SlideShare a Scribd company logo
1 of 26
Download to read offline
1
It’s the cornerstone of many of the biggest businesses in the US, including
Google & Amazon, and the backbone of most scientific undertakings.

2
There’s plenty of cheerleading for data so I want to spend today on
cautionary tales & advice, in the hope of helping keep data more on the Iron
Man side of the Robert Downey Jr spectrum.

3
I love using numbers & testing to understand the world, I’m not a data hater by any
means.
If you want to know about medieval Transylvania or the Ottoman invasion of
Hungary, I’m you’re woman. That didn’t get me far on the job market.
Partly to do something different, partly to do games. But despite that intention it
hasn’t been as different as I expected – user acquisition for games and catalogs is
fundamentally the same. But Kongregate, because we’re an open platform with over
70k games and now a mobile game publisher, has provided some incredibly rich
opportunities for data mining.

4
Part of the reason I’m telling you this is to make my first point:
And for an organization to do data right you can’t toss analysis back and forth
over a wall to quants. It takes intimate knowledge of a game (and the
development) to do good analysis and multiple perspectives and theories are
good.

5
Sometimes it’s immediately obvious – we had a mobile game we launched
recently, an endless runner, that wasn’t filtering purchases from jailbroken
phones and was showing an ARPPU of $500, not very plausible and easily
caught. But most issues are much more subtle – tracking pixels not firing
correctly for a particular game on a particular browser, tutorial steps being
completed twice by some players but not by others, clients reporting strange
timestamps, etc.
For this reason you should never rely on any analytic system where you can’t
go in and inspect individual records. If you can’t check the detail you’ll never
be able to find and fix problems. We use Google Analytics for reference and
corroboration but nothing very crucial, and are using it less and less because
of this.

6
This looks like 4 separate pictures photoshopped together to create an
appealing color grid, right?

7
Wrong.
So much of data is like these pictures – a set-up that appears
straightforwardly to be one thing from one angle, turns out to be completely
different from another.

8
Except of course you know I’m setting you up

9
I mentioned lifetime conversion and showed daily ARPPU. Lifetime
conversion may be similar between the two games, but daily conversion is
40% higher for game 1.
This is why $/DAU is not a very interesting stat on its own. If someone
quotes just D1 retention and $/DAU that’s not enough information to judge
how a game monetizes.

10
It’s a living, changing system. Flat views are not enough.

11
So here are a series of likely traps analysts can fall into. I know I have.
They’re not in a particular order of importance because they’re all important.
We tend to think of playerbases as monolithic but really they are
aggregations of all sorts of subgroups.
It’s sort of like watching a meal go through a snake.
Though with time cohorts it’s easy to lose track of events and changes in the
game, so you can’t rely on those, either.

12
13
14
You may have noticed that win rates got a bit wacky towards the later missions of the graph
of the last chart – this is a sample size issue.
Even games that overall have very substantial playerbases like Tyrant may end up with
small sample sizes when you’re looking at uncommon behavior in subgroups.
Early test market data is often tantalizing & fascinating, but it’s often the most unreliable
because you’re combining small sample sizes and a non-representative subgroup – the
people who discover you first are the most hard-core.

15
not normal (bell-curve) distributions, which affects everything.
Theoretically it’s not even possible to calculate the average value of a power distribution
since the infrequent top values could be infinite.
The sample size depends on the frequency of the event – tutorial completion & D1
retention should be fine with just a few hundred users, % buyer with 500+, but I don’t like
to look at ARPPU with much less than 5,000. These are just my rules of thumb based on
experience and probably have no mathematical basis.

16
17
18
If you ask small questions you’ll usually get small answers. And the dirty
secret of testing is that most test are inconclusive anyway. It’s hard to move
important metrics. So prioritize tests that significanly affect the game, like
energy limits and regeneration over button colors.

19
Your existing players are used to things working a certain way – a change in
UI that makes things clearer for a new player may annoy/confuse an elder
player. Where possible I like to test disruptive changes on new players only,
and then roll out the test to other players if the test proves successful. A
pricing change that increases non-buyer conversion might reduce repeat
buyer revenue.
For example if you’re A/B testing your store, don’t assign people to the test
unless they interact with the store. It’s often easier to split people as they
arrive in your game, or some other thing, but a) there’s a chance you would
end up with non-equal distribution of interaction with the tested feature and
b)any signal from the test group would get lost in the noise of a larger
sample.

