SlideShare ist ein Scribd-Unternehmen logo
1 von 31
Downloaden Sie, um offline zu lesen
Rethinking Location Sharing: Exploring
the Implications of Social-Driven vs.
Purpose-Driven Location Sharing
Karen P. Tang
Jialiu Lin, Jason Hong, Dan Siewiorek, Norman Sadeh
Human-Computer Interaction Institute
School of Computer Science
Carnegie Mellon University
Location-Based Services Are Here
2
Types of Location-Based Services
tracking personal trends (no sharing)
doing local searches (sharing with a service provider)
3
[google latitude] [yelp]
Location Sharing Applications (LSAs)
tracking personal trends (no sharing)
doing local searches (sharing with a service provider)
share locations with other people(a social network)
4
activecampus
[griswold, ’03]
lemming
[hong, ’04]
Past Research Examples of LSAs
5
2003 2004 2005 20082007 2009
esm study
[consolvo, ’05]
reno
[smith, ’05]
whereabouts
[brown, ’07]
watchme
[marmasse, ’04]
contextcontacts
[raento, ’05]
connecto
[barkhuus, ’08]
locaccino
[sadeh, ’09]
1992
active badge
[want, ’92]
activecampus
[griswold, ’03]
lemming
[hong, ’04]
Past Research Examples of LSAs
6
2003 2004 2005 20082007 2009
esm study
[consolvo, ’05]
reno
[smith, ’05]
whereabouts
[brown, ’07]
watchme
[marmasse, ’04]
contextcontacts
[raento, ’05]
connecto
[barkhuus, ’08]
locaccino
[sadeh, ’09]
1992
active badge
[want, ’92]
The most common use of the system was by the receptionist
who routinely used it when forwarding telephone calls from
the main switchboard.
Groups of people who regularly wanted to hold meetings
could find each other easily with very little notice.
“
activecampus
[griswold, ’03]
lemming
[hong, ’04]
Past Research Examples of LSAs
7
2003 2004 2005 20082007 2009
esm study
[consolvo, ’05]
reno
[smith, ’05]
whereabouts
[brown, ’07]
watchme
[marmasse, ’04]
contextcontacts
[raento, ’05]
connecto
[barkhuus, ’08]
locaccino
[sadeh, ’09]
1992
active badge
[want, ’92]
Given mobile users’ fragmented attention, the time it takes
to make a phone call must remain extremely short…These
[context] cues [which include location] should facilitate
decisions about whether to call, and if so, which
communication channel to use.
“
activecampus
[griswold, ’03]
lemming
[hong, ’04]
Past Research Examples of LSAs
8
2003 2004 2005 20082007 2009
esm study
[consolvo, ’05]
reno
[smith, ’05]
whereabouts
[brown, ’07]
watchme
[marmasse, ’04]
contextcontacts
[raento, ’05]
connecto
[barkhuus, ’08]
locaccino
[sadeh, ’09]
1992
active badge
[want, ’92]
Phoebe wonders what she and her husband, Ross, will do
for the evening, so she sends a location query to Ross. While
he is waiting at the bus stop near his office, Ross sends a
location update to Phoebe. Phoebe receives the message at
home, eagerly anticipating Ross’ arrival home. When Ross
gets off the bus, a location update is sent to Phoebe and she
knows that he’s only 10 minutes away. She sets out dinner
just in time for her husband’s arrival.
“
Common Themes for Past LSAs
driven by functional purposes:
• coordination
• collaboration
• interruptibility
• event planning
one-to-one sharing or small group sharing
9
Industry Trends for Information Sharing
integrated with online social networks (OSNs)
• diverse networks, lots of weak links [wellman, ‘01]
• very large networks [donah, ‘04]
sharing is often not because one needs to
share, but because one wants to share
driven by a social reason for sharing
10
Commercial Examples of LSAs
mostly aimed at social-driven sharing
11
2005 2006 2009 20102007 2008
Commercial Examples of LSAs
mostly aimed at social-driven sharing
12
2005 2006 2009 20102007 2008
“I'm just down the street!” Never miss another
chance to connect when you happen to be at the
same place at the same time. [facebook places]
Find out who’s around, what to do, and where to
go. Introducing…the new Loopt so you can always
stay connected… [loopt]
Share your location and stay connected with your
friends. [plazes]
“
“
“
Reframing Location Sharing
Purpose-Driven Social-Driven
motivations
coordination, collaboration,
interruptibility, planning
want (vs. need) to share,
social awareness
features
one-to-one
close-knit relationships
one-to-many
diverse relationship types
13
Understanding the Differences
Q1: what are people sharing?
will social-driven sharing lead to different sharing decisions?
Q2: how are making their sharing decisions?
what privacy strategies are used in social-driven sharing?
