Fraud in Online Gambling

Fraud
Management/mitigation
Gaming
Mark Weston -- GiG; Spencer McLain -- Whitepages Pro
May 24, 2019
Presentations
As the global online gambling industry continues to develop, the number of fraudsters/fraudulent attacks continues to increase. This firmly highlights the importance of a company wide and cohesive fraud prevention strategy. Here, Whitepages Pro and GiG provide insight on fraud prevention best practice with the use of practical examples and four key steps for the development of a successful fraud prevention strategy.

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