A Multilevel Study of the Impact of District-Level Characteristics on Texas Student Growth Trajectories on a High-Stakes Math Exam
Abstract
:1. Introduction
- Was there a significant improvement of Texas school districts’ fifth- and eighth-grade students’ performance on the State of Texas Assessments of Academic Readiness (STAAR) math test from 2016 to 2019?
- What was the impact of district-level characteristics (i.e., the percentage of economically challenged students, percentage of English learners, principals’ average number of years of experience, teachers’ average number of years of experience, teacher turnover rate, student mobility rate, teacher–student ratio, and percentage of full-time teachers) on students’ performance on the STAAR math test, when other variables are controlled for?
1.1. Texas State Standards for Math Instruction
- Applying math process standards to learn and demonstrate math problems;
- Following math standards to understand the relationship between rational numbers and place value;
- Computing positive rational numbers to solve math problems;
- Developing concepts of math equations and expressions;
- Classifying two-dimensional figures with graphic organizers based on properties;
- Understanding and quantifying volume;
- Solving math problems involving measurement with appropriate approaches and tools;
- Identifying attributes and process of a coordinate plane;
- Analyzing math problems via data collection, organization, and interpretation; and
- Managing personal financial resources for security reasons [21].
- Learning and justifying math knowledge;
- Using and representing real numbers in different forms;
- Describing dilations with proportional relationships;
- Clarifying proportional and non-proportional relationships with slope;
- Developing basic concepts of function with proportional and non-proportional relationships;
- Making connections between math relations and geometric formulas;
- Solving math problems with geometry knowledge;
- Solving problems with one-variable equations;
- Developing basic concepts of simultaneous linear equations with multiple representations;
- Generalizing and explaining transformational geometry concepts;
- Describing data with statistical procedures; and
- Thinking and solving problems in an economical manner [22].
1.2. State of Texas Assessments of Academic Readiness
1.3. Student- and District-Level Factors That Influence Student Subject Learning
1.4. Empirical Studies on Student- and District-Level Factors on Texas Middle School Students’ STEM Achievement
2. Materials and Methods
2.1. Research Design and Data Collection
2.2. Data Analysis and Model Specification
- Mathij is the percentage of students classified at a performance level at time i for school district j;
- β0j is the expected mean percentage of students classified at a STAAR performance level for an individual school district j;
- γ00 is the difference between Grade 5 and Grade 8 students in school districts regarding the percentage of students classified at a STAAR performance level in academic year 2016–2017;
- γ10 is the expected mean growth rate across districts during academic years 2016–2017 to 2018–2019 for Grade 5 and 8 students;
- u0j is the district-level random effect for γ00;
- rij is the deviation of time i from district j’s mean percentage of students classified at a STAAR performance level (i.e., a within-district random effect).
