Leadership magazine Nov/Dec 2017 V47 No. 2 | Page 22

in more or less dramatic ways; relational frequencies such as line graphs show data that is diverging or converging and are used to report changes over time. Each type of graph produces a specific impact and should be considered based on the purpose of shar- ing the data (Boudette, City and Murnane). Once soft data are collected, triangulated and purposefully displayed, the process of identifying root causes can begin. This pro- cess, when implemented with teams patient enough to forgo the first or second suggested causes, opting instead for deeper probing, can unearth real root causes. Identifying root causes Examining purposefully presented soft data can lead to root causes often missed by asking the wrong questions, not asking any questions, focusing on the wrong data, look- ing at the right data the wrong way, or blind- ness. The root cause is the deepest underly- ing cause of positive and negative symptoms within any process that, if resolved, would result in elimination, or substantial reduc- tion of the symptom (Preuss, 2003). 22 Leadership A cause is likely to be a root cause when: • You run into a dead-end asking what caused the proposed root cause. • There is consensus on the root cause. • The cause makes sense and provides clarity to the problem. • If addressed, there is realistic hope that the problem can be reduced or prevented in the future (Ward, Frey, Fisher, 2012). Dealing with root causes of many school- related issues may not be easy because ef- fectively responding often requires shifting mindsets, changes in behaviors, facing ugly truths, seemingly giving up status or control, organizational and even paradigm shifts. All of which may be difficult to accomplish. Unlike hard data that provides a snapshot of a point in time, soft data can provide in- sight into why or how such hard data find- ings exist. When acquired using methods that ensure validity and reliability and when displayed in engaging ways, root causes of student performance can be identified and addressed. This can ultimately lead to extraordinary outcomes for students and teachers alike. Resources • Boudette, K.P., City, E.A., Murnane, R.J. (2007). “Data Wise: A step-by-step guide to using assessment results to improve teaching and learning.” Cambridge Massa- chusetts: Harvard Education Press. • James-Ward, C., Frey, N. and Fisher, D. (2012, October). “Root cause analysis.” Principal Leadership, 13(2), 59-61. • James-Ward, C., Fisher, D., Frey, N., and Lapp, D. (2013). “Using data to focus instructional improvement.” Alexandria, VA: ASCD. • Preuss, P. (2003). “School leader’s guide to root cause analysis: Using data to dissolve problems.” Larchmont, NY: Eye On Educa- tion. Cheryl James-Ward, Ed.D is a professor at San Diego State University in the Department of Educational Leadership and chief of academic innovation for e3 Civic High School in San Diego, rated by CNNMoney as one of the top most innovative schools in the nation.