Q3: are people making good choices?
do people’s preferences result in privacy-preserving choices?
14
User Study: Participants
2-week user study
9 participants, 3 female
18-46 years old (μ=27.1, σ=8.3)
⅔ undergrad & grad students, ⅓ staff
15
User Study: Part 1 (in the field)
participants given custom Nokia N95s
• treated as primary phone
collected continuous GPS traces
extracted significant places
• dwell time ≥ 5 mins
16
User Study: Part 2 (in the lab)
1. shown a map of each place
2. generate as many labels as possible
17
[sample labeling exercise given to everyone as training]
Heinz Field
Football field
Steelers vs. Bengals
downtown Pittsburgh
Steelers’ home
100 Art Rooney Ave
Near golden triangle
User Study: Part 2 (in the lab)
purpose-driven scenario:
social-driven scenario:
18
User Study: Part 2 (in the lab)
purpose-driven scenario:
social-driven scenario:
19
Analysis: Taxonomy
coded each label:
20
Heinz Field
Football field
Steelers vs Bengals
downtown Pittsburgh
Steelers’ home
100 Art Rooney Ave
Near golden triangle
Analysis: Taxonomy
coded each label:
21
Heinz Field
Football field
Steelers vs Bengals
downtown Pittsburgh
Steelers’ home
100 Art Rooney Ave
Near golden triangle
type of description example
geographic
100 Art Rooney Ave
Near Golden Triangle
Downtown
Pittsburgh
semantic
Heinz Field
Steelers vs. Bengals
Steelers’ home
Football field
hybrid Heinz Field @ downtown
Q1: What Do Users Share? [semantic]
social sharing preferences:
• more semantic labels*
• fewer hybrid labels**
social sharing had different semantic labels**
• prefer activity & personal labels (“home”, “work”)
• purpose-driven sharing preferred type of place
& business names (“coffee shop”, “Starbucks”)
22
*p<0.01
**p<0.005
Q2: How Do Users Decide? [blurring]
insider knowledge
“If I just say Giant Eagle [a regional grocery store chain],
my friends will know which one I’m at.”
sharing activity vs. location
“I’d rather say what I am doing than that I’m at a certain
place.”
protecting friends’ locations
“I’m uncomfortable sharing where I am at, since it’s
someone else's place.”
23
Q2: How Do Users Share? [blurring intent]
purpose-driven: used to convey unavailability
social-driven: used to explicitly hide location
24
Q2: How Do Users Share? [blurring intent]
purpose-driven: used to convey unavailability
social-driven: used to explicitly hide location
…but also considered:
• social capital & image management
• what would appear more interesting to others?
25
Q3: Do Users Make Good Choices?
examine 3 techniques for reverse engineering
• google maps
• google search + google maps
• routines + google search + google maps
“bad” choice = physically locatable (stalker threat)
26
Result: Leaky Privacy Decisions
purpose-driven: easily locatable
social-driven: susceptible to being located
27
resource(s) purpose-driven social-driven
map 50.0% 10.2%
map + web 62.3% 19.4%
map + web +
routines
90.8% 51.0%
Summary & Conclusions
reframing: purpose- vs. social-driven sharing
significant differences for social sharing:
• what: different types of disclosures [semantic]
• how: different intentions for blurring [to hide]
• how: considered social issues [impressions]
• actual privacy: still susceptible to attacks
28
Summary & Conclusions
reframing: purpose- vs. social-driven sharing
significant differences for social sharing:
• what: different types of disclosures [semantic]
• how: different intentions for blurring [to hide]
• how: considered social issues [impressions]
• actual privacy: still susceptible to attacks
 context for sharing is an important factor
29
Limitations & Future Work
hypothetical disclosure scenarios
small, homogenous participant pool
• predominantly college students
• already familiar social network users
comparing two extremes of location sharing
• many other types of possible location sharing
• one-to-one vs. one-to-many purpose-driven
• one-to-many vs. one-to-one social-driven
30
Questions?
Karen P. Tang
Human-Computer Interaction Institute
School of Computer Science
Carnegie Mellon University
kptang@cs.cmu.edu
This research has been supported in part by the National Science
Foundation under grants CNS-0627513, IIS-0534406, and ITR-032535, by
the CyLab at Carnegie Mellon University under grants DAAD19-02-1-0389
from the Army Research Office, by Nokia, by Portugal ICTI, and by a
Microsoft Computational Thinking grant.
31

