Difference between revisions of "Cohen Courses:Tweet"

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* tweet differently at different locations - e.g. a tweet made from a restaurant (about the food, the service, etc) maybe different from a tweet made from an office (about works, etc)
 
* tweet differently at different locations - e.g. a tweet made from a restaurant (about the food, the service, etc) maybe different from a tweet made from an office (about works, etc)
 
* location is affected by time - e.g. a person is more likely to tweet from the office in the morning than from a nightspot
 
* location is affected by time - e.g. a person is more likely to tweet from the office in the morning than from a nightspot
* sentiment is affected by location - e.g. a person maybe more likely to feel sombre in the office than in travel spots
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* sentiment is affected by location and time - e.g. a person maybe more likely to feel sombre in the office in weekdays than in travel spots in holidays or weekends
  
How locations of tweets change with time  
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How locations of tweets change with time represents geographical activity profile of the user. Such activity maybe structured across geographical space and across time. This structure is what we want to learn about the user based on his tweets. Using the structure and the tweet, we would like to infer the location from which the tweet is made.
  
The location categories to infer are taken from Foursquare categories: "Arts and Entertainment", "College and Education", "Food", "Home/Work/Other", "Nightlife Spots", "Great Outdoors", "Shops", "Travel Spots".  
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The location categories to infer are taken from Foursquare categories: "Arts and Entertainment", "College and Education", "Food", "Home/Work/Other", "Nightlife Spots", "Great Outdoors", "Shops", "Travel Spots".
  
 
== Baseline & Dataset ==
 
== Baseline & Dataset ==

Revision as of 23:04, 5 October 2011

Inferring geographical activity using Twitter.

Team Member(s)

Proposal

In this project we would like to infer the location category of a tweet based on the words in the tweet (including sentiments) and the time of the tweet. We believe Twitter users:

  • tweet differently at different locations - e.g. a tweet made from a restaurant (about the food, the service, etc) maybe different from a tweet made from an office (about works, etc)
  • location is affected by time - e.g. a person is more likely to tweet from the office in the morning than from a nightspot
  • sentiment is affected by location and time - e.g. a person maybe more likely to feel sombre in the office in weekdays than in travel spots in holidays or weekends

How locations of tweets change with time represents geographical activity profile of the user. Such activity maybe structured across geographical space and across time. This structure is what we want to learn about the user based on his tweets. Using the structure and the tweet, we would like to infer the location from which the tweet is made.

The location categories to infer are taken from Foursquare categories: "Arts and Entertainment", "College and Education", "Food", "Home/Work/Other", "Nightlife Spots", "Great Outdoors", "Shops", "Travel Spots".

Baseline & Dataset

Related Work