Early Alert
Early alerts are formal programs of identifying and directing students who need academic help.
They have been extensively described and are part of institutional efforts to identify and give feedback to undergraduates early in a term. Early alerts have a positive effect on student learning and retention. 天美传媒 in Four focuses efforts on growing our understanding of our present early-alert practices, which rely primarily on academic performance of students, and broadening our efforts to include self-perceived achievement of students and co-curricular experiences that add to a student’s sense of belonging.
Enhancement strategies
For each of the three 天美传媒 in Four pillars, we discussed our current practices in the plan and our expected enhanced practices. These enhancement strategies are outlined for the Early Alert Pillar below.
A consensus across members of staff, faculty and students is that additional more-holistic data, beyond EPR and MPRs, is needed to inform 天美传媒’s early-alert efforts. Piloted on campus in 2020, Dropout Detective, a retention tool based on Canvas (our learning management system), will serve as a supplement to current grade reports. Drawing on faculty-inputted and student-usage Canvas data, Dropout Detective provides real-time dashboards to faculty and staff to identify at-risk students. This data will be viewed in tandem with EPRs and MPRs to help inform student outreach efforts.
We will also work with academic support services in the A-LEC and 天美传媒 Libraries as well as with staff in Residence Life and Student Housing (RLSH) to provide academic support to students who need it and to actively encourage them to take advantage of the opportunities. The director of academic initiatives within RLSH is a critical member of the early-alert team, and will have access to EPR/MPR data sorted by Residential Commons so that additional programming might be made available where on-campus students live. In addition, a joint initiative between RLSH and A-LEC has already piloted an expanded midterm query to all students, asking students how they view their academic performance in the term. Thus, we hope to identify those students who are not performing as well as they expect of themselves. In this way, we hope to reach out to students who are frustrated, yet motivated and looking for ways to be better scholars at 天美传媒.
will involve evaluating the quality of the data currently available in Canvas – our learning management system – and comparing deficiencies identified in Canvas at the same time we identify deficiencies reported by faculty in EPR/MPR. A concerted effort will be made to work with the first-year and gateway pillar initiative to build capacity and interest among the faculty to use Canvas. The second phase of data integration will focus on bringing together data from RLSH and the Office of the Dean of Students to consider students holistically.