Collecting High Quality Outcome Data Part 1 Collecting

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Collecting High Quality Outcome Data: Part 1 Collecting High Quality Outcome Data Copyright ©

Collecting High Quality Outcome Data: Part 1 Collecting High Quality Outcome Data Copyright © 2012 by JBS International, Inc. Developed by JBS International for the Corporation for National & Community Service

Collecting High Quality Outcome Data: Part 1 Learning Objectives By the end of this

Collecting High Quality Outcome Data: Part 1 Learning Objectives By the end of this module, you will be able to: • Recognize the benefits of collecting high-quality data • Use theory of change to think about measurement • Identify and evaluate merits of data sources and instruments • Describe some uses of data collection methods, and evaluate their merits • Describe steps to implement data collection • Recognize data quality 2

Collecting High Quality Outcome Data: Part 1 What Do We Mean By Data? •

Collecting High Quality Outcome Data: Part 1 What Do We Mean By Data? • Data: Information collected to answer a measurement question, also known as evidence • Data collection occurs as a planned process that involves recording information in a consistent way • Instruments aid in collecting consistent data 3

Collecting High Quality Outcome Data: Part 1 Ensuring Data Quality: Reliability, Validity, Bias •

Collecting High Quality Outcome Data: Part 1 Ensuring Data Quality: Reliability, Validity, Bias • Reliability is the ability of a method or instrument to yield consistent results under the same conditions. • Validity is the ability of a method or instrument to measure accurately. • Bias involves systematic distortion of results stemming from how data are collected and how instruments are designed. 4

Collecting High Quality Outcome Data: Part 1 Benefits of Collecting High-quality Data • Sound

Collecting High Quality Outcome Data: Part 1 Benefits of Collecting High-quality Data • Sound basis for decision making • Improve service quality and service outcomes • Increase accountability • Tell story of program achievements 5

Collecting High Quality Outcome Data: Part 1 Measurement Question Implied by Theory of Change

Collecting High Quality Outcome Data: Part 1 Measurement Question Implied by Theory of Change Community Problem/Need Specific Intervention Intended Outcome Students with poor attitudes towards school at risk of failing academically. Individualized mentoring to promote positive attitudes towards school. Students improve attitudes towards school. "Did students in the mentoring program improve their attitudes towards school? " 6

Collecting High Quality Outcome Data: Part 1 Identifying a Data Source • Data source:

Collecting High Quality Outcome Data: Part 1 Identifying a Data Source • Data source: The person, group or organization that has information to answer the measurement question • Identify possible data sources; list pros and cons of each • Identify a preferred data source; consider its accessibility • Alternative data sources: consider if they can give you same or comparable data 7

Collecting High Quality Outcome Data: Part 1 Data source and type of outcome Depends

Collecting High Quality Outcome Data: Part 1 Data source and type of outcome Depends partly on the type of change you want to measure - attitude, knowledge, behavior, or conditions. • Data on changes in attitudes or knowledge usually come directly from persons experiencing these changes. Attitude Knowledge Behavior Condition • Data on changes in behavior or conditions can come from either persons experiencing these changes or from other observers. 8

Collecting High Quality Outcome Data: Part 1 Comparing Data Sources “How did mentored students’

Collecting High Quality Outcome Data: Part 1 Comparing Data Sources “How did mentored students’ feelings towards teachers change over time? ” Pros Cons • In best position to describe how they feel about their teachers • May not be open about their feelings towards teachers Students Teachers Mentors • May not know how students • May know how students feel about other teachers feel towards them • May only spend one class period with students • • May know how students feel about a wide range of issues, including • teachers Depends on students’ willingness to share feelings with mentors Students and mentors may not discuss this issue much 9

Collecting High Quality Outcome Data: Part 1 Next, Consider Choice of Methods Method: Process

Collecting High Quality Outcome Data: Part 1 Next, Consider Choice of Methods Method: Process or Steps Taken to Systematically Collect Data Survey Written questionnaire completed by respondent Interviewer poses questions and records responses; face-to-face or via telephone Observation Observer records behavior or conditions using via checklist or other form Standardized Test Used to assess knowledge of academic subjects (reading, math, etc. ) 10

Collecting High Quality Outcome Data: Part 1 Consider Choice of Methods (continued) Method: Process

