使用开放数据的机器学习预测的最新趋势:系统回顾

Q4 Computer Science
N. Ismail, U. K. Yusof
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引用次数: 0

摘要

在这项工作中,研究了基于开放数据(OD)的机器学习(ML)预测决定因素,这是通过检查十年来的当前研究趋势来完成的。当前,OD被普遍认为是用户提高决策能力的最关键趋势,尤其是社交网站(sns)和政府开放数据(OGD)的指数级扩张。本研究的目的是通过对趋势结果进行系统的文献回顾(SLR)来检查是否有增加使用OD的ML预测技术。对2011年至2020年间发表在主要在线科学数据库(包括ScienceDirect、Scopus、IEEE explore、ACM和b施普林格)上的论文进行了识别和分析。经过各种筛选和施普林格,鉴定和分析。经过各种筛选过程,根据SLR基于精确的纳入和排除标准,共找到302篇文章。然而,其中只有81人被列入名单。研究结果是根据研究问题(RQs)提出和绘制的。总之,这项研究可以为组织、从业者和研究人员提供有关使用OD设置实现ML预测的当前趋势的信息,这些信息是基于设计的rq、最新的增长以及基于研究结果的未来研究的必要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RECENT TRENDS OF MACHINE LEARNING PREDICTIONS USING OPEN DATA: A SYSTEMATIC REVIEW
Machine learning (ML) prediction determinants based on open data (OD) are investigated in this work, which is accomplished by examining current research trends over ten years. Currently, OD is commonly regarded as the most crucial trend for users to improve their ability to make decisions, particularly to the exponential expansion of social networking sites (SNSs) and open government data (OGD).The purpose of this study was to examine if there was an increase in the usage of OD in ML prediction techniques by conducting a systematic literature review (SLR) of the results of the trends. The papers published in major online scientific databases between 2011 and 2020, including ScienceDirect, Scopus, IEEE Xplore, ACM, and Springer, were identified and analysed. After various selection and Springer, were identified and analysed. After various selection processes, according to SLR based on precise inclusion and exclusion criteria, a total of 302 articles were located. However, only 81 of them were included. The findings were presented and plotted based on the research questions (RQs). In conclusion, this research could be beneficial to organisations, practitioners, and researchers by providing information on current trends in the implementation of ML prediction using OD setting by mapping studies based on the RQs designed, the most recent growth, and the necessity for future research based on the findings.
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来源期刊
CiteScore
0.70
自引率
0.00%
发文量
95
期刊介绍: IJICT is a refereed journal in the field of information and communication technology (ICT), providing an international forum for professionals, engineers and researchers. IJICT reports the new paradigms in this emerging field of technology and envisions the future developments in the frontier areas. The journal addresses issues for the vertical and horizontal applications in this area. Topics covered include: -Information theory/coding- Information/IT/network security, standards, applications- Internet/web based systems/products- Data mining/warehousing- Network planning, design, administration- Sensor/ad hoc networks- Human-computer intelligent interaction, AI- Computational linguistics, digital speech- Distributed/cooperative media- Interactive communication media/content- Social interaction, mobile communications- Signal representation/processing, image processing- Virtual reality, cyber law, e-governance- Microprocessor interfacing, hardware design- Control of industrial processes, ERP/CRM/SCM
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