ChemistryQA is a complex QA task which cannot be solved by end-to-end neural networks. To answer chemical questions, machines need to understand questions, apply chemistry and math knowledge, and do calculation and reasoning. ChemistryQA contains about 4500 questions covering around 200 chemistry topics, which are collected from https://socratic.org/chemistry.
Data
train.tsv
dev.tsv
test.tsv
Please use evaluate.py to evaluate the result as following.
python evaluate.py {answer_predict.tsv} {answer_index} {predict_index}
where answer_predict.tsv should contain both correct answer and predicted answer by your method, and answer_index and predict_index represent the columne number of correct answer and predicted answer, respectively.
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