December 22, 2024

NASP Workshop 2012

Andy McCrea and I are presenting next month in Philadelphia for the National Association of School Psychologists Annual Convention. We are hoping to have an informative and interactive session with our participants. To sign up visit http://www.nasponline.org/conventions/2012/workshops.aspx and click on WS36. All participants are strongly encouraged to bring a laptop or tablet with Excel or Numbers!!! Our workshop can be attended as “Part II” to Dr. Joe Kovaleski’s workshop WS31.

Our workshop on Thursday, February 23, 2012, 12:30-3:30PM. Andy and I review the research on interpreting student growth using curriculum-based measurement data, model how to use Excel or Numbers to calculate a rate of improvement statistic, and discuss how student growth fits into the eligibility conversation within an RTI model. Data analysis and graphing will be featured. Participants are strongly encouraged to bring a laptop or tablet computer equipped with Excel or Numbers. This workshop can stand alone or serve as Part II to Dr. Kovaleski’s introductory workshop entitled Determining Eligibility for Special Education in an RTI System: Basic Concepts and Procedures (WS31), Thursday, February 23, 2012, 8:30–11:30 a.m.

Bring a colleague! Hope to see you there!

FacebookTwitterPrintFriendlyPinterestTumblrGoogle+EmailShare

Defining Rate of Improvement

If you were to open your old graduate level stats book, you might not find the phrase “rate of improvement,” in the index, but you would find some text on “slope.” Essentially, they are synonymous terms, one being slightly more angled toward the positive.

In algebraic terms, rate of improvement can be defined as the vertical change (y-axis) over the horizontal change (x-axis). More simply put, slope is the rise over run. Or the steepness of a line. The key word here is line. In order to calculate slope, one must first have a line. Once a line is determined, the formula for calculating slope is:

m = (y2 – y1) / (x2 – x1)

m = slope
(x1, y1) = one point on the line
(x2, y2) = a second point on the line

Typically, when we plot student data, we end up looking at data points on a graph. Some commercially available systems provide a general line as a guide approximating where the student’s data points should fall. With just this information, there is no line from which we could calculate an accurate slope. Therefore, we have to create that line! It is the position of the authors of this site that linear regression is the best method for calculating an accurate line to determine rate of improvement.

FacebookTwitterPrintFriendlyPinterestTumblrGoogle+EmailShare