20
Early results tend to be both volatile and fascinating – differences are
exaggerated or totally change direction. People tend to remember the early,
interesting results rather than the actual results. People also often want to
end the test early if they see a big swing, which is a bad idea.
We tested to see what gain we were getting from bonusing buying larger
currency packages, which had to be judged on total revenue to make sure
we were capturing both transaction size and repeat purchase factors. To
make sure the 15% lift was real we broke buyers into cohorts by how much
they’d spent ($0-$10, $100-$200, $200-$500, etc) and checked the
distribution in each test. On the bonus side of the test we saw fewer buyer
<$20 and 30%+ gains on all the cohorts above $100+, so we were confident
that the gain was not being driven but a few big spenders.
Again this should be worked backward from the frequency and distribution of
the metric you’re judging the test on. There’s internet calculators to help you
figure out what you need to get to statistical significance given an expected
lift. My advice (if you have the playerbase and patience) is to then double or
triple that. Why do I want my sample sizes so much bigger than the
minimum?

21
It comes down to some of the issues with judging results by statistical
significance itself. It doesn’t mean what you probably think it means.
Statistical significance tests assume that there is some true difference in lift,
and that if you test there will be a bell curve distribution of results, with the
true lift as the average. Your 5% result could be right on the mean, or it could
be an outlier on either end. If it’s statistically significant then the chance is
low (usually 5% or less) that there’s no lift at all. But the true lift could be 1%
or 10%.
It’s possible you’d get two outlier results in the same direction, but becomes less and less
likely, and more likely that your test results represent the true mean. And the size of the
effect you are testing does matter as it helps you understand the relative importance of
different factors, and what to prioritize testing next.

22
For example we’ve had a lot of tests that increased registration and reduced
retention, so much so that we now judge tests based on % retained
registrations because that’s what we really care about, but that’s not always
possible.

23
A good example of this is adding a Facebook login button on our website. If a
player comes back on a different browser they need to be able to login.

24
25
This is about how you think about your business.

26

More Related Content

What's hot

F2P Design Crash Course (Casual Connect Kyiv 2013)
F2P Design Crash Course (Casual Connect Kyiv 2013)F2P Design Crash Course (Casual Connect Kyiv 2013)
F2P Design Crash Course (Casual Connect Kyiv 2013)Kongregate
 
GDC Talk: Lifetime Value: The long tail of Mid-Core games
GDC Talk: Lifetime Value: The long tail of Mid-Core gamesGDC Talk: Lifetime Value: The long tail of Mid-Core games
GDC Talk: Lifetime Value: The long tail of Mid-Core gamesTamara (Tammy) Levy
 
GDC Talk - Nature vs Nurture: Unpacking Player Spending in F2P Games
GDC Talk - Nature vs Nurture: Unpacking Player Spending in F2P GamesGDC Talk - Nature vs Nurture: Unpacking Player Spending in F2P Games
GDC Talk - Nature vs Nurture: Unpacking Player Spending in F2P GamesTamara (Tammy) Levy
 
The Rise and Rise of Idle Games
The Rise and Rise of Idle GamesThe Rise and Rise of Idle Games
The Rise and Rise of Idle GamesAnthony Pecorella
 
Kongregate Web Games Partnership Opportunities
Kongregate Web Games Partnership OpportunitiesKongregate Web Games Partnership Opportunities
Kongregate Web Games Partnership OpportunitiesDavidKongregate
 
Taptica facts and figures january
Taptica facts and figures januaryTaptica facts and figures january
Taptica facts and figures januaryGAMESbrief
 
Epic Games Author Info Pack - Vince Cavin web
Epic Games Author Info Pack - Vince Cavin webEpic Games Author Info Pack - Vince Cavin web
Epic Games Author Info Pack - Vince Cavin webVince Cavin
 
Metrics for a Brave New Whirled
Metrics for a Brave New WhirledMetrics for a Brave New Whirled
Metrics for a Brave New Whirledcapncleaver
 
Benchmarks and metrics
Benchmarks and metricsBenchmarks and metrics
Benchmarks and metricsGAMESbrief
 
A mysterious adventure_in_social_games_final
A mysterious adventure_in_social_games_finalA mysterious adventure_in_social_games_final
A mysterious adventure_in_social_games_finalcapncleaver
 
