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Multilevel Analysis of Socially 
Embedded Learning 
Dan Suthers 
University of Hawaii 
Supported by the National Science Foundation
“Do you go to the beach all 
the time?”
No. 
We do not always go to the beach.
We also go to the mountains.
“Health hazards on 
Mauna Kea: 
Altitude sickness. 
At the summit 
elevation of 13796 
feet (4200 m), the 
atmospheric 
pressure is 40 
percent less than 
at sea level …”
Major Motivations and Ideas 
! Learning (particularly in socio-technical 
settings) is a complex and embedded 
phenomenon 
! Multiple theories and levels of analysis are 
needed 
! Distributed and multimediated nature of socio-technical 
systems present analytic challenges 
! Approaches illustrated with my work: 
! Generalized concept of interaction and the 
contingency of acts on their setting 
! Abstract transcript and analytic hierarchy
Let’s start with Learning 
in Socio-Technical Networks … 
… and the idea that Learning is 
“Embedded” in multiple ways.
Learning in Socio-Technical Networks 
How do social settings foster learning? 
Agency 
Who or what is the agent 
that learns? 
! Individual 
! Small groups 
! Networks (communities, 
cultures, societies) 
Epistemologies 
What is the process of 
learning? 
! Acquisition 
! Intersubjective meaning-making 
! Changes in participation 
and Identity 
The correspondence is not strict. Epistemologies 
can be applied at local or network levels 
Based on ! Suthers (ijCSCL 2006)
Levels of Agency and Epistemologies 
! Acquisition Epistemologies 
Learning as acquisition of information, knowledge or skills 
! Local: contribution theory, given/new contract, explanation, 
conceptual change, practice of skills, etc. 
! Network: weak ties, diffusion theories (contagion theory, 
diffusion of innovations) 
! Intersubjective epistemologies 
Learning as intersubjective meaning-making 
! Local: co-construction, collaborative inquiry, group cognition 
! Network: knowledge building, communities of scientists 
! Participatory epistemologies 
Learning as changes in social participation and identity 
! Local: identity, apprenticeship & mentoring (LPP) 
! Network: expansive learning (CHAT)
A Complex Multilevel Phenomenon 
Claim: individuals participate in the foregoing 
forms of learning simultaneously 
! One might choose to focus on one form, or 
! Grapple with a fundamental question: 
How does learning take place through the 
interplay between individual and collective 
agency in socio-technical networks? 
! Requires coordinated multi-level analysis 
! Requires coordinated multi-level theorizing
Learning is Embedded 
! Interactionally embedded 
! Learning accomplishments are contingent on 
their interactional setting 
! Socially embedded 
! Social as source of resources 
! Social entity as agent of learning 
! Technologically embedded 
! Affordances influence processes 
! Artifacts sustain practices and activity 
structures
Analytic Challenges 
! Embedded: need to say how activity is 
contingent on setting 
! Multimediated: need media independent 
unit of interaction, while being media 
aware 
! Distributed: need to unify diverse data 
streams 
! Hierarchical: need multiple levels of 
theory and analysis
Traces Analytic Hierarchy 
Addressing (some of) the needs 
Activity is distributed across multiple media 
" Abstract transcript representation collects distributed 
events from multiple media into a single analytic 
artifact, reassembling fragmented record of activity 
Local activity is hierarchically embedded in network 
settings, calling for coordinated multilevel analysis 
" Analytic hierarchy that supports multiple levels of 
description (interaction, mediated associations, ties) 
and analysis 
! Suthers (HICSS 2011) 
! Suthers & Rosen (LAK 2011)
Interaction Affiliations 
Uptake Ties 
Contingencies 
Mediated Associations
Uptake and 
Contingencies 
How these ideas developed, picking 
up where we left off in about 2003 …. 
Thanks to NSF, Chris Hundhausen, 
Laura Girardeau, Nathan Dwyer, Richard 
Medina and Ravi Vatrapu
Example 1: First Encounter of Needs
Distributed Interaction
Motivated concept of “Uptake” 
! Needed a cross-media unit out of which 
to construct analytic accounts of 
interaction 
! Media specific concepts (“adjacency pair”, 
“edit”, “reply”) are too specific 
! Not a new unit, but rather a name given 
to all such constructs taken collectively 
! Generalize beyond interaction as 
“reciprocal action or influence” to other 
forms of association
Uptake 
Minimal requirement for two acts to form part 
of an interaction: that the existence of the 
first act is consequential in some way for the 
second act: 
Uptake is present when an act takes some 
aspect of a prior act (or event) as relevant 
for ongoing activity. 