Collecting High Quality Outcome Data: Part 1 Consider Choice of Methods (continued) Method: Process or Steps Taken to Systematically Collect Data Tracking Sheet Used to document service delivery; used primarily to track outputs Focus Group Facilitator leads small group through discussion indepth discussion of topic or issue Diaries, Journals Respondent periodically (daily) records information about his/her activities or experiences Secondary Data Using data gathered by other agencies that can be used to assess program performance 11

Collecting High Quality Outcome Data: Part 1 Method and Outcomes Type— Attitude and Knowledge

Collecting High Quality Outcome Data: Part 1 Method and Outcomes Type— Attitude and Knowledge Attitude/Belief Knowledge/Skill Definition Thoughts, feelings Understanding, know-how Examples Attachment to school (academic engagement) Becoming a better reader Student: Survey or interview Learner: Standardized test* Generally Preferred Data Source/Method * Use of standardized tests is mandated for certain performance measures in the Education Focus Area. Other types of knowledge (e. g. , financial literacy) can be measured using other types methods. 12

Collecting High Quality Outcome Data: Part 1 Method and outcome type— behavior and condition

Collecting High Quality Outcome Data: Part 1 Method and outcome type— behavior and condition Behavior Condition/Status Definition Action, conduct, habits Situation or circumstances Examples Exercising more frequently Improving stream banks Beneficiary: Exercise log Land manager: Observation checklist or rubric Generally Preferred Data Source/Method 13

Collecting High Quality Outcome Data: Part 1 Where to Find Instruments • For CNCS

Collecting High Quality Outcome Data: Part 1 Where to Find Instruments • For CNCS priorities and performance measures, look for instruments by goal and focus area • Go to http: //www. nationalservice. gov/resources/npm/hom e • Programs and projects can look anywhere they like to find instruments: • Use Internet search engines • Talk to others within you professional network to find out what they are using • Look at evidence for intervention – how measured before? 14

Collecting High Quality Outcome Data: Part 1 Evaluating Instruments • Pre-post measurement is preferable

Collecting High Quality Outcome Data: Part 1 Evaluating Instruments • Pre-post measurement is preferable to post-only • Can the instrument measure the outcome? • • • Appropriate for your intervention? Appropriate for your beneficiaries? How many questions measure the outcome? • Single question low-quality data • Series of questions: Too long or complex? • • Instrument should not exceed 2 pages Do questions cover all relevant aspects of your intervention? Can questions not specific to your intervention be removed? 15

Collecting High Quality Outcome Data: Part 1 Define Outcome Dimensions: The main aspects, features,

Collecting High Quality Outcome Data: Part 1 Define Outcome Dimensions: The main aspects, features, or characteristics that define an outcome and that should be taken into account for measurement to be valid Example: Increased attachment to school: • Feelings about being in school • Feelings about doing school work • Feelings towards teachers • Feelings towards students 16

Collecting High Quality Outcome Data: Part 1 Example: Dimensions of Attachment to School a.

Collecting High Quality Outcome Data: Part 1 Example: Dimensions of Attachment to School a. a Feelings about being in school c. c Relations with other students d. b. b Feelings about doing school d Relations with teachers work a a b b c c d d 17

Collecting High Quality Outcome Data: Part 1 Summary: Identifying Outcome Dimensions • National performance

Collecting High Quality Outcome Data: Part 1 Summary: Identifying Outcome Dimensions • National performance measures: look at performance measurement instructions • Look at your theory of change • Talk to stakeholders and program staff • Build up a list of dimensions; look for repeated themes Community Problem/Need Specific Intervention Intended Outcome Evidence • Guides choice of intervention • Supports cause-effect relationship 18

Collecting High Quality Outcome Data: Part 1 Instrument Design Issues • Crowded layout •

Collecting High Quality Outcome Data: Part 1 Instrument Design Issues • Crowded layout • Double-barreled questions • Biased or “leading” questions • Questions that are too abstract • Questions that use unstructured responses inappropriately • Response options that overlap or contain gaps • Unbalanced scales 19

Collecting High Quality Outcome Data: Part 1 Crowded Layout Problem: Crowded layout Most of

