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Crowdsourcing
For Location-based Queries

“We are better than Me & We are smarter than Me”

Presented by

Ms. Archana Khandade
Guided by

Prof. N N Dharashive
Crowdsourcing is the act of taking a job
traditionally performed by a designated agent
(usually an employee) and outsourcing it to
an undefined, generally large group of people
in the form of an open call
- Jeff Howe (2006)
Why Now?

Human Trends :
-Anyone can take two seconds to
hit a Like button, 10 seconds to
respond to a text message, or 30
seconds to post a Tweet.
-The Way We Work

Technology Trends:
- Artificial intelligence (machine learning)

Convergence of People and Technology:
- people and machines can work far better with each other
Typology of Crowdsourcing
Applications

1. The Knowledge Discovery and Management
Approach


Organization tasks crowd with finding and collecting information
into a common location and format



Example : seeclickfix.com

2. The Broadcast Search Approach


Organization tasks crowd with solving empirical problems



Example : innocentive.com

3. The Peer-Vetted Creative Production Approach



Organization tasks crowd with creating and selecting creative
ideas
Example : threadless.com

4. Distributed Human Intelligence Tasking



Organization tasks crowd with analyzing large amounts of
information
Example : mturk.com
Crowdsourcing
How Crowdsourcing HELP?
Location-based Queries
-As per the study found that “ We found that 63% of the queries
were non-factual, while only 37% of them were factual ”

Question Answering Systems
- Google answered 78% of the factual questions

and only 29% of the non-factual questions

Crowdsourcing and Collaboration
- To find the most appropriate person to answer the question
System Backbones :

twitter
•
•
•

Real time information sharing
580 million active users world-wide
Averages of 340 million tweets are
sent everyday globally

foursquare
•

Share and save the places you visit
• Over 40 million people worldwide
• Over 4.5 billion check-ins, with millions
more every day
System Architecture
System Components
1. Question Collector
Question Format :

[question keyword][text][location keyword][?]
Example :
[Anyone][have dinner suggestions while in][San
Francisco][?]

2. Validator (for questions)

Boston
Buffalo
Chicago
Dallas
Houston

Food
Home/Work/Other

Los Angeles
Miami

Nightlife
Parks & Outdoors
Shops

New York
San Francisco

Travel

Cities & Location Types
(Categories) in Foursquare

Example :
@usernameA:Arts&Entertainment,C:College&Education,F:Food,H
:Home/Work/Other,N:Nightlife,P:Parks&Outdoors,
S:Shops,T:Travel
@username 1: inappropriate, 2:can be asked, 3: good question
@username [Question]
N2

College & Education

Las Vegas

- extra level of filtering
- forward to moderators over Twitter for ranking of questions

Reply :

Arts &
Entertainment

Rank

Meaning

1

Inappropriate

2

Can be asked

3

Good Question

Ranking Levels for Questions
System Components (Cont..)
3. Asker
- forwards validated questions to people identified as most
appropriate to answer those questions

Example :
@username Please help our research project by answering the
following question. For more info visit [website link]
@username [Question]

3. Answer Collector
- constantly polls our Twitter account for any received
answers to the questions asked
- answers that contain inappropriate words are filtered out by
employing a set of blacklisted words
System Components
5. Validation (for answers)
- Similar to the validation step in Validation (for
questions)
- Forward to moderators over Twitter for ranking of
Answers

6. Forwarder

Rank

Meaning

1

Inappropriate

2

Can be forwarded

3

Good Answer

Ranking Levels for
Answers

- Forwards the answers which have ranking level of either 2 (can be forwarded)
or 3 (Good Answer) back to the Twitter users

Example :
@asker Our crowd-sourced question answering system found the
following answer to your question contributed by @answerer
@asker [Question]
@asker [Answer]
Experiments
 Question Rates :

- Approximately 75% of them as inappropriate to ask

 Answer Finding Rate :

-Our system answered 75% of questions compared to Google’s
47% answer rate on same questions
-Our system answered 75% of both the factual and the nonfactual questions

- Google answered 78% of the factual questions and only 29%
of the non-factual questions
Experiments (cont..)
65

60

60
55
50

FourSquare Reply Percentage
100
90
80
70
60
50
40
30
20
10
0

50

45

Can be Ased

Good Question

Random Reply Percentage

90
80
70
60
50

40

40

40
20

50 50

40
20
10

Reply Percentage based on
Question Ranking(%)

60
40
20

50

50
20

40

30
10

0
Question Rank:2
Answer Rank :1

70

Question Rank:3

Answer Rank :2

Answer Rank :3

Question Ranks vs. Answer Ranks

10
Experiments
PC/Lapt
op
20%

Evening
29%

Afternoon
33%

Morning
19%

Mobile
80%

Night
19%

Response Intervals

Client Types

120
100
80
60
40
20
0
1m

2m

5m

10m

30m

2h

4h

8h

12h

18h

Maximum Respoanse Time

1d

2d

4d

5d
Conclusion
• Our findings indicate that even without an incentive
structure, we could answer 75% of the questions &
Foursquare users provide better answers than randomly
selected users from the same cities
• Crowdsourcing = Collective
intelligence, Depending on the nature of a problem & the
type of input needed from a crowd any number of new media
tools could be designed
• Crowdsourcing can be used to make governance more
efficient and inclusive, to search for difficult scientific
solutions, to craft better public policy
“We are better than Me & We are smarter than Me”