3. Results
4. Discussion
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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2016–2017 | 2017–2018 | 2018–2019 | ||||||||
---|---|---|---|---|---|---|---|---|---|---|
N | Mean | S.D. | N | Mean | S.D. | N | Mean | S.D. | ||
Math Approaches % | Grade 5 | 1140 | 78.91 | 14.52 | 1146 | 83.23 | 13.01 | 1148 | 81.13 | 14.20 |
Grade 8 | 1109 | 71.98 | 16.95 | 1113 | 75.50 | 16.21 | 1120 | 79.67 | 14.57 | |
Math Meets % | Grade 5 | 1140 | 43.31 | 18.34 | 1146 | 52.19 | 18.31 | 1148 | 50.93 | 18.30 |
Grade 8 | 1109 | 38.63 | 20.23 | 1113 | 44.07 | 21.06 | 1120 | 51.27 | 20.29 | |
Math Masters % | Grade 5 | 1140 | 19.45 | 12.49 | 1146 | 24.13 | 14.16 | 1148 | 30.02 | 15.43 |
Grade 8 | 1109 | 10.47 | 10.97 | 1113 | 11.86 | 12.11 | 1120 | 13.83 | 12.47 |
N | Mean | S.D. | |
---|---|---|---|
EC % | 1162 | 0.59 | 0.21 |
EL % | 1162 | 0.11 | 0.13 |
Principal Average Years | 1161 | 18.45 | 6.93 |
Teacher Average Years | 1161 | 11.49 | 3.38 |
Teacher Turnover Rate | 1155 | 20.45 | 10.22 |
Student Mobility Rate | 1162 | 0.15 | 0.09 |
Teacher–student Ratio | 1161 | 13.08 | 2.90 |
Full-time Teacher % | 1161 | 0.53 | 0.07 |
Fixed Effect | Coefficient (SE) | t(df) | p | |
Approaches Grade Level | Intercept (γ00) | 73.18 (0.41) | 179.66 (1936) | <0.001 |
Time (γ10) | 2.47 (0.15) | 16.03 (5570) | <0.001 | |
Grade Level | 5.07 (0.25) | 20.02 (5612) | <0.001 | |
Random Effect | Variance | Standard Error | z | |
Intercept (u0j) | 127.21 | 6.18 | 20.60 (<0.001) | |
Residual (rij) | 106.74 | 2.02 | 52.72 (<0.001) | |
Fixed Effect | Coefficient (SE) | t(df) | p | |
Meets Grade Level | Intercept (γ00) | 39.53 (0.52) | 75.87 (2045) | <0.001 |
Time (γ10) | 5.06 (0.20) | 24.96 (5598) | <0.001 | |
Grade Level | 3.95 (0.33) | 11.83 (5642) | <0.001 | |
Random Effect | Variance | Standard Error | z | |
Intercept (u0j) | 201.79 | 9.79 | 20.60 (<0.001) | |
Residual (rij) | 184.91 | 3.50 | 52.85 (<0.001) | |
Fixed Effect | Coefficient (SE) | t(df) | p | |
Masters Grade Level | Intercept (γ00) | 8.48 (0.35) | 24.54 (2207) | <0.001 |
Time (γ10) | 3.52 (0.14) | 24.80 (5602) | <0.001 | |
Grade Level | 12.43 (0.23) | 53.18 (5652) | <0.001 | |
Random Effect | Variance | Standard Error | z | |
Intercept (u0j) | 82.73 | 4.12 | 20.06 (<0.001) | |
Residual (rij) | 90.86 | 1.72 | 52.87 (<0.001) |
Fixed Effect | Coefficient (SE) | t(df) | p | |
Approaches Grade Level | Intercept (γ00) | 88.01 (4.26) | 20.67 (1175) | <0.001 |
Time (γ10) | 2.46 (0.15) | 16.00 (5559) | <0.001 | |
Grade Level | 4.98 (0.25) | 19.72 (5625) | <0.001 | |
EC % | −19.61 (1.69) | −11.61 (1164) | <0.001 | |
EL % | 8.13 (2.58) | 3.15 (1176) | 0.0017 | |
Principal Average Years | 0.09 (0.04) | 2.38 (1168) | 0.0176 | |
Teacher Average Years | 0.24 (0.11) | 2.23 (1158) | 0.0258 | |
Teacher Turnover Rate | −0.19 (0.03) | −6.38 (1178) | <0.001 | |
Student Mobility Rate | −52.58 (3.07) | −17.12 (1259) | <0.001 | |
Teacher–student Ratio | 0.01 (0.11) | 0.06 (1173) | 0.9505 | |
