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Unintended Consequences of Using Student Test Scores to Evaluate Teachers

There has been a powerful misconception driving policy in education. It’s a case where theory was inappropriately applied to practice. The misconception has had unintended consequences. It is helping to lead large numbers of parents to opt out of testing and could very well weaken the case in Congress for accountability as ESEA is reauthorized.

The idea that we can use student test scores as one of the measures in evaluating teachers came into vogue with Race to the Top. As a result of that and related federal policies, 38 states now include measures of student growth in teacher evaluations.

This was a conceptual advance over the NCLB definition of teacher quality in terms of preparation and experience. The focus on test scores was also a brilliant political move. The simple qualification for funding from Race to the Top—a linkage between teacher and student data—moved state legislatures to adopt policies calling for more rigorous teacher evaluations even without funding states to implement the policies. The simplicity of pointing to student achievement as the benchmark for evaluating teachers seemed incontrovertible.

It also had a scientific pedigree. Solid work had been accomplished by economists developing value-added modeling (VAM) to estimate a teacher’s contribution to student achievement. Hanushek et al.’s analysis is often cited as the basis for the now widely accepted view that teachers make the single largest contribution to student growth. The Bill and Melinda Gates Foundation invested heavily in its Measures of Effective Teaching (MET) project, which put the econometric calculation of teachers’ contribution to student achievement at the center of multiple measures.

The academic debates around VAM remain intense concerning the most productive statistical specification and evidence for causal inferences. Perhaps the most exciting area of research is in analyses of longitudinal datasets showing that students who have teachers with high VAM scores continue to benefit even into adulthood and career—not so much in their test scores as in their higher earnings, lower likelihood of having children as teenagers, and other results. With so much solid scientific work going on, what is the problem with applying theory to practice? While work on VAMs has provided important findings and productive research techniques, there are four important problems in applying these scientifically-based techniques to teacher evaluation.

First, and this is the thing that should have been obvious from the start, most teachers teach in grades or subjects where no standardized tests are given. If you’re conducting research, there is a wealth of data for math and reading in grades three through eight. However, if you’re a middle-school principal and there are standardized tests for only 20% of your teachers, you will have a problem using test scores for evaluation.

Nevertheless, federal policy required states—in order to receive a waiver from some of the requirements of NCLB—to institute teacher evaluation systems that use student growth as a major factor. To fill the gap in test scores, a few districts purchased or developed tests for every subject taught. A more wide-spread practice is the use of Student Learning Objectives (SLOs). Unfortunately, while they may provide an excellent process for reflection and goal setting between the principal and teacher, they lack the psychometric properties of VAMs, which allow administrators to objectively rank a teacher in relation to other teachers in the district. As the Mathematica team observed, “SLOs are designed to vary not only by grade and subject but also across teachers within a grade and subject.” By contrast, academic research on VAM gave educators and policy makers the impression that a single measure of student growth could be used for teacher evaluation across grades and subjects. It was a misconception unfortunately promoted by many VAM researchers who may have been unaware that the technique could only be applied to a small portion of teachers.

There are several additional reasons that test scores are not useful for teacher evaluation.

The second reason is that VAMs or other measures of student growth don’t provide any indication as to how a teacher can improve. If the purpose of teacher evaluation is to inform personnel decisions such as terminations, salary increases, or bonuses, then, at least for reading and math teachers, VAM scores would be useful. But we are seeing a widespread orientation toward using evaluations to inform professional development. Other kinds of measures, most obviously classroom observations conducted by a mentor or administrator—combined with feedback and guidance—provide a more direct mapping to where the teacher needs to improve. The observer-teacher interactions within an established framework also provide an appropriate managerial discretion in translating the evaluation into personnel decisions. Observation frameworks not only break the observation into specific aspects of practice but provide a rubric for scoring in four or five defined levels. A teacher can view the training materials used to calibrate evaluators to see what the next level looks like. VAM scores are opaque in contrast.