DavidPChiu Kongregate - Maximizing Player Retention and Monetization in Free-...
DavidPChiu Kongregate - Maximizing Player Retention and Monetization in Free-...DavidPChiu Kongregate - Maximizing Player Retention and Monetization in Free-...
DavidPChiu Kongregate - Maximizing Player Retention and Monetization in Free-...David Piao Chiu
 
Transmedia, Gamification, Advergaming
Transmedia, Gamification, AdvergamingTransmedia, Gamification, Advergaming
Transmedia, Gamification, AdvergamingGAMESbrief
 
Top Reasons Why Your Mobile Game Will (Likely) Fail | Chris Olson, Ethan Einhorn
Top Reasons Why Your Mobile Game Will (Likely) Fail | Chris Olson, Ethan EinhornTop Reasons Why Your Mobile Game Will (Likely) Fail | Chris Olson, Ethan Einhorn
Top Reasons Why Your Mobile Game Will (Likely) Fail | Chris Olson, Ethan EinhornJessica Tams
 
Korean Market: small country, huge potential for gaming revenue
Korean Market: small country, huge potential for gaming revenueKorean Market: small country, huge potential for gaming revenue
Korean Market: small country, huge potential for gaming revenueGameCamp
 
Idle Games: The Mechanics and Monetization of Self-Playing Games
Idle Games: The Mechanics and Monetization of Self-Playing GamesIdle Games: The Mechanics and Monetization of Self-Playing Games
Idle Games: The Mechanics and Monetization of Self-Playing GamesKongregate
 
Kongregate - Maximizing Player Retention and Monetization in Free-to-Play Gam...
Kongregate - Maximizing Player Retention and Monetization in Free-to-Play Gam...Kongregate - Maximizing Player Retention and Monetization in Free-to-Play Gam...
Kongregate - Maximizing Player Retention and Monetization in Free-to-Play Gam...David Piao Chiu
 
Emily Greer at GDC 2018: Data-Driven or Data-Blinded?
Emily Greer at GDC 2018: Data-Driven or Data-Blinded?Emily Greer at GDC 2018: Data-Driven or Data-Blinded?
Emily Greer at GDC 2018: Data-Driven or Data-Blinded?Kongregate
 

What's hot (19)

F2P Design Crash Course (Casual Connect Kyiv 2013)
F2P Design Crash Course (Casual Connect Kyiv 2013)F2P Design Crash Course (Casual Connect Kyiv 2013)
F2P Design Crash Course (Casual Connect Kyiv 2013)
 
GDC Talk: Lifetime Value: The long tail of Mid-Core games
GDC Talk: Lifetime Value: The long tail of Mid-Core gamesGDC Talk: Lifetime Value: The long tail of Mid-Core games
GDC Talk: Lifetime Value: The long tail of Mid-Core games
 
GDC Talk - Nature vs Nurture: Unpacking Player Spending in F2P Games
GDC Talk - Nature vs Nurture: Unpacking Player Spending in F2P GamesGDC Talk - Nature vs Nurture: Unpacking Player Spending in F2P Games
GDC Talk - Nature vs Nurture: Unpacking Player Spending in F2P Games
 
The Rise and Rise of Idle Games
The Rise and Rise of Idle GamesThe Rise and Rise of Idle Games
The Rise and Rise of Idle Games
 
Kongregate Web Games Partnership Opportunities
Kongregate Web Games Partnership OpportunitiesKongregate Web Games Partnership Opportunities
Kongregate Web Games Partnership Opportunities
 
Taptica facts and figures january
Taptica facts and figures januaryTaptica facts and figures january
Taptica facts and figures january
 
Epic Games Author Info Pack - Vince Cavin web
Epic Games Author Info Pack - Vince Cavin webEpic Games Author Info Pack - Vince Cavin web
Epic Games Author Info Pack - Vince Cavin web
 
Metrics for a Brave New Whirled
Metrics for a Brave New WhirledMetrics for a Brave New Whirled
Metrics for a Brave New Whirled
 
Benchmarks and metrics
Benchmarks and metricsBenchmarks and metrics
Benchmarks and metrics
 
A mysterious adventure_in_social_games_final
A mysterious adventure_in_social_games_finalA mysterious adventure_in_social_games_final
A mysterious adventure_in_social_games_final
 
DavidPChiu Kongregate - Maximizing Player Retention and Monetization in Free-...
DavidPChiu Kongregate - Maximizing Player Retention and Monetization in Free-...DavidPChiu Kongregate - Maximizing Player Retention and Monetization in Free-...
DavidPChiu Kongregate - Maximizing Player Retention and Monetization in Free-...
 
