Is Pink the New White?: A Textual and Economic Analysis on Gender in White-Collar Crimes

Thesis title: Is Pink the New White?: A Textual and Economic Analysis on Gender in White-Collar Crimes
Author: Guzmán Illescas, David Arturo
Thesis type: Diploma thesis
Supervisor: Malá, Ivana
Opponents: Čabla, Adam
Thesis language: English
Abstract:
This thesis examined the intricate relationship between economic indicators and their impact on decision-making processes regarding white-collar crime. Gender segregation was crucial to understand how men and women respond differently to these indicators, and cases involving both genders as accomplices were also analyzed. The study used cases litigations published by the SEC as a proxy for white-collar crime data, employing web crawling and data scraping techniques for data collection. The parsed data underwent filtering and cleaning procedures to ensure focus on relevant litigations, the resulting litigations were later classified by the nature of crime, and the offenders were assigned a gender identity. The initial analysis revealed a gender gap in white-collar criminals, with men comprising the majority of offenders, and primarily engaging solo. As for crime types, fraud and securities fraud represented the most frequent type. Subsequent analysis explored the relationships between economic indicators and litigation numbers, including linear, lagged and Granger-causal analyses. The findings pointed to diverse associations: a complex response of men and women working together to unemployment, men’s engaging in white-collar crime as response to GDP growth, a lagged relationship between inflation and complicit men and women, men committing more white-collar crimes when income inequality is perceived, and a weak positive relationship by women and white-collar crime as a result of diminishing gender inequality. While significant relationships were detected, some may have occurred by chance, and others only emerged after time delays.
Keywords: White-collar Crime; Longitudinal Analysis; Web Crawling; Data Scrapping
Thesis title: Is Pink the New White?: A Textual and Economic Analysis on Gender in White-Collar Crimes
Author: Guzmán Illescas, David Arturo
Thesis type: Diplomová práce
Supervisor: Malá, Ivana
Opponents: Čabla, Adam
Thesis language: English
Abstract:
This thesis examined the intricate relationship between economic indicators and their impact on decision-making processes regarding white-collar crime. Gender segregation was crucial to understand how men and women respond differently to these indicators, and cases involving both genders as accomplices were also analyzed. The study used cases litigations published by the SEC as a proxy for white-collar crime data, employing web crawling and data scraping techniques for data collection. The parsed data underwent filtering and cleaning procedures to ensure focus on relevant litigations, the resulting litigations were later classified by the nature of crime, and the offenders were assigned a gender identity. The initial analysis revealed a gender gap in white-collar criminals, with men comprising the majority of offenders, and primarily engaging solo. As for crime types, fraud and securities fraud represented the most frequent type. Subsequent analysis explored the relationships between economic indicators and litigation numbers, including linear, lagged and Granger-causal analyses. The findings pointed to diverse associations: a complex response of men and women working together to unemployment, men’s engaging in white-collar crime as response to GDP growth, a lagged relationship between inflation and complicit men and women, men committing more white-collar crimes when income inequality is perceived, and a weak positive relationship by women and white-collar crime as a result of diminishing gender inequality. While significant relationships were detected, some may have occurred by chance, and others only emerged after time delays.
Keywords: Data Scrapping; White-collar Crime; Longitudinal Analysis; Web Crawling

Information about study

Study programme: Economic Data Analysis/Data Analysis and Modeling
Type of study programme: Magisterský studijní program
Assigned degree: Ing.
Institutions assigning academic degree: Vysoká škola ekonomická v Praze
Faculty: Faculty of Informatics and Statistics
Department: Department of Statistics and Probability

Information on submission and defense

Date of assignment: 5. 11. 2022
Date of submission: 29. 6. 2023
Date of defense: 23. 8. 2023
Identifier in the InSIS system: https://insis.vse.cz/zp/82660/podrobnosti

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