Weitere ähnliche Inhalte

Ähnlich wie Rethinking Location Sharing

Seams2016 presentation calikli_et_al
Seams2016 presentation calikli_et_alSeams2016 presentation calikli_et_al
Seams2016 presentation calikli_et_alGul Calikli
 
An Intelligent Assistant for High-Level Task Understanding
An Intelligent Assistant for High-Level Task UnderstandingAn Intelligent Assistant for High-Level Task Understanding
An Intelligent Assistant for High-Level Task UnderstandingYun-Nung (Vivian) Chen
 
A User Study on Location-based Mobile Search
A User Study on Location-based Mobile Search A User Study on Location-based Mobile Search
A User Study on Location-based Mobile Search Alia Amin
 
Graph Search, Facebook Nearby & Beyond: How Social Search Impacts the Future ...
Graph Search, Facebook Nearby & Beyond: How Social Search Impacts the Future ...Graph Search, Facebook Nearby & Beyond: How Social Search Impacts the Future ...
Graph Search, Facebook Nearby & Beyond: How Social Search Impacts the Future ...SIM Partners
 
How Flickr Helps us Make Sense of the World
How Flickr Helps us Make Sense of the WorldHow Flickr Helps us Make Sense of the World
How Flickr Helps us Make Sense of the Worldmor
 
Evaluation Methods for Social XR Experiences
Evaluation Methods for Social XR ExperiencesEvaluation Methods for Social XR Experiences
Evaluation Methods for Social XR ExperiencesMark Billinghurst
 
Privacy Dynamics: Learning Privacy Norms for Social Software
Privacy Dynamics: Learning Privacy Norms for Social SoftwarePrivacy Dynamics: Learning Privacy Norms for Social Software
Privacy Dynamics: Learning Privacy Norms for Social SoftwareArosha Bandara
 
SFO Art Institute 2011 projects: East meets West.
SFO Art Institute 2011 projects: East meets West.SFO Art Institute 2011 projects: East meets West.
SFO Art Institute 2011 projects: East meets West.Douglas Wang
 
Community Visioning Workshop Preview
Community Visioning Workshop PreviewCommunity Visioning Workshop Preview
Community Visioning Workshop PreviewHeartland2050
 
I3 presentation john mowbray
I3 presentation john mowbrayI3 presentation john mowbray
I3 presentation john mowbrayJohn Mowbray
 
Low Fidelity prototyping for location based social games
Low Fidelity prototyping for location based social gamesLow Fidelity prototyping for location based social games
Low Fidelity prototyping for location based social gamesHarish Vaidyanathan
 
Social Networks and Computer Science
Social Networks and Computer ScienceSocial Networks and Computer Science
Social Networks and Computer Sciencedragonmeteor
 
More-than-than human contact, conspicuous mobility, and the digital frontier
More-than-than human contact, conspicuous mobility, and the digital frontierMore-than-than human contact, conspicuous mobility, and the digital frontier
More-than-than human contact, conspicuous mobility, and the digital frontierMatthew Wilson
 
MobileHCI 2016 - Technology Literacy in Poor Infrastructure Environments: Cha...
MobileHCI 2016 - Technology Literacy in Poor Infrastructure Environments: Cha...MobileHCI 2016 - Technology Literacy in Poor Infrastructure Environments: Cha...
MobileHCI 2016 - Technology Literacy in Poor Infrastructure Environments: Cha...Abdallah El Ali
 
Location vs. People
Location vs. PeopleLocation vs. People
Location vs. PeopleNeal Lathia
 
CORE: co-author recommendation using network information and interest similarity
CORE: co-author recommendation using network information and interest similarityCORE: co-author recommendation using network information and interest similarity
CORE: co-author recommendation using network information and interest similarityRory Sie
 