Transmedia, Gamification, Advergaming
Transmedia, Gamification, AdvergamingTransmedia, Gamification, Advergaming
Transmedia, Gamification, Advergaming
 
Top Reasons Why Your Mobile Game Will (Likely) Fail | Chris Olson, Ethan Einhorn
Top Reasons Why Your Mobile Game Will (Likely) Fail | Chris Olson, Ethan EinhornTop Reasons Why Your Mobile Game Will (Likely) Fail | Chris Olson, Ethan Einhorn
Top Reasons Why Your Mobile Game Will (Likely) Fail | Chris Olson, Ethan Einhorn
 
Korean Market: small country, huge potential for gaming revenue
Korean Market: small country, huge potential for gaming revenueKorean Market: small country, huge potential for gaming revenue
Korean Market: small country, huge potential for gaming revenue
 
Idle Chatter - GDC 2016
Idle Chatter - GDC 2016Idle Chatter - GDC 2016
Idle Chatter - GDC 2016
 
UC San Diego's Big Data Specialization Capstone
UC San Diego's Big Data Specialization CapstoneUC San Diego's Big Data Specialization Capstone
UC San Diego's Big Data Specialization Capstone
 
Idle Games: The Mechanics and Monetization of Self-Playing Games
Idle Games: The Mechanics and Monetization of Self-Playing GamesIdle Games: The Mechanics and Monetization of Self-Playing Games
Idle Games: The Mechanics and Monetization of Self-Playing Games
 
Kongregate - Maximizing Player Retention and Monetization in Free-to-Play Gam...
Kongregate - Maximizing Player Retention and Monetization in Free-to-Play Gam...Kongregate - Maximizing Player Retention and Monetization in Free-to-Play Gam...
Kongregate - Maximizing Player Retention and Monetization in Free-to-Play Gam...
 
Emily Greer at GDC 2018: Data-Driven or Data-Blinded?
Emily Greer at GDC 2018: Data-Driven or Data-Blinded?Emily Greer at GDC 2018: Data-Driven or Data-Blinded?
Emily Greer at GDC 2018: Data-Driven or Data-Blinded?
 

Similar to Data Gone Wrong - GDCNext 2013

4 Cycles Remote Innovation - Communicate & Check
4  Cycles Remote Innovation - Communicate & Check 4  Cycles Remote Innovation - Communicate & Check
4 Cycles Remote Innovation - Communicate & Check Bryan Cassady
 
Balance between insight and noise indicia v2
Balance between insight and noise indicia v2Balance between insight and noise indicia v2
Balance between insight and noise indicia v2Nick Barthram
 
The Myths of Big Data
The Myths of Big DataThe Myths of Big Data
The Myths of Big DataProphet
 
CommonAnalyticMistakes_v1.17_Unbranded
CommonAnalyticMistakes_v1.17_UnbrandedCommonAnalyticMistakes_v1.17_Unbranded
CommonAnalyticMistakes_v1.17_UnbrandedJim Parnitzke
 
Net promoter score (N.P.S) SCAM
Net promoter score (N.P.S) SCAMNet promoter score (N.P.S) SCAM
Net promoter score (N.P.S) SCAMHASSNAA EL AMRANI
 
How to set up an SEO forecast for free using excel
How to set up an SEO forecast for free using excelHow to set up an SEO forecast for free using excel
How to set up an SEO forecast for free using excelMarie Turner
 
Really simple analysis for extremely powerful insights - Data Curry
Really simple analysis for extremely powerful insights - Data CurryReally simple analysis for extremely powerful insights - Data Curry
Really simple analysis for extremely powerful insights - Data CurryData Curry
 
Master the essentials of conversion optimization
Master the essentials of conversion optimizationMaster the essentials of conversion optimization
Master the essentials of conversion optimizationArnas Rackauskas
 
Losing is the New Winning
Losing is the New WinningLosing is the New Winning
Losing is the New WinningOptimizely
 
