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Can Standardized Testing Capture Learning Potential?

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Tamara Chapman

Contributing Writer

91桃色 professor collaborates on a statistical model to improve understanding of student growth

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Standardized testing on computers

Years of standardized testing have resulted in a rich pool of data to help determine a student's learning curve. Photo courtesy of the Colorado Department of Education听

However much they are dreaded and bemoaned, standardized tests remain a big part of the education landscape. And for everyone concerned 鈥 test takers, educators and even the nation鈥檚 employers 鈥 that鈥檚 both boon and bane.

鈥淪tandardized tests have actually gotten pretty good at testing knowledge,鈥 says 91桃色 assistant professor , an educational psychologist and statistician in the Department of Research Methods and Information Science at the .

But beneficial as testing knowledge may be, he adds, 鈥渒nowledge and potential are not the same.鈥澨

In fact, a single test taken on a given day captures only what the test taker knows at that moment. And that information may not provide a fair depiction of what Dumas calls 鈥渓earning capacity.鈥 听听

Along with fellow researcher Daniel McNeish, a psychology professor at Arizona State University, Dumas aims to make .听 Partnering with a small team of other data enthusiasts, the two are developing 鈥 and yes, testing 鈥 a statistical model that captures the potential to acquire, master and deploy knowledge. In other words, the model offers insight into the test taker鈥檚 learning curve.

鈥淲e study the shape of learning curves,鈥 Dumas explains, noting that this provides insight into the pressing questions that educators never stop pondering. 鈥淗ow do people learn? And when do they learn faster?鈥

Denis Dumas
Denis Dumas

To find out, Dumas and McNeish have developed what they call a 鈥dynamic measurement model鈥 鈥 so called because it doesn鈥檛 rely on a single high-stakes test but instead harvests and analyzes years of examination data on individuals. Fortunately, the nation鈥檚 public schools have long been administering standardized tests to children from grade school through high school, giving Dumas and McNeish plenty of data to work with. That vast store of information, they say, makes the model 鈥渢hree times more predictive than a single standardized assessment.鈥

Their claims regarding the model鈥檚 effectiveness have been supported in a series of 11 articles published over the last five years, with the latest piece appearing in a recent issue of Multivariate Behavioral Research. And the education community is beginning to take notice.

鈥淭his work is central to understanding growth and change,鈥 says Karen Riley, dean of the Morgridge College. 鈥淥utcome measures and their limitations have long been the challenge for accurately assessing the effectiveness of all types of interventions. Addressing these challenges opens the door to transformational change in learning.鈥

In developing their model, Dumas says, the researchers focused on a key question: 鈥淗ow do we take the data that students give us on tests and get the most meaningful information?鈥

They began work by drawing on datasets from the University of California, Berkeley鈥檚 Institute of Human Development. Among this rich stash of information were test scores and career reports from participants who had been tracked for four to five decades, from grade school until they were in their 50s, 60s and even 70s. Some of the tests in question had been administered in the 1920s and 1930s to participants who were as young as 3 years old, giving the researchers the ability to connect early results with subsequent results and even lifetime career choices and achievements. Using this data, Dumas and McNeish, along with co-author Kevin Grimm, also of Arizona State, were able to study learning curves, deduce potential and then correlate those findings with academic and professional outcomes.

How well did their model鈥檚 predictions coincide with actual outcomes? Much of the time, Dumas says, 鈥淲e were pretty darn close.鈥

Close enough that Dumas is beginning to think about where and when the model might best be used. It鈥檚 applicable for any organization, such as the military, that needs to funnel labor and talent into occupational and career paths, he says. The education community would undoubtedly welcome a 鈥渄ata analysis鈥 that accounts for learning capacity. And students and potential employees might also cheer this innovation, if only because it reduces the stakes for any one test 鈥 say the SAT or GRE.听

For the time being, Dumas says, the methodology remains in development. 鈥淭he problem is that it is far and away more complicated than previous methods,鈥 he explains. For example, expediting the computations requires technology 鈥 think super computers 鈥 seldom directed to the educational arena. And dynamic measurement also requires lots of data that, while technically available, isn鈥檛 always accessible. States don鈥檛 always want to release or share their data, Dumas explains. 听听

This isn鈥檛 the only assessment project occupying Dumas鈥 time. Along with another Morgridge College professor, Peter Organisciak, he has been involved in launching a free website to score creativity assessments. It not only could change how school psychologists approach such testing, but it should make it easier for school districts with limited resources to offer this option to their students.

As with that project, the dynamic measurement model focuses on addressing inequities in education and on eluding what Dumas calls 鈥渢he trap鈥 of standardized testing as it currently exists.听听听

鈥淭his model is meant to get us out of that trap,鈥 he says. 鈥淲e want to create a model that quantifies not just knowledge but how much potential somebody has to grow.鈥 听