Flexible and Broad: Opens up our thinking about 
how interaction might be accomplished
Example 2: Asynchronous Dyads 
! Asynchronously interacting dyads 
! Public heath problem with hidden profile 
materials 
! Original study: representational guidance of 
evidence maps vs. threaded discussion
Example: Asynchronous Dyads
Closeup
Example 2: Interactional Pattern (“W”) 
! Information Sharing / Round Trip in Evidence Map 
! Subsequent Negotiation in Threaded Discussion
Connecting Uptake to Evidence 
Motivations 
! “How do you know it’s really uptake?” 
! Problem of intentionality but also 
! Separate evidence from claim 
! Manual analysis is slow 
! Sufficiently “objective” evidence would also 
be computable 
! Action is contingent on its setting in 
many (observable) ways: let’s use 
computational tools to leverage this!
Contingencies 
Any observed relationship between events 
that may evidence how one event may 
have enabled or influenced other events 
(acts) 
! Include “many metaphysical shades 
between full causality and sheer 
inexistence” (Latour, 2005) 
! Contingencies record how each act is 
embedded in a history of interaction 
and a social and technological setting
Some Types of Contingencies 
Media Dependency 
ei operates on object created 
or modified by ej 
Temporal Proximity 
ei took place soon after ej 
Spatial Organization 
ei takes place in 
configurational context created 
by ej 
Inscriptional Similarity 
ei creates inscriptions similar 
to those created by ej 
Semantic Relatedness 
The meaning of inscriptions 
created by ei and ej overlap 
Contingencies of ei on ej 
(! Suthers Dwyer, Medina & Vatrapu, ijCSCL 2010)
Example 3: Early Contingency Analysis 
! Analysis originally undertaken to explain convergence 
& divergence, but discovered emergence of 
representational practices 
! First automated construction and visualization of 
contingency graph 
(# Medina & Suthers, RPTEL 2009)
Example 3: Asymmetry in Roles
Example 3: Representational Practices
Example 3: Episodic View of Interaction 
Abstraction to uptake between episodes of specific acts
Example 3: Multi-level Analysis 
Lemke: "look at at least one organizational level below 
the level we are most interested in (to understand the 
affordances of its constituents) and also one level 
above (to understand the enabling environmental 
stabilities)"
Traces Analytic Approach
Testbed: Tapped In 
SRI’s Network of education professionals: PD and peer 
support (Mark Schlager, Patti Schank, Judi Fusco) 
1997-2013: longest running educational online 
community 
! 20K educators/year 
! 800 user spaces 
! 50 tenants 
! 40-60 volunteer-run 
community-wide 
activities/month 
! Chats, discussions, wikis, resource sharing ... 
Good Testbed: Heterogeneous network of diverse small 
groups interacting with multiple media
Automatic Discovery of 
Distributed “Sessions” and 
Influences Between Sessions
Overview of Analysis: Process Trace
Overview of Analysis: Events
Overview of Analysis: Contingencies
Overview of Analysis: Uptake
Overview of Analysis: Sessions
Process Model
XML Scripts driving Java, NLTK, iGraph 
<!-- ========== Content Preprocessing ========== -->! 
<step bundlename="apps.analyzer" classname="apps.analyzer.script.PythonScriptStep" >! 
!<stepconfig scriptref="nltk/lancaster_stemmer.py" />! 
</step>! 
<!-- ========== Contingencies ========== --> ! 
<step bundlename="apps.analyzer" 
classname="apps.analyzer.script.ReadDiscussionMessageRule" />! 
<step bundlename="apps.analyzer" classname="apps.analyzer.script.LexicalRule" />! 
<step bundlename="apps.analyzer" classname="apps.analyzer.script.ReplyRule" />! 
<step bundlename="apps.analyzer" classname="apps.analyzer.script.AddressRule" />! 
<step bundlename="apps.analyzer" classname="apps.analyzer.script.SameActorRule">! 
