cohere.open.ac.uk
Discourse-Centric Learning Analytics
LAK2011: 1st International Conference on Learning Analytics and Knowledge February 27-March 1, 2011
Banff, Alberta
Anna De Liddo, Simon Buckingham Shum, Ivana Quinto, Michelle Bachler, Lorella Cannavacciuolo
Knowledge Media Institute, The Open UniversityBusiness & Management Engineering, Universita’ degli Studi Napoli Federico II, Italy
A key indicator of meaningful learning is the quality of contribution to discourse
Sociocultural perspective on learning
“highlights the possibility that educational success and failure may be explained by the quality of educational dialogue, rather than simply in terms of the capability of individual students or the skill of their teachers.”
We look at discourse as a key indicator for learning and explore discourse analysis as a method to identify where and how learning happens.
(Mercer 2004)
Discourse as Indicator of Learning
Discourse analysis focuses explicitly on language as social action
Discourse and Argumentation
are the tools through which people can
compare their thinking, explore ideas, shape agreement, and identify or solve disagreements.
If discourse is the tool through which learners think collectively, then discourse outcomes and discourse analysis can provide indicators to better understand the learning processes (Mercer 2000)
Discourse as the Tool to Think Collectively
The most established online dialogue environments render discourse chronologically, rather than logically, reflecting most strongly the sequence of contributions rather than their conceptual structure:
for instance a Facebook dialogue….
What Discourse Environment?Chronologically VS Logically Rendered Dialogue Environments
Discourse Analysis to Better understand the Learning Process
Beyond threaded forums: tools for structuring and mapping issues, dialogue and argumentation
7
Online Deliberation: Emerging Tools WorkshopOnline Deliberation 2010, Leeds UK (30 June – 2 July)www.olnet.org/odet2010
ESSENCE: E-Science, Sensemaking & Climate ChangeESSENCE workshop, KMI, Open Universityhttp://events.kmi.open.ac.uk/essence
agrees with
agrees with
disagrees with
agrees with
agrees with
disagrees with
we discuss what it mean to use Cohere’s online dialogue environment to monitor online learning activities and develop useful learning analytics, by starting on the analysis of the online discourse which learners are involved in.
We demonstrate how discourse analytics can enable a deeper understanding of the online discourse, of the participants to the discourse and the social and learning dynamics.
Discourse Analysis to Better understand the Learning Process in Cohere
Analytics Per LearnerAnalytics Per Learner
Table on Posts’ Type -> Learner Attention and Performance
By looking at the post type table it is possible to evaluate learner’s performance connecting the discourse outcomes with the specific learning goal.
Legend:
Positive link type
Negative link type
Neutral link type
Table on Links’ Type -> Learners’ Attitudes
Comparing Users’ Usage of link types
Compare Thinking
Compare Thinking
Information Broker
Information Broker
Analytics Per Group: Discourse network statistics
A Social-Semantic Network of Discourse Elements
Discourse network structure = Concept Network + Social Network
Social Network
Concept Network
Concept Network
Concept Network Analysis and Visualization -links distributions enable to infer learning topics distribution
Concept Network Analysis and Visualization
Concept Network Analysis and Visualization
Social Network
Social Network Analysis and VisualizationOutdegree = measure of users’ activityIndegree = indirect measure of relevance of a user’s posts.
Social Network Analysis and Visualization
L1
L6
We have motivated a focus on learners’ discourse as a promising site for identifying patterns of activity which correspond to meaningful learning and knowledge construction.
We are interested in the rhetorical role that a user’s contribution is making to a document or conversation and the nature of the connection to other contributions using semantic relationships.
Using the Cohere system as an experimental vehicle, we have presented examples of learning analytics to better understand:
learners’ attention
learners’ rhetorical moves within the online discussion
learning topics distribution
learners’ social interactions
Conclusions
Embed learning analytics into different areas within the Cohere’s UI
Investigating computational linguistics tools for automatically detecting rhetorical gestures within text documents
(in collaboration with XEROX Research Europe, Agnes Sandor
http://olnet.org/node/512)
Ability to set software agents to monitor the discourse network -- Moving toward user-defined semantic network analysis.
Future Work
Many Thanks
Anna De Liddo
olnet.org
References for Cohere
Buckingham Shum, Simon (2008). Cohere: Towards Web 2.0 Argumentation. In: Proc. COMMA'08: 2nd International Conference on Computational Models of Argument, 28-30 May 2008, Toulouse, France. Available at:http://oro.open.ac.uk/10421/
De Liddo, Anna and Buckingham Shum, Simon (2010). Cohere: A prototype for contested collective intelligence. In: ACM Computer Supported Cooperative Work (CSCW 2010) - Workshop: Collective Intelligence In Organizations - Toward a Research Agenda, February 6-10, 2010, Savannah, Georgia, USA. Available at: http://oro.open.ac.uk/19554/
Buckingham Shum, Simon and De Liddo, Anna (2010). Collective intelligence for OER sustainability. In: OpenED2010: Seventh Annual Open Education Conference, 2-4 Nov 2010, Barcelona, Spain. Available at: http://oro.open.ac.uk/23352/
De Liddo, Anna (2010). From open content to open thinking. In: World Conference on Educational Multimedia, Hypermedia and Telecommunications (Ed-Media 2010), 29 Jun, Toronto, Canada. Available at: http://oro.open.ac.uk/22283/
De Liddo, Anna and Alevizou, Panagiota (2010). A method and tool to support the analysis and enhance the understanding of peer- to- peer learning experiences. In: OpenED2010: Seventh Annual Open Education Conference, 2-4 Nov 2010, Barcelona, Spain. Available at: http://oro.open.ac.uk/23392/
Buckingham Shum, Simon (2007). Hypermedia Discourse: Contesting networks of ideas and arguments. In: Priss, U.; Polovina, S. and Hill, R. eds. Conceptual Structures: Knowledge Architectures for Smart Applications. Berlin: Springer, pp. 29–44.