Making More Sense Out of Social Data
Making More Sense Out of Social DataMaking More Sense Out of Social Data
Making More Sense Out of Social DataThe Open University
 

Ähnlich wie Rethinking Location Sharing (20)

Seams2016 presentation calikli_et_al
Seams2016 presentation calikli_et_alSeams2016 presentation calikli_et_al
Seams2016 presentation calikli_et_al
 
Yuntech present
Yuntech presentYuntech present
Yuntech present
 
An Intelligent Assistant for High-Level Task Understanding
An Intelligent Assistant for High-Level Task UnderstandingAn Intelligent Assistant for High-Level Task Understanding
An Intelligent Assistant for High-Level Task Understanding
 
04 Network Data Collection
04 Network Data Collection04 Network Data Collection
04 Network Data Collection
 
A User Study on Location-based Mobile Search
A User Study on Location-based Mobile Search A User Study on Location-based Mobile Search
A User Study on Location-based Mobile Search
 
Graph Search, Facebook Nearby & Beyond: How Social Search Impacts the Future ...
Graph Search, Facebook Nearby & Beyond: How Social Search Impacts the Future ...Graph Search, Facebook Nearby & Beyond: How Social Search Impacts the Future ...
Graph Search, Facebook Nearby & Beyond: How Social Search Impacts the Future ...
 
How Flickr Helps us Make Sense of the World
How Flickr Helps us Make Sense of the WorldHow Flickr Helps us Make Sense of the World
How Flickr Helps us Make Sense of the World
 
Evaluation Methods for Social XR Experiences
Evaluation Methods for Social XR ExperiencesEvaluation Methods for Social XR Experiences
Evaluation Methods for Social XR Experiences
 
Privacy Dynamics: Learning Privacy Norms for Social Software
Privacy Dynamics: Learning Privacy Norms for Social SoftwarePrivacy Dynamics: Learning Privacy Norms for Social Software
Privacy Dynamics: Learning Privacy Norms for Social Software
 
SFO Art Institute 2011 projects: East meets West.
SFO Art Institute 2011 projects: East meets West.SFO Art Institute 2011 projects: East meets West.
SFO Art Institute 2011 projects: East meets West.
 
NDU Present
NDU PresentNDU Present
NDU Present
 
Community Visioning Workshop Preview
Community Visioning Workshop PreviewCommunity Visioning Workshop Preview
Community Visioning Workshop Preview
 
I3 presentation john mowbray
I3 presentation john mowbrayI3 presentation john mowbray
I3 presentation john mowbray
 
Low Fidelity prototyping for location based social games
Low Fidelity prototyping for location based social gamesLow Fidelity prototyping for location based social games
Low Fidelity prototyping for location based social games
 
Social Networks and Computer Science
Social Networks and Computer ScienceSocial Networks and Computer Science
Social Networks and Computer Science
 
More-than-than human contact, conspicuous mobility, and the digital frontier
More-than-than human contact, conspicuous mobility, and the digital frontierMore-than-than human contact, conspicuous mobility, and the digital frontier
More-than-than human contact, conspicuous mobility, and the digital frontier
 
MobileHCI 2016 - Technology Literacy in Poor Infrastructure Environments: Cha...
MobileHCI 2016 - Technology Literacy in Poor Infrastructure Environments: Cha...MobileHCI 2016 - Technology Literacy in Poor Infrastructure Environments: Cha...
MobileHCI 2016 - Technology Literacy in Poor Infrastructure Environments: Cha...
 
Location vs. People
Location vs. PeopleLocation vs. People
Location vs. People
 
CORE: co-author recommendation using network information and interest similarity
CORE: co-author recommendation using network information and interest similarityCORE: co-author recommendation using network information and interest similarity
CORE: co-author recommendation using network information and interest similarity
 
Making More Sense Out of Social Data
Making More Sense Out of Social DataMaking More Sense Out of Social Data
Making More Sense Out of Social Data
 

Kürzlich hochgeladen

Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...Farhan Tariq
 
React JS; all concepts. Contains React Features, JSX, functional & Class comp...
React JS; all concepts. Contains React Features, JSX, functional & Class comp...React JS; all concepts. Contains React Features, JSX, functional & Class comp...
React JS; all concepts. Contains React Features, JSX, functional & Class comp...Karmanjay Verma
 
