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CMU Usable Privacy and Security Laboratory
http://cups.cs.cmu.edu/
Your attention please:
Designing security-decision UIs to make
genuine risks harder to ignore
Cristian Bravo-Lillo, Lorrie Cranor, Julie Downs, Saranga Komanduri,
Robert W. Reeder, Stuart Schechter, Manya Sleeper
SOUPS 2013, July 25, Newcastle, UK
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
22
Motivation
 We (technologists) have habituated users to ignore security
warnings/decisions by flooding them with too many
 Many security dialogs are impossible to understand
 Not all security dialogs can be eliminated
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
33
Research question
How can we get people to pay attention to the
salient information in security decisions that really
matter?
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
44
Baseline dialog
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
55
Thesis
It is possible to improve attention to salient
information, even under habituation
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
66
Animated Connector (AC)
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
77
Reveal
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
88
Swipe
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
99
Type
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
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ANSI
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
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• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
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24
Benign condition:
“Microsoft Corporation”
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
2525
25
Suspicious condition:
“Miicr0s0ft Corporation”
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
2626
Experimental design
“Give us your opinion
about online games”
Exit survey
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
2727
Experimental design
 For each treatment (attractor), we ran two conditions: benign
and suspicious
 Each subject saw only one warning
 Each subject either installed or not
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
2828
Metric and Hypothesis
 Metric: Installation Rate
• Benign condition most people will install→
• Suspicious condition most people will not install→
 Hypothesis:
• An attractor will increase the difference in installation rate
between the benign condition and the suspicious condition
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
2929
Results
N=2,227 participants, 28.6 years old (σ=9.3), 54% male, 75% caucasian. Top two reported occupations:
‘student’ (27%), ‘unemployed’ (17%). 23% reported having knowledge of computer programming.
Benign install rate Suspicious install rate
(lower is better)
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
3030
Experiment 2 with permission-granting dialog
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
3131
What happens when users become
habituated to our attractors?
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
3232
Experiment 3: habituation
 Research question: are attractors resilient to repeated exposure
to dialogs?
 Idea:
• Show a dialog repeatedly to participants with field X
• Ask to click on “Yes” for 5 minutes
• Change the field X to Y in the middle
• Check if participants notice the change
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
3333
33
Those who perform well may be rewarded with opportunities
to finish the study early while still receiving their full payment.
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
3434
34
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• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
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• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
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Experimental design: Phases
 Habituation phase: “You have dismissed N dialogs”
 Test dialogs: “Press the No option below to finish this study
early”
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
4242
Experimental conditions
 Fixed time: 2.5 minutes
 Fixed exposures: 22 times
Condition
Fixed
time
Fixed
exposures
Control  
ANSI  
AC+Delay 
AC+Reveal 
AC+Swipe 
Swipe 
Type 
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
4343
Immediate detection rate after 2.5 min/22
repetitions
N=872 participants, 30.8 years old (σ=11.7), 60% male, 77% caucasian
2.5 minutes
22 repetitions
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
4444
Median delay time imposed by attractors
2.5 minutes
22 repetitions
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
4545
Conclusions
 Inhibitive attractors:
• Are effective at driving users' attention to dialogs
• Are resilient to heavy, repeated exposure
 Recent progress:
• Study performance of attractors under different levels of
habituation.
• CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/
4646
CMU Usable Privacy and Security
Laboratory
http://cups.cs.cmu.edu/

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Your attention please: designing security-decision UIs to make genuine risks harder to ignore

  • 1. CMU Usable Privacy and Security Laboratory http://cups.cs.cmu.edu/ Your attention please: Designing security-decision UIs to make genuine risks harder to ignore Cristian Bravo-Lillo, Lorrie Cranor, Julie Downs, Saranga Komanduri, Robert W. Reeder, Stuart Schechter, Manya Sleeper SOUPS 2013, July 25, Newcastle, UK
  • 2. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 22 Motivation  We (technologists) have habituated users to ignore security warnings/decisions by flooding them with too many  Many security dialogs are impossible to understand  Not all security dialogs can be eliminated
  • 3. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 33 Research question How can we get people to pay attention to the salient information in security decisions that really matter?
  • 4. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 44 Baseline dialog
  • 5. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 55 Thesis It is possible to improve attention to salient information, even under habituation
  • 6. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 66 Animated Connector (AC)
  • 7. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 77 Reveal
  • 8. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 88 Swipe
  • 9. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 99 Type
  • 10. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 1010 ANSI
  • 11. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 1111 11
  • 12. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 1212 12
  • 13. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 1313 13
  • 14. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 1414 14
  • 15. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 1515 15
  • 16. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 1616 16
  • 17. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 1717 17
  • 18. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 1818 18
  • 19. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 1919 19
  • 20. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 2020 20
  • 21. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 2121 21
  • 22. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 2222 22
  • 23. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 2323 23
  • 24. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 2424 24 Benign condition: “Microsoft Corporation”
  • 25. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 2525 25 Suspicious condition: “Miicr0s0ft Corporation”
  • 26. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 2626 Experimental design “Give us your opinion about online games” Exit survey
  • 27. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 2727 Experimental design  For each treatment (attractor), we ran two conditions: benign and suspicious  Each subject saw only one warning  Each subject either installed or not
  • 28. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 2828 Metric and Hypothesis  Metric: Installation Rate • Benign condition most people will install→ • Suspicious condition most people will not install→  Hypothesis: • An attractor will increase the difference in installation rate between the benign condition and the suspicious condition
  • 29. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 2929 Results N=2,227 participants, 28.6 years old (σ=9.3), 54% male, 75% caucasian. Top two reported occupations: ‘student’ (27%), ‘unemployed’ (17%). 23% reported having knowledge of computer programming. Benign install rate Suspicious install rate (lower is better)
  • 30. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 3030 Experiment 2 with permission-granting dialog
  • 31. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 3131 What happens when users become habituated to our attractors?
  • 32. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 3232 Experiment 3: habituation  Research question: are attractors resilient to repeated exposure to dialogs?  Idea: • Show a dialog repeatedly to participants with field X • Ask to click on “Yes” for 5 minutes • Change the field X to Y in the middle • Check if participants notice the change
  • 33. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 3333 33 Those who perform well may be rewarded with opportunities to finish the study early while still receiving their full payment.
  • 34. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 3434 34
  • 35. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 3535 35
  • 36. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 3636 36
  • 37. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 3737 37
  • 38. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 3838 38
  • 39. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 3939 39
  • 40. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 4040 40
  • 41. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 4141 Experimental design: Phases  Habituation phase: “You have dismissed N dialogs”  Test dialogs: “Press the No option below to finish this study early”
  • 42. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 4242 Experimental conditions  Fixed time: 2.5 minutes  Fixed exposures: 22 times Condition Fixed time Fixed exposures Control   ANSI   AC+Delay  AC+Reveal  AC+Swipe  Swipe  Type 
  • 43. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 4343 Immediate detection rate after 2.5 min/22 repetitions N=872 participants, 30.8 years old (σ=11.7), 60% male, 77% caucasian 2.5 minutes 22 repetitions
  • 44. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 4444 Median delay time imposed by attractors 2.5 minutes 22 repetitions
  • 45. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 4545 Conclusions  Inhibitive attractors: • Are effective at driving users' attention to dialogs • Are resilient to heavy, repeated exposure  Recent progress: • Study performance of attractors under different levels of habituation.
  • 46. • CMU Usable Privacy and Security Laboratory • http://cups.cs.cmu.edu/ 4646 CMU Usable Privacy and Security Laboratory http://cups.cs.cmu.edu/