The benefits and challenges of online player tracking

IF 5.2 1区 医学 Q1 PSYCHIATRY Addiction Pub Date : 2024-03-12 DOI:10.1111/add.16480
Paul Delfabbro
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On the demand side, people can use multiple operators and accounts or set non-binding play limits, whereas on the supply side, there may be difficulties gaining consistency across multiple operators or where some gambling is offered offline [<span>2</span>]. For these reasons, the authors discuss the benefits of a ‘single-customer view’ in which the access point for all gambling might be via an independent organisation that provides monitoring and aggregate safer gambling functionality [<span>1</span>].</p><p>Although such a model is being discussed in some countries (e.g. United Kingdom) [<span>6</span>] and is partially implemented in some Scandinavian countries [<span>7</span>], there are several practical challenges. First, the consolidation of large amounts of data in a single place, presumably in combination with a know-your-customer system, raises concerns around player privacy. Not only could such information be accessed by third parties for other purposes (e.g. credit agencies/loan approvers) with detrimental consequences for customers, it creates a target or ‘honey-pot’ for cyber attackers. A second issue is the ability to apply tracking in countries with State or Province based laws. For example, in Australia, laws relating to online gambling are applied federally, whereas all other forms of land-based gambling are subject to State laws. Each jurisdiction has multiple sectors (casinos, hotels and clubs), and within these, there are separate operators (e.g. chains or hotels or club syndicates). A third practical issue is the danger of leakage effects in the form of an outflow of higher risk customers to unregulated sites elsewhere using either fiat off-ramps (e.g. Paypal) or direct transfers of value using decentralised blockchain-based wallets. Such sites may have few safer gambling provisions.</p><p>Moreover, on the conceptual and design-side, there is the issue of the specifications of aggregated limit-setting and monitoring. How does one determine appropriate levels of expenditure? A commonly suggested solution are ‘affordability checks’ [<span>8</span>], but establishing wealth is a complex process (e.g. cashflow vs asset worth) and could arguably be seen as a form of discrimination based on social class. Other authors propose so-called ‘low risk’ gambling limits [<span>9, 10</span>] that could be used to alert operators to higher than ‘healthy’ levels of expenditure, but determining what is risky or affordable (particularly when there may be semi-professional and high-value sports bettors) may again pose difficulties.</p><p>In my view, a stronger approach may be to look for genuine indicators of harm rather than focus on static gambling limits. Current literature indicates that the incidence of these reliably differs between problem and non-problem gamblers. Examples include: declined deposits, reversed withdrawals, frequent in session top-ups or gambling at unusual hours [<span>11-15</span>]. Importantly such work suggests the importance of real-time changes in behaviour. Rather than focusing so much on how long or how much people spend (which raises the concerns above), one looks for statistically unusual spikes or patterns, an accumulation of risk indicators, which occur across time. Operators may, therefore, be required to provide dynamic tools that measure and monitor real-time risk and to provide evidence of their success in reducing harm. However, such insights require greater technical proficiency and potentially greater operator-government collaboration. 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The role of the regulator would be to ensure that the risk protections applied by industry meet certain evidence standards and are subject to periodic review.</p><p>I have undertaken research into online player tracking, which has received industry support (Kindred). My consulting role has been confined to conducting data requests, statistical analysis and reporting. Such industry collaborations I believe to be central to advancing knowledge in this area to gain access to relevant data, product differences and the best areas for regulatory reform. 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Abstract

In their article, Newall and Swanton [1] make many important observations about the significance of online tracking for academic research and in the development of safer gambling measures. On the whole, I agree with many of their arguments. Online tracking data provide a valuable source of insights into actual gambling behaviour and associated harms [2]. Such information, whether used retrospectively or in real-time, can be used to inform safer gambling practices [3, 4]. These include the application of play limits; the provision of player information; self-exclusion policies; and the development of harm indicators/risk-detection algorithms [5, 6]. It is observed that, although some single operators have developed technology in these areas, there are fundamental challenges. On the demand side, people can use multiple operators and accounts or set non-binding play limits, whereas on the supply side, there may be difficulties gaining consistency across multiple operators or where some gambling is offered offline [2]. For these reasons, the authors discuss the benefits of a ‘single-customer view’ in which the access point for all gambling might be via an independent organisation that provides monitoring and aggregate safer gambling functionality [1].