!<stepconfig windowsize="300" tag="SA300" />! 
</step>! 
<step bundlename="apps.analyzer" classname="apps.analyzer.script.TimeWindowRule">! 
!<stepconfig windowsize="120" tag="TW120s" />! 
</step>! 
<!-- ========== Activity Structure (Finding Sessions)========== -->! 
<step bundlename="apps.analyzer" classname="apps.analyzer.script.ActivityRule"> ! 
!<stepconfig graphName="activity">! 
! !<weighter fileref="weights/activity_weights.xml" />! 
!</stepconfig>! 
</step>! 
. . . !
Case Study 
Analyze 3 days of chat, 
centered on a session of 
interest
Teaching Teachers Session 
184 23:35 Mary: are all good teachers good mentors? 
185 23:38 Amber: some people will take a while to get to that point 
186 23:42 Amber: No..not all 
187 23:51 Erica: definitely not 
188 23:55 Lara: Training can help, but I think some is personality 
189 24:09 Amy: some people are excellent teachers but are horrible mentors 
190 24:09 Erica: some great teachers can not hold a decent conversation with an 
adult 
191 24:11 Amber: i had to co-ops who would be awful mentors 
192 24:24 Lara: Nods 
193 24:27 Dianne: That is an interesting question Maria, ... I would probably say 
'yes' first off, and then wonder some more 
194 24:42 Mary: it is something I have thought about often Lisa 
195 24:47 Amber: I think its alot of personality 
196 25:17 Dianne: one thing a mentor has to know is how to operate with a peer, 
and how to be intentional about handing over, or encouraging 
greater independence 
197 25:18 Mary: observation has made me think that it takes an extra “special 
ingredient” to tip the scales 
198 25:34 Erica: I think if you have the passion for teaching you will want 
everyone else to feel the same 
199 25:35 Amber: agree
Contingencies computed 
! Time Window (recency): all chats within 120 
seconds 
! Last Contribution: last chats by same actor in 
300 seconds 
! Address: Actor chats ... chat addresses actor 
! Reply: Chat addresses actor ... actor chats 
! Lexical Overlap: weighted count of overlapping 
lexical items (NLTK Lancaster Stemmer) 
Weighted sum of counts of above $ estimate 
of uptake
Uptake Graph for 3 Days of Chat
Rooms 
One session across 
two rooms 
Two sessions 
in one room
Sessions (Modularity Partitions) 
One session across 
two rooms 
Two sessions 
in one room
Session Partitions Collapsed
Inspect group in Data Laboratory
Teaching Teachers Session Begins
Teaching Teachers Session Ends
Sociogram 
Folding contributions by actor 
to expose actor-actor uptake
Session 74, Rooms
Session 74, Contributions Colored by 
Actor, ForceAtlas2 Layout 
Can we characterize 
“good” sessions by 
structural patterns? 
Nodes are contributions, Colors are actors, Node size is weighted indegree
Session 74 Sociogram 
Nodes are actors 
Node size is weighted indegree
Selecting second group
Same actors in NTraining Session
How “Communities” are 
Embedded in Technological 
Media 
Mediated Associations and 
Community Detection 
! Suthers, Fusco, Schank, Chu & Schlager (HICSS 2013)
Interaction Affiliations 
Uptake Ties 
Contingencies 
Mediated Associations
Characterization of Community Structure 
! “I don’t know what communities are 
there” 
! Organizational “tenants” and unsponsored 
! Multiple, fluid forms of participation 
! An empirical matter 
! Don’t assume that the network is one 
community 
! Don’t assume that external communities are 
replicated within the sociotechnical system
Communities: Technologically Embedded 
! Multiple technologies for participation, each with their 
own interactional and social affordances 
! Choice of technologies reflect and reaffirm the 
relationship between interlocutors (Licoppe and 
Smoreda, 2005) 
! Apply this idea to collective rather than dyadic level: 
Communities are embedded within and make use of 
technological media for interaction in ways that 
reflect and reaffirm their nature 
! Our approach identifies cohesive subgroups of actors 
and of actants (mediational means) simultaneously 
! Suthers & Chu, LAK 2012
Intermediate level of representation 
! Actor-Actor ties: useful 
abstraction, but hide 
how enacted 
! Intermediate granularity: 
mediated association 
! Interaction traces (e.g., contingency 
graphs): overwhelming detail!
