A Comparison of Priors When Using Bayesian Regression to Estimate Oral Reading Fluency Slopes

IF 1.2 Q2 EDUCATION & EDUCATIONAL RESEARCH
Benjamin G. Solomon, O. Forsberg, Monelle Thomas, Brittney Penna, Katherine M. Weisheit
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引用次数: 0

Abstract

Bayesian regression has emerged as a viable alternative for the estimation of curriculum-based measurement (CBM) growth slopes. Preliminary findings suggest such methods may yield improved efficiency relative to other linear estimators and can be embedded into data management programs for high-frequency use. However, additional research is needed, as Bayesian estimators require multiple specifications of the prior distributions. The current study evaluates the accuracy of several combinations of prior values, including three distributions of the residuals, two values of the expected growth rate, and three possible values for the precision of slope when using Bayesian simple linear regression to estimate fluency growth slopes for reading CBM. We also included traditional ordinary least squares (OLS) as a baseline contrast. Findings suggest that the prior specification for the residual distribution had, on average, a trivial effect on the accuracy of the slope. However, specifications for growth rate and precision of slope were influential, and virtually all variants of Bayesian regression evaluated were superior to OLS. Converging evidence from both simulated and observed data now suggests Bayesian methods outperform OLS for estimating CBM growth slopes and should be strongly considered in research and practice.
应用贝叶斯回归估计口语阅读流利度斜率的先验比较
贝叶斯回归已经成为基于课程的测量(CBM)增长斜率估计的可行替代方法。初步研究结果表明,相对于其他线性估计器,这种方法可能产生更高的效率,并且可以嵌入到高频使用的数据管理程序中。然而,由于贝叶斯估计需要先验分布的多个规范,因此需要进行额外的研究。本研究评估了几种先验值组合的准确性,包括残差的三种分布、预期增长率的两种值以及斜率精度的三种可能值,使用贝叶斯简单线性回归估计CBM的流畅性增长斜率。我们还纳入了传统的普通最小二乘(OLS)作为基线对比。研究结果表明,平均而言,残差分布的先验规范对斜率的准确性影响不大。然而,增长率和斜率精度的规格是有影响的,几乎所有贝叶斯回归评估的变量都优于OLS。来自模拟和观测数据的证据表明,贝叶斯方法在估算煤层气增长斜率方面优于OLS方法,应在研究和实践中予以大力考虑。
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来源期刊
ASSESSMENT FOR EFFECTIVE INTERVENTION
ASSESSMENT FOR EFFECTIVE INTERVENTION EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
3.10
自引率
0.00%
发文量
16
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