Collecting High Quality Outcome Data: Part 1 Crowded Layout Problem: Crowded layout Most of the time, how do you feel about doing homework? ☐ I usually hate doing homework ☐ I usually don’t like doing homework ☐ I usually love doing homework Solution: Don’t use crowded layouts Most of the time, how do you feel about doing homework? ☐ I usually hate doing homework ☐ I usually don’t like doing homework ☐ I usually love doing homework 20

Collecting High Quality Outcome Data: Part 1 Double-barreled Question Problem: Asking two questions in

Collecting High Quality Outcome Data: Part 1 Double-barreled Question Problem: Asking two questions in one How do teachers and students at your school feel about the mentoring program? They strongly like it ☐ They are undecided ☐ They dislike it ☐ They strongly dislike it ☐ Solution: Break out questions separately How do teachers at your school feel about the mentoring program? They strongly like it ☐ They are undecided ☐ They dislike it ☐ They strongly dislike it ☐ How do students at your school feel about the mentoring program? They strongly like it ☐ They are undecided ☐ They dislike it ☐ They strongly dislike it ☐ 21

Collecting High Quality Outcome Data: Part 1 Biased or “Leading” Question Problem: Biased or

Collecting High Quality Outcome Data: Part 1 Biased or “Leading” Question Problem: Biased or “leading” questions Has the mentoring program improved how you feel about going to school? ☐ Yes ☐ No opinion Solution: Use neutral questions How has the mentoring program affected how you feel about going to school? ☐ I feel better about going to school. ☐ I feel worse about going to school. ☐ I feel about the same about going to school. ☐ No opinion 22

Collecting High Quality Outcome Data: Part 1 Abstract or Broad Question Problem: Questions are

Collecting High Quality Outcome Data: Part 1 Abstract or Broad Question Problem: Questions are too abstract or broad. Did you enjoy the mentoring program? Yes Not Sure Solution: Make questions more concrete and specific. Would you recommend the mentoring program to other students? Yes Not Sure 23

Collecting High Quality Outcome Data: Part 1 Not Using Structured Responses Problem: Using unstructured

Collecting High Quality Outcome Data: Part 1 Not Using Structured Responses Problem: Using unstructured responses when structured responses are appropriate How much do your grades matter to you? Solution: Provide structured responses when appropriate How much do your grades matter to you? ☐ Not at all ☐ A little ☐ Somewhat ☐ A lot 24

Collecting High Quality Outcome Data: Part 1 Response Options with Overlaps or Gaps Problem:

Collecting High Quality Outcome Data: Part 1 Response Options with Overlaps or Gaps Problem: Response options that overlap or contain gaps Approximately how many hours a day to you typically spend doing homework? ☐ Less than 1 hour ☐ 0 to 2 hours ☐ 4 to 5 hours ☐ More than 5 hours Solution: Scale with no overlaps or gaps Approximately how many hours a day to you typically spend doing homework? ☐ Less than 1 hour ☐ About 2 hours ☐ About 3 hours ☐ About 4 hours ☐ More than 4 hours 25

Collecting High Quality Outcome Data: Part 1 Unbalanced scales Problem: Using unbalanced scales Poor

Collecting High Quality Outcome Data: Part 1 Unbalanced scales Problem: Using unbalanced scales Poor ☐ Average ☐ Good ☐ Very Good ☐ Excellent ☐ Good ☐ Very Good ☐ Solution: Use balanced scales Very Poor ☐ Average ☐ 26

Collecting High Quality Outcome Data: Part 1 What else to look for in selecting

Collecting High Quality Outcome Data: Part 1 What else to look for in selecting an instrument • Can the instrument work in your context? • Does the instrument use simple and clear language? • Is the instrument appropriate for the age, education, literacy, and language preferences of respondents? 27

Collecting High Quality Outcome Data: Part 1 What else to look for in selecting

Collecting High Quality Outcome Data: Part 1 What else to look for in selecting an instrument, continued • Does the instrument rely mostly on multiple choice questions? • Is the ready for use, or does it need to be modified? • How will you extract information from the instrument to address performance measurement targets? 28

Collecting High Quality Outcome Data: Part 1 Implementing Data Collection After identifying a data

Collecting High Quality Outcome Data: Part 1 Implementing Data Collection After identifying a data source, method and instrument: 1. Identify data collection participants 2. Set a schedule for collecting data 3. Train data collectors 4. Pilot test the data collection process 5. Make changes 6. Implement data collection FOR BEST RESULTS make key decisions about how to implement data collection BEFORE program startup! 29

