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fakenewschallenge-teaching

This git repository contains a couple of utilities to support students on the COM4513 and COM6513 modules at the University of Sheffield attempt the Fake News Challenge.

For details of the task, see FakeNewsChallenge.org

We supplement the FNC-1 dataset by providing training, development and test splits of the data.

You will have to use the development data to evaluate your approach's performance and suitability during development. The articles in this dataset are disjoint from (i.e. do not appear in) the training dataset. The test dataset will not be released until week 10.

We provide our own scorer and dataset reader (small adaptations from the original release by fakenewschallenge) in the utils/ folder/package. A visual explanation of the scorer is available here.

Questions/Issues

Please post all questions to the module's Google group.

Getting Started

First. You should have installed git if you do not already have it. Git can be installed on the university computers from the Software Centre or from the git website/your package manager if you use your own laptop.

To download the data, you should first clone the repository from the git bash prompt. This downloads the library files. But does not download the data.

git clone https://github.com/sheffieldnlp/fakenewschallenge-teaching

The FNC dataset is inlcuded as a submodule and can be FNC Dataset is included as a submodule. You must download the fnc-1 dataset by running the following commands. This places the fnc-1 dataset into the folder fnc-1/

git submodule init
git submodule update

Loading the data

Example code is given in example.py

We have made a dataset reader that partitions the data into the training, development and test splits.

dataset class

The dataset class reads the FNC-1 dataset and loads the stances and article bodies into two separate containers.

dataset = DataSet()

You can access these through the .stances and .articles variables

print("Total stances: " + str(len(dataset.stances)))
print("Total bodies: " + str(len(dataset.articles)))
  • .articles is a dictionary of articles, indexed by the body id. For example, the text from the 144th article can be printed with the following command: print(dataset.articles[144])

split() function (utils/generate_test_splits.py)

The split function inputs a dataset and will split the dataset into training data, development data and test data. Test data will not be released at this point in time.

data_splits = split(dataset)

training_data = data_splits['training']
dev_data = data_splits['dev']
test_data = data_splits['test']
  • Each of the training/dev/test partitions will contain a list of dictionaries. Each entry corresponds to one training example. This contains a body id (article text), a headline and a stance. There are four possible stances: agree, disagree, discuss and unrelated. (see utils/score.py for a list of these. {'Body ID': 144, 'Headline': 'Axl Rose NOT Dead: Fake MSNBC Death Hoax Goes Viral On Facebook', 'Stance': 'unrelated'}

Base directory

We expect the FNC dataset to be loaded into fnc-1/ and the dataset split ids to come from splits/. If you need to change these, then you may be doing something unexpected. We recommend setting your python working directory to be the root of this repository.

Scoring Your Classifier

The report_score function in utils/score.py will be used to assess the performance of your classifier.

report_score expects 2 parameters. A list of actual stances (i.e. from the dev dataset), and a list of predicted stances (i.e. what you classifier predicts on the dev dataset).

predicted = ['unrelated','discuss',...]
actual = [stance['Stance'] for stance in dev_data]

report_score(actual, predicted)

This will print a confusion matrix and a final score your classifier. We provide the scores for very simple perceptron based classifier which you should be able to match and eventually beat!

agree disagree discuss unrelated
agree 168 2 121 94
disagree 14 4 66 44
discuss 54 0 542 182
unrelated 433 5 1797 1309

Score: 1105.5 out of 2177.0 (50.780891134588884%)

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