scholarly journals Faculty-led student advising model: a case study on how faculty make sense of their role in the academic advising process

2020 ◽  
Author(s):  
◽  
Rochelle Moore
Author(s):  
Monica VanDieren

Academic advising is an important component of a student's education, and more often universities are turning to technology to aid in this task. This paper presents a case study of an online advising system that complements a university degree audit system by providing honors students and advisors up-to-date details on individual progress towards completing the honors curriculum and on the level of engagement in the honors co-curricular programming. By leveraging the features of Google Apps for Education, this advising system allows faculty and students to securely and easily access accurate information during schedule planning, and frees up honors staff from repetitive tasks allowing them to dedicate more time to helping students plan their educational journey. Effectiveness of this new system is measured by accuracy of information, time spent by the administration in maintaining the system, student retention and completion of the honors curriculum, and student engagement in honors co-curricular programming. The Google Script described in this paper can be adapted for mail-merge and automatic web page generation in several educational settings beyond academic advising.


2019 ◽  
pp. 004208591989404
Author(s):  
Royel M. Johnson ◽  
Terrell L. Strayhorn ◽  
Christopher S. Travers

To ensure the effectiveness of academic advising efforts on campus and to increase Black male collegians’ use of such services, administrators must better understand how Black males experience academic advising in college. This exploratory qualitative case study aims to understand the academic advising experiences of Black males at a large urban, predominantly White institution. Participants in this study (a) experienced a number of process-related challenges, including difficulties with scheduling advising appointments and accessing their academic advisor; (b) stressed the role of race and culture in academic advising; and (c) highlighted positive outcomes of formal and informal advising. Implications for research, practice, and policy are discussed.


1990 ◽  
Vol 10 (1) ◽  
pp. 30-34
Author(s):  
Martha McMillian ◽  
William A. Ivy

Academic advisors can make important contributions in implementing curriculum development grants received by universities. Presented in case study form is the advising and orientation plan developed for a National Science Foundation grant to prepare future science and mathematics teachers. This plan discusses comprehensive recruitment strategies, a specially designed orientation course, off-campus retreats and field experiences, and academic advising and career counseling. The plan fostered a sense of community among students and faculty, as well as a commitment to the project. This contributed to the success of the project and could contribute to similar grants as well.


1983 ◽  
Vol 3 (1) ◽  
pp. 57-63 ◽  
Author(s):  
SHELDON APPLETON
Keyword(s):  

2016 ◽  
Vol 36 (1) ◽  
pp. 30-42 ◽  
Author(s):  
Paul Donaldson ◽  
Lyle McKinney ◽  
Mimi Lee ◽  
Diana Pino

For this study, we analyzed the relationship between intrusive academic advising and community college student success. Utilizing a qualitative, single-case study design, we conducted interviews with 12 students who participated in an intrusive advising program at a large, urban community college in Texas. Analysis of the interview data revealed the benefits, limitations, and contributions to success of intrusive advising. This study addresses a notable gap in the extant literature, as few researchers have published empirical examinations on the impact of intrusive academic advising within the community college context. The findings can be used to improve the delivery of academic advising and student support services at community colleges.


Author(s):  
Agatha O'Brien-Gayes ◽  
Kerry Spitze

This case study addressed the attitudes and perceptions of faculty and professional advisors at a public comprehensive liberal arts institution. Based on a survey administered to full-time faculty and professional advisors in Fall 2009, the results showed a quantitative difference in levels of satisfaction with advising between the groups. Faculty resported a desire to function more in a mentoring capacity as well as increased recognition for advising during the promotion and tenure process, and identified a systemic need for better communication of policies and procedures. Professional advisors also raised these concerns but reported a higher level of overall satisfaction with advising. Concrete strategies to improve advising delivery were identified. Some preliminary best practices were addressed.


2021 ◽  
Vol 41 (2) ◽  
pp. 68-79
Author(s):  
Mollie Dollinger ◽  
Jessica Vanderlelie ◽  
Rebecca Eaton ◽  
Suzanne Sealey

Previous research has evidenced the importance of student and staff interactions as critical functions to support student success at university. Increasingly, academic advising units support these interactions. However, while common throughout North American contexts, little is known about the implementation of such units internationally. In this paper, we use a case study methodology to discuss the introduction of an academic advising team at an Australian university to explore how staff adjusted to these new roles and their reflections on how others perceived them. We use reflective diaries submitted by the advisors (n = 11) to analyze how their role identities formed over time and suggested recommendations for supporting teams in the future.


