Two-Phase Open-Domain Question Answering System.

Vysakh Prasannan, Shahin Shemshian, Arinc Gurkan,Lakshmi Babu Saheer,Mahdi Maktabdar Oghaz

SGAI Conf.(2022)

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摘要
Text-based Internet content is increasing at a very rapid rate day by day. As a result, even the best search engines are struggling to retrieve the exact expected results of users' queries. On many occasions, the users' expected result is embedded and scattered in a number of different documents and conventional search engines are unable to pinpoint it. To address this shortcoming, this study proposes a two-phased question answering system that utilizes a K-means clustering algorithm alongside the T5 deep encoder-decoder model to formulate a concise short answer to users' queries. The proposed system has been trained using the Kaggle QA and SQuAD datasets and achieved the maximum F1-score of 0.564 and a minimum loss of 8.56.
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关键词
Natural language processing,NLP,K-Means,Information retrieval,TF-IDF,Encoder-Decoder,Question answering system
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