270 likes | 281 Views
Determinants of Engagement in an Online Community of Inquiry. Jim Waters College of Information Science and Technology Drexel University Philadelphia james.waters@drexel.edu. Background. Problem of maintaining student engagement. Online learning creates separation
E N D
Determinants of Engagement in an Online Community of Inquiry Jim Waters College of Information Science and Technology Drexel University Philadelphia james.waters@drexel.edu
Background • Problem of maintaining student engagement. • Online learning creates separation • Alienation, lack of commitment and antisocial behavior ? • Community of Inquiry ?
Pragmatism: Dewey and Addams • Problematicsituation, scientific attitude and community as participatory democracy • Inquiry is controlled or directed transformation of an indeterminate situation • There is a community engaged in inquiry. Inquiry is an open-ended process with positive feedback. Dewey (1916,1933)
Community of Inquiry Garrison et al 2000
Cycles of Inquiry Garrison et al 2000
Building on the Garrison et al Model • Content Analysis of online Discussion Board • Graduate Information Systems Students • Open-ended debate • Practical and Theoretical questions • Derived behaviors that incorporated different elements of the Garrison model
Student Roles Waters and Gasson 2005
Research Questions • Are there noticeable patterns of interactions between participant roles? • Do patterns of interaction change over time? • Does the online learning environment support critical inquiry ? • What interactions generate greatest student engagement
Study • Post-Hoc analysis of online learning archive: • 10 week graduate IS Management course at a US university • 23 students, experienced professionals & managers. • 3 - 4 open-ended questions posted to discussion board weekly: • 1063 discussion-board messages • 951 student responses (analyzed) • 112 instructor postings (not analyzed). • Content analysis of postings and responses: • Each student contribution message assigned to single response type, reflecting dominant mode of behavior.
Raw results • 25,937 individual reads of discussion board message (range 331 – 2179 reads per student) • 951 student postings (range 1 – 154 per student) • Most active period weeks 1 & 2 (157 posts and 162 posts) • Then steady pattern of ~ 70-80 posts per week.
Student behavior • Contributor (61%) • Facilitator (22%) • Fluid patterns of class behavior • Students adopt different behaviors from week to week • Popularity and volume were unrelated • Possible connection between facilitation and popularity/reference to poster.
Detailed Analysis • Nine typical threads analysed • Three threads each for weeks 3, 6 and 9 • The most productive debate produced 30 messages with a maximum thread depth of 7. • The least productive produced 14 messages with a thread depth of 2. • The mean number of messages on a discussion was 22 • Four discussions had a thread depth of greater than 3. • Pattern of responses analysed
Are there noticeable patterns of interactions between participant roles?
Ratio of receive to send Contributor = 27/106 = 0.25 Facilitator = 25/38 = 0.65 Complicator = 0/17 = 0.00
Do patterns of interaction change over time? Week 3 (n = 63) Week 6 (n=51) Week 9 (n = 60)
Does the online learning environment support critical inquiry ? Muukkonen et al 1999 Stahl 2006
Does the online learning environment support critical inquiry ? • Few threads reached a definitive conclusion • Closer synthesizes and ends debate • Closer often ignored • Elements found • Information Gathering • Synthesis • Concrete experience • Reflective observation. • Critical evaluation • Deepening questions • Generating subordinate questions • Refining given knowledge • Generating hypotheses • Open-ended debate ? • Not problem centered ?
What interactions generate greatest student engagement • Analysis of all 951 student messages • Analysis of Read frequency for different message types • Knowledge-elicitation messages(asking questions) generated significantly more (24) reads pre message than any other type of message. • Average reads per message for all messages is 16.78 • Some participants messages are read more frequently than others
Why are some posters more engaging ? • Does frequency of posting messages affect popularity? • Does length of message affect frequency of reads? • Does position of messages affect frequency of reads ? • Does type of “participant” affect frequency of reads ?
Is frequency of posting related to popularity? • Correlation between number of messages and total reads of a persons messages is 0.97, • Weak -0.21 correlation between frequency of posting and reads/message. • Most frequent poster posted 136 messages which attracted an average of 15.65 reads per message. • The average messages per person was 37 • Top three most attended to participants posted an above average number but subject 20 did not. • Two of the least attended to participants posted well above average numbers of messages.
Does length of message relate to read frequency • Correlation between length of post and reads for that post = 0.011 • Grouping messages into very short (< 101 words), Short (101—200 words), medium (210—300 words) and long (>301 words) • One-Way ANOVA on frequency of reads gives an f value of .373 and a significance level of .773, no apparent significant effect
Does position of message affect frequency of reads • Messages posted in the first 2 days of a thread are read significantly more frequently (f=36.339, p= 0.000) than later messages. • Messages posted after the third day are read by less than 50% of participants. • If a message is one of the first 10 posted it is much more likely to be read than later messages (f=22.564, p = 0.000). • However only two of the most attended to participants are “early” posters.
Does type of participant affect frequency of reads • The most attended to participants posted more facilitation messages (39% of messages posted) • The least attended to participants typically posted far fewer facilitation messages. (23% of messages posted).
Conclusions • Peer Facilitation does work • Students quickly identify valuable contributors • Early stages crucial • Changing Contributor to Facilitator • Identification of thought leaders • Asking questions gets responses • Fluid patterns of behavior within the community • Volume is not the same as quality
Limitations Future Work • Small, exploratory study • Initial framework • Open to debate • Influence of prior online learning-experience on patterns of behavior • Larger sample size • Deeper analysis of content • Explore vicarious learning contributions more fully • Explore why patterns change • Compare ill-defined vs. well-bounded questions.