced?
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What
training, guidance, or policies exist to support staff in
generating the report?
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What
is the quality of the report? Provide examples. How frequently
is data that is needed for the report missing?
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Are
there parts of the process of generating the report that could be
prone to error or bias? If so, describe. Describe any guardrails
in place to reduce the likelihood of error or bias.
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Other
data practices
Use
this section to record observations of demonstrations that do not
fit into the above categories.
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What
data practice is being demonstrated?
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What
is the purpose of this data practice?
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What
data related to equity is involved (such as race/ethnicity or
SOGIE data)?
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Who
is responsible for completing this data practice?
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Are
data reviewed for accuracy, missingness, or other aspect of
quality? Can data fields related to equity be skipped, omitted,
or left blank? What percentage of the fields related to equity
are missing data?
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Are
data updated? Under what circumstances? How is this done? Who
can make updates? For example, can only the assigned caseworker
make updates, or are there data quality specialists who address
this? Is there an automated process in place to make updates?
If data are updated, what happens to the previous entry? Are
there dates associated with each new data update (e.g., SOGIE
category ‘Q’ on mm/dd/yyyy; but then updated to SOGIE
category ‘L’ on mm/dd/yyyy, etc.)?
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Who
has access to the data involved in this data practice? Are the
data shared? If so, with who? How is this done?
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Are
the data used to generate reports? If so, how is this done? Who
has access to these reports? How are these reports used? How
frequently are they generated?
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Are
there aspects of the data practice that could be prone to error
or bias? If so, describe. Describe any guardrails in place to
reduce the likelihood of error or bias.
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General
questions
Respond
to these questions for all observations
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Has
the data practice been revised or changed over time? If so, how
has it changed? Why has it changed?
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How
has the data practice been used to understand, assess, and
advance equity? How has the agency or partner organization used
the information resulting from the data practice? How has this
informed or shaped policy or practice (such as, to identify
LGBTQ+ prospective foster or adoptive parents, to identify or
interventions for specific demographics or client
characteristics)?
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How
effective is this data practice? Has the data practice improved
equity? For example, has the data practice helped to reduce
disparities, provide equitable access to services, or help
families achieve more equitable outcomes? Respond based on
perception, respondent experience, or evidence. Is there
evidence to support the data practice’s effectiveness? If
so, describe.
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What
are the benefits and strengths of this data practice?
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What
are the challenges associated with this data practice?
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How
could this data practice be improved?
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How
easy or challenging would this data practice be to adapt to other
jurisdictions? What would need to be in place for another
jurisdiction to implement the practice?
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Has
the data practice changed over time? If so, how has it changed,
why has it changed, and how did the agency or organization
determine a change was needed?
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Additional
information
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Use
this section as needed to enter additional notes or contextual
information
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Additional
comments
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| File Type | application/vnd.openxmlformats-officedocument.wordprocessingml.document |
| Author | Liana Washburn |
| File Modified | 0000-00-00 |
| File Created | 2023-08-30 |