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The Relationship of Electronic Reference & the
Development of Distance Education Programs
Starr Hoffman
University of North Texas
QQML. May 27, 2010
Chania, Crete, Greece
research questions
 current research question:
 were electronic reference services provided in response to distance
education needs?
 research questions still in-progress:
 did distance education evolve in response to the presence of electronic
reference?
 are distance learning and/or electronic reference best predicted by
technological progress (as indicated by the passage of time), or by other
factors?
 is the presence or absence of electronic reference affected by:
 library budget
 size of library staff
data
 NCES (National Center for Education Statistics)
 http://nces.ed.gov/
 U.S. government agency
 measures education statistics at all levels
 K – 12 (primary, secondary)
 higher education
data
 NCES IPEDS
 IPEDS = Integrated
Postsecondary Education
Data System
 survey of higher education
institutions
 administered annually
 consistently tracked
distance learning from
2002 - 2008
data
 NCES ALS
 ALS = Academic Libraries
Survey
 survey of academic
libraries
 administered every 2 years
 available from 1998 - 2008
combining the datasets
 selection of institutional data downloaded:
 eligibility for federal financial aid (Title IV)
 50 U.S. states
 open to the public
 primary focus is post-secondary education
 resulting download = 1,733 institutions
 after downloading, combined the two datasets:
 sorted by UNIT-ID
 UNIT-ID = unique identifier assigned by NCES
 used this identifier to manually combine data for each institution
that appeared both in IPEDS and ALS
 institutions that appeared in only one of the surveys were deleted
refining the sample
 refined the data by limiting:
 by sector:
 4-year public institutions
 4-year private non-profit institutions
 (excluded for-profits)
 degrees granted: at least Bachelor’s
 institution has a library or is affiliated with a library
 institution listed as “active” during all surveyed years
 degree-granting institutions
 50 U.S. states
 nationally or regionally accredited
 responded fully on both surveys (IPEDS & ALS) for all years
(2002, 2004, 2006, 2008)
resulting dataset
 after data clean-up, 1,256 institutions in sample
 (reduced from 1,733 in the original IPEDS download)
 downloaded 55 variables
 used 17 variables in this analyses
 the remaining variables will be used in future analyses
 annual library budget
 number of librarians
 total library staff size
 (and others)
key variables
 electronic reference:
 measured by ALS
 variable in dataset = LIBREFYN
 distance learning
 measured by IPEDS
 special learning opportunities:
 “distance learning opportunities (e-learning)”
 variable in dataset = ic_[year]_slo3
correlation matrix (Pearson r’s)
‘02
distance
learning
‘04 distance
learning
‘06
distance
learning
‘08 distance
learning
‘02 e-ref ‘04 e-ref ‘06 e-ref ‘08 e-ref
‘02 distance
learning
1 .881 .784 .686 .158 .166 .130 .068
‘04 distance
learning
.881 1 .865 .756 .156 .168 .124 .085
‘06 distance
learning
.784 .865 1 .880 .118 .146 .092 .058
‘08 distance
learning
.686 .756 .880 1 .092 .110 .077 .049
‘02 e-ref .158 .156 .118 .092 1 .537 .437 .358
‘04 e-ref .166 .168 .146 .110 .537 1 .566 .452
‘06 e-ref .130 .124 .092 .077 .437 .566 1 .550
‘08 e-ref .068 .085 .058 .049 .358 .452 .550 1
multiple regression
dependent variable: 2008 distance learning opportunities
 predictors (independent variables):
 model 1:
 distance learning opportunities for 2002, 2004, and 2006
 (3 predictors)
 model 2:
 model 1 + presence of e-reference services for each year
 (7 predictors)
 model 3:
 model 2 + Carnegie classification, Land Grant institution, institutional control (public,
private), highest degree offered, level of highest degree, FT enrollment, total
enrollment, institutional size, sector
 (16 predictors)
regression results
 for the dependent variable: distance learning opportunities in 2008…
 best predictor = previous offering of the same opportunities
 (presence or absence of distance learning opportunities in previous years)
 in the 2nd model, electronic reference adds to the model’s predictive strength,
but not much
 the 3rd model of 16 variables adds more predictive strength, but distance
learning appears to be the strongest predictor
discussion
what does this mean? how is it useful?
 electronic reference is weakly correlated with distance learning
 in response to research question #1:
 no, it does not appear that electronic reference services (email, online chat)
were provided in response to distance education needs
 it seems likely that e-reference developed as a technological modification of
a traditional service for traditional library users
 therefore, we should not expect that e-reference necessarily fulfills the
needs of distance learners
 e-reference is a passive service (users must actively seek help)
 do distance learners need a more active service?
further planned statistical analyses
 additional research questions
 did distance education evolve in response to the presence of electronic reference?
 are distance learning and/or electronic reference best predicted by technological progress
(as indicated by the passage of time)?
 is the presence or absence of electronic reference affected by the library budget or by the
size of the library staff?
 code data to reveal time-to-event as an additional variable
 expand years of study to 1998 – 2008
 survey questions varied
 may require more data manipulation to match variables robustly across years
 increase # of variables considered, to seek better predictors
any questions?