Although such a model is being discussed in some countries (e.g. United Kingdom) [6] and is partially implemented in some Scandinavian countries [7], there are several practical challenges. First, the consolidation of large amounts of data in a single place, presumably in combination with a know-your-customer system, raises concerns around player privacy. Not only could such information be accessed by third parties for other purposes (e.g. credit agencies/loan approvers) with detrimental consequences for customers, it creates a target or ‘honey-pot’ for cyber attackers. A second issue is the ability to apply tracking in countries with State or Province based laws. For example, in Australia, laws relating to online gambling are applied federally, whereas all other forms of land-based gambling are subject to State laws. Each jurisdiction has multiple sectors (casinos, hotels and clubs), and within these, there are separate operators (e.g. chains or hotels or club syndicates). A third practical issue is the danger of leakage effects in the form of an outflow of higher risk customers to unregulated sites elsewhere using either fiat off-ramps (e.g. Paypal) or direct transfers of value using decentralised blockchain-based wallets. Such sites may have few safer gambling provisions.

Moreover, on the conceptual and design-side, there is the issue of the specifications of aggregated limit-setting and monitoring. How does one determine appropriate levels of expenditure? A commonly suggested solution are ‘affordability checks’ [8], but establishing wealth is a complex process (e.g. cashflow vs asset worth) and could arguably be seen as a form of discrimination based on social class. Other authors propose so-called ‘low risk’ gambling limits [9, 10] that could be used to alert operators to higher than ‘healthy’ levels of expenditure, but determining what is risky or affordable (particularly when there may be semi-professional and high-value sports bettors) may again pose difficulties.

In my view, a stronger approach may be to look for genuine indicators of harm rather than focus on static gambling limits. Current literature indicates that the incidence of these reliably differs between problem and non-problem gamblers. Examples include: declined deposits, reversed withdrawals, frequent in session top-ups or gambling at unusual hours [11-15]. Importantly such work suggests the importance of real-time changes in behaviour. Rather than focusing so much on how long or how much people spend (which raises the concerns above), one looks for statistically unusual spikes or patterns, an accumulation of risk indicators, which occur across time. Operators may, therefore, be required to provide dynamic tools that measure and monitor real-time risk and to provide evidence of their success in reducing harm. However, such insights require greater technical proficiency and potentially greater operator-government collaboration. Such systems could still potentially include a State-sanctioned ‘default’ limit, but require customers to opt-in to change the amount while also completing a risk assessment.

As Newall and Swanton [1] observe, such work can often only be pursued through industry collaboration. Several models are possible here. Industry might be asked to provide data and evidence to researchers, which is then reported to a regulatory body (e.g. Nower and Glynn) [8]. Alternatively, the industry might conduct its own research, which is independently reviewed. A third option is for data to be made available to academic research with measures in place to ensure appropriate independence of analysis and reporting [9]. The role of the regulator would be to ensure that the risk protections applied by industry meet certain evidence standards and are subject to periodic review.

I have undertaken research into online player tracking, which has received industry support (Kindred). My consulting role has been confined to conducting data requests, statistical analysis and reporting. Such industry collaborations I believe to be central to advancing knowledge in this area to gain access to relevant data, product differences and the best areas for regulatory reform. My commentary on this article is not commercially influenced by this work and based on my direct observations and knowledge of the academic literature.

