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Breakout	
  
 groups	
  
feedback	
  
Reten%on	
  and	
  success	
  
•  Reten%on	
  and	
  success	
  are	
  dis%nct,	
  but	
  linked.	
  
   Qualita%ve	
  vs	
  binary.	
  
•  Applica%ons:	
  quick/early	
  drop-­‐out,	
  adapa%ve	
  
   learning.	
  
•  Ethical	
  issues.	
  
•  Media%ng	
  feedback,	
  using	
  analy%cs	
  to	
  present	
  
   the	
  model	
  with	
  the	
  ra%onale,	
  used	
  as	
  the	
  
   basis	
  for	
  a	
  personalised	
  conversa%on.	
  

           Photo	
  (CC)	
  Trey	
  Ratcliff	
  hJp://www.flickr.com/photos/stuckincustoms/4622806283/	
  
Mul%ple	
  Purposes	
  
                                 • Aggrega%on	
                           Ethics	
  
                                 • Interven%on	
                          •  Emo%ons	
  
                                   • Mo%va%on	
  
                                   • Informed	
  decision	
  making	
  
                                                                             •  Anxiety	
  
                                 • ‘De-­‐                                    •  Surveillance	
  
                                   modularisa%on’	
  (holis%c	
           •  Privacy	
  
                                   informa%on)	
  
                                 • Ipsa%ve	
  vs	
  norm	
                •  Transparency	
  
                                   informa%on	
  



                                                                                                   Opera%onalisa%on	
  
Mul%ple	
  audiences	
                                                                             • Selec%ng	
  data	
  sets	
  
•  Different	
  purposes	
                                                                          • Timeliness	
  and	
  efficacy	
  
•  Same	
  data	
  sets	
                                                                            • evalua%on	
  
                                                                                                   • Granularity	
  
•  Interpreta%on	
  and	
  
                                                                                                   • Interac%vity	
  
   clarity	
  
                                                                                                   • Proprietary	
  tool	
  providers	
  
   •  Training	
  and	
  sense	
  
      making	
  
                                                               Dashboards	
                          preemp%ng	
  our	
  needs/
                                                                                                     wants	
  
                                                                                                   • Pedagogically	
  drivers	
  
Dashboard	
  Examples	
  

  Student	
  
                  •  How	
  am	
  I	
  doing	
  compared	
  to	
  cohort?	
  




   Tutor	
  
                  •  Is	
  what	
  I’m	
  doing	
  with	
  my	
  students	
  working?	
  




 Ins%tu%on	
  
                  •  Which	
  students	
  are	
  most	
  likely	
  to	
  drop	
  out?	
  




    PSRB	
  
                  •  Are	
  any	
  students	
  gradua%ng	
  from	
  this	
  ins%tu%on	
  
                     without	
  all	
  of	
  the	
  required	
  learning	
  outcomes?	
  



Researchers	
  
                  •  Across	
  the	
  sector	
  which	
  ins%tu%ons	
  produce	
  the	
  
                     best	
  graduates	
  in	
  each	
  discipline?	
  
Analy5cs	
  for	
  Student	
  Success	
  &	
  Reten5on:	
  Issues	
  
                                                                                               Pre-­‐fail	
  
                                                                        Dangers	
  of	
  a	
  Pre-­‐Crime	
  Unit	
  

                                                                         Ethics	
  of	
  interven5on:	
  	
  
                                                                         Just	
  for	
  those	
  who	
  are	
  failing?	
  
                                                                         What	
  about	
  the	
  rest?	
  

                                                                         Beware	
  self-­‐fulfilling	
  failure	
  prophecies!	
  


                                                                                                             “Dear	
  <field1>…”	
  

                  Beware	
  back-­‐firing	
  personalisa%on	
  expecta%ons:	
  “So	
  I	
  really	
  am	
  just	
  a	
  number”	
  

Informed	
  interven%ons	
  hopefully	
  changing	
  learners’	
  futures	
  
for	
  the	
  beJer…	
  
But	
  what	
  does	
  that	
  do	
  for	
  datasets	
  and	
  historical	
  
comparison?	
  
