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Responses to remixing on a
social media sharing website



           Andrés Monroy-Hernández  
                 Benjamin Mako Hill 
                     Kristina Olson
 Massachusetts Institute of Technology | Yale University



                    ICWSM 2010
Remixing
Creation of new content, such as
songs and video, using existing
content produced by others.

• Remixing important 
  cultural phenomenon 
  (Lessig 2009, Manovich 2005, 
  Benkler 2006)
• Literature focuses on 
  youth (Jenkins 2006, Ito 2006, 
  Palfrey and Gasser 2008)
Empirical research on remixing
communities
Remixing has been understudied (Cheliotis and 
Yew 2009): 
  – Largely exploratory and qualitative (e.g. Diakopolous 
    et al. 2007, Cheliotis and Yew 2009)
  – Focuses on adult remixers
  – Emphasizes remixing of “external” content (e.g. 
    Shaw and Schmitz 2006)
Research Questions


1. How do young people respond to remixing?

2. When do users react negatively to remixing?
Tool and online community
sprite
Scratch online community
•   Launched 2007
•   500,000+ users (median age: 12)
•   1,000,000+ projects
•   Designed for remixing
    – All projects remixable
    – Remixing explicitly encouraged
    – Permissive licensing
Remixing in Scratch




            comment by originator
Data and procedures

 March 2007 ➔April 2008
    136,929 projects
     11,861 remixes
Coded comments (2 coders)
    Project metadata
Comment categories
plagiarism accusation                       positive 
  “Hello mr plagiarist”,           “Love what you did with my
       “Copy-cat!”                      code! Great idea!”
                                                 
   hinting plagiarism                       negative 
“I mostly pretty much made           “Alright you crap eating
  this whole entire game”             thumb sucking baby”

                      none of the above
                 “b for peanut butter jelly time!”
                                 
                         no comment 
                          “             ”
Study 1: How do people respond
to remixing?

1.What proportion of users respond 
 positively/negatively when their project is 
 remixed?

2.What proportion of users accuse remixers of 
 plagiarism when their project is remixed?
Study 1: Results




Proportion of original creators who    Proportion of comments that 
left comments on remixes               accused remixers of plagiarsm 
                                       by the valance of those 
                                       comments (n=3742)
Study 1: Take aways

• People just as likely to leave positive 
  comments (21%) as they were to leave a 
  direct or indirect complaint of plagiarism 
  (22%).
Study 2: When do creators accuse
remixers of plagiarism?
H1. Originators of more complicated projects 
are more likely to make plagiarism accusations.
H2. Originators are less likely to accuse 
remixers of plagiarism when their project is a
remix itself.
H3. Originators are less likely to accuse 
remixers of plagiarism if they have shared at
least one remix.
Study 2: Data
Coded comments from remix pairs that were viewed by
originator. (n=3,742)

Question predictors: 
  ●
    Project complexity (number of sprites) (H1)
  ●
    Was project a remix itself? (H2)
  ●
    Had originator remixed? (H3)

Controls for:
  ●
    age (creator and remixer)
  ●
    gender (creator)
  ●
    shared date
Study 2: Analysis

Logistic regression models of the likelihood of an originator 
accusing a remixer of plagiarism.
   o   Tested several alternative specifications that also included all negative 
       reactions and excluding hinting accusations with very similar results
Study 2: Results (H1)

H1: Authors of larger or more complicated projects will be 
more likely to accuse remixers of their work of plagiarism.

Finding:
  Support



 
 
  
 
                                                               
Study 2: Results (H2)

H2: Originators will be less likely to accuse remixers of their 
projects of plagiarism when the remixed project is itself a remix.

Finding:
    No Support



 
 
  
 
                                 
                                 
Study 2: Results (H3)

H3: Originators will be less likely to accuse remixers of their 
projects of plagiarism if they have shared at least one remix
themselves.

Finding:
  No Support



 
 
  
 
                                  
Study 2: Takeaways


• Smallness of contributions (not cumulative 
  contributions) may drive acceptance of 
  remixing
• Users seem to have a strong concept of 
  good remixing and bad remixing 
  (Diakopoulos et al, 2007) 
Study 3: Original/Remix Similarity
H4. Originators are more likely to accuse remixers of 
plagiarism when the remixed project and its antecedent are 
more similar to each other.

Data/Procedure:
• 240 pairs of remixes
   o 40 for each category in the initial coding scheme
• Coded from:
   o 1 (can't tell they're related) to
   o 5 (can't tell they're different)
Study 3: Results
Finding:
    Support 
 
Details:
    Projects marked as plagiarism (m=4.40, sd=.65) were 
    more similar than:
     o negative (m=3.93, sd=1.02) *
     o positive (m=3.75, sd=.85) **
     o hinting plagiarism (m=3.46, sd=1.30) ***
     o no comment (m=3.65, sd=1.14) ***
     o other (m=3.53, sd=.85) ***
                                                                           
                                     (*** p < .001; ** p < 0.01; * p < 0.1)
Thank you!

         http://scratch.mit.edu 

andresmh@media.mit.edu | mako@mit.edu
Data Analysis Appendix
Study 2: Results

Other results: 

• Female users accuse others of plagiarism much less than 
  men (i.e., 0.6 times the odds) 
• Younger originator are more likely to complain 
• Younger remixers are more likely to elicit complaints
ICWSM Study 2: Correlation Table
ICWSM Study 2: Correlation Table
Prototypical plots from fitted logistic model showing predicted probability of
eliciting a plagiarism accusations for projects created by 12 year old males in
Scratch's 35th week. Panel 1 (top) shows the effects of additional sprites (through
90th percentile). Panels 2 and 3 (bottom) hold sprites constant at the sample
median (5). (n=3742)

