首页> 外文期刊>International Journal of Entrepreneurship & Small Business >Look inside. Predicting stock prices by analysing an enterprise intranet social network and using word co-occurrence networks
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Look inside. Predicting stock prices by analysing an enterprise intranet social network and using word co-occurrence networks

机译:看看里面。通过分析企业内部网社交网络和使用词共现网络来预测股票价格

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摘要

This study looks into employees' communication, offering novel metrics which can help to predict a company's stock price. We studied the intranet forum of a large Italian company, exploring the interactions and the use of language of about 8,000 employees. We built a network linking words included in the general discourse. In this network, we focused on the position of the node representing the company brand. We found that a lower sentiment, a higher betweenness centrality of the company brand, a denser word co-occurrence network and more equally distributed centrality scores of employees (lower group betweenness centrality) are all significant predictors of higher stock prices. Our findings offers new metrics that can be helpful for scholars, company managers and professional investors and could be integrated into existing forecasting models to improve their accuracy. Lastly, we contribute to the research on word co-occurrence networks by extending their field of application.
机译:这项研究着眼于员工的沟通,提供了新颖的指标,可以帮助预测公司的股价。我们研究了一家意大利大型公司的Intranet论坛,探讨了约8,000名员工的互动和语言使用情况。我们建立了一个将一般话语中包含的单词链接起来的网络。在这个网络中,我们专注于代表公司品牌的节点的位置。我们发现,较低的情绪,较高的公司品牌中间度,更密集的单词共现网络以及员工的中心度得分分布更均匀(较低的团队中间度)都是股票价格上涨的重要指标。我们的发现提供了新的指标,这些指标可能对学者,公司经理和专业投资者有用,并且可以集成到现有的预测模型中以提高其准确性。最后,通过扩展词共现网络的应用领域,我们为词共现网络的研究做出了贡献。

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