DCLA meet CIDA Collec&ve Intelligence Delibera&on Analy&cs
Simon Buckingham Shum & Anna De Liddo Mark Klein
DCLA14: 2nd Interna2onal Workshop on Discourse-‐Centric Learning Analy2cs at LAK14: hAp://dcla14.wordpress.com
Complex societal challenges
Interest in the poten2al of plaGorms to harness Social Innova2on Collec2ve Intelligence
EU Collec2ve Awareness PlaGorms for Sustainability & Social Innova2on hAp://caps2020.eu
CI means many things to many people…
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CATALYST Project hAp://catalyst-‐fp7.eu
Flat commen2ng/Threaded discussion what everyone uses now
Idea2on plaGorms Intui2ve for scaleable brainstorming But studies show that the explora2on of he problem space is poor, a lot of repe22on, and weak knowledge building. Labour intensive to sort through thousands of ideas. Facilitators play a key role in ensuring that ideas get connected. Hard for analy2cs to gauge quality of discourse
e.g. hAp://www.spigit.com hAp://ideascale.com
Idea2on plaGorms
hAp://www2.mitre.org/public/jsmo/call-‐for-‐papers-‐lg-‐scale-‐idea2on%20.html
Pain Points in Social Innova2on PlaGorms
Pain Points priori2sed by orgs who run social innova2on plaGorms
! Hard to visualise the debate ! Poor summarisa2on ! Poor commitment to ac2on ! Sustaining par2cipa2on ! Shallow contribu2ons and unsystema2c coverage ! Poor idea evalua2on
Effec2ve visualisa2on of concepts, new ideas and delibera2ons is essen2al for shared understanding, but suffers both from a lack of efficient tools to create them and from a lack of ways to reuse them across plaGorms and debates “As a user, visualisa2on is my biggest problem. It is o_en difficult to get into the discussion at the beginning. As a manager of these plaGorms, showing people what is going on is the biggest pain point.”
Pain Points priori2sed by orgs who run social innova2on plaGorms
! Hard to visualise the debate ! Poor summarisa2on ! Poor commitment to ac2on ! Sustaining par2cipa2on ! Shallow contribu2ons and unsystema2c coverage ! Poor idea evalua2on
Par2cipants struggle to get a good overview of what is unfolding in an online community debate. Only the most mo2vated par2cipants will commit a lot of 2me to reading the debate in order to iden2fy the key members, the most relevant discussions, etc. The majority of par2cipants tend to respond unsystema2cally to s2mulus messages, and do not digest earlier contribu2ons before they make their own contribu2on to the debate, such is the cogni2ve overhead and limited 2me.
Pain Points priori2sed by orgs who run social innova2on plaGorms
! Hard to visualise the debate ! Poor summarisa2on ! Poor commitment to ac2on ! Sustaining par2cipa2on ! Shallow contribu2ons and unsystema2c coverage ! Poor idea evalua2on
Bringing mo2vated audiences to commit to ac2on is difficult. Enthusiasts, those who have an interest in a subject but have yet to commit to taking ac2on, are le_ behind. Need to prompt ac2on in community members Reaching a consensus was considered less important than being enabled to act.
Pain Points priori2sed by orgs who run social innova2on plaGorms
! Hard to visualise the debate ! Poor summarisa2on ! Poor commitment to ac2on ! Sustaining par2cipa2on ! Shallow contribu2ons and unsystema2c coverage ! Poor idea evalua2on
Mo2va2ng par2cipants with widely differing levels of commitment, exper2se and availability to contribute to an online debate is challenging and o_en unproduc2ve. Sustaining par2cipa2on more important than enlarging par2cipa2on. “It is beAer to have quality input from a small group than a lot of members but very liAle content”.
Pain Points priori2sed by orgs who run social innova2on plaGorms
! Hard to visualise the debate ! Poor summarisa2on ! Poor commitment to ac2on ! Sustaining par2cipa2on ! Shallow contribu2ons and unsystema2c coverage ! Poor idea evalua2on
Open innova2on systems tend to generate a large number of rela2vely shallow ideas. Poor collabora2ve refinement of ideas that could allow the development of more refined, deeply considered contribu2ons. No easy way to see which problem facets remain under-‐covered. Very par2al coverage of the solu2on space.
Pain Points priori2sed by orgs who run social innova2on plaGorms
! Hard to visualise the debate ! Poor summarisa2on ! Poor commitment to ac2on ! Sustaining par2cipa2on ! Shallow contribu2ons and unsystema2c coverage ! Poor idea evalua2on
Patchy evalua2on of ideas Poor quality jus2fica2on for ideas. Hard to see why ra2ngs have been given. Unclear which ra2onales are evidence based.
CI Delibera2on PlaGorms: the addi2on of seman2c structure
ODET website: slides, movies, papers, tools
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olnet.org/odet2010
bCisive online: product grade argument mapping
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DebateGraph
DebateGraph
MIT’s Deliberatorium
OU’s Evidence Hub
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OU’s Evidence Hub
OU’s Cohere
OU’s Cohere
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OU’s Cohere
Consider.It
Consider.It
YourView
Can we see such tools in educa2on?
