Exploring Machine Learning Approaches for Time Series: A Bibliometric Analysis

Lorena Saliaj, E. Nissi
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引用次数: 0

Abstract

: Our paper analyzes 20 years of Machine Learning for Time Series forecasting research published in journals, books, papers. We analyzed the bibliographic collections and bibliographic services present on Scopus, the largest database of abstracts, citations of literature and quality web sources, which includes scientific journals, books and conferences, extrapolating the quantitative relationships between documents and their elements. Through this analysis, we analyzed the main information on the structure of the data, such as total citation by country, the documents with the highest number of citations, the most productive authors, the most important keywords. We also obtained graphs of the most productive authors, the average total citations per year, the annual scientific production and the average number of citations of the article per year, as well as an evolution of the topics and a thematic map
探索时间序列的机器学习方法:文献计量分析
我们的论文分析了20年来发表在期刊、书籍、论文上的机器学习时间序列预测研究。我们分析了Scopus上的书目集合和书目服务,Scopus是世界上最大的文摘、文献引用和优质网络资源数据库,其中包括科学期刊、书籍和会议,并推断了文献及其元素之间的定量关系。通过这一分析,我们分析了数据结构的主要信息,如按国家划分的总被引次数、被引次数最多的文献、最高产的作者、最重要的关键词等。我们还获得了最高产作者的图表、年平均总被引次数、年科学产出和年平均被引次数,以及主题的演变和专题地图
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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