Portion of an Associogram 
actors 
discussions 
files
Cohesive subclusters in associogram 
Modularity 
Partitioning 
• 234 Partitions 
• Modularity: 0.828 
Open Ord Layout 
in Gephi 
Cohesive 
subgraphs of 
actors and 
artifacts via 
which they 
interact
Interpretations of Top 6 Partitions 
After School 
Online 
Events 
Associations 
via TI 
Reception and 
other public 
rooms 
Chat-based 
CoP in a 
Midwestern 
school district; 
Discussion-based 
professional 
development in 
the Southern 
US 
Chat-based 
Language 
Arts in the US 
Midwest; 
Pre-service 
program in 
Western US
Myriad of Small Clusters
Size distribution of Largest 86 partitions
Average weighted degree by actor size 
(sample of every 10th partition)
Artifact/Actor ratios by actor size
Use of media in large and small partitions 
! Tenant and 
unsponsored are 
similar in large 
partitions 
! In small partitions, 
tenants are strongly 
chat based while 
unsponsored rely on 
asynchronous media
Summary & Comments 
! Purely structural (graph theoretic) computations 
identified cohesive subgroups that have interpretations 
as communities 
! Diversity demonstrates vibrancy of Tapped In as 
“transcendent community” (# Joseph et al., CSCL 2007) 
! Value to learning analytics: identify social units that 
are the setting or agent of learning 
! Can “dive in” to examine activity of high-degree 
actors, structure of chat sessions in rooms, etc. 
! Need algorithm for overlapping cohesive clusters 
! Clique percolation fails on bipartite graphs 
! Edge communities and flow compression promising 
! Suthers, Fusco, Schank, Chu & Schlager (HICSS 2013)
Productive Multivocality 
Bringing multiple theoretical 
and methodological traditions 
to bear
Productive Multivocality Project 
The complexity of learning requires multiple 
analytic “voices” (theories and methods): How 
to bring them into productive dialogue? 
! 5 year project sharing/comparing approaches 
to analyzing collaborative learning 
! 37+ researchers analyzed 5 corpora 
! Suthers, Lund, Rosé, Teplovs & Law 
(Springer 2013)
Strategies for Productive Multivocality 
! Dialogue about the same data, from different 
perspectives 
! Share an analytic objective (e.g., “pivotal 
moments”) 
! Bring analytic representations into alignment 
with each other and the original data 
! Eliminate inconsequential differences and 
Iterate 
! Push the boundaries of traditions without 
betraying 
! Reflect on Practice: dialogue about methods 
as object-constituting, evidence-producing and 
argument-generating tools
Brief Comments on Design 
Mediating between individual 
and group
Individual !" Small group 
Representational affordances for 
intersubjective meaning-making: 
! (Im)Mutable Mobiles 
! Negotiation Potentials 
! Referential Resources 
! Reflector of subjectivity (awareness) 
! Persistence (reflection) 
!S uthers & Hundhausen (JLS 2003) 
!S uthers (ijCSCL 2006)
Individual !" Network 
!J oseph, Lid & Suthers (CSCL 2007)
act 
persist 
find 
care 
care 
act 
persist 
find 
care 
act 
persist 
persist find 
find 
care 
act 
Thanks to Viil Lid 
for diagrams
Key Ideas 
! Learning is interactionally embedded 
% Contingency and Uptake analysis of 
sequential structure 
! Learning is socially embedded 
% Empirically identify the social units in a STN 
! Learning is technologically embedded 
% Identify the mediational means (mediated 
associations) 
! Generalized concepts, abstract transcript , 
and analytic hierarchy help
Summary of Concepts 
! Mediation and Associations 
! All interaction is mediated; actors are associated via media 
! Understand how social phenomena are technologically 
embedded (! Licoppe & Smoreda, SN 2005; ! Suthers & Chu, 
LAK 2012) 
! Uptake: (! Suthers, ijCSCL 2006) 
! Taking some aspect of (the trace of) a prior act or event as 
relevant for ongoing activity 
! A generalized unit of analysis for “interaction” broadly 
understood (multi/cross-media; inter/intra-subjective) 
! Contingencies: (! Suthers Dwyer, Medina & Vatrapu, ijCSCL 2010) 
! Manifest relationships between acts and their setting 
(including other events) 
! Evidence for Uptake
Traces 
Analytic 
Hierarchy 
" Abstract transcript 
representation that 
collects relevant 
events into a single 
analytic artifact 
" Analytic hierarchy 
that supports 
multiple levels of 
analysis 
!S uthers, HICSS 2011 
!S uthers & Rosen, LAK 
2011 
Interaction Affiliations 
Uptake Ties 
Contingencies 
Mediated Associations
Mahalo! 
