房地产相关趋势的周期性:德国房地产新闻的主题建模和情绪分析

IF 1.3 Q3 BUSINESS, FINANCE Journal of European Real Estate Research Pub Date : 2021-07-01 DOI:10.1108/JERER-12-2020-0059
Franziska Ploessl, Tobias Just, Lino Wehrheim
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引用次数: 3

摘要

本文的目的是识别和分析德国房地产相关趋势的新闻报道和情绪。趋势被认为是稳定和长期的。如果新闻报道和趋势情绪是周期性的基础,这可能会影响投资者的行为。例如,在可持续性问题的报道增加的情况下,投资者可能倾向于更多地投资于可持续建筑,假设这对他们的客户越来越重要。因此,当一个趋势话题走红时,投资者可以期待更高的回报。在主题建模的帮助下,结合部分通过词嵌入生成的种子词,分析了德国一家主要房地产新闻提供商在1999年至2019年期间发表的近17万篇报纸文章,并将其分配给房地产相关趋势。通过应用基于词典的方法,然后根据特定趋势的新闻报道的基调是否会发生变化来分析该数据集。关于城市化和全球化的文章占了报道的最大份额。然而,随着时间的推移,无论是在新闻报道方面还是在市场情绪方面,这些股票都可能发生变化。特别是,可持续性专题在整个审查期间显示出明显增加的周期性趋势。总体而言,在分析的文章中,数字化趋势具有高度积极的内涵,而监管则表现出最负面的情绪。原创性/价值据作者所知,这是探索德国房地产报纸文章中关于单词表示和种子主题建模方法的第一个应用程序。将主题建模集成到房地产分析中,提供了一种以标准化和可复制的方式提取信息的方法。该方法可以应用于其他几个领域,如分析市场报告、公司声明或社交媒体对房地产主题的评论。最后,本文也是第一个采用文本分析的方法来衡量房地产相关趋势的周期性的研究。
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Cyclicity of real estate-related trends: topic modelling and sentiment analysis on German real estate news
PurposeThe purpose of this paper is to identify and analyse the news coverage and sentiment of real estate-related trends in Germany. Trends are considered as being stable and long-term. If the news coverage and sentiment of trends underlie cyclicity, this could impact investors’ behaviour. For instance, in the case of increased reporting on sustainability issues, investors may be inclined to invest more in sustainable buildings, assuming that this is of growing importance to their clients. Hence, investors could expect higher returns when a trend topic goes viral.Design/methodology/approachWith the help of topic modelling, incorporating seed words partially generated via word embeddings, almost 170,000 newspaper articles published between 1999 and 2019 by a major German real estate news provider are analysed and assigned to real estate-related trends. Through applying a dictionary-based approach, this dataset is then analysed based on whether the tone of the news coverage of a specific trend is subject to change.FindingsThe articles concerning urbanisation and globalisation account for the largest shares of reporting. However, the shares are subject to change over time, both in terms of news coverage and sentiment. In particular, the topic of sustainability illustrates a clearly increasing trend with cyclical movements throughout the examined period. Overall, the digitalisation trend has a highly positive connotation within the analysed articles, while regulation displays the most negative sentiment.Originality/valueTo the best of the authors’ knowledge, this is the first application to explore German real estate newspaper articles regarding the methodologies of word representation and seeded topic modelling. The integration of topic modelling into real estate analysis provides a means through which to extract information in a standardised and replicable way. The methodology can be applied to several further fields like analysing market reports, company statements or social media comments on real estate topics. Finally, this is also the first study to measure the cyclicity of real estate-related trends by means of textual analysis.
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来源期刊
CiteScore
3.10
自引率
7.70%
发文量
18
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