基于预训练语言模型和UMAP的越南科研项目可视化

Hien T. Nguyen, Duy V. Huynh, H. Duong, N. Thoai
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引用次数: 0

摘要

本文提出了一种基于预训练语言模型和统一流形逼近与投影(UMAP)的文档向量表示和降维方法。该方法旨在将越南的科研项目可视化,以帮助搜索和探索被赋予新提案或研究主题的类似项目。首先,使用预训练的语言模型对文档进行矢量化。然后,使用UMAP将得到的文档向量投影到二维空间上。给定一个查询,它也作为文档经过两个步骤。在二维空间中,每个文档用一个圆表示,距离最近的圆表示对应的文档越相似。我们认为一个项目的摘要或标题是它的代表,并将它们称为文件。为了比较多语言BERT-base和PhoBERT的表示能力,我们进行了实验,使用softmax、支持向量机和多层感知来训练分类器;并分别使用PCA、t-SNE和UMAP对表示进行可视化。实验结果表明,PhoBERT的表示能力优于多语言BERT-base, UMAP优于PCA和t-SNE。我们还提出了一个可视化工具,允许人工干预相似性搜索。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visualizing Vietnam’s Scientific Research Projects Based on Pre-trained Language Models and UMAP
This paper presents a method for vector representations and dimensionality reduction of documents using pretrained language models and Uniform Manifold Approximation and Projection (UMAP). The method aims at visualizing Vietnam’s scientific research projects in order to help searching for, as well as exploring, similar projects given a new proposal or research topic. First, documents are vectorized using a pretrained language model. Then, the obtained document vectors are projected onto a two-dimensional space using UMAP. Given a query, it is also passed through two steps as a document. In the two-dimensional space, each document is represented as a circle and the nearest circles are, the more similar the corresponding documents are. We consider the abstract or title of a project as its representative and call each as a document. We conduct experiments in order to compare the representation power of multilingual BERT-base and PhoBERT by training classifiers using softmax, support vector machines, and multilayer perception; and visualizing the representations using PCA, t-SNE and UMAP, respectively. The experimental results show the representation power of PhoBERT is better than that of multilingual BERT-base and UMAP is superior to PCA and t-SNE. We also present a visualizing tool allowing human intervention in similarity search.
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