CI Discourse and Formal Educa2on Discourse — a mee2ng of minds
Collec&ve Intelligence for Social Innova&on Formal Educa&on
Ci2zen Student
Moderator Teacher
Seeking strong voluntary par2cipa2on Voluntary/required par2cipa2on
Seeking good explora2on of the problem, building on peers’ ideas
Seeking collec2vely owned solu2on May also be seeking the correct solu2on
Civil discourse, ideally well argued
Ideas from all stakeholders
CI vs Educa2onal Discourse Tools
CI Delibera&on PlaDorms Educa&onal Argumenta&on PlaDorms
simple, professional interfaces efforGul, more amateur interfaces
authen2c, complex problems ar2ficial problems untrained users (ci2zens) who
choose to use the tools (possibly trained) students who are required to use the tools
mul2ple, engaging visualiza2ons
argument networks
Approaches to Discourse Analy2cs
DCLA strategies from AIED/CSCL Scheuer O, McLaren BM, Loll F and Pinkwart N. (2012) Automated Analysis and Feedback Techniques to Support Argumenta2on: A Survey. In: McLaren BM and Pinkwart N (eds) Educa-onal Technologies for Teaching Argumenta-on Skills. Bentham Science Publishers, 71–124
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Analysis Approach Descrip&on
Syntac2c analysis Rule-‐based approaches that find syntac2c paAerns in argument diagrams
Systems: Belvedere, LARGO
Problem-‐ specific analysis Use of a problem-‐specific knowledge base to analyze student arguments or synthesize new arguments
Systems: Belvedere, LARGO, Rashi, CATO
Simula2on of reasoning and decision making processes
Qualita2ve and quan2ta2ve approaches to determine believability / acceptability of statements in argument models
Systems: Zeno, Hermes, ArguMed, Carneades, Convince Me, Yuan et al. (2008)
Assessment of content quality Collabora2ve filtering, a technique in which the views of a community of users are evaluated, to assess the quality of the contribu2ons’ textual content
Systems: LARGO
Classifica2on of the current modeling phase Classifica2on of the current phase a student is in according to a predefined process model
Systems: Belvedere, LARGO
Argunaut Moderator Tool
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Catalyst Project: CI Analy2cs Concept
Or use a Na2ve IBIS PlaGorm
Discourse Analy2cs: Visualiza2on
DCLA analy2cal ques2ons
CIDA Visualiza2on storyboarding
CIDA Visualiza2on storyboarding
CI Dashboard mockups
Discourse Analy2cs: Rhetorical Parsing of Discussion Forum
Simsek D, Buckingham Shum S, Sándor Á, De Liddo A and Ferguson R. (2013) XIP Dashboard: Visual Analy&cs from Automated Rhetorical Parsing of Scien&fic Metadiscourse. 1st Interna-onal Workshop on Discourse-‐Centric Learning Analy-cs, at 3rd Interna-onal Conference on Learning Analy-cs & Knowledge. Leuven, BE (Apr. 8-‐12, 2013). Open Access Eprint: hAp://oro.open.ac.uk/37391
Rhetorical discourse analy2cs to what extent do comments display the hallmarks of reasoned wri2ng which makes thinking visible?
<IMPORTANT SUMMARY> The argument is that the consumer has benefited because technology has increasesd consumer access to markets and has forced brands to become more open and transparent. Likewise, organisa2ons benefit as technology allows them greater access to consumer informa2on. So it seems that we have all gained from the impact of technology. The strongest arguments seemed to lean towards the consumer as benefi2ng most. I am not convinced. I think that, as brands become more sophis2cated and knowledgeable in their approach, consumer resistance becomes more difficult. <IMPORTANT SUMMARY CONTRAST> Really good thoughts -‐ I hadn't considered the other stakeholders. I’m thinking of local brands , which are small now , but have ambi2on to get bigger. SMEs are not going to create huge brand value overnight , but I think lessons can be taken from what the big brands are doing and employed by SMEs
Rhetorical discourse analy2cs to what extent do comments display the hallmarks of reasoned wri2ng which makes thinking visible?
Rhetorical discourse analy2cs to what extent do comments display the hallmarks of reasoned wri2ng which makes thinking visible?
Discourse Analy2cs: Process-‐Goal-‐Excep2on Analysis
Klein M. (2003) A Knowledge-‐Based Methodology for Designing Reliable Mul2-‐Agent Systems. In: Giorgini P, Mueller JP and Odell J (eds) Agent-‐Oriented SoIware Engineering IV. Springer-‐Verlag, 85 -‐ 95. Klein M. (2012) Enabling Large-‐Scale Delibera2on Using AAen2on-‐Media2on Metrics. Computer Supported Coopera-ve Work 21: 449-‐473
Process-‐Goal-‐Excep2on analysis
identify normative process model
identify ideal goals for each subtask
identify possible exceptions for each goal
processdecomposition
process model with goals
process model with goals and exceptions
identify handlers for each exception
Process-‐Goal-‐Excep2on (PGE) analysis
process
exception
goal
requires
has-part
is-violated-by
is-handled-by
has-part
is-caused-by
Deliberatorium PGE analy2cs modelling
PGE analysis of author diversity
PGE analysis of diversity of ideas
PGE analysis of IBIS syntax checking for impoverished argumenta2on
Implemen2ng handlers using PQL graph queries
Currently hardwired to Deliberatorium, but will work on data compliant with a new interchange format for cross-‐
plaMorm interoperability
Deliberatorium recommender agent priori2ses areas for moderator aAen2on
CIDA—DCLA synergies
DCLA
New kinds of UX for
structured argumenta2on
New kinds of visualiza2on of argumenta2on
+ domain
Authen2c use contexts
Moderator tools
CIDA Analy2cs
Taxonomies
AI techniques
Small scale prototypes
AAen2on to quality
discourse