Tools to support the grading of short answer questions using machine learning
Project description
interaction-grader
Python package to help grade test questions (interactions) using trained machine learning models.
The Answer class can be used to check if an answer is basically identical to the desired answer except for misspellings.
Initial version hard codes a model already trained to recognize actor names from a list of 322.
import mmapi
correct_answer = 'Joaquim Phoenix'
answer = 'Joakim Pheonix'
prediction = predict_actor(answer, correct_answer)
if prediction == correct_answer
print('Correct Answer')
Package Dependencies:
- fuzzywuzzy
- python-Levenshtein
- numpy
- pandas
- sklearn
- xgboost
Project details
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mlmmapi-0.0.2.tar.gz
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