question answering system
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Author(s):  
Dipti Pawade ◽  
Avani Sakhapara ◽  
Swati Pandey ◽  
Harsh Vasa ◽  
Kajal Shethia ◽  
...  

2021 ◽  
Author(s):  
Xiuhao Zhao ◽  
Zhao Li ◽  
Shiwei Wu ◽  
Yiming Zhan ◽  
Chao Zhang

2021 ◽  
Author(s):  
Jing Sheng Lei ◽  
Shi Chao Ye ◽  
Sheng Ying Yang ◽  
Wei Song ◽  
Guan Mian Liang

The main purpose of the intelligent question answering system based on the knowledge graph is to accurately match the natural language question and the triple information in the knowledge graph. Among them, the entity recognition part is one of the key points. The wrong entity recognition result will cause the error to be done propagated, resulting in the ultimate failure to get the correct answer. In recent years, the lexical enhancement structure of word nodes combined with word nodes has been proved to be an effective method for Chinese named entity recognition. In order to solve the above problems, this paper proposes a vocabulary-enhanced entity recognition algorithm (KGFLAT) based on FLAT for intelligent question answering system. This method uses a new dictionary that combines the entity information of the knowledge graph, and only uses layer normalization for the removal of residual connection for the shallower network model. The system uses data provided by the NLPCC 2018 Task7 KBQA task for evaluation. The experimental results show that this method can effectively solve the entity recognition task in the intelligent question answering system and achieve the improvement of the FLAT model, and the average F1 value is 94.72


Sadhana ◽  
2021 ◽  
Vol 47 (1) ◽  
Author(s):  
Arijit Das ◽  
Jaydeep Mandal ◽  
Zargham Danial ◽  
Alok Ranjan Pal ◽  
Diganta Saha

2021 ◽  
Author(s):  
William Ferguson ◽  
Dhruv Batra ◽  
Raymond Mooney ◽  
Devi Parikh ◽  
Antonio Torralba ◽  
...  

2021 ◽  
Author(s):  
Stefano Spindola ◽  
Marcos Menon José ◽  
André Seidel Oliveira ◽  
Flávio Nakasato Cação ◽  
Fábio Gagliardi Cozman

The Brazilian Exclusive Economic Zone, or the "Blue Amazon", with its extensive maritime area, is the primary means of transport for the country's foreign trade and is important due to its oil reserves, gas and other mineral resources, in addition to the significant influence on the Brazilian climate. We have manually built a question answering (QA) dataset based on crawled articles and have applied an off-the-shelf QA system based on a fine-tuned BERTimbau Model, achieving an F1-score of 47.0. More importantly, we explored how the proper visualization of attention weights can support helpful interpretations of the system's answers, which is critical in real environments.


2021 ◽  
Author(s):  
García-Robledo Gabriela A ◽  
Reyes-Ortiz José A ◽  
González-Beltrán Beatriz A ◽  
Bravo Maricela

The development of question answering (QA) systems involves methods and techniques from the areas of Information Extraction (EI), Natural Language Processing (NLP), and sometimes speech recognition. A user interface that involves all these tasks requires deep development to improve the interaction between a user and a device. This paper describes a Spanish QA system for an academic domain through a multi-platform user interface. The system uses a voice query to be transformed into text. The semi-structured query is converted into SQWRL language to extract a system of ontologies from an academic domain using patterns. The answer of the ontologies is placed in templates classified according to the type of question. Finally, the answer is transformed into a voice. A method for experimentation is presented focusing on the questions asked in voice and their respective answers by experts from the academic domain in a set of 258 questions, obtaining a 92% accuracy.


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