Important	
  to	
  collect	
  data	
  about	
  interven%ons	
  to	
  assess	
  their	
  
impact	
  amongst	
  other	
  variables	
  	
  

  Beware:	
  can’t	
  count,	
  doesn’t	
  count:	
  we’re	
  in	
  a	
  complex	
  people	
  business!	
  
Pedagogy	
  &	
  LA	
  
Issues	
  
•  How	
  do	
  we	
  measure	
  learning	
  (rather	
  than	
  ‘success’	
  in	
  
   assessments)	
  
•  Approximate	
  proxies	
  for	
  learning…	
  
•  Shouldn’t	
  assessment	
  be	
  our	
  ‘best	
  measure’	
  of	
  learning	
  –	
  
   well,	
  perhaps	
  it	
  should	
  be	
  a	
  suite	
  of	
  analy%cs	
  
•  What	
  ‘knowledge’	
  do	
  we	
  want	
  from	
  our	
  graduates	
  
•  ‘Recipe’	
  issue	
  of	
  LA?	
  –	
  so	
  we	
  have	
  to	
  make	
  sure	
  we’re	
  
   looking	
  for	
  the	
  ‘right’	
  processes	
  
•  Assessment/analy%cs:	
  Snapshots,	
  con%nuity,	
  and	
  change	
  
   metrics;	
  how	
  can	
  they	
  be	
  used?	
  
•  Analy%cs	
  driven	
  by	
  what	
  we	
  want	
  to	
  achieve	
  rather	
  than	
  
   what	
  data	
  is	
  available	
  
Examples	
  
•  Dialogue	
  analysis,	
  perhaps	
  analysis	
  of	
  use	
  of	
  
   social	
  networks	
  
•  LA	
  as	
  pedagogy	
  v	
  LA	
  for	
  pedagogy	
  –	
  LA	
  which	
  
   feeds	
  back	
  in	
  to	
  ‘improving’/adap%ng.	
  LA	
  can	
  
   help	
  us	
  challenge	
  our	
  assump%ons	
  about	
  how	
  the	
  
   learning	
  is	
  taking	
  place.	
  	
  Can	
  LA	
  allow	
  us	
  to	
  
   hypothesis	
  test	
  our	
  (as	
  teachers)	
  assump%ons	
  
   about	
  learning?	
  
•  Pass	
  rate	
  and	
  online	
  ac%vity	
  has	
  a	
  correla%on	
  –	
  
   effec%ve	
  ‘proxy’?	
  
Data	
  sources	
  
Issues	
  
•    Availability	
                               •  Awareness	
  of	
  data	
  
•    Quality	
                                       collec%on	
  
•    Enrich	
  (combining	
  data)	
              •  Sharing	
  (ethics,	
  
•    Private	
  	
                                   commercially	
  sensi%ve)	
  
                                                  •  Infrastructure	
  
•    Paying	
  to	
  access	
  your	
  own	
  
     data	
                                       •  Planning	
  in	
  rapidly	
  evolving	
  
•    Need?	
                                         area	
  (itera%ons)	
  
                                                  •  Granularity	
  (nano)	
  
•    Data	
  ownership	
  
•    Not	
  everything	
  is	
  online	
  –	
     •  Purpose	
  
     no	
  footprint	
  (overall	
                •  Culture	
  change	
  
     visibility	
  of	
  interac%ons)	
  
•    Volume	
  
Examples	
  
•  TINCAN	
  API	
  

•  IBM	
  –	
  (data	
  don’t	
  ask,	
  don’t	
  get)	
  

•  midata	
  

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SoLAR-FlareUK-2012.11.19-breakouts