Third, test scores are associated with a narrow range of classroom practice. My colleague, Val Lazarev, and I found an interesting result from a factor analysis of the data collected in the MET project. MET collected classroom videos from thousands of teachers, which were then coded using a number of frameworks. The students were tested in reading and/or math using an assessment that was more focused on problem-solving and constructive items than is found in the usual state test. Our analysis showed that a teacher’s VAM score is more closely associated with the framework elements related to classroom and behavior management (i.e., keeping order in the classroom) than the more refined aspects of dialog with students. Keeping the classroom under control is a fundamental ability associated with good teaching but does not completely encompass what evaluators are looking for. Test scores, as the benchmark measure for effective teaching, may not be capturing many important elements.

Fourth, achievement test scores (and associated VAMs) are calculated based on what teachers can accomplish with respect to improving test scores from the time students appear in their classes in the fall to when they take the standardized test in the spring. If you ask people about their most influential teacher, they talk about being inspired to take up a particular career or about keeping them in school. These are results that are revealed in following years or even decades. A teacher who gets a student to start seeing math in a new way may not get immediate results on the spring test but may get the student to enroll in a more challenging course the next year. A teacher who makes a student feel at home in class may be an important part of the student not dropping out two years later. Whether or not teachers can cause these results is speculative. But the characteristics of warm, engaging, and inspiring teaching can be observed. We now have analytic tools and longitudinal datasets that can begin to reveal the association between being in a teacher’s class and the probability of a student graduating, getting into college, and pursuing a productive career. With records of systematic classroom observations, we may be able, in the future, to associate teaching practices with benchmarks that are more meaningful than the spring test score.

The policy-makers’ dream of an algorithm for translating test scores into teacher salary levels is a fallacy. Even the weaker provisions such as the vague requirement that student growth must be an important element among multiple measures in teacher evaluations has led to a profusion of methods of questionable utility for setting individual goals for teachers. But the insistence on using annual student achievement as the benchmark has led to more serious, perhaps unintended, consequences.

Teacher unions have had good reason to object to using test scores for evaluations. Teacher opposition to this misuse of test scores has reinforced a negative perception of tests as something that teachers oppose in general. The introduction of the new Common Core tests might have been welcomed by the teaching profession as a stronger alignment of the test with the widely shared belief about what is important for students to learn. But the change was opposed by the profession largely because it would be unfair to evaluate teachers on the basis of a test they had no experience preparing students for. Reducing the teaching profession’s opposition to testing may help reduce the clamor of the opt-out movement and keep the schools on the path of continuous improvement of student assessment.

We can return to recognizing that testing has value for teachers as formative assessment. And for the larger community it has value as assurance that schools and districts are maintaining standards, and most importantly, in considering the reauthorization of NCLB, not failing to educate subgroups of students who have the most need.

A final note. For purposes of program and policy evaluation, for understanding the elements of effective teaching, and for longitudinal tracking of the effect on students of school experiences, standardized testing is essential. Research on value-added modeling must continue and expand beyond tests to measure the effect of teachers on preparing students for “college and career”. Removing individual teacher evaluation from the equation will be a positive step toward having the data needed for evidence-based decisions.

An abbreviated version of this blog post can be found on Real Clear Education.

2015-09-10

Need for Product Evaluations Continues to Grow

There is a growing need for evidence of the effectiveness of products and services being sold to schools. A new release of SIIA’s product evaluation guidelines is now available at the Selling to Schools website (with continued free access to SIIA members), to help guide publishers in measuring the effectiveness of the tools they are selling to schools.

It’s been almost a decade since NCLB made its call for “scientifically-based research,” but the calls for research haven’t faded away. This is because resources available to schools have diminished over that time, heightening the importance of cost benefit trade-offs in spending.

NCLB has focused attention on test score achievement, and this metric is becoming more pervasive; e.g., through a tie to teacher evaluation and through linkages to dropout risk. While NCLB fostered a compliance mentality—product specs had to have a check mark next to SBR—the need to assure that funds are not wasted is now leading to a greater interest in research results. Decision-makers are now very interested in whether specific products will be effective, or how well they have been working, in their districts.

