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Assessing the Instructional
Level for Mathematics: A Comparison of Methods
Implications for
Practice and Policy
Matthew K. Burns
University of Minnesota
Amanda M. VanDerHeyden
University of California
at Santa Barbara
Cindy Jiban
University of Minnesota
Betts (1946) originally hypothesized that presenting a learning
task that a student was sufficiently familiar with but still provided some
degree of challenge led to optimal learning. This appropriate level of challenge
was called an instructional level. Too little challenge or too great of a
challenge was referred to as independent and frustration levels respectively. The
term instructional level is frequently used in practice and although many
have a general understanding of the term, few understand how to operationalize
it in an instructionally useful way.
An appropriate level of challenge (or instructional level)
is one of the essential components of an effective learning environment,
but research has yet to adequately define an instructional level for mathematics.
Gickling and Thompson (1985) suggested an accuracy approach in which mathematics
assignments should contain 70% to 85% known items to represent an instructional level task. Deno and Mirkin (1977)
suggested that the instructional level for mathematics be determined with
fluency (i.e., accuracy plus speed) measures instead of accuracy data alone.
They further estimated that 10 to 19 digits correct per minute (dc/min) would
represent an instructional level for students in first through third grade,
whereas 20 to 39 dc/min would equal an instructional
level for children in fourth through 12th grades. This study compared mathematics
performance of 434 second, third, fourth and fifth grade students to these
accuracy and fluency criteria and found that fluency measures were more reliable
and had better evidence for validity. All participants were exposed to a
standard protocol-based intervention and progress was monitored using single-skill
probes. Children demonstrating the strongest growth given a standard intervention
were identified. Average mathematics fluency at baseline was computed for
these students. Second and third grade children who showed the strongest
growth given intervention performed between 14 to 31 digits correct per minute
at baseline. Fourth and fifth grade children who showed strongest growth
given intervention performed between 24 to 49 digits correct per minute.
Functionally, these ranges represent empirically-derived instructional ranges
or ranges of performance that are associated with optimal growth given intervention
or instruction.
The two instructional levels derived from the current data,
although somewhat similar to Deno and Mirkin’s (1977) criteria, were higher
than those previously suggested. Moreover, the number of children for whom
the task represented an instructional level varied significantly based on
which criterion was used. Finding an instructional level for mathematics
could be important because interventions could occur with children who experience
mathematics difficulties until their skills reach an instructional level,
at which point the child could participate in general instruction and be
expected to experience improved learning outcomes (Gickling,
Shane, & Croskery, 1989; VanDerHeyden &
Burns, 2005). In other words, instructional level criteria can be used for
instructional placement decisions or as criteria to work toward during interventions.
Moreover, practitioners could use these criteria to evaluate if a child’s
problem is specific to the child or class of children (VanDerHeyden, Witt, & Naquin,
2003). A fluency probe could be obtained for all children in a classroom
by allowing them 2 minutes to complete a mixed-skill
worksheet. Next, the average fluency rate could be computed and divided by
two to obtain a digits correct/minute metric. If the average fluency rate
meets or exceeds the grade-specific instructional level, then any difficulties
experienced by a child are probably specific to that child. A class average
that falls below the instructional level suggests that the classroom as a
whole is experiencing difficulties and may require a classwide intervention.
However, most importantly these data suggest that the current mostly commonly
used criteria for an instructional level could be problematic and additional
research is needed.
References
Betts, E. A. (1946). Foundations of reading instruction. New York: American
Book.
Deno, S. L.,
& Mirkin, P. K. (1977). Data-based
program modification: A manual. Reston, VA:
Council for Exception Children.
Gickling, E. E., Shane, R. L., & Croskery,
K. M. (1989). Developing math skills in low-achieving
high school students through curriculum-based assessment. School
Psychology Review, 18, 344-356.
Gickling, E. E., & Thompson, V. P. (1985). A
personal view of curriculum-based assessment. Exceptional Children,
52, 205-218.
VanDerHeyden,
A. M., & Burns, M.
K. (2005). Using
curriculum-based assessment and
curriculum-based measurement to guide
elementary mathematics instruction: Effect on individual and group accountability
scores. Assessment for Effective Intervention, 30, 15-31.
VanDerHeyden,
A. M., Witt, J. C.,
& Naquin, G. (2003). Development
and validation of a
process for
screening referrals to special education. School Psychology Review,
32, 204-227.
Additional Resources
Burns, M. K. (2004). Using curriculum-based
assessment in the consultative process: A review of
three levels of research. Journal of Educational
and Psychological Consultation, 15, 63-78.
Gickling, E. E., & Armstrong, D. L. (1978). Levels of instructional
difficulty as related to on-task behavior, task completion, and comprehension. Journal
of Learning Disabilities, 11, 559-566.