Full-time Teacher % | 6.52 (4.29) | 1.52 (1174) | 0.1284 | |
Random Effect | Variance | Standard Error | z | |
Intercept (u0j) | 50.36 | 2.91 | 17.31 (<0.001) | |
Residual (rij) | 105.76 | 2.01 | 52.68 (<0.001) | |
Fixed Effect | Coefficient (SE) | t(df) | p | |
Meets Grade Level | Intercept (γ00) | 55.67 (5.80) | 9.59 (1183) | <0.001 |
Time (γ10) | 5.06 (0.20) | 24.90 (5568) | <0.001 | |
Grade Level | 3.85 (0.33) | 11.54 (5630) | <0.001 | |
EC % | −33.78 (2.30) | −14.66 (1173) | <0.001 | |
EL % | 17.34 (3.52) | 4.92 (1184) | <0.001 | |
Principal Average Years | 0.14 (0.05) | 2.66 (1176) | 0.0080 | |
Teacher Average Years | 0.25 (0.15) | 1.70 (1167) | 0.0899 | |
Teacher Turnover Rate | −0.28 (0.04) | −6.85 (1186) | <0.001 | |
Student Mobility Rate | −36.79 (4.18) | −8.80 (1265) | <0.001 | |
Teacher–student Ratio | 0.21 (0.15) | 1.44 (1182) | 0.151 | |
Full-time Teacher % | 9.62 (5.84) | 1.65 (1182) | 0.0999 | |
Random Effect | Variance | Standard Error | z | |
Intercept (u0j) | 95.76 | 5.39 | 17.78 (<0.001) | |
Residual (rij) | 184.79 | 3.51 | 52.72 (<0.001) | |
Fixed Effect | Coefficient (SE) | t(df) | p | |
Masters Grade Level | Intercept (γ00) | 18.59 (3.97) | 4.68 (1179) | <0.001 |
Time (γ10) | 3.52 (0.14) | 24.70 (5563) | <0.001 | |
Grade Level | 12.38 (0.23) | 52.88 (5628) | <0.001 | |
EC % | −23.94 (1.58) | −15.20 (1168) | <0.001 | |
EL % | 12.61 (2.41) | 5.24 (1180) | <0.001 | |
Principal Average Years | 0.10 (0.04) | 2.57 (1172) | 0.0102 | |
Teacher Average Years | 0.07 (0.10) | 0.71 (1162) | 0.4753 | |
Teacher Turnover Rate | −0.16 (0.03) | −5.84 (1182) | <0.001 | |
Student Mobility Rate | −12.86 (2.86) | −4.49 (1263) | <0.001 | |
Teacher–student Ratio | 0.19 (0.10) | 1.84 (1177) | 0.0657 | |
Full-time Teacher % | 5.58 (4.00) | 1.39 (1178) | 0.1633 | |
Random Effect | Variance | Standard Error | z | |
Intercept (u0j) | 43.99 | 2.53 | 17.42 (<0.001) | |
Residual (rij) | 90.86 | 1.72 | 52.70 (<0.001) |
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Tang, S.; Wang, Z.; Sutton-Jones, K.L. A Multilevel Study of the Impact of District-Level Characteristics on Texas Student Growth Trajectories on a High-Stakes Math Exam. Mathematics 2021, 9, 8. https://doi.org/10.3390/math9010008
Tang S, Wang Z, Sutton-Jones KL. A Multilevel Study of the Impact of District-Level Characteristics on Texas Student Growth Trajectories on a High-Stakes Math Exam. Mathematics. 2021; 9(1):8. https://doi.org/10.3390/math9010008
Chicago/Turabian StyleTang, Shifang, Zhuoying Wang, and Kara L. Sutton-Jones. 2021. "A Multilevel Study of the Impact of District-Level Characteristics on Texas Student Growth Trajectories on a High-Stakes Math Exam" Mathematics 9, no. 1: 8. https://doi.org/10.3390/math9010008
APA StyleTang, S., Wang, Z., & Sutton-Jones, K. L. (2021). A Multilevel Study of the Impact of District-Level Characteristics on Texas Student Growth Trajectories on a High-Stakes Math Exam. Mathematics, 9(1), 8. https://doi.org/10.3390/math9010008