Sentiment Analysis on Gender Pay Gap from Twitter (Renamed ‘X’): Using Artificial Neural Network Approach

Akakpo, Alfred and Ambilichu, Charles Anyeng (2025) Sentiment Analysis on Gender Pay Gap from Twitter (Renamed ‘X’): Using Artificial Neural Network Approach. The International Journal of Human Resource Management. ISSN 0958-5192 (In Press)

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Abstract

This study introduces a targeted approach to sentiment analysis, focusing on people's views and emotions on the persistent problem of the gender pay gap. Employing an Artificial Neural Network as a supervised machine learning technique, we examine the unique linguistic characteristics of Twitter (Renamed ‘X’), discourse and the sentiments expressed on the gender pay gap at the British Broadcasting Corporation (BBC).
We show that disclosure of the gender pay gap triggers discussion on other gender-related issues, including gender stereotypes, gender inequality, gender imbalance, gender parity and gender diversity. We suggest that the salience attributed to these other gender-related issues by the public could eclipse the significance of reducing the gender pay differential. We also show that gender stereotype was found to contribute significantly to public sentiment on the gender pay gap. Furthermore, we argue that it is important to consider a broad range of gender-related concerns when crafting policies aimed at reducing the gender pay gap, to ensure resolution of one does not inadvertently worsen other related issues of importance to stakeholders. Additionally, we contend that an integrative approach between stakeholder theory and institutional theory should be adopted when investigating/discussing the effects of the relationship between stakeholders and organisations.

Item Type: Article
Dates:
Date
Event
14 December 2025
Accepted
Uncontrolled Keywords: Gender Pay Gap, Sentiment Analysis, Artificial Neural Network, BBC, Twitter
Subjects: CAH15 - social sciences > CAH15-02 - economics > CAH15-02-01 - economics
Divisions: Business School > Accountancy, Finance and Economics
Business School > Accountancy, Finance and Economics > Centre for Accountancy Finance and Economics
Depositing User: Gemma Tonks
Date Deposited: 18 Dec 2025 10:56
Last Modified: 18 Dec 2025 10:56
URI: https://www.open-access.bcu.ac.uk/id/eprint/16776

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