Modeling Early Gambling Behavior Using Indicators from Online Lottery Gambling Tracking Data: Longitudinal Analysis

被引:26
作者
Challet-Bouju, Gaelle [1 ,2 ]
Hardouin, Jean-Benoit [2 ,3 ]
Thiabaud, Elsa [1 ]
Saillard, Anais [1 ]
Donnio, Yann [1 ]
Grall-Bronnec, Marie [1 ,2 ]
Perrot, Bastien [2 ,3 ]
机构
[1] Ctr Hosp Univ Nantes, Addictol & Psychiat Dept, Nantes, France
[2] Univ Nantes, Univ Tours, INSERM, SPHERE,UMR1246, Nantes, France
[3] Ctr Hosp Univ Nantes, Dept Clin Res & Innovat, Biostat & Methodol Unit, Nantes, France
关键词
gambling; internet; trajectory; latent class analysis; growth mixture modeling; gambling tracking data; early detection; GAMBLERS; RISK; MARKERS; INVOLVEMENT; CASINO;
D O I
10.2196/17675
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Background: Individuals who gamble online may be at risk of gambling excessively, but internet gambling also provides a unique opportunity to monitor gambling behavior in real environments which may allow intervention for those who encounter difficulties. Objective: The objective of this study was to model the early gambling trajectories of individuals who play online lottery. Methods: Anonymized gambling - related records of the initial 6 months of 1152 clients of the French national lottery who created their internet gambling accounts between September 2015 and February 2016 were analyzed using a two-step approach that combined growth mixture modeling and latent class analysis. The analysis was based upon behavior indicators of gambling activity (money wagered and number of gambling days) and indicators of gambling problems (breadth of involvement and chasing). Profiles were described based upon the probabilities of following the trajectories that were identified for the four indicators, and upon several covariates (age, gender, deposits, type of play, net losses, voluntary self-exclusion, and Playscan classification-a responsible gambling tool that provides each player with a risk assessment: green for low risk, orange for medium risk and red for high risk). Net losses, voluntary self-exclusion, and Playscan classification were used as external verification of problem gambling. Results: We identified 5 distinct profiles of online lottery gambling. Classes 1 (56.8%), 2 (14.8%) and 3 (13.9%) were characterized by low to medium gambling activity and low values for markers of problem gambling. They displayed low net losses, did not use the voluntary self-exclusion measure, and were classified predominantly with green Playscan tags (range 90%-98%). Class 4 (9.7%) was characterized by medium to high gambling activity, played a higher breadth of game types (range 1-6), and had zero to few chasing episodes. They had high net losses but were classified with green (66%) or orange (25%) Playscan tags and did not use the voluntary self-exclusion measure. Class 5 (4.8%) was characterized by medium to very high gambling activity, played a higher breadth of game types (range 1-17), and had a high number of chasing episodes (range 0-5). They experienced the highest net losses, the highest proportion of orange (32%) and red (39%) tags within the Playscan classification system and represented the only class in which voluntary self-exclusion was present. Conclusions: Classes 1, 2, 3 may be considered to represent recreational gambling. Class 4 had higher gambling activity and higher breadth of involvement and may be representative of players at risk for future gambling problems. Class 5 stood out in terms of much higher gambling activity and breadth of involvement, and the presence of chasing behavior. Individuals in classes 4 and 5 may benefit from early preventive measures.
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页数:13
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  • [1] Markers of unsustainable gambling for early detection of at-risk online gamblers
    Adami, Nicola
    Benini, Sergio
    Boschetti, Alberto
    Canini, Luca
    Maione, Florinda
    Temporin, Matteo
    [J]. INTERNATIONAL GAMBLING STUDIES, 2013, 13 (02) : 188 - 204
  • [2] Science has a gambling problem
    不详
    [J]. NATURE, 2018, 553 (7689) : 379 - 379
  • [3] An Empirical Study of the Effect of Voluntary Limit-Setting on Gamblers' Loyalty Using Behavioural Tracking Data
    Auer, Michael
    Hopfgartner, Niklas
    Griffiths, Mark D.
    [J]. INTERNATIONAL JOURNAL OF MENTAL HEALTH AND ADDICTION, 2021, 19 (06) : 1939 - 1950
  • [4] Is gambling involvement a confounding variable for the relationship between Internet gambling and gambling problem severity?
    Baggio, Stephanie
    Dupuis, Marc
    Berchtold, Andre
    Spilka, Stanislas
    Simon, Olivier
    Studer, Joseph
    [J]. COMPUTERS IN HUMAN BEHAVIOR, 2017, 71 : 148 - 152
  • [5] Psychology as the Science of Self-Reports and Finger Movements Whatever Happened to Actual Behavior?
    Baumeister, Roy F.
    Vohs, Kathleen D.
    Funder, David C.
    [J]. PERSPECTIVES ON PSYCHOLOGICAL SCIENCE, 2007, 2 (04) : 396 - 403
  • [6] A pathways model of problem and pathological gambling
    Blaszczynski, A
    Nower, L
    [J]. ADDICTION, 2002, 97 (05) : 487 - 499
  • [7] Accuracy of Self-Reported Versus Actual Online Gambling Wins and Losses
    Braverman, Julia
    Tom, Matthew A.
    Shaffer, Howard J.
    [J]. PSYCHOLOGICAL ASSESSMENT, 2014, 26 (03) : 865 - 877
  • [8] Using Cross-Game Behavioral Markers for Early Identification of High-Risk Internet Gamblers
    Braverman, Julia
    LaPlante, Debi A.
    Nelson, Sarah E.
    Shaffer, Howard J.
    [J]. PSYCHOLOGY OF ADDICTIVE BEHAVIORS, 2013, 27 (03) : 868 - 877
  • [9] How do gamblers start gambling: identifying behavioural markers for high-risk internet gambling
    Braverman, Julia
    Shaffer, Howard J.
    [J]. EUROPEAN JOURNAL OF PUBLIC HEALTH, 2012, 22 (02) : 273 - 278
  • [10] Identifying trajectory clusters in breast cancer survivors' supportive care needs, psychosocial difficulties, and resources from the completion of primary treatment to 8 months later
    Bredart, A.
    Merdy, O.
    Sigal-Zafrani, B.
    Fiszer, C.
    Dolbeault, S.
    Hardouin, J-B.
    [J]. SUPPORTIVE CARE IN CANCER, 2016, 24 (01) : 357 - 366