Collecting High Quality Outcome Data: Part 1 Step 1: Identifying data collection participants •

Collecting High Quality Outcome Data: Part 1 Step 1: Identifying data collection participants • Brainstorm a list of all the relevant players in the data collection process. This includes: • • Clients/beneficiaries National service participants • • • Staff members Host site staff Other stakeholders 30

Collecting High Quality Outcome Data: Part 1 Step 2: Creating A Data Collection Schedule

Collecting High Quality Outcome Data: Part 1 Step 2: Creating A Data Collection Schedule • • • Identifies who will collect data, using which instrument, and when Share with team to keep everyone informed Include stakeholders in planning Include dates for collecting, analyzing, and reporting data Select a format 31

Collecting High Quality Outcome Data: Part 1 Step 3: Training Data Collectors • Determine

Collecting High Quality Outcome Data: Part 1 Step 3: Training Data Collectors • Determine best person(s) to collect data • Provide written instructions for collecting data • Explain importance and value of data for program • Walk data collectors through instrument • Practice or role play data collection • Review data collection schedule • Explain how to return completed instruments 32

Collecting High Quality Outcome Data: Part 1 Step 4: Pilot Testing for Feasibility and

Collecting High Quality Outcome Data: Part 1 Step 4: Pilot Testing for Feasibility and Data Quality 1. Try out instruments with a small group similar to program participants 2. Discuss instrument with respondents 3. Analyze pilot test data to ensure the instrument yields the right information Questions for Debrief How long did it take to complete? What did you think the questions were asking you about? Were any questions unclear, confusing, or difficult to answer? Were response options adequate? Did questions allow you to say everything you wanted to say? 33

Collecting High Quality Outcome Data: Part 1 Steps 5 & 6: Make Changes &

Collecting High Quality Outcome Data: Part 1 Steps 5 & 6: Make Changes & Implement Your Plan Make Changes • Based on pilot test analysis: • • Improve instrument Strengthen process Implement Your Plan • Perform periodic quality control checks 34

Collecting High Quality Outcome Data: Part 1 Ensuring Data Quality: Key Criteria • Criteria

Collecting High Quality Outcome Data: Part 1 Ensuring Data Quality: Key Criteria • Criteria for collecting high-quality, useful outcome data: • • • Reliability Validity Minimizing Bias 35

Collecting High Quality Outcome Data: Part 1 Reliability • Reliability: The ability of a

Collecting High Quality Outcome Data: Part 1 Reliability • Reliability: The ability of a method or instrument to yield consistent results under the same conditions. • Requires that instruments be administer the same way every time: o Written instructions for respondents o Written instructions for data collectors o Train and monitor data collectors 36

Collecting High Quality Outcome Data: Part 1 Reliability • Design instruments to improve reliability

Collecting High Quality Outcome Data: Part 1 Reliability • Design instruments to improve reliability o Use clear and unambiguous language so question meaning is clear. Unclear language “How has the availability companionship services altered your capacity with respect to attending visits with medical practitioners in a timely manner? ” Clear language “How has use of companionship services affected your ability to get to medical appointments on time? ” 37

Collecting High Quality Outcome Data: Part 1 Reliability • Design instruments to improve reliability

Collecting High Quality Outcome Data: Part 1 Reliability • Design instruments to improve reliability o Use attractive, uncluttered layouts that are easy to follow. Cluttered layout “What grade are you in? ” ☐ 6 th grade ☐ 7 th grade ☐ 8 th grade Uncluttered layout “What grade are you in? ” ☐ 6 th grade ☐ 7 th grade ☐ 8 th grade 38

Collecting High Quality Outcome Data: Part 1 Validity • Validity is the ability of

Collecting High Quality Outcome Data: Part 1 Validity • Validity is the ability of a method or instrument to accurately measure what it is intended to measure. • Instrument measures the same outcome identified in theory of change • Instrument measures relevant dimensions of outcome (attitude, knowledge, behavior, condition) • Instrument results corroborated by other evidence 39

Collecting High Quality Outcome Data: Part 1 Minimizing Sources of Bias • Bias involves

