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Fake news Challenge
http://www.fakenewschallenge.org/
Exploring how artificial intelligence technologies could be leveraged to combat fake news.
Formal Definition
- Input: A headline and a body text - either from the same news article or from two different articles.
- Output: Classify the stance of the body text relative to the claim made in the headline into one of four categories:
- Agrees: The body text agrees with the headline.
- Disagrees: The body text disagrees with the headline.
- Discusses: The body text discuss the same topic as the headline, but does not take a position
- Unrelated: The body text discusses a different topic than the headline
Stance Detection dataset for FNC1
https://github.com/FakeNewsChallenge/fnc-1
Winner team
First place - Team SOLAT in the SWEN
https://github.com/Cisco-Talos/fnc-1
The data provided is (headline, body, stance) instances, where stance is one of {unrelated, discuss, agree, disagree}. The dataset is provided as two CSVs:
- train_bodies.csv : This file contains the body text of articles (the articleBody column) with corresponding IDs (Body ID)
- train_stances.csv : This file contains the labeled stances (the Stance column) for pairs of article headlines (Headline) and article bodies (Body ID, referring to entries in train_bodies.csv).
Distribution of the data
The distribution of Stance classes in train_stances.csv is as follows:
| rows | unrelated | discuss | agree | disagree |
|---|---|---|---|---|
| 49972 | 0.73131 | 0.17828 | 0.0736012 | 0.0168094 |