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Ranking Data Outliers for Collection Budget Analysis: Allocating for the Future

This session discusses the analysis of collection budget data, including historical allocation and usage data, demand, supply, and cost categories. The study identifies outliers and suggests changes in budget allocation strategies.

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Ranking Data Outliers for Collection Budget Analysis: Allocating for the Future

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  1. Ranking Data Outliers for Collection Budget Analysis: Allocating for the Future Elizabeth Brown James Galbraith LAC 2018, Houston, TXSession 14 12/6/2018

  2. About Binghamton and Libraries 13,700 undergraduate, 3,600 graduate students754 full-time, 293 part-time faculty 6 Transdisciplinary Areas of Excellence (TAEs), formed in 2013, 2018 Library Staff: 80 faculty/professional/paraprofessionals 2018 Total Collections Budget: $6,870,000 Books/Firm Orders: $797,000 Electronic: $2,900,000 Periodicals: $2,700,000 2018 Collections Statistics 2,409,043 volumes 200,000 print and electronic journals 358 databases

  3. How collections have been analyzed • Many studies use common data sets. (Canepi) • Choice of data used is subjective. (Walters) • Some studies advocate historical allocation and usage data. (Dinkins) • Data analysis includes percentage-based, weighted multiple variable, factor or regression analysis. (Catalino and Caninano) • Demand, supply, and cost categories analyzed. (Walters) • Ordinal scales and quartiles used. (Lyons & Blosser) • Historical spending and circulation statistics used. (Dinkins)

  4. Methodology – Data Collection • Four fiscal years spanning 2013-2017 were used. • 43 subjects/programs • Monographs, serials, database funds • 54 points of data per program. • Programs were consolidated for program level, funding.

  5. Methodology – Program Ranking • Subject areas were ranked by each data point and compared. • 54 rankings total were created, 43 rankings were used.Flagged top and bottom quartiles. (approx. 10 programs)

  6. Collected Rankings Data (n=43) • High-level snapshot of program collection outliers. • Ranking totals were consistent over time period. • Social Sciences and Humanities are “monograph” funds while the journals and databases are dominated by STEM. • Some programs are clearly overfunded and underfunded.

  7. Methodology - Ratios • Created ratios for all 54 data categories. • Narrowed down factors to identify meaningful ratios. (n=43)

  8. Methodology - Ratios • Calculated amean for each category. (n=43) • Calculated the ratios, then ranked the subject/program areas. • Flagged top and bottom quartiles. (9-10 programs each) • Used this as a second technique to check rankings data movement.

  9. Ratio Data Observations • Able to identify funds that are outliers. (Art and Comparative Literature) • Relative change or slope can be observed easily. (Management, Sociology) • “Service” teaching departments can be located.(Mathematics, English) • The relatively higher cost of STEM materials and their impact on the budget. (Chemistry, Physics)

  10. More observations • Our budget reflects historical program activity. • More recently created departments and professional programs are less supported. • Applying fixed percentage increases based on format doesn’t allow for change. • Nuances in how programs are supported emerge. • New programs and initiatives (such as TAEs) are disruptive and affect existing program support.

  11. What our data means for collections planning • Change the way we allocate our collection budget. • Consider factors such as need and campus growth. • Determine optimal allocations for each program. • Consider more active needs assessment and collaborate with other SUNY libraries. • We have to be willing to change – this study indicates we have been too conservative with our budget practices…

  12. Some Next Steps • Update ratios with most recent budget figures. (gauge impact of recent cancellation project) • Allocate new funds to firm orders. ($20,000) • Develop models for determining optimal allocations for subjects, types of content and formats. • Develop a new strategy for allocating the collection budget. (how to achieve the desired budget)

  13. Thank You! • Elizabeth Brown (Beth) • Director of Assessment and Scholarly Communicationsebrown@binghamton.edu607-237-1937 • James Galbraith (Jim) • Head of Collection Developmentjgalbrai@binghamton.edu607-777-4912 Katherine Scott/Pipe Dream Photographer:

  14. References • KittiCanepie, “Fund Allocation Formula Analysis: Determining Elements for Best Practices in Libraries,” Library, Collections, Acquisitions, & Technical Services 31, no. 1 (March 2007): 21, https://doi-org.proxy.binghamton.edu/10.1016/j.lcats.2007.03.002. • Lucy Eleonore Lyons and John Blosser, “An Analysis and Allocation System for Library Collections Budgets: The Comprehensive Allocation Process (CAP),” The Journal of Academic Librarianship 38, no. 5 (August 2012): 299-300, https://doi-org.proxy.binghamton.edu/10.1016/j.acalib.2012.07.006.   • Amy J. Catalano and William T. Caniano, “Book Allocations in a University Library: An Evaluation of Multiple Formulas,” Collection Management 38, no. 3 (June 2013): 209-211, https://www-tandfonline-com.proxy.binghamton.edu/doi/pdf/10.1080/01462679.2013.792306.       • William H. Walters, “A Fund Allocation Formula Based on Demand, Cost, and Supply,” Library Quarterly 78, no. 3 (July 2008): 305, https://www-journals-uchicago-edu.proxy.binghamton.edu/doi/10.1086/588640. • Debbi Dinkins,  “Allocating Academic Library Budgets: Adapting Historical Data Models at One University Library,” Collection Management 36, no. 2 (March 2011): 128-129, https://doi-org.proxy.binghamton.edu/10.1080/01462679.2011.554163.

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