!JWI 531 Financial Management II Week Four Lec.docx
!JWI 531 Financial Management II Week Four    Lec.docx!JWI 531 Financial Management II Week Four    Lec.docx
!JWI 531 Financial Management II Week Four Lec.docxkatherncarlyle
 
Quiz by parkhouse (1)
Quiz by parkhouse (1)Quiz by parkhouse (1)
Quiz by parkhouse (1)KatieFox28
 
Data Science unit 2 By: Professor Lili Saghafi
Data Science unit 2 By: Professor Lili SaghafiData Science unit 2 By: Professor Lili Saghafi
Data Science unit 2 By: Professor Lili SaghafiProfessor Lili Saghafi
 
Slides from Growthcon 2014 Lean Analytics masterclass
Slides from Growthcon 2014 Lean Analytics masterclassSlides from Growthcon 2014 Lean Analytics masterclass
Slides from Growthcon 2014 Lean Analytics masterclassLean Analytics
 
Slides for the day-long Lean Analytics workshop at the 2014 Lean Startup conf...
Slides for the day-long Lean Analytics workshop at the 2014 Lean Startup conf...Slides for the day-long Lean Analytics workshop at the 2014 Lean Startup conf...
Slides for the day-long Lean Analytics workshop at the 2014 Lean Startup conf...Lean Analytics
 
Startup Metrics: The Data That Will Make or Break Your Business by Alistair C...
Startup Metrics: The Data That Will Make or Break Your Business by Alistair C...Startup Metrics: The Data That Will Make or Break Your Business by Alistair C...
Startup Metrics: The Data That Will Make or Break Your Business by Alistair C...Lean Startup Co.
 
What Averages Dont Tell You
What Averages Dont Tell YouWhat Averages Dont Tell You
What Averages Dont Tell Youcliffhurst
 

Similar to Data Gone Wrong - GDCNext 2013 (20)

4 Cycles Remote Innovation - Communicate & Check
4  Cycles Remote Innovation - Communicate & Check 4  Cycles Remote Innovation - Communicate & Check
4 Cycles Remote Innovation - Communicate & Check
 
Balance between insight and noise indicia v2
Balance between insight and noise indicia v2Balance between insight and noise indicia v2
Balance between insight and noise indicia v2
 
The Myths of Big Data
The Myths of Big DataThe Myths of Big Data
The Myths of Big Data
 
CommonAnalyticMistakes_v1.17_Unbranded
CommonAnalyticMistakes_v1.17_UnbrandedCommonAnalyticMistakes_v1.17_Unbranded
CommonAnalyticMistakes_v1.17_Unbranded
 
Net promoter score (N.P.S) SCAM
Net promoter score (N.P.S) SCAMNet promoter score (N.P.S) SCAM
Net promoter score (N.P.S) SCAM
 
How to set up an SEO forecast for free using excel
How to set up an SEO forecast for free using excelHow to set up an SEO forecast for free using excel
How to set up an SEO forecast for free using excel
 
Being a Data-Driven Communicator
Being a Data-Driven CommunicatorBeing a Data-Driven Communicator
Being a Data-Driven Communicator
 
Really simple analysis for extremely powerful insights - Data Curry
Really simple analysis for extremely powerful insights - Data CurryReally simple analysis for extremely powerful insights - Data Curry
Really simple analysis for extremely powerful insights - Data Curry
 
Jerait PDF.pdf
Jerait PDF.pdfJerait PDF.pdf
Jerait PDF.pdf
 
Master the essentials of conversion optimization
Master the essentials of conversion optimizationMaster the essentials of conversion optimization
Master the essentials of conversion optimization
 
Kaedah Menganalisis data/Data Analysis
Kaedah Menganalisis data/Data AnalysisKaedah Menganalisis data/Data Analysis
Kaedah Menganalisis data/Data Analysis
 
Losing is the New Winning
Losing is the New WinningLosing is the New Winning
Losing is the New Winning
 
!JWI 531 Financial Management II Week Four Lec.docx
!JWI 531 Financial Management II Week Four    Lec.docx!JWI 531 Financial Management II Week Four    Lec.docx
!JWI 531 Financial Management II Week Four Lec.docx
 
1145 track3 balac
1145 track3 balac1145 track3 balac
1145 track3 balac
 
Quiz by parkhouse (1)
Quiz by parkhouse (1)Quiz by parkhouse (1)
Quiz by parkhouse (1)
 