Collecting High Quality Outcome Data: Part 1 Minimizing Sources of Bias • Bias involves systematic distortion of results stemming from how data are collected and how instruments are designed. • • Who: Non-responders = hidden bias • When and Where: Timing and location can influence responses • Bias can lead to over- or under-estimation of program results How: Wording that encourages or discourages particular responses 40

Collecting High Quality Outcome Data: Part 1 7 Ways of Minimizing Bias 1. Get

Collecting High Quality Outcome Data: Part 1 7 Ways of Minimizing Bias 1. Get data from as many respondents as possible 2. Follow up with non-responders 3. Take steps to reduce participant attrition 4. Work with program sites to maximize data collection 41

Collecting High Quality Outcome Data: Part 1 7 Ways of Minimizing Bias (continued) 5.

Collecting High Quality Outcome Data: Part 1 7 Ways of Minimizing Bias (continued) 5. Pilot test instruments and data collection procedures 6. Mind your language 7. Time data collection to avoid circumstances that may distort responses 42

Collecting High Quality Outcome Data: Part 1 Academic Engagement Did students in the mentoring

Collecting High Quality Outcome Data: Part 1 Academic Engagement Did students in the mentoring program increase their attachment to school? Output Number of disadvantaged youth/mentor matches that were sustained by the CNCS-supported program for at least the required time period (ED 4 A) Outcome Number of students in grades K-12 that participated in the mentoring or tutoring or other education program who demonstrated improved academic engagement (ED 27) How Measured Pre/post survey of students to gauge attachment to school 90 (of 100) students in grades 6 -8 that participate in the after Outcome Target -school program for 9 months will improve academic engagement, defined as feelings of attachment to school. 43

Collecting High Quality Outcome Data: Part 1 Academic Engagement— Reliability, Validity, Bias Did students

Collecting High Quality Outcome Data: Part 1 Academic Engagement— Reliability, Validity, Bias Did students in the mentoring program increase their attachment to school? Outcome Number of students in grades K-12 that participated in the mentoring or tutoring or other education program who demonstrated improved academic engagement (ED 27) How Measured Pre/post survey of students to gauge attachment to school Reliability Do survey responses reflect students’ stable and established beliefs about school or just fleeting and changeable feelings? Validity Does the survey get at the dimensions of school attachment that are relevant to the intervention? Are students telling us how the really feel or what they think we want to hear? Bias Does the survey ask the questions in a neutral way? Have we timed the survey to avoid unrelated factors like “exam stress” that could contaminate our results? 44

Collecting High Quality Outcome Data: Part 1 Summary of key points Steps to implement

Collecting High Quality Outcome Data: Part 1 Summary of key points Steps to implement data collection include identifying the players involved in data collection, creating a data collection schedule, training data collectors, pilot testing instruments, and revising instruments as needed. • A data collection schedule identifies who will collect data, using which instrument, and when. • Training data collectors by walking them through the instrument and role playing the process. • Pilot testing involves having a small group of people complete an instrument and asking them about the experience. 45

Collecting High Quality Outcome Data: Part 1 Summary of key points Reliability, validity, and

Collecting High Quality Outcome Data: Part 1 Summary of key points Reliability, validity, and bias are key criteria for data quality. • Reliability is the ability of a method or instrument to yield consistent results under the same conditions. • Validity is the ability of a method or instrument to measure accurately. • Bias involves systematic distortion of results due to over- or under-representation of particular groups, question wording that encourages or discourages particular responses, and by poorly timed data collection. 46

Collecting High Quality Outcome Data: Part 1 Summary of key points • The benefits

Collecting High Quality Outcome Data: Part 1 Summary of key points • The benefits of collecting high-quality data include providing a sound basis for decision making, improving service quality and outcomes, increasing accountability, and telling your story in a more compelling way. • Your theory of change, and the key measurement question embedded in it, is a useful a guide to measurement. • The type of outcome to be measured influences decisions about data sources, methods, and instruments. 47

Collecting High Quality Outcome Data: Part 1 Additional resources CNCS Performance Measurement o http:

Collecting High Quality Outcome Data: Part 1 Additional resources CNCS Performance Measurement o http: //nationalservice. gov/resources/npm/home Instrument Formatting Checklist o https: //www. nationalserviceresources. org/npm/practicumcollecting-data-part-2 Practicum Materials o http: //www. nationalservice. gov/resources/npm/corecurriculum 48