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在线玩家跟踪的好处和挑战。
Newall 和 Swanton [1]在他们的文章中就在线追踪对学术研究和制定更安全的赌博措施的意义发表了许多重要看法。总体而言,我同意他们的许多观点。在线追踪数据为了解实际赌博行为和相关危害提供了宝贵的资料来源[2]。这些信息,无论是回溯性使用还是实时使用,都可以用来指导更安全的赌博行为[3, 4]。其中包括游戏限制的应用;玩家信息的提供;自我排斥政策;以及危害指标/风险检测算法的开发[5, 6]。据观察,尽管一些单一运营商已经在这些领域开发了技术,但仍存在根本性的挑战。在需求方面,人们可以使用多个运营商和账户,或设置非约束性的游戏限制,而在供应方面,可能难以在多个运营商之间或在某些赌博是离线提供的情况下获得一致性[2]。基于这些原因,作者讨论了 "单一客户视角 "的好处,即所有赌博的接入点都可以通过一个独立的组织,该组织提供监控和综合更安全赌博的功能[1]。尽管一些国家(如英国)正在讨论这种模式[6],一些斯堪的纳维亚国家也部分实施了这种模式[7],但仍存在一些实际挑战。首先,将大量数据整合到一个地方,并可能与 "了解你的客户 "系统相结合,会引起对玩家隐私的担忧。这些信息不仅可能被第三方出于其他目的获取(如信贷机构/贷款审批者),从而对客户造成不利影响,而且还会成为网络攻击者的目标或 "蜜罐"。第二个问题是,在以州或省为基础制定法律的国家应用追踪的能力。例如,在澳大利亚,与在线赌博有关的法律由联邦实施,而所有其他形式的陆上赌博则受州法律管辖。每个辖区都有多个部门(赌场、酒店和俱乐部),在这些部门中,又有不同的运营商(如连锁酒店或俱乐部集团)。第三个实际问题是泄漏效应的危险,即风险较高的客户通过使用法币下线(如 Paypal)或使用基于区块链的去中心化钱包直接转移价值,流向其他地方不受监管的网站。此外,在概念和设计方面,还有综合限额设定和监控的规范问题。如何确定适当的支出水平?通常建议的解决办法是 "承受能力检查"[8],但确定财富是一个复杂的过程(如现金流与资产价值),可以说是一种基于社会阶层的歧视。其他作者提出了所谓的 "低风险 "赌博限额[9, 10],可以用来提醒经营者注意高于 "健康 "水平的支出,但确定什么是风险或可负担的支出(尤其是在可能存在半职业和高额体育博彩者的情况下)可能会再次带来困难。目前的文献表明,问题赌徒和非问题赌徒在这些方面的发生率明显不同。例如:拒绝存款、反向提款、经常在会话中充值或在非正常时间赌博[11-15]。重要的是,这些研究表明了行为实时变化的重要性。我们不应过多关注人们的消费时间或消费金额(这会引起上述担忧),而应寻找统计上不寻常的峰值或模式,即风险指标的累积,这些指标会在不同时间出现。因此,运营商可能需要提供动态工具来衡量和监测实时风险,并提供成功减少危害的证据。然而,这种洞察力需要更高的技术熟练程度,并可能需要运营商与政府之间更多的合作。正如 Newall 和 Swanton[1]所言,此类工作通常只能通过行业合作来完成。这里有几种可能的模式。可以要求行业向研究人员提供数据和证据,然后报告给监管机构(如 Nower 和 Glynn)[8]。或者,行业可自行开展研究,并接受独立审查。第三种选择是向学术研究提供数据,并采取措施确保分析和报告的适当独立性[9]。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Addiction
Addiction 医学-精神病学
CiteScore
10.80
自引率
6.70%
发文量
319
审稿时长
3 months
期刊介绍: Addiction publishes peer-reviewed research reports on pharmacological and behavioural addictions, bringing together research conducted within many different disciplines. Its goal is to serve international and interdisciplinary scientific and clinical communication, to strengthen links between science and policy, and to stimulate and enhance the quality of debate. We seek submissions that are not only technically competent but are also original and contain information or ideas of fresh interest to our international readership. We seek to serve low- and middle-income (LAMI) countries as well as more economically developed countries. Addiction’s scope spans human experimental, epidemiological, social science, historical, clinical and policy research relating to addiction, primarily but not exclusively in the areas of psychoactive substance use and/or gambling. In addition to original research, the journal features editorials, commentaries, reviews, letters, and book reviews.
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