  • 1. Breakout   groups   feedback  
  • 2. Reten%on  and  success   •  Reten%on  and  success  are  dis%nct,  but  linked.   Qualita%ve  vs  binary.   •  Applica%ons:  quick/early  drop-­‐out,  adapa%ve   learning.   •  Ethical  issues.   •  Media%ng  feedback,  using  analy%cs  to  present   the  model  with  the  ra%onale,  used  as  the   basis  for  a  personalised  conversa%on.   Photo  (CC)  Trey  Ratcliff  hJp://www.flickr.com/photos/stuckincustoms/4622806283/  
  • 3. Mul%ple  Purposes   • Aggrega%on   Ethics   • Interven%on   •  Emo%ons   • Mo%va%on   • Informed  decision  making   •  Anxiety   • ‘De-­‐ •  Surveillance   modularisa%on’  (holis%c   •  Privacy   informa%on)   • Ipsa%ve  vs  norm   •  Transparency   informa%on   Opera%onalisa%on   Mul%ple  audiences   • Selec%ng  data  sets   •  Different  purposes   • Timeliness  and  efficacy   •  Same  data  sets   • evalua%on   • Granularity   •  Interpreta%on  and   • Interac%vity   clarity   • Proprietary  tool  providers   •  Training  and  sense   making   Dashboards   preemp%ng  our  needs/ wants   • Pedagogically  drivers  
  • 4. Dashboard  Examples   Student   •  How  am  I  doing  compared  to  cohort?   Tutor   •  Is  what  I’m  doing  with  my  students  working?   Ins%tu%on   •  Which  students  are  most  likely  to  drop  out?   PSRB   •  Are  any  students  gradua%ng  from  this  ins%tu%on   without  all  of  the  required  learning  outcomes?   Researchers   •  Across  the  sector  which  ins%tu%ons  produce  the   best  graduates  in  each  discipline?  
  • 5. Analy5cs  for  Student  Success  &  Reten5on:  Issues   Pre-­‐fail   Dangers  of  a  Pre-­‐Crime  Unit   Ethics  of  interven5on:     Just  for  those  who  are  failing?   What  about  the  rest?   Beware  self-­‐fulfilling  failure  prophecies!   “Dear  <field1>…”   Beware  back-­‐firing  personalisa%on  expecta%ons:  “So  I  really  am  just  a  number”   Informed  interven%ons  hopefully  changing  learners’  futures   for  the  beJer…   But  what  does  that  do  for  datasets  and  historical   comparison?   Important  to  collect  data  about  interven%ons  to  assess  their   impact  amongst  other  variables     Beware:  can’t  count,  doesn’t  count:  we’re  in  a  complex  people  business!  
  • 7. Issues   •  How  do  we  measure  learning  (rather  than  ‘success’  in   assessments)   •  Approximate  proxies  for  learning…   •  Shouldn’t  assessment  be  our  ‘best  measure’  of  learning  –   well,  perhaps  it  should  be  a  suite  of  analy%cs   •  What  ‘knowledge’  do  we  want  from  our  graduates   •  ‘Recipe’  issue  of  LA?  –  so  we  have  to  make  sure  we’re   looking  for  the  ‘right’  processes   •  Assessment/analy%cs:  Snapshots,  con%nuity,  and  change   metrics;  how  can  they  be  used?   •  Analy%cs  driven  by  what  we  want  to  achieve  rather  than   what  data  is  available  
  • 8. Examples   •  Dialogue  analysis,  perhaps  analysis  of  use  of   social  networks   •  LA  as  pedagogy  v  LA  for  pedagogy  –  LA  which   feeds  back  in  to  ‘improving’/adap%ng.  LA  can   help  us  challenge  our  assump%ons  about  how  the   learning  is  taking  place.    Can  LA  allow  us  to   hypothesis  test  our  (as  teachers)  assump%ons   about  learning?   •  Pass  rate  and  online  ac%vity  has  a  correla%on  –   effec%ve  ‘proxy’?  
  • 10. Issues   •  Availability   •  Awareness  of  data   •  Quality   collec%on   •  Enrich  (combining  data)   •  Sharing  (ethics,   •  Private     commercially  sensi%ve)   •  Infrastructure   •  Paying  to  access  your  own   data   •  Planning  in  rapidly  evolving   •  Need?   area  (itera%ons)   •  Granularity  (nano)   •  Data  ownership   •  Not  everything  is  online  –   •  Purpose   no  footprint  (overall   •  Culture  change   visibility  of  interac%ons)   •  Volume  
  • 11. Examples   •  TINCAN  API   •  IBM  –  (data  don’t  ask,  don’t  get)   •  midata