人生苦短,学而不厌

Marcelo T. Lafleur
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引用次数: 5

摘要

在每年产生的许多决议、演讲、报告和其他文件之间,联合国充斥着文本。为这个语料库创建一个连贯和有用的图像是一个持续的挑战。人们尤其关心衡量联合国系统的工作如何与可持续发展目标(sdg)保持一致。我们需要一种可扩展的、客观的、一致的方法来衡量任何给定出版物与17个可持续发展目标中的每一个目标的相似程度。本文解释了使用机器学习算法构建这样一个系统的概念验证过程。通过创建17个可持续发展目标的模型,可以衡量个别出版物的内容与每个目标的相似程度-它们的可持续发展目标得分。本文还通过为有限的经社部出版物计算可持续发展目标分数并提供一些分析,展示了该系统如何在实践中使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Art is Long, Life is Short
Between the many resolutions, speeches, reports and other documents that are produced each year, the United Nations is awash in text. It is an ongoing challenge to create a coherent and useful picture of this corpus. In particular, there is an interest in measuring how the work of the United Nations system aligns with the Sustainable Development Goals (SDGs). There is a need for a scalable, objective, and consistent way to measure how similar any given publication is to each of the 17 SDGs. This paper explains a proof-of-concept process for building such a system using machine learning algorithms. By creating a model of the 17 SDGs it is possible to measure how similar the contents of individual publications are to each of the goals — their SDG Score. This paper also shows how this system can be used in practice by computing the SDG Scores for a limited selection of DESA publications and providing some analytics.
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