Data Science unit 2 By: Professor Lili Saghafi
Data Science unit 2 By: Professor Lili SaghafiData Science unit 2 By: Professor Lili Saghafi
Data Science unit 2 By: Professor Lili Saghafi
 
Slides from Growthcon 2014 Lean Analytics masterclass
Slides from Growthcon 2014 Lean Analytics masterclassSlides from Growthcon 2014 Lean Analytics masterclass
Slides from Growthcon 2014 Lean Analytics masterclass
 
Slides for the day-long Lean Analytics workshop at the 2014 Lean Startup conf...
Slides for the day-long Lean Analytics workshop at the 2014 Lean Startup conf...Slides for the day-long Lean Analytics workshop at the 2014 Lean Startup conf...
Slides for the day-long Lean Analytics workshop at the 2014 Lean Startup conf...
 
Startup Metrics: The Data That Will Make or Break Your Business by Alistair C...
Startup Metrics: The Data That Will Make or Break Your Business by Alistair C...Startup Metrics: The Data That Will Make or Break Your Business by Alistair C...
Startup Metrics: The Data That Will Make or Break Your Business by Alistair C...
 
What Averages Dont Tell You
What Averages Dont Tell YouWhat Averages Dont Tell You
What Averages Dont Tell You
 

Recently uploaded

The CMO Survey - Highlights and Insights Report - Spring 2024
The CMO Survey - Highlights and Insights Report - Spring 2024The CMO Survey - Highlights and Insights Report - Spring 2024
The CMO Survey - Highlights and Insights Report - Spring 2024christinemoorman
 
Investment in The Coconut Industry by Nancy Cheruiyot
Investment in The Coconut Industry by Nancy CheruiyotInvestment in The Coconut Industry by Nancy Cheruiyot
Investment in The Coconut Industry by Nancy Cheruiyotictsugar
 
Annual General Meeting Presentation Slides
Annual General Meeting Presentation SlidesAnnual General Meeting Presentation Slides
Annual General Meeting Presentation SlidesKeppelCorporation
 
BEST Call Girls In Old Faridabad ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,
BEST Call Girls In Old Faridabad ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,BEST Call Girls In Old Faridabad ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,
BEST Call Girls In Old Faridabad ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,noida100girls
 
Buy gmail accounts.pdf Buy Old Gmail Accounts
Buy gmail accounts.pdf Buy Old Gmail AccountsBuy gmail accounts.pdf Buy Old Gmail Accounts
Buy gmail accounts.pdf Buy Old Gmail AccountsBuy Verified Accounts
 
Lowrate Call Girls In Sector 18 Noida ❤️8860477959 Escorts 100% Genuine Servi...
Lowrate Call Girls In Sector 18 Noida ❤️8860477959 Escorts 100% Genuine Servi...Lowrate Call Girls In Sector 18 Noida ❤️8860477959 Escorts 100% Genuine Servi...
Lowrate Call Girls In Sector 18 Noida ❤️8860477959 Escorts 100% Genuine Servi...lizamodels9
 
Flow Your Strategy at Flight Levels Day 2024
Flow Your Strategy at Flight Levels Day 2024Flow Your Strategy at Flight Levels Day 2024
Flow Your Strategy at Flight Levels Day 2024Kirill Klimov
 
8447779800, Low rate Call girls in New Ashok Nagar Delhi NCR
8447779800, Low rate Call girls in New Ashok Nagar Delhi NCR8447779800, Low rate Call girls in New Ashok Nagar Delhi NCR
8447779800, Low rate Call girls in New Ashok Nagar Delhi NCRashishs7044
 
BEST Call Girls In Greater Noida ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,
BEST Call Girls In Greater Noida ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,BEST Call Girls In Greater Noida ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,
BEST Call Girls In Greater Noida ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,noida100girls
 
/:Call Girls In Indirapuram Ghaziabad ➥9990211544 Independent Best Escorts In...
/:Call Girls In Indirapuram Ghaziabad ➥9990211544 Independent Best Escorts In.../:Call Girls In Indirapuram Ghaziabad ➥9990211544 Independent Best Escorts In...
/:Call Girls In Indirapuram Ghaziabad ➥9990211544 Independent Best Escorts In...lizamodels9
 
