Rebecca Kopriva, University of Maryland rkopriva@umd.edu What Might Disability Practitioners Learn...

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Rebecca Kopriva, University of Maryland rkopriva@umd.edu

What Might Disability Practitioners Learn from STELLA,

A Computerized System for Selecting Accommodations for ELLs?

STELLA stands for

The

Selection Taxonomy

for

English Language Learner Accommodations

Federally funded by USED

Collaboration of• University of Maryland • South Carolina Department of Education• North Carolina Department of Public Instruction• Maryland State Department of Education• District of Columbia Public Schools• Austin Independent School District• American Association for the Advancement of Science

(AAAS)

What is STELLA?

STELLA is a computerized decision-making system designed to provide a systematic mechanism for:

– Appropriately defining and identifying different types of English language learners,

– Matching these students to the accommodation methods appropriate for each student.

Purpose of STELLA:

While appropriate accommodations are being identified and integrated into large-scale academic achievement systems, how do the proper accommodations get to the correct students?

This is the question that STELLA addresses.

Students 3 Forms Conversion and Consolidation

Rules

Computerized Profile of

Each Student

DecisionRules

Test Accommodations for Each Student

Test Accommodation

Domain

Framework of STELLA

Data Collection Mechanism• Teacher, Parent, and Records Forms

Preloaded• Relevant Student Information Variables• Domain of Promising Test Accommodations• Student Information Conversion and Consolidation Rules• Test Accommodation Decision-Making Rules

Output• Student Profile• Accommodation Decisions for Each Student

Associated Materials• Data Collection Forms Handbook• Output Interpretation Handbook• Technical Manual

How might STELLA be Helpful to You?

Relevant questions might include :

• How did key student variables get identified?• What was the thinking behind the prioritization of

variables in the organizational algorithms?• Why did we choose the 3 sources of information

from whom to collect data?• What might the results tell disability practitioners

about who might benefit from a systematic decision-making process?

Relevant Characteristics of Students

Student

Language Proficiency

Cultural Proximity

US Schooling

Student

Language Proficiency Cultural Proximity

English L1

ReadingWriting

SpeakingListening

ReadingWriting

SpeakingListening

US Schooling

Student

Language Proficiency Cultural Proximity

Time in School Schooling Experiences Testing Experiences

Time in USConsistency

Structure of Academic YearResources

Types/Purposes of Testing

FormatsPractices

US Schooling

Student

Language Proficiency

Cultural Proximity US Schooling

NeedsClassroom

Experiences

Current Domain of Accommodations

• Pre-Test Best Practice Accommodations– Family Assessment Night– Tailored Classroom Support

• Forms– Standard or some Universal Design Forms– Access-based Form– L1 or Side-by-Side forms as available

• Tools– Bilingual word list, general or test specific– Picture-word dictionary– Problem solving tools

• Administration– Small group– Individual Administration– Oral English – Oral L1– Language Liaison– Extra time– More frequent breaks

• Response– Written L1 or code switching– Oral English– Oral L1 or code switching– Demonstrated or modeled response

Data Collection

• Forms (pull down menus and bubbles to explain questions)

Records Form• Language of content instruction per content

area• English language Proficiency information• L1 test information (if any)• ELL program (for student profile only)

Parent/Guardian Interview Form*• Interview protocol with rating scales• L1 information, 4 domains• Full-time academic programs in U.S.

– Length of time in U.S. schools– Consistency

• School atmosphere in native country if applicable

– Time (months, days/week, hours/day)– Number of students in classroom– Describing the school (e.g. chalkboards, desks,

textbooks per student, other books, supplies for math or science, additional comments

Parent/Guardian Interview Form, cont.*• Types of tests, assessments in schools in

native country– Formal high stakes, formal not high stakes, types of

ongoing classroom evaluations, methods or tasks used to assign grades

– Accurate reflection of child’s achievement?

• Assessments in U.S. schools– Accurate reflection of achievement?– Experience with various test formats

*Older students may be able to complete this or a similar form.

Teacher Form

• English and L1 proficiency judgments– Explanation of judgment criteria– L1 judgment includes a don’t know option

• Standardized score accuracy and judgments about reasons for inaccuracy

• Student’s experience with standard test formats

• Student’s perceived purpose of standardized testing

• Classroom test condition options• Teacher’s judgment about condition options

that help student on classroom tests, evaluations

Test Conversion Rules

• English language proficiency tests are currently preloaded in the system. Output from each of the tests are put on a common “scale” for the purposes of selecting accommodations.

Currently, output from 4 tests are preloaded. There is also the opportunity for personnel to add results from other tests.

