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Maximizing Value from Data Analytics in the Research Arena

Explore the latest advancements in data analytics research and learn about the vision for future improvements. Discover how vertically-focused algorithms and combining player and product insights can drive personalized communications. Assess the current capabilities of detecting harm and delve into the potential of using machine learning in identifying gambling-related harm. Learn about the opportunities of linking game features to risk drivers and maximize the value of data analytics in research.

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Maximizing Value from Data Analytics in the Research Arena

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  1. EASG Conference 2018 InBrief: What’s new in the research arena? Who has a Vision? Where will the value come from data analytics? 12th September 2018 Chris Percy Simo Dragicevic

  2. Disclosures • Current: • Employed by BetBuddy, a wholly owned subsidiary of Playtech Plc, a significant industry supplier and operator • External supervisor at City, University of London • One research project funded by Kindred Group. • Previous research funded by: • InnovateUK • EPSRC • ESRC • DSTL.

  3. Where will the value come from data analytics? • Are current approaches capable of detecting harm? • Have we reached a plateau of improvements? • Examining vertically-focused machine learning i.e., highly specialised algorithms (or narrow AI) • Where will significant improvements come in the next 5-10 years? • Combining player insights with product insights • Explaining algorithmic decisioning to drive personalised communications

  4. Are current approaches capable of detecting harm? • A supervised problem is solved if: • A human can tell you the right answer many times e.g., 1,000 penguins • Machine learning is a tool to teach a machine known things.

  5. Today’s most promising applications of machine learning still struggle A piece of cake on a plate with a fork An airplane parked on the tarmac of an airport A couple of people that are standing in the snow Image captions generated by NeuralTalk (Karpathy)

  6. Despite challenges, vertically focused algorithms are effective at detecting patterns of harm • Detecting gambling related harm is a much harder problem to solve using machine learning • Nonetheless, it has much potential to supplement humans and existing RG options and features • However, it needs to be implemented carefully • We need to develop human-in-the-loop in an empowering way.

  7. What do we mean by vertically focused algorithms?

  8. Well-designed narrow AI can still out-perform humans at pattern matching …frequency of play… …frequency of deposits…

  9. Best practice suggests players who play frequently and deposit frequently are at-risk, but the data…? Regular play: Variation of gap between gambling days Frequency of deposit days: Infrequent deposit days points to a stronger pattern match in self-excluder behaviour If I have large gaps in my play I’m a stronger pattern match to self-excluders Regular players are less likely to self-exclude Frequent depositors have a poorer pattern match to self-excluders

  10. Even the more obvious markers are not always clearly-defined with simple, linear patterns …gambling late at night… …multiple betting products…

  11. Whilst engaging in games is a somewhat linear pattern, playing at night is not Night time play ratio Number of game types played Engaging in higher numbers of side games leads to a higher pattern match for self-excluders Even a very small percentage of play during the night increases your chances of a pattern match by ~15%, but after that the effect is limited Those engaged in only bingo are less likely to get a strong pattern match Still over 50% of those self-excluders play predominantly during the day and evening

  12. Have we reached a plateau in applying narrow AI to assessing gambling related harm? Some narrow AI models on high quality datasets already predicting self-exclusion at 96% accuracy

  13. Have we reached a plateau in applying narrow AI to assessing gambling related harm? Today: Improved pattern matching will provide incremental improvements Tomorrow: Artificial General Intelligence (AGI) is probably many years off • Better harm labelling • Bigger data sets • Continued improvements e.g., comparative analysis to other approaches • Addition of ‘Human-like’ intelligence; • Reasoning e.g., e.g., relational • Planning e.g., temporal • Interacting e.g., questioning

  14. Are there new opportunities to combine product data with behavioural data? • how much staked • how often played, • …. Player Behaviour • E.g. RTP, volatility • sensory design and theme, … Game Design • spending more money or time on gambling than you wish you did, … Risk of Player Harm Player Circumstances Play Environment • stimulating/ disinhibiting environment • access to alcohol • … • income/wealth/ debt • co-morbidities, • …

  15. Game design risk – Four categories of game related data So how to link game features to intermediate drivers of harm? Work-in-progress….

  16. We are starting to map game features through to potential risk drivers [excerpt] Session loss capacity RTP Volatility Typical spin time / turboplay Min or default stake x x x Low High If fast If high If low Complex audiovisuals but simple game + TIME RISK Player goals + Disassociation Complex gameplay, e.g. many subgames, collection features Exploration + Variation in odds / stake Martingale + + High Top Prize # Jackpots Progressive JP Big Win Game feel MONEY RISK + + Low min stake Simple game Easy Starters + Near misses1 Disguised losses1 A Win is Close +

  17. Operators can market to players more appropriate games

  18. Industry is under increasing scrutiny to interact with customers Strengthening requirements to interact with consumers who may be experiencing, or are at risk of developing, problems with their gambling.

  19. Best practice suggests players should receive different interactions based on level of risk High Risk “Intensive -> Excessive” Moderate Risk “Frequent -> Intensive” Target Audience Low Risk “Infrequent -> Casual” Options Self-Awareness Objective Gambling Literacy Cautionary Information Help Options Deeper Understanding Skills Content How Gambling Works Key Safeguards Information Delivery Population-based Personalised Adapted from Wiebe 2011, Informed Decision Making Framework

  20. 8 studies since 2014 suggest personalised interactions can be useful

  21. 8 studies since 2014 suggest personalised interactions can be useful • Pop up messages helped players stay within limits • Those who watched the educational video more likely to stay within limits • 7% said messages made them stop and think, 4% said had influence on behaviour • Those who set a time limit prior to play gambled for significantly less time • Deposits reduced a significant amount among at-risk players contacted by email • Winning or losing during slot machine play appears to have significant consequences on the impact of a warning message • 25% said messages helped them gain control, but only 8% actually reduced play • Personalized feedback impacts positively - reduction in time and money spent.

  22. But, machine learning is difficult to interpret Explainability New Approach Learning Techniques (today) Neural Nets Graphical Models Create a suite of machine learning techniques that produce more explainable models, while maintaining a high level of learning performance Deep Learning Ensemble Methods Bayesian Belief Nets Prediction Accuracy Random Forests SRL CRFs HBNs AOGs Statistical Models MLNs Decision Trees Markov Models Explainability SVMs Source: Defense Advanced Research Projects Agency, 2016

  23. Machine learning models look a bit like this

  24. Personalised, relevant, & changing communications are likely to have a more positive effect (1/2) 5 Set a budget and stick to itSimo, did you know players like you benefit from setting and sticking to their limits? Set My Limit No Thanks

  25. Personalised, relevant, & changing communications are likely to have a more positive effect (2/2) Hi Simo, you’ve been playing for over 2 hoursTake a break, it’s good to balance your leisure activities 1.2 hr

  26. Concluding thoughts • Transparency and ethics in the use of data and AI are paramount to build trust and widespread adoption; • How we design and build algorithms • Their strengths and weaknesses • The results and effects.

  27. THANK YOU

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