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Analytical Optimization Technologies for Games & Apps Analytics, A/B Testing, Segmentation & Dynamic Best-Fit. Alan Avidan, Exec. Director & Chief BeezzzDev. Points We’ll Cover. What is optimization What can be measured and optimized Optimization t echnologies for games and apps Analytics
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Analytical Optimization Technologies for Games & AppsAnalytics, A/B Testing, Segmentation & Dynamic Best-Fit Alan Avidan, Exec. Director & Chief BeezzzDev
Points We’ll Cover What is optimization What can be measured and optimized Optimization technologies for games and apps Analytics A/B Testing User Segmentation Dynamic Best-Fit Let’s get started!
What is Optimization? Data-driven efforts formulated and designedto maximize Key Performance Indicators (KPI)by enhancing in-game/app conversions Max Z {f(x)} ≡ f(Engagement, Retention, Monetization, Virality) X s.t. g(x)=0, h(x)<0
Which Key Performance Indicatorsshould you target for optimization? Monetization Engagement Retention Virality
88.9% improvement on landing page Optimization Results
Which Game Elements Can Be Optimized? New Features Arts (Creative) MessageWordings Game Mechanics Game Flow Landing Pages Promotions
Optimization Technologies We Use Analytics A/B Testing (Split Testing) User Segmentation Dynamic Best-Fit
Analytics The process of developing optimal or realistic decision recommendations based on insights derived throughthe application of statistical models and analysisagainst existing and/or simulated future data - Wikipedia Typical uses of Analytics Engagement Tracking Funnel Analysis Measure, Display, Analyze, Change, Repeat
Analytics - Bottom Line Upside • Monitor, record, & display Key Performance Indicators (KPI) • Measure effectiveness of game mechanics and monetization Efforts • Access and display data to understand how users interact with game/app; decide where improvements are needed Downside The capture and storage of data, followed by analytics and visualization is tedious, provides retroactive information about the “Average User.”
A/B Testing Credit: Steve Collins, Swrve
A/B Testing Uses Photo: Spencer Higgins; Illustration: Si Scott • New features are introduced to a selection of users, and their reactions measured. Features remain only if users engage with them - Wooga
Q: A/B Testing: What are the most unexpected things people have learned from A/B tests? Answer Wiki • Make sure that the test is statistically significant - run it for long enough, and with enough traffic to make it count • I have learned how dramatically, and ridiculously wrong my most basic assumptions were • It's empirically proven that you should let the data tell you what works or not and you should constantly be testing • That the devil is in the detail - a minor change can generate a significant result
A/B Testing – Bottom line Upside Simple; understandable; can achieve very good results Downside: • One size fit all
User-Base Segmentation A Priori Segmentation: Geographic - states, regions, countries Demographic - age, gender, education Psychographic - lifestyle, personality, values Positive - similar wants or needs Clustering Segmentation: Behavioral - similarities of behavioral patterns and like-properties
Segmentation - Uses Cohort Analysis – Track over time users with common reference feature Targeting - Serve different treatments for each segment to maximize KPIs
Segmentation – the bottom line Upside Can be effective especially reaching out to groups identifiable by known attributes Downside: • Clusters are predefined and thus remain unchanged during the analysis • Requires storage of terabytes of data • privacy issues
Dynamic Best-FitReal-Time Automated Action Optimization A predictive algorithmic technology used to serve each user the page option they are most likely to convert on at any feature point
DNA Signature Attributes Facebook attributes: Friends, Likes, Interests, Posts, Events Behavioral attributes: level, spending, score, progress, custom Session attributes: time of day, day, duration Geo-Demographic attributes: age, gender, education, country • Proprietary attributes: novice, high-bidder, risk-averse • 3rd Party attributes: income level, education
How Dynamic Best-Fit Works Advanced statistical algorithms find strong correlations between user DNA data and past conversions
Best-Fit: Game Flows Option 1 Option 2 Option 3 Open page Open page Open page Full tutorial Short tutorial No tutorial Stage 1 Stage 1 Stage 2
Best-Fit: Payouts Only large and less frequent winnings* Mostly small but more Frequent winnings* • * The sum of all winnings are the same
Best-Fit: Promotions Triple your money Buy 100 Gold Get 200 Free Buy 1 Get 1 FREE Receive twice the amount of gold for regular price Go VIP Buy VIP card for 5 EUR and enjoy 30% more coins for all future buys
Dynamic Best-Fit: Results Increases conversions and KPIs Gain Valuable new insights to improve app design and user targeting “Like” attribute as conversion indicator in payment page Insight: users with more than 25% of Likes associated with apps monetize much better, and moreover clearly prefer Layout 2 “Total Friends” attribute as conversion indicator in payment page Insight: users with less than 100 friends more readily reach the payment page, and moreover convert better
Review • Optimization is vital to your game/app’s success • Retrofit existing games and plan for future games • Match objectives with technologies: Different technologies have different uses; Require a different level of involvement; and produce different Uplift results • Future? -- Lots and lots moredata. Those that will learn toharness it will succeed
Q & A Alan@BeesAndPollen.com