Dan Suthers, Dept. of ICS 
suthers@hawaii.edu 
Lilt.ics.hawaii.edu

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Keynote Talk at ITS 2014: Multilevel Analysis of Socially Embedded Learning

  • 1. Multilevel Analysis of Socially Embedded Learning Dan Suthers University of Hawaii Supported by the National Science Foundation
  • 2.
  • 3. “Do you go to the beach all the time?”
  • 4. No. We do not always go to the beach.
  • 5. We also go to the mountains.
  • 6. “Health hazards on Mauna Kea: Altitude sickness. At the summit elevation of 13796 feet (4200 m), the atmospheric pressure is 40 percent less than at sea level …”
  • 7.
  • 8.
  • 9.
  • 10. Major Motivations and Ideas ! Learning (particularly in socio-technical settings) is a complex and embedded phenomenon ! Multiple theories and levels of analysis are needed ! Distributed and multimediated nature of socio-technical systems present analytic challenges ! Approaches illustrated with my work: ! Generalized concept of interaction and the contingency of acts on their setting ! Abstract transcript and analytic hierarchy
  • 11. Let’s start with Learning in Socio-Technical Networks … … and the idea that Learning is “Embedded” in multiple ways.
  • 12. Learning in Socio-Technical Networks How do social settings foster learning? Agency Who or what is the agent that learns? ! Individual ! Small groups ! Networks (communities, cultures, societies) Epistemologies What is the process of learning? ! Acquisition ! Intersubjective meaning-making ! Changes in participation and Identity The correspondence is not strict. Epistemologies can be applied at local or network levels Based on ! Suthers (ijCSCL 2006)
  • 13. Levels of Agency and Epistemologies ! Acquisition Epistemologies Learning as acquisition of information, knowledge or skills ! Local: contribution theory, given/new contract, explanation, conceptual change, practice of skills, etc. ! Network: weak ties, diffusion theories (contagion theory, diffusion of innovations) ! Intersubjective epistemologies Learning as intersubjective meaning-making ! Local: co-construction, collaborative inquiry, group cognition ! Network: knowledge building, communities of scientists ! Participatory epistemologies Learning as changes in social participation and identity ! Local: identity, apprenticeship & mentoring (LPP) ! Network: expansive learning (CHAT)
  • 14. A Complex Multilevel Phenomenon Claim: individuals participate in the foregoing forms of learning simultaneously ! One might choose to focus on one form, or ! Grapple with a fundamental question: How does learning take place through the interplay between individual and collective agency in socio-technical networks? ! Requires coordinated multi-level analysis ! Requires coordinated multi-level theorizing
  • 15. Learning is Embedded ! Interactionally embedded ! Learning accomplishments are contingent on their interactional setting ! Socially embedded ! Social as source of resources ! Social entity as agent of learning ! Technologically embedded ! Affordances influence processes ! Artifacts sustain practices and activity structures
  • 16. Analytic Challenges ! Embedded: need to say how activity is contingent on setting ! Multimediated: need media independent unit of interaction, while being media aware ! Distributed: need to unify diverse data streams ! Hierarchical: need multiple levels of theory and analysis
  • 17. Traces Analytic Hierarchy Addressing (some of) the needs Activity is distributed across multiple media " Abstract transcript representation collects distributed events from multiple media into a single analytic artifact, reassembling fragmented record of activity Local activity is hierarchically embedded in network settings, calling for coordinated multilevel analysis " Analytic hierarchy that supports multiple levels of description (interaction, mediated associations, ties) and analysis ! Suthers (HICSS 2011) ! Suthers & Rosen (LAK 2011)
  • 18. Interaction Affiliations Uptake Ties Contingencies Mediated Associations
  • 19. Uptake and Contingencies How these ideas developed, picking up where we left off in about 2003 …. Thanks to NSF, Chris Hundhausen, Laura Girardeau, Nathan Dwyer, Richard Medina and Ravi Vatrapu
  • 20. Example 1: First Encounter of Needs
  • 22. Motivated concept of “Uptake” ! Needed a cross-media unit out of which to construct analytic accounts of interaction ! Media specific concepts (“adjacency pair”, “edit”, “reply”) are too specific ! Not a new unit, but rather a name given to all such constructs taken collectively ! Generalize beyond interaction as “reciprocal action or influence” to other forms of association