Modern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better StrongerModern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better Strongerpanagenda
 
JET Technology Labs White Paper for Virtualized Security and Encryption Techn...
JET Technology Labs White Paper for Virtualized Security and Encryption Techn...JET Technology Labs White Paper for Virtualized Security and Encryption Techn...
JET Technology Labs White Paper for Virtualized Security and Encryption Techn...amber724300
 
Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...
Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...
Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...Nikki Chapple
 
[Webinar] SpiraTest - Setting New Standards in Quality Assurance
[Webinar] SpiraTest - Setting New Standards in Quality Assurance[Webinar] SpiraTest - Setting New Standards in Quality Assurance
[Webinar] SpiraTest - Setting New Standards in Quality AssuranceInflectra
 
Testing tools and AI - ideas what to try with some tool examples
Testing tools and AI - ideas what to try with some tool examplesTesting tools and AI - ideas what to try with some tool examples
Testing tools and AI - ideas what to try with some tool examplesKari Kakkonen
 
A Glance At The Java Performance Toolbox
A Glance At The Java Performance ToolboxA Glance At The Java Performance Toolbox
A Glance At The Java Performance ToolboxAna-Maria Mihalceanu
 
React Native vs Ionic - The Best Mobile App Framework
React Native vs Ionic - The Best Mobile App FrameworkReact Native vs Ionic - The Best Mobile App Framework
React Native vs Ionic - The Best Mobile App FrameworkPixlogix Infotech
 
Tampa BSides - The No BS SOC (slides from April 6, 2024 talk)
Tampa BSides - The No BS SOC (slides from April 6, 2024 talk)Tampa BSides - The No BS SOC (slides from April 6, 2024 talk)
Tampa BSides - The No BS SOC (slides from April 6, 2024 talk)Mark Simos
 
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24Mark Goldstein
 
Glenn Lazarus- Why Your Observability Strategy Needs Security Observability
Glenn Lazarus- Why Your Observability Strategy Needs Security ObservabilityGlenn Lazarus- Why Your Observability Strategy Needs Security Observability
Glenn Lazarus- Why Your Observability Strategy Needs Security Observabilityitnewsafrica
 
Potential of AI (Generative AI) in Business: Learnings and Insights
Potential of AI (Generative AI) in Business: Learnings and InsightsPotential of AI (Generative AI) in Business: Learnings and Insights
Potential of AI (Generative AI) in Business: Learnings and InsightsRavi Sanghani
 
2024 April Patch Tuesday
2024 April Patch Tuesday2024 April Patch Tuesday
2024 April Patch TuesdayIvanti
 
Accelerating Enterprise Software Engineering with Platformless
Accelerating Enterprise Software Engineering with PlatformlessAccelerating Enterprise Software Engineering with Platformless
Accelerating Enterprise Software Engineering with PlatformlessWSO2
 
The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...
The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...
The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...Wes McKinney
 
Long journey of Ruby standard library at RubyConf AU 2024
Long journey of Ruby standard library at RubyConf AU 2024Long journey of Ruby standard library at RubyConf AU 2024
Long journey of Ruby standard library at RubyConf AU 2024Hiroshi SHIBATA
 
Bridging Between CAD & GIS: 6 Ways to Automate Your Data Integration
Bridging Between CAD & GIS:  6 Ways to Automate Your Data IntegrationBridging Between CAD & GIS:  6 Ways to Automate Your Data Integration
Bridging Between CAD & GIS: 6 Ways to Automate Your Data Integrationmarketing932765
 
Microsoft 365 Copilot: How to boost your productivity with AI – Part two: Dat...
Microsoft 365 Copilot: How to boost your productivity with AI – Part two: Dat...Microsoft 365 Copilot: How to boost your productivity with AI – Part two: Dat...
Microsoft 365 Copilot: How to boost your productivity with AI – Part two: Dat...Nikki Chapple
 
Kuma Meshes Part I - The basics - A tutorial
Kuma Meshes Part I - The basics - A tutorialKuma Meshes Part I - The basics - A tutorial
Kuma Meshes Part I - The basics - A tutorialJoão Esperancinha
 

Kürzlich hochgeladen (20)

Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...
 
