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GenNet : Reading Comprehension with Multiple Choice Questions using Generation and Selection model (2003.04360v2)

Published 3 Mar 2020 in cs.CL and cs.AI

Abstract: Multiple-choice machine reading comprehension is difficult task as its required machines to select the correct option from a set of candidate or possible options using the given passage and question.Reading Comprehension with Multiple Choice Questions task,required a human (or machine) to read a given passage, question pair and select the best one option from n given options. There are two different ways to select the correct answer from the given passage. Either by selecting the best match answer to by eliminating the worst match answer. Here we proposed GenNet model, a neural network-based model. In this model first we will generate the answer of the question from the passage and then will matched the generated answer with given answer, the best matched option will be our answer. For answer generation we used S-net (Tan et al., 2017) model trained on SQuAD and to evaluate our model we used Large-scale RACE (ReAding Comprehension Dataset From Examinations) (Lai et al.,2017).

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Authors (2)
  1. Vaishali Ingale (3 papers)
  2. Pushpender Singh (1 paper)
Citations (3)

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