Pitch Deck Teardown: Geodesic.Life's $500k Pre-seed deck
Pitch Deck Teardown: Geodesic.Life's $500k Pre-seed deckPitch Deck Teardown: Geodesic.Life's $500k Pre-seed deck
Pitch Deck Teardown: Geodesic.Life's $500k Pre-seed deckHajeJanKamps
 
8447779800, Low rate Call girls in Shivaji Enclave Delhi NCR
8447779800, Low rate Call girls in Shivaji Enclave Delhi NCR8447779800, Low rate Call girls in Shivaji Enclave Delhi NCR
8447779800, Low rate Call girls in Shivaji Enclave Delhi NCRashishs7044
 
Call Us 📲8800102216📞 Call Girls In DLF City Gurgaon
Call Us 📲8800102216📞 Call Girls In DLF City GurgaonCall Us 📲8800102216📞 Call Girls In DLF City Gurgaon
Call Us 📲8800102216📞 Call Girls In DLF City Gurgaoncallgirls2057
 
8447779800, Low rate Call girls in Uttam Nagar Delhi NCR
8447779800, Low rate Call girls in Uttam Nagar Delhi NCR8447779800, Low rate Call girls in Uttam Nagar Delhi NCR
8447779800, Low rate Call girls in Uttam Nagar Delhi NCRashishs7044
 
Call Girls In Sikandarpur Gurgaon ❤️8860477959_Russian 100% Genuine Escorts I...
Call Girls In Sikandarpur Gurgaon ❤️8860477959_Russian 100% Genuine Escorts I...Call Girls In Sikandarpur Gurgaon ❤️8860477959_Russian 100% Genuine Escorts I...
Call Girls In Sikandarpur Gurgaon ❤️8860477959_Russian 100% Genuine Escorts I...lizamodels9
 
Islamabad Escorts | Call 03274100048 | Escort Service in Islamabad
Islamabad Escorts | Call 03274100048 | Escort Service in IslamabadIslamabad Escorts | Call 03274100048 | Escort Service in Islamabad
Islamabad Escorts | Call 03274100048 | Escort Service in IslamabadAyesha Khan
 
Marketing Management Business Plan_My Sweet Creations
Marketing Management Business Plan_My Sweet CreationsMarketing Management Business Plan_My Sweet Creations
Marketing Management Business Plan_My Sweet Creationsnakalysalcedo61
 
Call Girls in DELHI Cantt, ( Call Me )-8377877756-Female Escort- In Delhi / Ncr
Call Girls in DELHI Cantt, ( Call Me )-8377877756-Female Escort- In Delhi / NcrCall Girls in DELHI Cantt, ( Call Me )-8377877756-Female Escort- In Delhi / Ncr
Call Girls in DELHI Cantt, ( Call Me )-8377877756-Female Escort- In Delhi / Ncrdollysharma2066
 
Call Girls In Connaught Place Delhi ❤️88604**77959_Russian 100% Genuine Escor...
Call Girls In Connaught Place Delhi ❤️88604**77959_Russian 100% Genuine Escor...Call Girls In Connaught Place Delhi ❤️88604**77959_Russian 100% Genuine Escor...
Call Girls In Connaught Place Delhi ❤️88604**77959_Russian 100% Genuine Escor...lizamodels9
 

Recently uploaded (20)

The CMO Survey - Highlights and Insights Report - Spring 2024
The CMO Survey - Highlights and Insights Report - Spring 2024The CMO Survey - Highlights and Insights Report - Spring 2024
The CMO Survey - Highlights and Insights Report - Spring 2024
 
Investment in The Coconut Industry by Nancy Cheruiyot
Investment in The Coconut Industry by Nancy CheruiyotInvestment in The Coconut Industry by Nancy Cheruiyot
Investment in The Coconut Industry by Nancy Cheruiyot
 
Annual General Meeting Presentation Slides
Annual General Meeting Presentation SlidesAnnual General Meeting Presentation Slides
Annual General Meeting Presentation Slides
 
Corporate Profile 47Billion Information Technology
Corporate Profile 47Billion Information TechnologyCorporate Profile 47Billion Information Technology
Corporate Profile 47Billion Information Technology
 
BEST Call Girls In Old Faridabad ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,
BEST Call Girls In Old Faridabad ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,BEST Call Girls In Old Faridabad ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,
BEST Call Girls In Old Faridabad ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,
 