  • 23. Uptake Minimal requirement for two acts to form part of an interaction: that the existence of the first act is consequential in some way for the second act: Uptake is present when an act takes some aspect of a prior act (or event) as relevant for ongoing activity. Flexible and Broad: Opens up our thinking about how interaction might be accomplished
  • 24. Example 2: Asynchronous Dyads ! Asynchronously interacting dyads ! Public heath problem with hidden profile materials ! Original study: representational guidance of evidence maps vs. threaded discussion
  • 27. Example 2: Interactional Pattern (“W”) ! Information Sharing / Round Trip in Evidence Map ! Subsequent Negotiation in Threaded Discussion
  • 28. Connecting Uptake to Evidence Motivations ! “How do you know it’s really uptake?” ! Problem of intentionality but also ! Separate evidence from claim ! Manual analysis is slow ! Sufficiently “objective” evidence would also be computable ! Action is contingent on its setting in many (observable) ways: let’s use computational tools to leverage this!
  • 29. Contingencies Any observed relationship between events that may evidence how one event may have enabled or influenced other events (acts) ! Include “many metaphysical shades between full causality and sheer inexistence” (Latour, 2005) ! Contingencies record how each act is embedded in a history of interaction and a social and technological setting
  • 30. Some Types of Contingencies Media Dependency ei operates on object created or modified by ej Temporal Proximity ei took place soon after ej Spatial Organization ei takes place in configurational context created by ej Inscriptional Similarity ei creates inscriptions similar to those created by ej Semantic Relatedness The meaning of inscriptions created by ei and ej overlap Contingencies of ei on ej (! Suthers Dwyer, Medina & Vatrapu, ijCSCL 2010)
  • 31. Example 3: Early Contingency Analysis ! Analysis originally undertaken to explain convergence & divergence, but discovered emergence of representational practices ! First automated construction and visualization of contingency graph (# Medina & Suthers, RPTEL 2009)
  • 34. Example 3: Episodic View of Interaction Abstraction to uptake between episodes of specific acts
  • 35. Example 3: Multi-level Analysis Lemke: "look at at least one organizational level below the level we are most interested in (to understand the affordances of its constituents) and also one level above (to understand the enabling environmental stabilities)"
  • 37. Testbed: Tapped In SRI’s Network of education professionals: PD and peer support (Mark Schlager, Patti Schank, Judi Fusco) 1997-2013: longest running educational online community ! 20K educators/year ! 800 user spaces ! 50 tenants ! 40-60 volunteer-run community-wide activities/month ! Chats, discussions, wikis, resource sharing ... Good Testbed: Heterogeneous network of diverse small groups interacting with multiple media
  • 38.
  • 39. Automatic Discovery of Distributed “Sessions” and Influences Between Sessions
  • 40. Overview of Analysis: Process Trace
  • 42. Overview of Analysis: Contingencies
  • 45.
  • 47. XML Scripts driving Java, NLTK, iGraph <!-- ========== Content Preprocessing ========== -->! <step bundlename="apps.analyzer" classname="apps.analyzer.script.PythonScriptStep" >! !<stepconfig scriptref="nltk/lancaster_stemmer.py" />! </step>! <!-- ========== Contingencies ========== --> ! <step bundlename="apps.analyzer" classname="apps.analyzer.script.ReadDiscussionMessageRule" />! <step bundlename="apps.analyzer" classname="apps.analyzer.script.LexicalRule" />! <step bundlename="apps.analyzer" classname="apps.analyzer.script.ReplyRule" />! <step bundlename="apps.analyzer" classname="apps.analyzer.script.AddressRule" />! <step bundlename="apps.analyzer" classname="apps.analyzer.script.SameActorRule">! !<stepconfig windowsize="300" tag="SA300" />! </step>! <step bundlename="apps.analyzer" classname="apps.analyzer.script.TimeWindowRule">! !<stepconfig windowsize="120" tag="TW120s" />! </step>! <!-- ========== Activity Structure (Finding Sessions)========== -->! <step bundlename="apps.analyzer" classname="apps.analyzer.script.ActivityRule"> ! !<stepconfig graphName="activity">! ! !<weighter fileref="weights/activity_weights.xml" />! !</stepconfig>! </step>! . . . !
