Abstract
Deep learning transformers have drastically improved systems that automatically answer questions in natural language. However, different questions demand different answering techniques; here we propose, build and validate an architecture that integrates different modules to answer two distinct kinds of queries. Our architecture takes a free-form natural language text and classifies it to send it either to a Neural Question Answering Reasoner or a Natural Language parser to SQL. We implemented a complete system for the Portuguese language, using some of the main tools available for the language and translating training and testing datasets. Experiments show that our system selects the appropriate answering method with high accuracy (over 99%), thus validating a modular question answering strategy.
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Notes
- 1.
- 2.
Relation-Aware Transformer SQL Generation-Augmented Pretraining.
- 3.
The instructions to download can be found in the project github: https://github.com/ibm-aur-nlp/domain-specific-QA.
- 4.
Spider dataset is a popular resource that contains 200 databases with multiples tables under 138 domains: https://yale-lily.github.io/spider.
- 5.
hospital_1 100 questions (test), protein_institute 20 questions (train), medicine_enzyme_interaction 44 questions (train), scientist_1 48 questions (train).
- 6.
Text-to-SQL Generation for Question Answering on Electronic Medical Records Github: https://github.com/wangpinggl/TREQS.
- 7.
We used well-known implementations of naive Bayes [22] and transformers. In particular, the tranformers HuggingFace library, at https://huggingface.co/transformers/, and also simpletransformers at https://simpletransformers.ai/docs/installation/.
- 8.
Trained using 5 epochs, learning rate of 5e-5, batch size of 32 and maximum sequence length of 512.
- 9.
Trained using 25 epochs, learning rate of 2e-5, batch size of 32 and maximum sequence length of 512.
- 10.
This is the standard F1-score for classification, not the Macro Average F1-Score.
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Acknowledgment
This work was partly supported by Itaú Unibanco S.A. through the Programa de Bolsas Itaú (PBI) of the Centro de Ciência de Dados da Universidade de São Paulo (C\(^2\)D-USP); by the Center for Artificial Intelligence (C4AI) through support from the São Paulo Research Foundation (FAPESP grant #2019/07665-4) and from the IBM Corporation; by CNPq grants no. 312180/2018-7 and 304012/2019-0, and CAPES Finance Code 001.
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José, M.M., José, M.A., Mauá, D.D., Cozman, F.G. (2022). Integrating Question Answering and Text-to-SQL in Portuguese. In: Pinheiro, V., et al. Computational Processing of the Portuguese Language. PROPOR 2022. Lecture Notes in Computer Science(), vol 13208. Springer, Cham. https://doi.org/10.1007/978-3-030-98305-5_26
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