Fortunately, the data available for evaluations of all kinds is getting better and easier to access. The U.S. Department of Education has poured hundreds of millions of dollars into state data systems. These investments make data available to states and drive the cleaning and standardizing of data from districts. At the same time, districts continue to invest in data systems and warehouses. While still not a trivial task, the ability of school district researchers to get the data needed to determine if an investment paid off—in terms of increased student achievement or attendance—has become much easier over the last decade.

The reauthorization of ESEA (i.e., NCLB) is maintaining the pressure to evaluate education products. We are still a long way from the draft reauthorization introduced in Congress becoming a law, but the initial indications are quite favorable to the continued production of product effectiveness evidence. The language has changed somewhat. Look for the phrase “evidence based”. Along with the term “scientifically-valid”, this new language is actually more sophisticated and potentially more effective than the old SBR neologism. Bob Slavin, one of the reviewers of the SIIA guidelines, says in his Ed Week blog that “This is not the squishy ‘based on scientifically-based evidence’ of NCLB. This is the real McCoy.” It is notable that the definition of “evidence-based” goes beyond just setting rules for the design of research, such as the SBR focus on the single dimension of “internal validity” for which randomization gets the top rating. It now asks how generalizable the research is or its “external validity”; i.e., does it have any relevance for decision-makers?

One of the important goals of the SIIA guidelines for product effectiveness research is to improve the credibility of publisher-sponsored research. It is important that educators see it as more than just “market research” producing biased results. In this era of reduced budgets, schools need to have tangible evidence of the value of products they buy. By following the SIIA’s guidelines, publishers will find it easier to achieve that credibility.

2011-11-12

Recognizing Success

When the Obama-Duncan administration approaches teacher evaluation, the emphasis is on recognizing success. We heard that clearly in Arne Duncan’s comments on the release of teacher value-added modeling (VAM) data for LA Unified by the LA Times. He’s quoted as saying, “What’s there to hide? In education, we’ve been scared to talk about success.” Since VAM is often thought of as a method for weeding out low performing teachers, Duncan’s statement referencing success casts the use of VAM in a more positive light. Therefore we want to raise the issue here: how do you know when you’ve found success? The general belief is that you’ll recognize it when you see it. But sorting through a multitude of variables is not a straightforward process, and that’s where research methods and statistical techniques can be useful. Below we illustrate how this plays out in teacher and in program evaluation.

As we report in our news story, Empirical is participating in the Gates Foundation project called Measures of Effective Teaching (MET). This project is known for its focus on value-added modeling (VAM) of teacher effectiveness. It is also known for having collected over 10,000 videos from over 2,500 teachers’ classrooms—an astounding accomplishment. Research partners from many top institutions hope to be able to identify the observable correlates for teachers whose students perform at high levels as well as for teachers whose students do not. (The MET project tested all the students with an “alternative assessment” in addition to using the conventional state achievement tests.) With this massive sample that includes both data about the students and videos of teachers, researchers can identify classroom practices that are consistently associated with student success. Empirical’s role in MET is to build a web-based tool that enables school system decision-makers to make use of the data to improve their own teacher evaluation processes. Thus they will be able to build on what’s been learned when conducting their own mini-studies aimed at improving their local observational evaluation methods.

When the MET project recently had its “leads” meeting in Washington DC, the assembled group of researchers, developers, school administrators, and union leaders were treated to an after-dinner speech and Q&A by Joanne Weiss. Joanne is now Arne Duncan’s chief of staff, after having directed the Race to the Top program (and before that was involved in many Silicon Valley educational innovations). The approach of the current administration to teacher evaluation—emphasizing that it is about recognizing success—carries over into program evaluation. This attitude was clear in Joanne’s presentation, in which she declared an intention to “shine a light on what is working.” The approach is part of their thinking about the reauthorization of ESEA, where more flexibility is given to local decision- makers to develop solutions, while the federal legislation is more about establishing achievement goals such as being the leader in college graduation.

