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Q and A in Hindi and English from Dharampalji's book

Q and A in Hindi and English from Dharampalji's book

Questions and answers in Hindi and English from Dharampalji's books

About Dataset

Automatic question generation (QG) is a challenging problem in natural language understanding. QG systems are typically built assuming access to a large number of training instances where each instance is a question and its corresponding answer. For a new language, such training instances are hard to obtain making the QG problem even more challenging. Using this as our motivation, we study the reuse of an available large QG dataset in a secondary language (e.g. English) to learn a QG model for a primary language (e.g. Hindi) of interest. For the primary language, we assume access to a large amount of monolingual text but only a small QG dataset. We propose a cross-lingual QG model which uses the following training regime: (i) Unsupervised pretraining of language models in both primary and secondary languages and (ii) joint supervised training for QG in both languages. We demonstrate the efficacy of our proposed approach using two different primary languages, Hindi and Chinese. Our proposed framework clearly outperforms a number of baseline models, including a fully-supervised transformer-based model trained on the QG datasets in the primary language. We also create and release a new question answering dataset for Hindi consisting of 6555 sentences.

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Tags Tags

  • question-answering

License Control License Control

CC0 1.0 Public Domain

S3VQA_ Select, Substitute, Search_ A New Benchmark for Knowledge-Augmented Visual Question Answering ( 5 files, 1 directories )


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