Contextualizing Emerging Trends in Financial News Articles
- URL: http://arxiv.org/abs/2301.11318v1
- Date: Fri, 20 Jan 2023 12:56:52 GMT
- Title: Contextualizing Emerging Trends in Financial News Articles
- Authors: Nhu Khoa Nguyen, Thierry Delahaut, Emanuela Boros, Antoine Doucet and
Ga\"el Lejeune
- Abstract summary: We focus on emerging trends detection in financial news articles about Microsoft, collected before and during the start of the COVID-19 pandemic.
We make the dataset accessible and propose a strong baseline for exploring the dynamics of similarities between pairs of keywords.
We evaluate against a gold standard (Google Trends) and present noteworthy real-world scenarios regarding the influence of the pandemic on Microsoft.
- Score: 2.9483477138814287
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Identifying and exploring emerging trends in the news is becoming more
essential than ever with many changes occurring worldwide due to the global
health crises. However, most of the recent research has focused mainly on
detecting trends in social media, thus, benefiting from social features (e.g.
likes and retweets on Twitter) which helped the task as they can be used to
measure the engagement and diffusion rate of content. Yet, formal text data,
unlike short social media posts, comes with a longer, less restricted writing
format, and thus, more challenging. In this paper, we focus our study on
emerging trends detection in financial news articles about Microsoft, collected
before and during the start of the COVID-19 pandemic (July 2019 to July 2020).
We make the dataset accessible and propose a strong baseline (Contextual
Leap2Trend) for exploring the dynamics of similarities between pairs of
keywords based on topic modelling and term frequency. Finally, we evaluate
against a gold standard (Google Trends) and present noteworthy real-world
scenarios regarding the influence of the pandemic on Microsoft.
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