Assessing Library Contributions to University Outcomes 9th Northumbria International Conference University of York, England Joe Matthews August 2011
Indirect Measures
National Survey of Student Engagement Academic challenge Opportunities for collaborative learning Interactions with faculty Enriching extra-curricular experiences Supportive environment for learning
NSSE & Libraries Library use & educational purposeful activities are correlated at small liberal arts colleges Larger universities – no correlation Students who use the library more likely to work harder – meet faculty expectations
Library Experiences Do not lead to gains in information literacy Do not lead to gains in student satisfaction Do not lead to what students gain overall from college
Book Use Goodall & Pattern (2011)
eResources Library visits
Direct Measures
Student Learning The contribution of the university in assessing student learning is indirect, at best.
Assess Learning The Collegiate Learning Assessment (CLA) The Collegiate Assessment of Academic Proficiency (CAAP) The Measure of Academic Proficiency and Progress (MAPP)
Collegiate Learning Assessment Critical thinking Judgment Analytical reasoning Problem solving Writing skills
Entering Student Characteristics Graduating Student Characteristics Campus Environment Programs Institutional Characteristics Fellow Students Place of Residence Faculty Library Services Astin’s IEO Model Classes
Shavelson’s Student Learning Outcomes Model
Total Collegiate Experience
Time Spent Studying
Disengagement Compact
Areas of Impact StudentFacultyUniversity Enrollment Retention & graduation Success Achievement Learning Experiences, attitudes & perceptions of quality Research productivity Grants Teaching Institutional reputation & prestige
Limitations Micro-level studies Inward looking Small samples sizes Need – Demonstrations of Value
One Model School libraries & standardized test scores Controlled for school & community differences and found high correlations with use of library & test scores 20 studies in different states
Broad-based Data Analysis
Library Data Farm
Processes Load Clean Normalize Anonymize Analysis Export
Assessment Management Systems
Expand Data Sets In addition to library data Partner with the Office of Institutional Research – NCES – IPEDS – NSSE – CLA – Campus surveys – Student registrar data (enrollment, grades)
Anonymity & privacy are not incompatible
Library Needs to Support Assessment Collections & Services Space Virtual Space Community Space
Collections & Services Space ILS data In-library use data ILL data Use of IT services Reference services Instructional services Other
Library Use & GPA
Virtual Space
Community Space
Combine the Data
Library Assessment Conference Building Effective, Sustainable, Practical Assessment Baltimore, Maryland 2010 David Shulenburger
Privacy Institutional Review Board Partnering
Broad-based Data Analysis Enables a library to prepare a credible analysis of the library’s impact in the lives of Students Faculty Researchers
The Goal “until libraries know that that student #5 with major A has downloaded B number of articles from database C, checked out D number of books, participated in E workshops and online tutorials, and completed courses F, G, and H, libraries cannot correlate any of those student information behaviors with attainment of other outcomes. Until librarians do that, they will be blocked in many of their efforts to demonstrate value.” Megan Oakleaf
Books Print journals Special collections Intellectual development Intangible Tangible Product Assessment = Grade Success eJournals eBooks eResources Use Library Impact Model
The Goal Get a better handle on: Who is using the library? Why are they using the library? What impact does library use have in their life?
Questions?