React JS; all concepts. Contains React Features, JSX, functional & Class comp...
React JS; all concepts. Contains React Features, JSX, functional & Class comp...React JS; all concepts. Contains React Features, JSX, functional & Class comp...
React JS; all concepts. Contains React Features, JSX, functional & Class comp...
 
Modern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better StrongerModern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
 
JET Technology Labs White Paper for Virtualized Security and Encryption Techn...
JET Technology Labs White Paper for Virtualized Security and Encryption Techn...JET Technology Labs White Paper for Virtualized Security and Encryption Techn...
JET Technology Labs White Paper for Virtualized Security and Encryption Techn...
 
Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...
Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...
Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...
 
[Webinar] SpiraTest - Setting New Standards in Quality Assurance
[Webinar] SpiraTest - Setting New Standards in Quality Assurance[Webinar] SpiraTest - Setting New Standards in Quality Assurance
[Webinar] SpiraTest - Setting New Standards in Quality Assurance
 
Testing tools and AI - ideas what to try with some tool examples
Testing tools and AI - ideas what to try with some tool examplesTesting tools and AI - ideas what to try with some tool examples
Testing tools and AI - ideas what to try with some tool examples
 
A Glance At The Java Performance Toolbox
A Glance At The Java Performance ToolboxA Glance At The Java Performance Toolbox
A Glance At The Java Performance Toolbox
 
React Native vs Ionic - The Best Mobile App Framework
React Native vs Ionic - The Best Mobile App FrameworkReact Native vs Ionic - The Best Mobile App Framework
React Native vs Ionic - The Best Mobile App Framework
 
Tampa BSides - The No BS SOC (slides from April 6, 2024 talk)
Tampa BSides - The No BS SOC (slides from April 6, 2024 talk)Tampa BSides - The No BS SOC (slides from April 6, 2024 talk)
Tampa BSides - The No BS SOC (slides from April 6, 2024 talk)
 
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
 
Glenn Lazarus- Why Your Observability Strategy Needs Security Observability
Glenn Lazarus- Why Your Observability Strategy Needs Security ObservabilityGlenn Lazarus- Why Your Observability Strategy Needs Security Observability
Glenn Lazarus- Why Your Observability Strategy Needs Security Observability
 
Potential of AI (Generative AI) in Business: Learnings and Insights
Potential of AI (Generative AI) in Business: Learnings and InsightsPotential of AI (Generative AI) in Business: Learnings and Insights
Potential of AI (Generative AI) in Business: Learnings and Insights
 
2024 April Patch Tuesday
2024 April Patch Tuesday2024 April Patch Tuesday
2024 April Patch Tuesday
 
Accelerating Enterprise Software Engineering with Platformless
Accelerating Enterprise Software Engineering with PlatformlessAccelerating Enterprise Software Engineering with Platformless
Accelerating Enterprise Software Engineering with Platformless
 
The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...
The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...
The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...
 
Long journey of Ruby standard library at RubyConf AU 2024
Long journey of Ruby standard library at RubyConf AU 2024Long journey of Ruby standard library at RubyConf AU 2024
Long journey of Ruby standard library at RubyConf AU 2024
 
Bridging Between CAD & GIS: 6 Ways to Automate Your Data Integration
Bridging Between CAD & GIS:  6 Ways to Automate Your Data IntegrationBridging Between CAD & GIS:  6 Ways to Automate Your Data Integration
Bridging Between CAD & GIS: 6 Ways to Automate Your Data Integration
 
Microsoft 365 Copilot: How to boost your productivity with AI – Part two: Dat...
Microsoft 365 Copilot: How to boost your productivity with AI – Part two: Dat...Microsoft 365 Copilot: How to boost your productivity with AI – Part two: Dat...
Microsoft 365 Copilot: How to boost your productivity with AI – Part two: Dat...
 