 Starr Hoffman, MLS, MA
 Librarian for Digital Collections
 Government Documents Department
 UNT Libraries
 PhD Student, Higher Education, UNT
 starr.hoffman@unt.edu
 find my presentations & CV here:
 http://geekyartistlibrarian.wordpress.com

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The Relationship of Electronic Reference and the Development of Distance Education Programs (2010)

  • 1.  The Relationship of Electronic Reference & the Development of Distance Education Programs Starr Hoffman University of North Texas QQML. May 27, 2010 Chania, Crete, Greece
  • 2. research questions  current research question:  were electronic reference services provided in response to distance education needs?  research questions still in-progress:  did distance education evolve in response to the presence of electronic reference?  are distance learning and/or electronic reference best predicted by technological progress (as indicated by the passage of time), or by other factors?  is the presence or absence of electronic reference affected by:  library budget  size of library staff
  • 3. data  NCES (National Center for Education Statistics)  http://nces.ed.gov/  U.S. government agency  measures education statistics at all levels  K – 12 (primary, secondary)  higher education
  • 4. data  NCES IPEDS  IPEDS = Integrated Postsecondary Education Data System  survey of higher education institutions  administered annually  consistently tracked distance learning from 2002 - 2008
  • 5. data  NCES ALS  ALS = Academic Libraries Survey  survey of academic libraries  administered every 2 years  available from 1998 - 2008
  • 6. combining the datasets  selection of institutional data downloaded:  eligibility for federal financial aid (Title IV)  50 U.S. states  open to the public  primary focus is post-secondary education  resulting download = 1,733 institutions  after downloading, combined the two datasets:  sorted by UNIT-ID  UNIT-ID = unique identifier assigned by NCES  used this identifier to manually combine data for each institution that appeared both in IPEDS and ALS  institutions that appeared in only one of the surveys were deleted
  • 7. refining the sample  refined the data by limiting:  by sector:  4-year public institutions  4-year private non-profit institutions  (excluded for-profits)  degrees granted: at least Bachelor’s  institution has a library or is affiliated with a library  institution listed as “active” during all surveyed years  degree-granting institutions  50 U.S. states  nationally or regionally accredited  responded fully on both surveys (IPEDS & ALS) for all years (2002, 2004, 2006, 2008)
  • 8. resulting dataset  after data clean-up, 1,256 institutions in sample  (reduced from 1,733 in the original IPEDS download)  downloaded 55 variables  used 17 variables in this analyses  the remaining variables will be used in future analyses  annual library budget  number of librarians  total library staff size  (and others)
  • 9. key variables  electronic reference:  measured by ALS  variable in dataset = LIBREFYN  distance learning  measured by IPEDS  special learning opportunities:  “distance learning opportunities (e-learning)”  variable in dataset = ic_[year]_slo3
  • 10. correlation matrix (Pearson r’s) ‘02 distance learning ‘04 distance learning ‘06 distance learning ‘08 distance learning ‘02 e-ref ‘04 e-ref ‘06 e-ref ‘08 e-ref ‘02 distance learning 1 .881 .784 .686 .158 .166 .130 .068 ‘04 distance learning .881 1 .865 .756 .156 .168 .124 .085 ‘06 distance learning .784 .865 1 .880 .118 .146 .092 .058 ‘08 distance learning .686 .756 .880 1 .092 .110 .077 .049 ‘02 e-ref .158 .156 .118 .092 1 .537 .437 .358 ‘04 e-ref .166 .168 .146 .110 .537 1 .566 .452 ‘06 e-ref .130 .124 .092 .077 .437 .566 1 .550 ‘08 e-ref .068 .085 .058 .049 .358 .452 .550 1
  • 11. multiple regression dependent variable: 2008 distance learning opportunities  predictors (independent variables):  model 1:  distance learning opportunities for 2002, 2004, and 2006  (3 predictors)  model 2:  model 1 + presence of e-reference services for each year  (7 predictors)  model 3:  model 2 + Carnegie classification, Land Grant institution, institutional control (public, private), highest degree offered, level of highest degree, FT enrollment, total enrollment, institutional size, sector  (16 predictors)
  • 12. regression results  for the dependent variable: distance learning opportunities in 2008…  best predictor = previous offering of the same opportunities  (presence or absence of distance learning opportunities in previous years)  in the 2nd model, electronic reference adds to the model’s predictive strength, but not much  the 3rd model of 16 variables adds more predictive strength, but distance learning appears to be the strongest predictor
  • 13. discussion what does this mean? how is it useful?  electronic reference is weakly correlated with distance learning  in response to research question #1:  no, it does not appear that electronic reference services (email, online chat) were provided in response to distance education needs  it seems likely that e-reference developed as a technological modification of a traditional service for traditional library users  therefore, we should not expect that e-reference necessarily fulfills the needs of distance learners  e-reference is a passive service (users must actively seek help)  do distance learners need a more active service?
  • 14. further planned statistical analyses  additional research questions  did distance education evolve in response to the presence of electronic reference?  are distance learning and/or electronic reference best predicted by technological progress (as indicated by the passage of time)?  is the presence or absence of electronic reference affected by the library budget or by the size of the library staff?  code data to reveal time-to-event as an additional variable  expand years of study to 1998 – 2008  survey questions varied  may require more data manipulation to match variables robustly across years  increase # of variables considered, to seek better predictors
  • 15. any questions?  Starr Hoffman, MLS, MA  Librarian for Digital Collections  Government Documents Department  UNT Libraries  PhD Student, Higher Education, UNT  starr.hoffman@unt.edu  find my presentations & CV here:  http://geekyartistlibrarian.wordpress.com