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John Whitmer, Ed.D. Updated: February 19, 2013 Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

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Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course. John Whitmer, Ed.D. Updated: February 19, 2013. Outline. Context Methods & Tools Findings Conclusions & Next Steps. 1. Context. Case Study: Intro to Religious Studies. - PowerPoint PPT Presentation

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Page 1: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

John Whitmer, Ed.D.Updated: February 19, 2013

Using Learner Analytics to Understand Student Achievement in

a Large Enrollment Hybrid Course

Page 2: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Outline1. Context

2. Methods & Tools

3. Findings

4. Conclusions & Next Steps

Page 3: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

1. CONTEXT

Page 4: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Case Study: Intro to Religious Studies• Undergraduate, introductory, high demand

• Redesigned to hybrid delivery format through “academy eLearning program”

• Enrollment: 373 students (54% increase on largest section)

• Highest LMS (Vista) usage entire campus Fall 2010 (>250k hits)

• Bimodal outcomes:• 10% increase on final exam• 7% & 11% increase in DWF

• Why? Can’t tell with aggregated data

54 F’s

Page 5: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Founded in 1887

15,257 FTES, 95% from California, serves 12 counties

Primarily residential, undergraduate teaching college

Campus in California State University system (23 colleges, 44,000 faculty and staff, 437,000 students)

Page 6: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

CSU Budget Proposed Increase!

Source: CSU Chancellor’s Officehttp://bit.ly/X7LYeK

Page 7: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Driving Conceptual Questions1. How is student LMS use related to academic

achievement in a single course section?

2. How does that finding compare to the relationship of achievement with traditional student characteristic variables?

3. How are these relationships different for “at-risk” students (URM & Pell-eligible)?

4. What data sources, variables and methods are most useful to answer these questions?

Page 8: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Gender Freq. PercentUniversity Average Difference

Female 231 62% 51% 11%Male 142 38% 48% -10%

Age 0% 17 22 6%   18-21 302 81%   22-30 22 6%   31+ 1 0%   

Under-represented Minority  

No 264 71% 73% -2%Yes 109 29% 27% 2%

Pell-eligible Freq. Percent    No 210 56%   Yes 163 44%   

First Attend College Freq.      No 268 72%   Yes 105 28%   

Enrollment Status Freq.      Continuing Student 217 58%   Transfer 17 5%   First-Time Student 139 37%   

Page 9: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

2. METHODS & TOOLS

Page 10: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Methods at a Glance Data Sources: 1) LMS logfiles, 2) SIS data,

3) Course data

Process1. Clean/filter/transform/reduce data (70% effort)2. Descriptive / exploratory analysis (20% effort)3. Statistical analysis (10% effort)

Factor analysis Correlation single variables Regression multiple variables; partial & complete

Page 11: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Tools Used

App Function

Excel Early data exploration; simple sorting; tables for print/publication

Tableau Complex data summaries and explorations; complex charts; presentation chartsFinal/formal descriptive data; statistical analysis; some charts (scatterplots)Statistical analysis (factor analysis)

Page 12: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Variables

Page 13: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Missing Data On Critical Indicators

Page 14: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Final data set: 72,000 records (-73%)

Page 15: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

LMS Use Consistent across Categories

Factor Analysis of LMS Use Categories

Page 16: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

3. FINDINGS

Page 17: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Clear Trend: Grade w/Mean LMS Hits

Page 18: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Question 1 Results: Correlation LMS Use w/Final Grade

Scatterplot of Assessment Activity

Hits vs. Course Grade

Page 19: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Question 2 Results: Correlation: Student Char. w/Final Grade

Scatterplot of HS GPA vs. Course

Grade

Page 20: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Question 2 Results: Correlation: Student Char. w/Final Grade

Page 21: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Conclusion: LMS Use Variables better Predictors than Student Characteristics

LMS Use

Variables

18% Average(r = 0.35–0.48)

Explanation of change in final grade

Student Characteristic

Variables

4% Average(r = -0.11–0.31)

Explanation of change in final grade

>

Page 22: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Smallest LMS Use Variable

(Administrative Activities)

r = 0.35

Largest Student

Characteristic

(HS GPA)

r = 0.31

>

Page 23: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Combined Variables Regression Final Grade by LMS Use & Student Characteristic Variables

LMS Use

Variables

25% (r2=0.25)

Explanation of change in final grade

Student Characteristic

Variables

+10%(r2=0.35)

Explanation of change in final grade

>

Page 24: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Question 3 Results:Regression by “At Risk” Population Subsamples

Page 25: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

At-Risk Students: “Over-Working Gap”

25

Page 26: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Activities by Pell and Gradegrade / pelleligible

A B+ C C-

Pell-Eligible Not Pell-Eligible Pell-Eligible Not Pell-Eligible Pell-Eligible Not Pell-Eligible Pell-Eligible Not Pell-Eligible0K

5K

10K

15K

20K

25K

30K

35K

Value

Content

Content

Engage

Engage

Assess

Assess

Admin

Admin

Content

Content

Engage

Engage

Assess

Assess

Admin

Content

Content

Engage

Engage

Assess

Assess

Content

Content Engage

Engage

Assess

Assess

Admin

Admin

Measure NamesAdmin

Assess

Engage

Content

Extra effort in content-related activities

Page 27: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Previous Studies Relating LMS Use to Course Grade

Page 28: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

4. CONCLUSIONS & NEXT STEPS

Page 29: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Conclusions1. At the course level, LMS use better predictor of

academic achievement than student demographics (what do, not who are).

2. Small strength magnitude of complete model demonstrates relevance of data, but suggests that better methods could produce stronger results.

3. LMS data requires extensive filtering to be useful; student variables need pre-screening for missing data.

Page 30: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

More Conclusions4. LMS use frequency is a proxy for effort. Not a

very complex indicator.

5. Student demographic measures need revision for utility in Postmodern era (importance to student, more frequent sampling, etc.).

6. LMS effectiveness for at-risk students may be caused by non-technical barriers. Need additional research!

Page 31: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Ideas & FeedbackPotential for improved LMS analysis methods: social learning activity patterns discourse content analysis time series analysis

Group students by broader identity, with unique variables: Continuing student (Current college GPA, URM, etc. First-time freshman (HS GPA, SAT/Act, etc)

Page 32: Using Learner Analytics to Understand Student Achievement in a Large Enrollment Hybrid Course

Feedback? Questions?

John Whitmer [email protected]

Slideshttp://slidesha.re/15iokzE

Complete monographhttp://bit.ly/15ijySP

Twitter: johncwhitmer