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negative weight for "right" feature #7

@garfieldnate

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@garfieldnate

@sueyhan previously opened a ticket for this, but then closed it without getting a response.

These are the model weights I get for training without lexical features (python experiment.py -l settles.acl16.learning_traces.13m.csv.gz):

wrong -0.2245
right -0.0125
bias 7.5365

I do not see how it can be correct that the right feature has a negative weight. This will cause the half life to get shorter as a user gets more correct answers, and therefore the model will predict a lower and lower probability of the user getting correct answers.

How can this be correct?

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