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World Wide Web / Knowledge / Research methods / Social information processing / Market research / Question answering / Yahoo! Answers / Twitter / Survey methodology / Science / Collaboration / Community websites
Date: 2014-04-05 12:47:09
World Wide Web
Knowledge
Research methods
Social information processing
Market research
Question answering
Yahoo! Answers
Twitter
Survey methodology
Science
Collaboration
Community websites

Asking Questions of Targeted Strangers on Social Networks

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