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Big but personal
(meta)data
How Human Behavior Bounds Privacy
and What We Can We Do About It
Yves-Alexandre de Montjoye
@yvesalexandre
MIT Media Lab
12 points
Is the way you move
around
as unique as
your fingerprint
We can use points to
identify a fingerprint
Scott
From 10 to 11am
1 km²
1 point for mobility data
~
2 points
Around 11:30am
3 points
For lunch
Boston
How many points do I need
to uniquely identify a
mobility traces?
De-identification
Entire country of 1.5 millions people
Our behavior is unique enough
4 points
Identify 95% of people
de Montjoye, Y. A., Hidalgo, C. A., Verleysen, M., & Blondel, V. D. (2013).
Unique in the Crowd: The privacy bounds of human mobility. Nature SRep, 3.
What it means
1. It is possible to re-identify mobile phone
metadata (even if there is no name or phone
number)
Resolution: 800 pixels
Resolution: 300 pixels
Resolution: 150 pixels
Resolution: 75 pixels
Resolution: 30 pixels
Where’s Thierry ?
?
4pm – 10pm7pm-8pm
Estimating Privacy
Spatial resolution
Temporal resolution
Number of points
de Montjoye, Y. A., Hidalgo, C. A., Verleysen, M., & Blondel, V. D. (2013).
Unique in the Crowd: The privacy bounds of human mobility. Nature SRep, 3.
Harder to find people
Much easier to find people
Harder to find people
What it means
1. It is possible to re-identify mobile phone
metadata (even if there is no name or phone
number)
2. It is not simply a question of coarsening the
data (we’d just need a few more points)
BFI: Personality test
BFI: Personality test
Behavioral indicators derived from
metadata using the Bandicoot toolbox
Predicting personality
using metadata
de Montjoye, Y. A., Quoidbach, J., Robic, F., & Pentland, A. S.
(2013). Predicting personality using novel mobile phone-based
metrics. In Social Computing, Behavioral-Cultural Modeling and
Prediction (pp. 48-55). Springer Berlin Heidelberg.
What it means
1. It is possible to re-identify mobile phone
metadata (even if there is no name or phone
number)
2. It is not simply a question of coarsening the
data (we’d just need a few more points)
3. It is not “just” metadata or what is directly
visible in the data (e.g. one might use it to
predict your personality)
Eagle, N., de Montjoye, Y-A.., &
Bettencourt, L. M. (2009). Community
computing: Comparisons between rural
and urban societies using mobile
phone data. IEEE Computational
Science and Engineering
We should use this data
Deville, P. et al. (2014). Dynamic
population mapping using mobile
phone data. Proceedings of the
National Academy of Sciences,
201408439.
Wesolowski, A., Eagle, N., Tatem, A. J.,
Smith, D. L., Noor, A. M., Snow, R. W., &
Buckee, C. O. (2012). Quantifying the
impact of human mobility on malaria.
Science, 338(6104), 267-270.
(but in a privacy-conscientious way)
We should use this data
by:
understanding what the real risks are
and
designing solutions
Privacy-conscientious anonymization
de Montjoye, Y. A., Smoreda, Z., Trinquart, R., Ziemlicki, C., & Blondel, V.
D. (2014). D4D-Senegal: The Second Mobile Phone Data for
Development Challenge. arXiv preprint arXiv:1407.4885.
e.g. 2-week mobility traces
of 27 x 300.000 individuals
+ Bandicoot’s behavioral
indicators
Online systems: from privacy to
security
openPDS/SafeAnswers:
- Only shares answers,
not raw data
- Security mechanisms
openPDS/SafeAnswers
de Montjoye Y.-A., Wang S., Pentland A., On the Trusted Use of Large-
Scale Personal Data. IEEE Data Engineering Bulletin, 35-4 (2012).
de Montjoye, Y. A., Shmueli, E., Wang, S. S., & Pentland, A. S. (2014).
openPDS: Protecting the Privacy of Metadata through SafeAnswers.
PLoS ONE, 9(7), e98790.
Yves-Alexandre de Montjoye
MIT Media Lab
@yvesalexandre
http://deMontjoye.com
In collaboration with Alex “Sandy” Pentland, César Hidalgo, Vincent Blondel,
Cameron Kerry, Jake Kendall, Michel Verleysen, Erez Shmueli, Arek Stopczynski,
Sune Lehmann, Eaman Jahani

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Big But Personal Data: How Human Behavior Bounds Privacy and What We Can We Do About It

  • 1. Big but personal (meta)data How Human Behavior Bounds Privacy and What We Can We Do About It Yves-Alexandre de Montjoye @yvesalexandre MIT Media Lab
  • 2.