Hand in hand with providing flexibility to find solutions, Joanne also spoke of the need to build “local capacity to identify and scale up effective programs.” We welcome the idea that school districts will be free to try out good ideas and identify those that work. This kind of cycle of continuous improvement is very different from the idea, incorporated in NCLB, that researchers will determine what works and disseminate these facts to the practitioners. Joanne spoke about continuous improvement, in the context of teachers and principals, where on a small scale it may be possible to recognize successful teachers and programs without research methodologies. While a teacher’s perception of student progress in the classroom may be aided by regular assessments, the determination of success seldom calls for research design. We advocate for a broader scope, and maintain that a cycle of continuous improvement is just as much needed at the district and state levels. At those levels, we are talking about identifying successful schools or successful programs where research and statistical techniques are needed to direct the light onto what is working. Building research capacity at the district and state level will be a necessary accompaniment to any plan to highlight successes. And, of course, research can’t be motivated purely by the desire to document the success of a program. We have to be equally willing to recognize failure. The administration will have to take seriously the local capacity building to achieve the hoped-for identification and scaling up of successful programs.

2010-11-18

Research: From NCLB to Obama’s Blueprint for ESEA

We can finally put “Scientifically Based Research” to rest. The term that appeared more than 100 times in NCLB appears zero times in the Obama administration’s Blueprint for Reform, which is the document outlining its approach to the reauthorization of ESEA. The term was always an awkward neologism, coined presumably to avoid simply saying “scientific research.” It also allowed NCLB to contain an explicit definition to be enforced—a definition stipulating not just any scientific activities, but research aimed at coming to causal conclusions about the effectiveness of some product, policy, or laboratory procedure.

A side effect of the SBR focus has been the growth of a compliance mentality among both school systems and publishers. Schools needed some assurance that a product was backed by SBR before they would spend money, while textbooks were ranked in terms of the number of SBR-proven elements they contained.

Some have wondered if the scarcity of the word “research” in the new Blueprint might signal a retreat from scientific rigor and the use of research in educational decisions (see, for example, Debra Viadero’s blog). Although the approach is indeed different, the new focus makes a stronger case for research and extends its scope into decisions at all levels.

The Blueprint shifts the focus to effectiveness. The terms “effective” or “effectiveness” appear about 95 times in the document. “Evidence” appears 18 times. And the compliance mentality is specifically called out as something to eliminate.

“We will ask policymakers and educators at all levels to carefully analyze the impact of their policies, practices, and systems on student outcomes. … And across programs, we will focus less on compliance and more on enabling effective local strategies to flourish.” (p. 35)

Instead of the stiff definition of SBR, we now have a call to “policymakers and educators at all levels to carefully analyze the impact of their policies, practices, and systems on student outcomes.” Thus we have a new definition for what’s expected: carefully analyzing impact. The call does not go out to researchers per se, but to policymakers and educators at all levels. This is not a directive from the federal government to comply with the conclusions of scientists funded to conduct SBR. Instead, scientific research is everybody’s business now.

Carefully analyzing the impact of practices on student outcomes is scientific research. For example, conducting research carefully requires making sure the right comparisons are made. A study that is biased by comparing two groups with very different motivations or resources is not a careful analysis of impact. A study that simply compares the averages of two groups without any statistical calculations can mistakenly identify a difference when there is none, or vice versa. A study that takes no measure of how schools or teachers used a new practice—or that uses tests of student outcomes that don’t measure what is important—can’t be considered a careful analysis of impact. Building the capacity to use adequate study design and statistical analysis will have to be on the agenda of the ESEA if the Blueprint is followed.

Far from reducing the role of research in the U.S. education system, the Blueprint for ESEA actually advocates a radical expansion. The word “research” is used only a few times, and “science” is used only in the context of STEM education. Nonetheless, the call for widespread careful analysis of the evidence of effective practices that impact student achievement broadens the scope of research, turning all policymakers and educators into practitioners of science.

2010-03-17
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