Kuma Meshes Part I - The basics - A tutorial
Kuma Meshes Part I - The basics - A tutorialKuma Meshes Part I - The basics - A tutorial
Kuma Meshes Part I - The basics - A tutorial
 

Rethinking Location Sharing

  • 1. Rethinking Location Sharing: Exploring the Implications of Social-Driven vs. Purpose-Driven Location Sharing Karen P. Tang Jialiu Lin, Jason Hong, Dan Siewiorek, Norman Sadeh Human-Computer Interaction Institute School of Computer Science Carnegie Mellon University
  • 3. Types of Location-Based Services tracking personal trends (no sharing) doing local searches (sharing with a service provider) 3 [google latitude] [yelp]
  • 4. Location Sharing Applications (LSAs) tracking personal trends (no sharing) doing local searches (sharing with a service provider) share locations with other people(a social network) 4
  • 5. activecampus [griswold, ’03] lemming [hong, ’04] Past Research Examples of LSAs 5 2003 2004 2005 20082007 2009 esm study [consolvo, ’05] reno [smith, ’05] whereabouts [brown, ’07] watchme [marmasse, ’04] contextcontacts [raento, ’05] connecto [barkhuus, ’08] locaccino [sadeh, ’09] 1992 active badge [want, ’92]
  • 6. activecampus [griswold, ’03] lemming [hong, ’04] Past Research Examples of LSAs 6 2003 2004 2005 20082007 2009 esm study [consolvo, ’05] reno [smith, ’05] whereabouts [brown, ’07] watchme [marmasse, ’04] contextcontacts [raento, ’05] connecto [barkhuus, ’08] locaccino [sadeh, ’09] 1992 active badge [want, ’92] The most common use of the system was by the receptionist who routinely used it when forwarding telephone calls from the main switchboard. Groups of people who regularly wanted to hold meetings could find each other easily with very little notice. “
  • 7. activecampus [griswold, ’03] lemming [hong, ’04] Past Research Examples of LSAs 7 2003 2004 2005 20082007 2009 esm study [consolvo, ’05] reno [smith, ’05] whereabouts [brown, ’07] watchme [marmasse, ’04] contextcontacts [raento, ’05] connecto [barkhuus, ’08] locaccino [sadeh, ’09] 1992 active badge [want, ’92] Given mobile users’ fragmented attention, the time it takes to make a phone call must remain extremely short…These [context] cues [which include location] should facilitate decisions about whether to call, and if so, which communication channel to use. “
  • 8. activecampus [griswold, ’03] lemming [hong, ’04] Past Research Examples of LSAs 8 2003 2004 2005 20082007 2009 esm study [consolvo, ’05] reno [smith, ’05] whereabouts [brown, ’07] watchme [marmasse, ’04] contextcontacts [raento, ’05] connecto [barkhuus, ’08] locaccino [sadeh, ’09] 1992 active badge [want, ’92] Phoebe wonders what she and her husband, Ross, will do for the evening, so she sends a location query to Ross. While he is waiting at the bus stop near his office, Ross sends a location update to Phoebe. Phoebe receives the message at home, eagerly anticipating Ross’ arrival home. When Ross gets off the bus, a location update is sent to Phoebe and she knows that he’s only 10 minutes away. She sets out dinner just in time for her husband’s arrival. “
  • 9. Common Themes for Past LSAs driven by functional purposes: • coordination • collaboration • interruptibility • event planning one-to-one sharing or small group sharing 9
  • 10. Industry Trends for Information Sharing integrated with online social networks (OSNs) • diverse networks, lots of weak links [wellman, ‘01] • very large networks [donah, ‘04] sharing is often not because one needs to share, but because one wants to share driven by a social reason for sharing 10
  • 11. Commercial Examples of LSAs mostly aimed at social-driven sharing 11 2005 2006 2009 20102007 2008
  • 12. Commercial Examples of LSAs mostly aimed at social-driven sharing 12 2005 2006 2009 20102007 2008 “I'm just down the street!” Never miss another chance to connect when you happen to be at the same place at the same time. [facebook places] Find out who’s around, what to do, and where to go. Introducing…the new Loopt so you can always stay connected… [loopt] Share your location and stay connected with your friends. [plazes] “ “ “
  • 13. Reframing Location Sharing Purpose-Driven Social-Driven motivations coordination, collaboration, interruptibility, planning want (vs. need) to share, social awareness features one-to-one close-knit relationships one-to-many diverse relationship types 13
  • 14. Understanding the Differences Q1: what are people sharing? will social-driven sharing lead to different sharing decisions? Q2: how are making their sharing decisions? what privacy strategies are used in social-driven sharing? Q3: are people making good choices? do people’s preferences result in privacy-preserving choices? 14
