如何识别有影响力的内容:预测在线金融社区的转发量

IF 2.4 3区 管理学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Aslib Journal of Information Management Pub Date : 2023-04-13 DOI:10.1108/ajim-05-2022-0254
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引用次数: 0

摘要

目的随着Web 2.0的快速发展,散户投资者很容易受到社交媒体信息传播的影响。本研究的目的是通过机器学习技术来识别可能影响用户转发行为的因素,即在线金融社区的信息传播。设计/方法/方法本文从中国在线金融社区(学求网)中抓取数据,从中提取作者相关、内容相关、情境相关、股票相关和股市相关的特征。通过对5个具有不同性能指标的分类器进行评价,确定了基于这些特征的最佳信息传播预测模型,并对不同特征组的可预测性进行了测试。结果采用不同的性能指标对5种常用分类器进行了评价,结果表明随机森林分类器是最佳的转发预测模型。此外,作者相关特征、内容相关特征和市场相关特征的可预测性相对优于其他两个特征组。本文最后认识到作者的追随者和股票指数的涨跌等几个特别重要的特征。独创性/价值本研究有助于深入研究金融领域的信息传播问题。本研究结果对政府监管机构监管金融市场舆论具有重要的现实意义。
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How to identify influential content: Predicting retweets in online financial community
PurposeRetail investors are prone to be affected by information dissemination in social media with the rapid development of Web 2.0. The purpose of this study is to recognize the factors that may impact users' retweet behavior, namely information dissemination in the online financial community, through machine learning techniques.Design/methodology/approachThis paper crawled data from the Chinese online financial community (Xueqiu.com) and extracted author-related, content-related, situation-related, stock-related and stock market-related features from the dataset. The best information dissemination prediction model based on these features was determined by evaluating five classifiers with various performance metrics, and the predictability of different feature groups was tested.FindingsFive prevalent classifiers were evaluated with various performance metrics and the random forest classifier was proven to be the best retweet prediction model in the authors’ experiments. Moreover, the predictability of author-related, content-related and market-related features was illustrated to be relatively better than that of the other two feature groups. Several particularly important features, such as the author's followers and the rise and fall of the stock index, were recognized in this paper at last.Originality/valueThis study contributes to in-depth research on information dissemination in the financial domain. The findings of this study have important practical implications for government regulators to supervise public opinion in the financial market.
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来源期刊
Aslib Journal of Information Management
Aslib Journal of Information Management COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
5.30
自引率
19.20%
发文量
79
期刊介绍: Aslib Journal of Information Management covers a broad range of issues in the field, including economic, behavioural, social, ethical, technological, international, business-related, political and management-orientated factors. Contributors are encouraged to spell out the practical implications of their work. Aslib Journal of Information Management Areas of interest include topics such as social media, data protection, search engines, information retrieval, digital libraries, information behaviour, intellectual property and copyright, information industry, digital repositories and information policy and governance.
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