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CrowdSourcing- Location based Quries

  • 1. Crowdsourcing For Location-based Queries “We are better than Me & We are smarter than Me” Presented by Ms. Archana Khandade Guided by Prof. N N Dharashive
  • 2. Crowdsourcing is the act of taking a job traditionally performed by a designated agent (usually an employee) and outsourcing it to an undefined, generally large group of people in the form of an open call - Jeff Howe (2006)
  • 3. Why Now? Human Trends : -Anyone can take two seconds to hit a Like button, 10 seconds to respond to a text message, or 30 seconds to post a Tweet. -The Way We Work Technology Trends: - Artificial intelligence (machine learning) Convergence of People and Technology: - people and machines can work far better with each other
  • 4. Typology of Crowdsourcing Applications 1. The Knowledge Discovery and Management Approach  Organization tasks crowd with finding and collecting information into a common location and format  Example : seeclickfix.com 2. The Broadcast Search Approach  Organization tasks crowd with solving empirical problems  Example : innocentive.com 3. The Peer-Vetted Creative Production Approach   Organization tasks crowd with creating and selecting creative ideas Example : threadless.com 4. Distributed Human Intelligence Tasking   Organization tasks crowd with analyzing large amounts of information Example : mturk.com
  • 6. How Crowdsourcing HELP? Location-based Queries -As per the study found that “ We found that 63% of the queries were non-factual, while only 37% of them were factual ” Question Answering Systems - Google answered 78% of the factual questions and only 29% of the non-factual questions Crowdsourcing and Collaboration - To find the most appropriate person to answer the question
  • 7. System Backbones : twitter • • • Real time information sharing 580 million active users world-wide Averages of 340 million tweets are sent everyday globally foursquare • Share and save the places you visit • Over 40 million people worldwide • Over 4.5 billion check-ins, with millions more every day
  • 9. System Components 1. Question Collector Question Format : [question keyword][text][location keyword][?] Example : [Anyone][have dinner suggestions while in][San Francisco][?] 2. Validator (for questions) Boston Buffalo Chicago Dallas Houston Food Home/Work/Other Los Angeles Miami Nightlife Parks & Outdoors Shops New York San Francisco Travel Cities & Location Types (Categories) in Foursquare Example : @usernameA:Arts&Entertainment,C:College&Education,F:Food,H :Home/Work/Other,N:Nightlife,P:Parks&Outdoors, S:Shops,T:Travel @username 1: inappropriate, 2:can be asked, 3: good question @username [Question] N2 College & Education Las Vegas - extra level of filtering - forward to moderators over Twitter for ranking of questions Reply : Arts & Entertainment Rank Meaning 1 Inappropriate 2 Can be asked 3 Good Question Ranking Levels for Questions
  • 10. System Components (Cont..) 3. Asker - forwards validated questions to people identified as most appropriate to answer those questions Example : @username Please help our research project by answering the following question. For more info visit [website link] @username [Question] 3. Answer Collector - constantly polls our Twitter account for any received answers to the questions asked - answers that contain inappropriate words are filtered out by employing a set of blacklisted words
  • 11. System Components 5. Validation (for answers) - Similar to the validation step in Validation (for questions) - Forward to moderators over Twitter for ranking of Answers 6. Forwarder Rank Meaning 1 Inappropriate 2 Can be forwarded 3 Good Answer Ranking Levels for Answers - Forwards the answers which have ranking level of either 2 (can be forwarded) or 3 (Good Answer) back to the Twitter users Example : @asker Our crowd-sourced question answering system found the following answer to your question contributed by @answerer @asker [Question] @asker [Answer]
  • 12. Experiments  Question Rates : - Approximately 75% of them as inappropriate to ask  Answer Finding Rate : -Our system answered 75% of questions compared to Google’s 47% answer rate on same questions -Our system answered 75% of both the factual and the nonfactual questions - Google answered 78% of the factual questions and only 29% of the non-factual questions
  • 13. Experiments (cont..) 65 60 60 55 50 FourSquare Reply Percentage 100 90 80 70 60 50 40 30 20 10 0 50 45 Can be Ased Good Question Random Reply Percentage 90 80 70 60 50 40 40 40 20 50 50 40 20 10 Reply Percentage based on Question Ranking(%) 60 40 20 50 50 20 40 30 10 0 Question Rank:2 Answer Rank :1 70 Question Rank:3 Answer Rank :2 Answer Rank :3 Question Ranks vs. Answer Ranks 10
  • 15. Conclusion • Our findings indicate that even without an incentive structure, we could answer 75% of the questions & Foursquare users provide better answers than randomly selected users from the same cities • Crowdsourcing = Collective intelligence, Depending on the nature of a problem & the type of input needed from a crowd any number of new media tools could be designed • Crowdsourcing can be used to make governance more efficient and inclusive, to search for difficult scientific solutions, to craft better public policy
  • 16. “We are better than Me & We are smarter than Me”

Editor's Notes

  1. Defination, term introduced, . User Production, Traditional production , The idea behind crowdsourcing is that ‘the many’ are smarter and make better choices than ‘the few’
  2. Crowd