Something went wrong
Please try again
A Machine Learning, Artificial Intelligence Approach to Institutional Effectiveness in Higher Education
Regular price
$111.99
Sale price
$111.99
Regular price
$111.99
Unit price
/
per
Sale
Sold out
Re-stocking soon
This book presents a practical, effective, and systematic approach to the measurement, assessment, and sensemaking of institutional performance. Included are strategies to measure and assess the pe...
Read More
Some error occured while loading the Quick View. Please close the Quick View and try reloading the page.
Couldn't load pickup availability
- Format:
-
29 July 2019

The Institutional Research profession is currently experimenting with many strategies to assess institutional effectiveness in a manner that reflects the letter and spirit of their unique mission, vision, and values. While a "best-practices" approach to the measurement and assessment of institutional functions is prevalent in the literature, a machine learning approach that synthesizes these parts into a coherent and synergistic approach has not emerged.
A Machine Learning, Artificial Intelligence Approach to Institutional Effectiveness in Higher Education presents a practical, effective, and systematic approach to the measurement, assessment, and sensemaking of institutional performance. Included are instruments and strategies to measure and assess the performance of Curriculum, Learning, Instruction, Support Services, and Program Feasibility as well as a meaningful Environmental Scanning method. The data collected in this system are organized into assessments of institutional effectiveness through the application of machine learning data processes that create an artificial intelligence model of actual institutional performance from the raw performance data. This artificial intelligence is visualized through five organizational sensemaking approaches to monitor, demonstrate, and improve institutional performance. Thus, this book provides a set of tools that can be adopted or adapted to the specific intentions of any institution, making it an invaluable resource for Higher Education administrators, leaders and practitioners.
Price: $111.99
Pages: 248
Publisher: Emerald Publishing Limited
Imprint: Emerald Publishing Limited
Publication Date:
29 July 2019
ISBN: 9781789739008
Format: Hardcover
BISACs:
EDUCATION / Higher, Higher & further education, tertiary education, EDUCATION / Computers & Technology, EDUCATION / Leadership
Moye, a consultant who focuses on the research and development of systematic assessments to measure the effectiveness of unique institutions, outlines an approach to the systematic assessment of institutional effectiveness in higher education, using strategies of performance measurement, assessment, and sensemaking and a science-based approach grounded in principles of machine learning and artificial intelligence. The method is based on data that measure the performance of institutional functions at the point of interaction with constituents, allowing for leaders and managers to have credible and trustworthy evidence to inform decisions. He discusses designing, measuring, and assessing effectiveness; creating shared mission, vision, and values; measuring and assessing program structure, instruction, and support services; identifying the drivers and constraints of performance through functional data modeling; institutional data modeling; and continuous quality improvement.
John N. Moye is an effectiveness consultant at Performance Learning Technologies, USA. He holds a Ph.D. from Florida State University, where he researched the field of psychophysics and performance and has held effectiveness positions with numerous institutions of higher learning in the US. His current work focuses on the research and development of systematic assessments to measure the effectiveness of unique institutions.
Chapter 1. Defining, Measuring, and Assessing Effectiveness
Chapter 2. Creating Shared Mission, Vision, and Values
Chapter 3. Measuring and Assessing Program Structure: Intended Performance
Chapter 4. Measuring and Assessing Instruction: Intended Performance
Chapter 5. Measuring and Assessing Support Services: Intended Performance
Chapter 6. Functional Data Modeling: Identifying the Drivers and Constraints of Actual Performance
Chapter 7. Institutional Data Modeling: Looking Beyond the Data
Chapter 8. Continuous Quality Improvement