  • 48. Case Study Analyze 3 days of chat, centered on a session of interest
  • 49. Teaching Teachers Session 184 23:35 Mary: are all good teachers good mentors? 185 23:38 Amber: some people will take a while to get to that point 186 23:42 Amber: No..not all 187 23:51 Erica: definitely not 188 23:55 Lara: Training can help, but I think some is personality 189 24:09 Amy: some people are excellent teachers but are horrible mentors 190 24:09 Erica: some great teachers can not hold a decent conversation with an adult 191 24:11 Amber: i had to co-ops who would be awful mentors 192 24:24 Lara: Nods 193 24:27 Dianne: That is an interesting question Maria, ... I would probably say 'yes' first off, and then wonder some more 194 24:42 Mary: it is something I have thought about often Lisa 195 24:47 Amber: I think its alot of personality 196 25:17 Dianne: one thing a mentor has to know is how to operate with a peer, and how to be intentional about handing over, or encouraging greater independence 197 25:18 Mary: observation has made me think that it takes an extra “special ingredient” to tip the scales 198 25:34 Erica: I think if you have the passion for teaching you will want everyone else to feel the same 199 25:35 Amber: agree
  • 50. Contingencies computed ! Time Window (recency): all chats within 120 seconds ! Last Contribution: last chats by same actor in 300 seconds ! Address: Actor chats ... chat addresses actor ! Reply: Chat addresses actor ... actor chats ! Lexical Overlap: weighted count of overlapping lexical items (NLTK Lancaster Stemmer) Weighted sum of counts of above $ estimate of uptake
  • 51. Uptake Graph for 3 Days of Chat
  • 52. Rooms One session across two rooms Two sessions in one room
  • 53. Sessions (Modularity Partitions) One session across two rooms Two sessions in one room
  • 55. Inspect group in Data Laboratory
  • 58. Sociogram Folding contributions by actor to expose actor-actor uptake
  • 60. Session 74, Contributions Colored by Actor, ForceAtlas2 Layout Can we characterize “good” sessions by structural patterns? Nodes are contributions, Colors are actors, Node size is weighted indegree
  • 61. Session 74 Sociogram Nodes are actors Node size is weighted indegree
  • 63. Same actors in NTraining Session
  • 64.
  • 65. How “Communities” are Embedded in Technological Media Mediated Associations and Community Detection ! Suthers, Fusco, Schank, Chu & Schlager (HICSS 2013)
  • 66. Interaction Affiliations Uptake Ties Contingencies Mediated Associations
  • 67. Characterization of Community Structure ! “I don’t know what communities are there” ! Organizational “tenants” and unsponsored ! Multiple, fluid forms of participation ! An empirical matter ! Don’t assume that the network is one community ! Don’t assume that external communities are replicated within the sociotechnical system
  • 68. Communities: Technologically Embedded ! Multiple technologies for participation, each with their own interactional and social affordances ! Choice of technologies reflect and reaffirm the relationship between interlocutors (Licoppe and Smoreda, 2005) ! Apply this idea to collective rather than dyadic level: Communities are embedded within and make use of technological media for interaction in ways that reflect and reaffirm their nature ! Our approach identifies cohesive subgroups of actors and of actants (mediational means) simultaneously ! Suthers & Chu, LAK 2012
  • 69. Intermediate level of representation ! Actor-Actor ties: useful abstraction, but hide how enacted ! Intermediate granularity: mediated association ! Interaction traces (e.g., contingency graphs): overwhelming detail!
