Support #289

Label another 1000 tweets

Added by Guangxia Li over 1 year ago. Updated over 1 year ago.

Status:Rejected Start date:2010-06-05
Priority:Normal Due date:
Assignee:Luojun Qiu % Done:

0%

Category:- Spent time: -
Target version:- Estimated time:5.00 hours

Description

When relied on an emotional word list to label the tweets, we found that nearly 80% of tweets were labeled as neutral, 20% were labeled as containing positive emotion, and only about 1% were negative.

The dataset provided to you contains 500 tweets labeled as positive, and 500 tweets labeled as negative by a program that relays on the emotional word list. Please help to label these 1000 tweets into three categories (positive, negative or neutral) according to your judgment.

The emotions of some tweets are really ambiguous. When labeling, please relay on the literal meaning only and speed up the labeling process.

History

Updated by Kuiyu Chang over 1 year ago

Guangxia, do close this issue if there is no progress from Qiu.

Updated by Kuiyu Chang over 1 year ago

  • Status changed from New to Rejected

closing this issue, as this has been superseded by issue #290

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