COPER: a Query-Adaptable Semantics-based Search Engine for Persian COVID-19 Articles

Reza Khanmohammadi, Mitra Sadat Mirshafiee Khoozani, M. Allahyari
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引用次数: 1

Abstract

With the surge of pretrained language models, a new pathway has been opened to incorporate Persian text contextual information. Meanwhile, as many other countries, including Iran, are fighting against COVID-19, a plethora of COVID-19 related articles has been published in Iranian Healthcare magazines to better inform the public of the situation. However, finding answers in this sheer volume of information is an extremely difficult task. In this paper, we collected a large dataset of these articles, leveraged different BERT variations as well as other keyword models such as BM25 and TF-IDF, and created a search engine to sift through these documents and rank them, given a user’s query. Our final search engine consists of a ranker and a re-ranker, which adapts itself to the query. We fine-tune our models using Semantic Textual Similarity and evaluate them with standard task metrics. Our final method outperforms the rest by a considerable margin.
COPER:基于查询适应性语义的波斯语COVID-19文章搜索引擎
随着预训练语言模型的激增,一条整合波斯语文本上下文信息的新途径已经打开。与此同时,由于包括伊朗在内的许多其他国家正在与COVID-19作斗争,伊朗医疗保健杂志发表了大量与COVID-19相关的文章,以更好地向公众通报情况。然而,在如此庞大的信息量中找到答案是一项极其困难的任务。在本文中,我们收集了这些文章的大型数据集,利用不同的BERT变体以及其他关键字模型(如BM25和TF-IDF),并创建了一个搜索引擎来筛选这些文档,并根据用户的查询对它们进行排名。我们最终的搜索引擎由一个排名器和一个重新排名器组成,重新排名器根据查询进行调整。我们使用语义文本相似度对模型进行微调,并使用标准任务度量对其进行评估。我们的最后一种方法比其他方法要好得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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