In all cases score conversion rules place students on a common scale with four levels:– Beginner ELL– Low intermediate ELL– High intermediate ELL– Grade level competitive ELL*

* Academically thriving in mainstream classrooms

Student Information Consolidation Rules

In several cases more than one piece of student information is used to make judgments about the his or her level on relevant variables. Two types of consolidation rules are part of STELLA.

These are:– Consolidation of data from related items– Consolidation of information from more than one

source

From More Than One Question: An Example

Time in School = LOW

If the student has been in the US less than 1 academic year

ORIf the student has been in US between 1 and 2 years

AND has missed more than two months of school per year for 1 or more years.

ORIf the student has been in US between 2 and 3 years

AND has missed more than two months of school per year for more than one year.

From More Than One Source: An Example

For L1 proficiency, consolidation rules are applied to information from teacher, parent and records.

Decision-Making Rules for Accommodations

A beginning set of decision-making rules were developed and tested. These rules take relevant student information and pair it with relevant accommodation factors for individual students. The accommodation factors identify which student needs the specific accommodation was designed to remediate.

In this way, individual students are matched with accommodations appropriate to their particular needs.

An Example

Current Status

At this time, the rules explicitly use information from English language reading and oral proficiency, and L1 reading proficiency to make broad decisions.

Cultural proximity and US schooling variables are informally used to make the final decisions about the selection of accommodations. Future decision trees will be developed which formally identify how these latter factors are used.

Current Adaptation Possibilities

1. STELLA recognizes that different states allow different accommodations. As such, the platform for STELLA is designed so that the decision making rules can be adapted to suit individual agencies. The output in STELLA specifies the accommodations allowed for each agency using it.

In addition, since the accommodations selected for each student is based on research and other best practice literature, STELLA also displays the results identified for each student that are based on this literature. In this way, teachers and others have guidance about additional accommodations that should be useful for ELL students with specified needs.

2. New accommodations can also be added to the system.

Example of Another Decision Tree

STELLA Output

1. Individual Student Profile– English language proficiency, 4 domains – L1 proficiency, 4 domains – Cultural proximity, 5 variables

• Previous schooling experiences• Time in U.S.• U.S. Experience with testing procedures• ELL program record in U.S.• Native country

2. Recommended Accommodations

Student Profile Example

Recommended Accommodations

Initial Verification Studies

1. Cut-score Study

2. Independent Raters Study

1. Computer-based Cut-Score StudyMethod• 276 3rd and 4th grade Spanish-speaking ELL

students administered mathematics test (30 multiple choice and 3 constructed response items).

• Based on information from teachers, schools, appropriate accommodations were identified for each student.

• Accommodations (picture-word, Spanish-English, oral English) were randomly assigned. Each student received none, 1, 2 or 3.

1. Cut-Score Study cont.

After completing test:• Students were assigned to 3 groups:

Appropriate accommodation group, random accommodation group, no accommodation group (IV); scores (DV).

Findings:• ANOVA results indicate that a significant

difference (F=3.2, p=.04).

1. Cut-Score Study cont.

Findings cont.• Appropriate accommodations group scored

significantly higher than other two groups:t (no/app) = 2.24, p=.03; t (random/app) = 2.33, p=.02

• No significant difference between random and no accommodations groups

t (random/no) = 1.67, p =.49• Regression results found accommodations

addressed ELP reading and listening, L1 reading needs

1. Cut-Score Study cont.

Implications• For accommodations assignment:

– Variables utilized appear to be among the most salient.

• For validity of scores:– When accommodations were non-appropriate,

scores did not increase over those receiving no accommodations. With appropriate accommodations, scores did increase. This pattern suggests improved validity.

2. Independent Raters StudyMethod• 5 sets of accommodations (STELLA, 3

teacher recommendations, 1 randomly generated)

• 4 raters: 3 teachers/ELL specialists, 1 researcher with experience in ELL testing

• Reviewed completed forms for each student• Blindly rated 5 sets of accommodations for

each student from most appropriate to least appropriate

2. Raters Study cont.Findings

• ANOVA results of ratings found a significant difference by accommodation sets (F = 76.789, p <.001).

• Significant difference between STELLA findings and all other findings, best fit for STELLA (p = .000).

• No significant difference between any of the other findings.

Rater by source interaction was not significant (F = 1.184, p = .288), suggesting that raters did not differentially assign accommodation sets

2. Raters Study cont.Implications:• Findings suggest that teacher ratings are not

significantly different from random, no matter how much targeted information they collect.

• Even when teachers know what variables they are asked to focus upon, their results are not significantly different from when they are asked to assign accommodations based on only their understanding of the students.

• STELLA results consistently and significantly provide best fit.

Next Steps

• Continual refinement and customization necessary.

• Additional and more explicit cut points need to be validated.

• Data needs to be collected on the impact of the system for different ages and content areas.