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Extracting Useful and Targeted State-Level Data from IPEDS. Experiences from the Land of 10,000 Lakes. Minnesota Measures. First of a planned annual series of reports related to accountability Timeline May 2005 (initial charge to work on project)
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Extracting Useful and Targeted State-Level Data from IPEDS Experiences from the Land of 10,000 Lakes
Minnesota Measures • First of a planned annual series of reports related to accountability • Timeline • May 2005 (initial charge to work on project) • August 2005 (appropriations, NCHEMS contract, initial meetings) • November 2005 (discussion of goals and indicators) • January 2006 (statewide meetings) • March 2006 (review of goals and indicators) • June 2006 (NCHEMS final report) • September 2006 (meetings with systems)
Indicators – Goal 1Improve success of all students, particularly students from groups traditionally underrepresented in higher education. • College participation rates • IPEDS data • First to second year retention • 3-, 4-, and 6-year graduation rates • Degrees awarded as a proportion of total headcount enrollment • Degrees awarded in critical fields (STEM and healthcare), disaggregated by race/ethnicity • Proportion of young adults (25-34) in the state holding a postsecondary degree
Indicators – Goal 2Create a responsive system that produces graduates at all levels who meet the demands of the economy. • Credentials awarded at each level (IPEDS), per 1000 people 20 and older in the state’s population (ACS). • Proportion of credentials awarded at each level in STEM fields and number awarded (IPEDS) per 1000 people 20 and older (ACS). • Proportion of credentials awarded at each level in healthcare fields and number awarded (IPEDS) per 1000 people 20 and older (ACS).
Indicators – Goal 3Increase student learning and improve skill levels of students so they can compete effectively in the global marketplace. • Did not gather data in this area for the initial report. • Currently looking into a variety of assessment instruments. • Aware that IPEDS COOL will incorporate assessment results in the future.
Indicators – Goal 4Contribute to the development of a state economy that is competitive in the global market through research, workforce training and other appropriate means. • The share of national academic research being done in Minnesota • The ranking of the University of Minnesota on various studies of research activity (University of Florida report, London Times, Shanghai study, and Newsweek) • Total research expenditures in the state as a proportion of gross state profit
Indicators – Goal 5Provide access, affordability and choice for all students. • Proportion of residents aged 18-24 and 25-44 participating in postsecondary education (ACS) • Assigned family expectation (OHE data) • Using NPSAS data • Net tuition (after grants and scholarships) • Average borrowing and rate at which students borrowed
Some Findings • In general, Minnesota does not consistently rank among the top states. More often, we’re near the national average. • The degree attainment of our citizens is high, but that is due in part to in-migration of college-educated citizens from other states. • Native American, Black, and Hispanic students in Minnesota do not do well in college compared to their white and Asian counterparts.
Using the Dataset Cutting Tool (DCT) to get State-Level Data • Create a custom dataset • Advantages • Web-based interface • Very customizable, can get data from multiple files over multiple years • Can create a file that you can download • Disadvantages • Interface can be cumbersome • Time-out issues • Limited to 1,000 institutions in creating the file
Using the Dataset Cutting Tool (DCT) to get State-Level Data • Download entire data file • Advantages • Very straightforward • You get all of the data for all institutions • Can be imported into a program like SPSS, SAS or Access for report generation • Disadvantages • You get all of the data for all institutions, which includes a lot of imputation fields • Data dictionaries are cumbersome
What We Did • Download entire data files • Import into an Access table, to provide control over • Which fields were brought in • The data type of those fields • The names of the fields • Consider a sample • Building queries helps a great deal, as results can be copied/pasted into Excel for easy manipulation • Why not just take data directly to Excel? • Limits on Excel table size
Successes • Getting state-level data is reasonably easy • Crosstab queries • Reports • State and national averages • Beware of averages of averages • Actual averages reasonably easy
What We Will Do Differently (regarding our use of IPEDS data) • Degrees awarded as a proportion of total headcount enrollment will be rethought • Goal: incorporate part-time students into a degree completion measure • Needs more context • May talk more about and give more detail about transfers out • No more mixing of IPEDS and ACS data • May look more deeply into the use of DAS
Observations • Data dictionaries (e.g., imputation variables) • Variable names in general • Lack of retention data by race • Which is being addressed in part by new IPEDS data collection procedures • But only for SMART grant fields • Loss of transfer students and part-time students in computation of graduation rates
For More Information • On Minnesota Measures • The on-line version is available at: • http://www.ohe.state.mn.us/mPg.cfm?pageID=1733 • You can also download a .pdf version of the entire report from this page. • On the Office of Higher Education • http://www.ohe.state.mn.us • jim.bohy@state.mn.us