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Responses to remixing

  • 1. Responses to remixing on a social media sharing website Andrés Monroy-Hernández   Benjamin Mako Hill  Kristina Olson Massachusetts Institute of Technology | Yale University ICWSM 2010
  • 2. Remixing Creation of new content, such as songs and video, using existing content produced by others. • Remixing important  cultural phenomenon  (Lessig 2009, Manovich 2005,  Benkler 2006) • Literature focuses on  youth (Jenkins 2006, Ito 2006,  Palfrey and Gasser 2008)
  • 3. Empirical research on remixing communities Remixing has been understudied (Cheliotis and  Yew 2009):  – Largely exploratory and qualitative (e.g. Diakopolous  et al. 2007, Cheliotis and Yew 2009) – Focuses on adult remixers – Emphasizes remixing of “external” content (e.g.  Shaw and Schmitz 2006)
  • 7.
  • 8. Scratch online community • Launched 2007 • 500,000+ users (median age: 12) • 1,000,000+ projects • Designed for remixing – All projects remixable – Remixing explicitly encouraged – Permissive licensing
  • 9. Remixing in Scratch comment by originator
  • 10. Data and procedures March 2007 ➔April 2008 136,929 projects 11,861 remixes Coded comments (2 coders) Project metadata
  • 11. Comment categories plagiarism accusation positive  “Hello mr plagiarist”, “Love what you did with my “Copy-cat!” code! Great idea!”   hinting plagiarism   negative  “I mostly pretty much made “Alright you crap eating this whole entire game” thumb sucking baby” none of the above “b for peanut butter jelly time!”   no comment  “ ”
  • 12. Study 1: How do people respond to remixing? 1.What proportion of users respond  positively/negatively when their project is  remixed? 2.What proportion of users accuse remixers of  plagiarism when their project is remixed?
  • 13. Study 1: Results Proportion of original creators who  Proportion of comments that  left comments on remixes accused remixers of plagiarsm  by the valance of those  comments (n=3742)
  • 14. Study 1: Take aways • People just as likely to leave positive  comments (21%) as they were to leave a  direct or indirect complaint of plagiarism  (22%).
  • 15. Study 2: When do creators accuse remixers of plagiarism? H1. Originators of more complicated projects  are more likely to make plagiarism accusations. H2. Originators are less likely to accuse  remixers of plagiarism when their project is a remix itself. H3. Originators are less likely to accuse  remixers of plagiarism if they have shared at least one remix.
  • 16. Study 2: Data Coded comments from remix pairs that were viewed by originator. (n=3,742) Question predictors:  ●  Project complexity (number of sprites) (H1) ●  Was project a remix itself? (H2) ●  Had originator remixed? (H3) Controls for: ●  age (creator and remixer) ●  gender (creator) ●  shared date
  • 17. Study 2: Analysis Logistic regression models of the likelihood of an originator  accusing a remixer of plagiarism. o Tested several alternative specifications that also included all negative  reactions and excluding hinting accusations with very similar results
  • 18. Study 2: Results (H1) H1: Authors of larger or more complicated projects will be  more likely to accuse remixers of their work of plagiarism. Finding: Support           
  • 19. Study 2: Results (H2) H2: Originators will be less likely to accuse remixers of their  projects of plagiarism when the remixed project is itself a remix. Finding:     No Support             
  • 20. Study 2: Results (H3) H3: Originators will be less likely to accuse remixers of their  projects of plagiarism if they have shared at least one remix themselves. Finding: No Support           
  • 21. Study 2: Takeaways • Smallness of contributions (not cumulative  contributions) may drive acceptance of  remixing • Users seem to have a strong concept of  good remixing and bad remixing  (Diakopoulos et al, 2007) 
  • 22. Study 3: Original/Remix Similarity H4. Originators are more likely to accuse remixers of  plagiarism when the remixed project and its antecedent are  more similar to each other. Data/Procedure: • 240 pairs of remixes o 40 for each category in the initial coding scheme • Coded from: o 1 (can't tell they're related) to o 5 (can't tell they're different)
  • 23. Study 3: Results Finding: Support    Details:   Projects marked as plagiarism (m=4.40, sd=.65) were  more similar than: o negative (m=3.93, sd=1.02) * o positive (m=3.75, sd=.85) ** o hinting plagiarism (m=3.46, sd=1.30) *** o no comment (m=3.65, sd=1.14) *** o other (m=3.53, sd=.85) ***   (*** p < .001; ** p < 0.01; * p < 0.1)
  • 24. Thank you! http://scratch.mit.edu  andresmh@media.mit.edu | mako@mit.edu
  • 26. Study 2: Results Other results:  • Female users accuse others of plagiarism much less than  men (i.e., 0.6 times the odds)  • Younger originator are more likely to complain  • Younger remixers are more likely to elicit complaints
  • 29. Prototypical plots from fitted logistic model showing predicted probability of eliciting a plagiarism accusations for projects created by 12 year old males in Scratch's 35th week. Panel 1 (top) shows the effects of additional sprites (through 90th percentile). Panels 2 and 3 (bottom) hold sprites constant at the sample median (5). (n=3742)

Notas del editor

  1. Script vs Sprite
  2. Looked at whether project is a remix
  3. Prototypical project made by 12 year-old boy
  4. Prototypical project 3 sprites
  5. (i.e., norms are powerful)    status intention
  6. younger remixers lead to next question