  • 3.
  • 4.
  • 5.
  • 6.
  • 8.
  • 9.
  • 10.
  • 11.
  • 12.
  • 13. Is the way you move around as unique as your fingerprint
  • 14. We can use points to identify a fingerprint
  • 15. Scott
  • 16. From 10 to 11am 1 km² 1 point for mobility data ~
  • 20. How many points do I need to uniquely identify a mobility traces?
  • 22.
  • 23. Entire country of 1.5 millions people Our behavior is unique enough 4 points Identify 95% of people de Montjoye, Y. A., Hidalgo, C. A., Verleysen, M., & Blondel, V. D. (2013). Unique in the Crowd: The privacy bounds of human mobility. Nature SRep, 3.
  • 24. What it means 1. It is possible to re-identify mobile phone metadata (even if there is no name or phone number)
  • 31. ?
  • 33. Estimating Privacy Spatial resolution Temporal resolution Number of points de Montjoye, Y. A., Hidalgo, C. A., Verleysen, M., & Blondel, V. D. (2013). Unique in the Crowd: The privacy bounds of human mobility. Nature SRep, 3.
  • 34. Harder to find people Much easier to find people Harder to find people
  • 35.
  • 36. What it means 1. It is possible to re-identify mobile phone metadata (even if there is no name or phone number) 2. It is not simply a question of coarsening the data (we’d just need a few more points)
  • 39. Behavioral indicators derived from metadata using the Bandicoot toolbox
  • 40. Predicting personality using metadata de Montjoye, Y. A., Quoidbach, J., Robic, F., & Pentland, A. S. (2013). Predicting personality using novel mobile phone-based metrics. In Social Computing, Behavioral-Cultural Modeling and Prediction (pp. 48-55). Springer Berlin Heidelberg.
  • 41. What it means 1. It is possible to re-identify mobile phone metadata (even if there is no name or phone number) 2. It is not simply a question of coarsening the data (we’d just need a few more points) 3. It is not “just” metadata or what is directly visible in the data (e.g. one might use it to predict your personality)
  • 42. Eagle, N., de Montjoye, Y-A.., & Bettencourt, L. M. (2009). Community computing: Comparisons between rural and urban societies using mobile phone data. IEEE Computational Science and Engineering We should use this data Deville, P. et al. (2014). Dynamic population mapping using mobile phone data. Proceedings of the National Academy of Sciences, 201408439. Wesolowski, A., Eagle, N., Tatem, A. J., Smith, D. L., Noor, A. M., Snow, R. W., & Buckee, C. O. (2012). Quantifying the impact of human mobility on malaria. Science, 338(6104), 267-270.
  • 43. (but in a privacy-conscientious way) We should use this data by: understanding what the real risks are and designing solutions
  • 44. Privacy-conscientious anonymization de Montjoye, Y. A., Smoreda, Z., Trinquart, R., Ziemlicki, C., & Blondel, V. D. (2014). D4D-Senegal: The Second Mobile Phone Data for Development Challenge. arXiv preprint arXiv:1407.4885. e.g. 2-week mobility traces of 27 x 300.000 individuals + Bandicoot’s behavioral indicators
  • 45. Online systems: from privacy to security openPDS/SafeAnswers: - Only shares answers, not raw data - Security mechanisms
  • 46. openPDS/SafeAnswers de Montjoye Y.-A., Wang S., Pentland A., On the Trusted Use of Large- Scale Personal Data. IEEE Data Engineering Bulletin, 35-4 (2012). de Montjoye, Y. A., Shmueli, E., Wang, S. S., & Pentland, A. S. (2014). openPDS: Protecting the Privacy of Metadata through SafeAnswers. PLoS ONE, 9(7), e98790.
  • 47. Yves-Alexandre de Montjoye MIT Media Lab @yvesalexandre http://deMontjoye.com In collaboration with Alex “Sandy” Pentland, César Hidalgo, Vincent Blondel, Cameron Kerry, Jake Kendall, Michel Verleysen, Erez Shmueli, Arek Stopczynski, Sune Lehmann, Eaman Jahani