Michaella Richards’s scientific contributions

What is this page?


This page lists works of an author who doesn't have a ResearchGate profile or hasn't added the works to their profile yet. It is automatically generated from public (personal) data to further our legitimate goal of comprehensive and accurate scientific recordkeeping. If you are this author and want this page removed, please let us know.

Publications (3)


Tuned algorithms performance on testing data (GD Wave 1)
Tuned algorithms performance on testing data (GD Wave 2)
Corrigendum to: Deep learning(s) in gaming disorder through the user-avatar bond: A longitudinal study using machine learning
  • Article
  • Full-text available

November 2024

·

25 Reads

Journal of Behavioral Addictions

·

·

Maria Prokofieva

·

[...]

·

Download


Deep learning(s) in gaming disorder through the user-avatar bond: A longitudinal study using machine learning

November 2023

·

185 Reads

·

8 Citations

Journal of Behavioral Addictions

Background and aims Gaming disorder [GD] risk has been associated with the way gamers bond with their visual representation (i.e., avatar) in the game-world. More specifically, a gamer's relationship with their avatar has been shown to provide reliable mental health information about the user in their offline life, such as their current and prospective GD risk, if appropriately decoded. Methods To contribute to the paucity of knowledge in this area, 565 gamers ( M age = 29.3 years; SD =10.6) were assessed twice, six months apart, using the User-Avatar-Bond Scale (UABS) and the Gaming Disorder Test. A series of tuned and untuned artificial intelligence [AI] classifiers analysed concurrently and prospectively their responses. Results Findings showed that AI models learned to accurately and automatically identify GD risk cases, based on gamers' reported UABS score, age, and length of gaming involvement, both concurrently and longitudinally (i.e., six months later). Random forests outperformed all other AIs, while avatar immersion was shown to be the strongest training predictor. Conclusion Study outcomes demonstrated that the user-avatar bond can be translated into accurate, concurrent and future GD risk predictions using trained AI classifiers. Assessment, prevention, and practice implications are discussed in the light of these findings.

Citations (1)


... By employing advanced analytical methods and a longitudinal design, the present study contributes critical insights into how the UAB can serve as a diagnostic indicator of gaming disorder risk. These insights highlight the potential of the UAB to act as a digital phenotype, paving the way for early detection and intervention strategies in disordered gaming (Brown et al., 2024;Stavropoulos et al., 2023). ...

Reference:

Exploring user-avatar bond profiles: Longitudinal impacts on internet gaming disorder
Deep learning(s) in gaming disorder through the user-avatar bond: A longitudinal study using machine learning

Journal of Behavioral Addictions