10.28945/4633 ◽  
2020 ◽  
Vol 15 ◽  
pp. 247-263
Author(s):  
Ahmed A. Al-Hunaiyyan ◽  
Andrew Thomas Bimba ◽  
Salah Alsharhan

Aim/Purpose: This study describes a conceptual model, based on the principles of concept algebra that can provide intelligent academic advice using adaptive, knowledge-based feedback. The proposed model advises students based on their traits and academic history. The system aims to deliver adaptive advice to students using historical data from previous and current students. This data-driven approach utilizes a cognitive knowledge-based (CKB) model to update the weights (values that indicate the strength of relationships between concepts) that exist between student’s performances and recommended courses. Background: A research study conducted at the Public Authority for Applied Education and Training (PAAET), a higher education institution in Kuwait, indicates that students’ have positive perceptions of the e-Advising system. Most students believe that PAAET’s e-Advising system is effective because it allows them to check their academic status, provides a clear vision of their academic timeline, and is a convenient, user-friendly, and attractive online service. Student advising can be a tedious element of academic life but is necessary to fill the gap between student performance and degree requirements. Higher education institutions have prioritized assisting undecided students with career decisions for decades. An important feature of e-Advising systems is personalized feedback, where tailored advice is provided based on students' characteristics and other external parameters. Previous e-Advising systems provide students with advice without taking into consideration their different attributes and goals. Methodology: This research describes a model for an e-Advising system that enables students to select courses recommended based on their personalities and academic performance. Three algorithms are used to provide students with adaptive course selection advice: the knowledge elicitation algorithm that represents students' personalities and academic information, the knowledge bonding algorithm that combines related concepts or ideas within the knowledge base, and the adaptive e-Advising model that recommends relevant courses. The knowledge elicitation algorithm acquires student and academic characteristics from data provided, while the knowledge bonding algorithm fuses the newly acquired features with existing information in the database. The adaptive e-Advising algorithm provides recommended courses to students based on existing cognitive knowledge to overcome the issues associated with traditional knowledge representation methods. Contribution: The design and implementation of an adaptive e-Advising system are challenging because it relies on both academic and student traits. A model that incorporates the conceptual interaction between the various academic and student-specific components is needed to manage these challenges. While other e-Advising systems provide students with general advice, these earlier models are too rudimentary to take student characteristics (e.g., knowledge level, learning style, performance, demographics) into consideration. For the online systems that have replaced face-to-face academic advising to be effective, they need to take into consideration the dynamic nature of contemporary students and academic settings. Findings: The proposed algorithms can accommodate a highly diverse student body by providing information tailored to each student. The academic and student elements are represented as an Object-Attribute-Relationship (OAR) model. Recommendations for Practitioners: The model proposed here provides insight into the potential relationships between students’ characteristics and their academic standing. Furthermore, this novel e-Advising system provides large quantities of data and a platform through which to query students, which should enable developing more effective, knowledge-based approaches to academic advising. Recommendation for Researchers: The proposed model provides researches with a framework to incorporate various academic and student characteristics to determine the optimal advisory factors that affect a student’s performance. Impact on Society: The proposed model will benefit e-Advising system developers in implementing updateable algorithms that can be tested and improved to provide adaptive advice to students. The proposed approach can provide new insight to advisors on possible relationships between student’s characteristics and current academic settings. Thus, providing a means to develop new curriculums and approaches to learning. Future Research: In future studies, the proposed algorithms will be implemented, and the adaptive e-Advising model will be tested on real-world data and then further improved to cater to specific academic settings. The proposed model will benefit e-Advising system developers in implementing updateable algorithms that can be tested and improved to provide adaptive advisory to students. The approach proposed can provide new insight to advisors on possible relationships between student’s characteristics and current academic settings. Thus, providing a means to develop new curriculums and approaches to course recommendation.


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