  • 70. Portion of an Associogram actors discussions files
  • 71. Cohesive subclusters in associogram Modularity Partitioning • 234 Partitions • Modularity: 0.828 Open Ord Layout in Gephi Cohesive subgraphs of actors and artifacts via which they interact
  • 72. Interpretations of Top 6 Partitions After School Online Events Associations via TI Reception and other public rooms Chat-based CoP in a Midwestern school district; Discussion-based professional development in the Southern US Chat-based Language Arts in the US Midwest; Pre-service program in Western US
  • 73. Myriad of Small Clusters
  • 74. Size distribution of Largest 86 partitions
  • 75. Average weighted degree by actor size (sample of every 10th partition)
  • 77. Use of media in large and small partitions ! Tenant and unsponsored are similar in large partitions ! In small partitions, tenants are strongly chat based while unsponsored rely on asynchronous media
  • 78. Summary & Comments ! Purely structural (graph theoretic) computations identified cohesive subgroups that have interpretations as communities ! Diversity demonstrates vibrancy of Tapped In as “transcendent community” (# Joseph et al., CSCL 2007) ! Value to learning analytics: identify social units that are the setting or agent of learning ! Can “dive in” to examine activity of high-degree actors, structure of chat sessions in rooms, etc. ! Need algorithm for overlapping cohesive clusters ! Clique percolation fails on bipartite graphs ! Edge communities and flow compression promising ! Suthers, Fusco, Schank, Chu & Schlager (HICSS 2013)
  • 79. Productive Multivocality Bringing multiple theoretical and methodological traditions to bear
  • 80. Productive Multivocality Project The complexity of learning requires multiple analytic “voices” (theories and methods): How to bring them into productive dialogue? ! 5 year project sharing/comparing approaches to analyzing collaborative learning ! 37+ researchers analyzed 5 corpora ! Suthers, Lund, Rosé, Teplovs & Law (Springer 2013)
  • 81. Strategies for Productive Multivocality ! Dialogue about the same data, from different perspectives ! Share an analytic objective (e.g., “pivotal moments”) ! Bring analytic representations into alignment with each other and the original data ! Eliminate inconsequential differences and Iterate ! Push the boundaries of traditions without betraying ! Reflect on Practice: dialogue about methods as object-constituting, evidence-producing and argument-generating tools
  • 82. Brief Comments on Design Mediating between individual and group
  • 83. Individual !" Small group Representational affordances for intersubjective meaning-making: ! (Im)Mutable Mobiles ! Negotiation Potentials ! Referential Resources ! Reflector of subjectivity (awareness) ! Persistence (reflection) !S uthers & Hundhausen (JLS 2003) !S uthers (ijCSCL 2006)
  • 84. Individual !" Network !J oseph, Lid & Suthers (CSCL 2007)
  • 85. act persist find care care act persist find care act persist persist find find care act Thanks to Viil Lid for diagrams
  • 86. Key Ideas ! Learning is interactionally embedded % Contingency and Uptake analysis of sequential structure ! Learning is socially embedded % Empirically identify the social units in a STN ! Learning is technologically embedded % Identify the mediational means (mediated associations) ! Generalized concepts, abstract transcript , and analytic hierarchy help
  • 87. Summary of Concepts ! Mediation and Associations ! All interaction is mediated; actors are associated via media ! Understand how social phenomena are technologically embedded (! Licoppe & Smoreda, SN 2005; ! Suthers & Chu, LAK 2012) ! Uptake: (! Suthers, ijCSCL 2006) ! Taking some aspect of (the trace of) a prior act or event as relevant for ongoing activity ! A generalized unit of analysis for “interaction” broadly understood (multi/cross-media; inter/intra-subjective) ! Contingencies: (! Suthers Dwyer, Medina & Vatrapu, ijCSCL 2010) ! Manifest relationships between acts and their setting (including other events) ! Evidence for Uptake
  • 88. Traces Analytic Hierarchy " Abstract transcript representation that collects relevant events into a single analytic artifact " Analytic hierarchy that supports multiple levels of analysis !S uthers, HICSS 2011 !S uthers & Rosen, LAK 2011 Interaction Affiliations Uptake Ties Contingencies Mediated Associations
  • 89. Mahalo! Dan Suthers, Dept. of ICS suthers@hawaii.edu Lilt.ics.hawaii.edu