  • 15. User Study: Participants 2-week user study 9 participants, 3 female 18-46 years old (μ=27.1, σ=8.3) ⅔ undergrad & grad students, ⅓ staff 15
  • 16. User Study: Part 1 (in the field) participants given custom Nokia N95s • treated as primary phone collected continuous GPS traces extracted significant places • dwell time ≥ 5 mins 16
  • 17. User Study: Part 2 (in the lab) 1. shown a map of each place 2. generate as many labels as possible 17 [sample labeling exercise given to everyone as training] Heinz Field Football field Steelers vs. Bengals downtown Pittsburgh Steelers’ home 100 Art Rooney Ave Near golden triangle
  • 18. User Study: Part 2 (in the lab) purpose-driven scenario: social-driven scenario: 18
  • 19. User Study: Part 2 (in the lab) purpose-driven scenario: social-driven scenario: 19
  • 20. Analysis: Taxonomy coded each label: 20 Heinz Field Football field Steelers vs Bengals downtown Pittsburgh Steelers’ home 100 Art Rooney Ave Near golden triangle
  • 21. Analysis: Taxonomy coded each label: 21 Heinz Field Football field Steelers vs Bengals downtown Pittsburgh Steelers’ home 100 Art Rooney Ave Near golden triangle type of description example geographic 100 Art Rooney Ave Near Golden Triangle Downtown Pittsburgh semantic Heinz Field Steelers vs. Bengals Steelers’ home Football field hybrid Heinz Field @ downtown
  • 22. Q1: What Do Users Share? [semantic] social sharing preferences: • more semantic labels* • fewer hybrid labels** social sharing had different semantic labels** • prefer activity & personal labels (“home”, “work”) • purpose-driven sharing preferred type of place & business names (“coffee shop”, “Starbucks”) 22 *p<0.01 **p<0.005
  • 23. Q2: How Do Users Decide? [blurring] insider knowledge “If I just say Giant Eagle [a regional grocery store chain], my friends will know which one I’m at.” sharing activity vs. location “I’d rather say what I am doing than that I’m at a certain place.” protecting friends’ locations “I’m uncomfortable sharing where I am at, since it’s someone else's place.” 23
  • 24. Q2: How Do Users Share? [blurring intent] purpose-driven: used to convey unavailability social-driven: used to explicitly hide location 24
  • 25. Q2: How Do Users Share? [blurring intent] purpose-driven: used to convey unavailability social-driven: used to explicitly hide location …but also considered: • social capital & image management • what would appear more interesting to others? 25
  • 26. Q3: Do Users Make Good Choices? examine 3 techniques for reverse engineering • google maps • google search + google maps • routines + google search + google maps “bad” choice = physically locatable (stalker threat) 26
  • 27. Result: Leaky Privacy Decisions purpose-driven: easily locatable social-driven: susceptible to being located 27 resource(s) purpose-driven social-driven map 50.0% 10.2% map + web 62.3% 19.4% map + web + routines 90.8% 51.0%
  • 28. Summary & Conclusions reframing: purpose- vs. social-driven sharing significant differences for social sharing: • what: different types of disclosures [semantic] • how: different intentions for blurring [to hide] • how: considered social issues [impressions] • actual privacy: still susceptible to attacks 28
  • 29. Summary & Conclusions reframing: purpose- vs. social-driven sharing significant differences for social sharing: • what: different types of disclosures [semantic] • how: different intentions for blurring [to hide] • how: considered social issues [impressions] • actual privacy: still susceptible to attacks  context for sharing is an important factor 29
  • 30. Limitations & Future Work hypothetical disclosure scenarios small, homogenous participant pool • predominantly college students • already familiar social network users comparing two extremes of location sharing • many other types of possible location sharing • one-to-one vs. one-to-many purpose-driven • one-to-many vs. one-to-one social-driven 30
  • 31. Questions? Karen P. Tang Human-Computer Interaction Institute School of Computer Science Carnegie Mellon University kptang@cs.cmu.edu This research has been supported in part by the National Science Foundation under grants CNS-0627513, IIS-0534406, and ITR-032535, by the CyLab at Carnegie Mellon University under grants DAAD19-02-1-0389 from the Army Research Office, by Nokia, by Portugal ICTI, and by a Microsoft Computational Thinking grant. 31