用意见挖掘衡量公众接受度:以煤炭长期研发投资项目为例

K. Nuortimo
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引用次数: 7

摘要

新的基于Web 2.0的技术已经出现在竞争对手/市场智能领域。本文讨论了影响长期产品开发的因素,即燃煤长期研发/碳捕获与储存(CCS)技术,并提出了一种通过观点挖掘研究该技术的新方法应用。技术市场的部署受到了公众接受度的挑战。使用M-Adaptive软件,通过基于全局机器学习的媒体分析,通过意见挖掘方法研究了煤电和CCS的媒体图像/意见。这是一个基于大数据的学习机器媒体情绪分析,专注于编辑和社交媒体,包括来自付费来源的结构化数据和来自社交媒体的非结构化数据。如果忽视公众的接受,最坏的情况可能是推迟或放弃长期能源生产技术的市场部署,并伴随着技术经济问题。研究结果有三个方面:首先,提出了这类方法论可以应用于这类研究问题。其次,从案例研究中可以看出,CCS也是基于这种类型的方法而未知的。最后,媒体曝光率低可能影响了CCS的技术市场部署。
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Measuring public acceptance with opinion mining: The case of the energy industry with long-term coal R&D investment projects
New Web 2.0-based technologies have emerged in the field of competitor/marketintelligence. This paper discusses the factors influencing long-term product development,namely coal combustion long-term R&D/Carbon Capture and Storage (CCS) technology, andpresents a new method application for studying it via opinion mining. The technology marketdeployment has been challenged by public acceptance. The media images/opinions of coal powerand CCS are studied through the opinion mining approach with a global machine learning basedmedia analysis using M-Adaptive software. This is a big data-based learning machine mediasentiment analysis focusing on both editorial and social media, including both structured datafrom payable sources and unstructured data from social media. If the public acceptance isignored, it can at its worst cause delayed or abandoned market deployment of long-term energyproduction technologies, accompanied by techno-economic issues. The results are threefold:firstly, it is suggested that this type of methodology can be applied to this type of researchproblem. Secondly, from the case study, it is apparent that CCS is unknown also based on thistype of approach. Finally, poor media exposure may have influenced technology marketdeployment in the case of CCS.
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来源期刊
CiteScore
2.00
自引率
11.10%
发文量
0
审稿时长
8 weeks
期刊介绍: The Journal of Intelligence Studies in Business (JISIB) is a double blinded peer reviewed open access journal published by Halmstad University, Sweden. Its mission is to help facilitate and publish original research, conference proceedings and book reviews. The journal includes articles within areas such as Competitive Intelligence, Business Intelligence, Market Intelligence, Scientific and Technical Intelligence, Collective Intelligence and Geo-economics. This means that the journal has a managerial as well as an applied technical side (Information Systems), as these are now well integrated in real life Business Intelligence solutions. By focusing on business applications the journal do not compete directly with journals of Library Sciences or State or Military Intelligence Studies. Topics within the selected study areas should show clear practical implications.
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