Award Date
8-1-2024
Degree Type
Dissertation
Degree Name
Doctor of Philosophy (PhD)
Department
Computer Science
First Committee Member
Kazem Taghva
Second Committee Member
Laxmi Gewali
Third Committee Member
Mingon Kang
Fourth Committee Member
Fatma Nasoz
Fifth Committee Member
Brett Abarbanel
Number of Pages
98
Abstract
Understanding player behavior for responsible gambling research is a difficult task due to the lack of data on players’ activities. Past studies in this area are largely limited to publicly available behavioral data or aggregated players data. Problem gambling in gamblers is typically identified only after they have already been addicted or have already been engaging in problematic gambling behavior. Furthermore, “risky” gambling behavior has historically been difficult to define due to the varying patterns of gambling activity that could potentially be attributed to it.In this dissertation we illustrate the methodology and algorithms used to engineer financial data for further analysis. We demonstrate the use of time-series analysis and anomaly detection using statistical and unsupervised machine learning methods to detect anomalous individual player behavior. This is accomplished using a custom metric (delta index) for statistical analysis and the spectral residual algorithm for machine learning based anomaly detection. We also demonstrate the use of longitudinal clustering using Gaussian Mixture Models to identify changes in player behavior at 30 day time intervals. This method groups players based on changes in behavior over time rather than their existing behavior in any given time slice. Additionally, we demonstrate the use of this model to track individual player behavior over time. The behavior analysis methods illustrated in this dissertation can be generalized for accepting additional behavioral features for further research in this area. Additionally, these methods can be further adapted for use in other behavioral studies.
Controlled Subject
Compulsive gamblers; Gambling--Psychological aspects; Pattern perception--Statistical methods
Disciplines
Computer Sciences
File Format
File Size
2400KB
Degree Grantor
University of Nevada, Las Vegas
Language
English
Repository Citation
Puranik, Piyush Aniruddha, "Mining Gambling Data for Modeling Gambling Behavior Patterns" (2024). UNLV Theses, Dissertations, Professional Papers, and Capstones. 5144.
https://digitalscholarship.unlv.edu/thesesdissertations/5144
Rights
IN COPYRIGHT. For more information about this rights statement, please visit http://rightsstatements.org/vocab/InC/1.0/