Buy gmail accounts.pdf Buy Old Gmail Accounts
Buy gmail accounts.pdf Buy Old Gmail AccountsBuy gmail accounts.pdf Buy Old Gmail Accounts
Buy gmail accounts.pdf Buy Old Gmail Accounts
 
Lowrate Call Girls In Sector 18 Noida ❤️8860477959 Escorts 100% Genuine Servi...
Lowrate Call Girls In Sector 18 Noida ❤️8860477959 Escorts 100% Genuine Servi...Lowrate Call Girls In Sector 18 Noida ❤️8860477959 Escorts 100% Genuine Servi...
Lowrate Call Girls In Sector 18 Noida ❤️8860477959 Escorts 100% Genuine Servi...
 
Flow Your Strategy at Flight Levels Day 2024
Flow Your Strategy at Flight Levels Day 2024Flow Your Strategy at Flight Levels Day 2024
Flow Your Strategy at Flight Levels Day 2024
 
8447779800, Low rate Call girls in New Ashok Nagar Delhi NCR
8447779800, Low rate Call girls in New Ashok Nagar Delhi NCR8447779800, Low rate Call girls in New Ashok Nagar Delhi NCR
8447779800, Low rate Call girls in New Ashok Nagar Delhi NCR
 
BEST Call Girls In Greater Noida ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,
BEST Call Girls In Greater Noida ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,BEST Call Girls In Greater Noida ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,
BEST Call Girls In Greater Noida ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,
 
/:Call Girls In Indirapuram Ghaziabad ➥9990211544 Independent Best Escorts In...
/:Call Girls In Indirapuram Ghaziabad ➥9990211544 Independent Best Escorts In.../:Call Girls In Indirapuram Ghaziabad ➥9990211544 Independent Best Escorts In...
/:Call Girls In Indirapuram Ghaziabad ➥9990211544 Independent Best Escorts In...
 
Pitch Deck Teardown: Geodesic.Life's $500k Pre-seed deck
Pitch Deck Teardown: Geodesic.Life's $500k Pre-seed deckPitch Deck Teardown: Geodesic.Life's $500k Pre-seed deck
Pitch Deck Teardown: Geodesic.Life's $500k Pre-seed deck
 
8447779800, Low rate Call girls in Shivaji Enclave Delhi NCR
8447779800, Low rate Call girls in Shivaji Enclave Delhi NCR8447779800, Low rate Call girls in Shivaji Enclave Delhi NCR
8447779800, Low rate Call girls in Shivaji Enclave Delhi NCR
 
Call Us 📲8800102216📞 Call Girls In DLF City Gurgaon
Call Us 📲8800102216📞 Call Girls In DLF City GurgaonCall Us 📲8800102216📞 Call Girls In DLF City Gurgaon
Call Us 📲8800102216📞 Call Girls In DLF City Gurgaon
 
8447779800, Low rate Call girls in Uttam Nagar Delhi NCR
8447779800, Low rate Call girls in Uttam Nagar Delhi NCR8447779800, Low rate Call girls in Uttam Nagar Delhi NCR
8447779800, Low rate Call girls in Uttam Nagar Delhi NCR
 
Call Girls In Sikandarpur Gurgaon ❤️8860477959_Russian 100% Genuine Escorts I...
Call Girls In Sikandarpur Gurgaon ❤️8860477959_Russian 100% Genuine Escorts I...Call Girls In Sikandarpur Gurgaon ❤️8860477959_Russian 100% Genuine Escorts I...
Call Girls In Sikandarpur Gurgaon ❤️8860477959_Russian 100% Genuine Escorts I...
 
Islamabad Escorts | Call 03274100048 | Escort Service in Islamabad
Islamabad Escorts | Call 03274100048 | Escort Service in IslamabadIslamabad Escorts | Call 03274100048 | Escort Service in Islamabad
Islamabad Escorts | Call 03274100048 | Escort Service in Islamabad
 
Marketing Management Business Plan_My Sweet Creations
Marketing Management Business Plan_My Sweet CreationsMarketing Management Business Plan_My Sweet Creations
Marketing Management Business Plan_My Sweet Creations
 
Call Girls in DELHI Cantt, ( Call Me )-8377877756-Female Escort- In Delhi / Ncr
Call Girls in DELHI Cantt, ( Call Me )-8377877756-Female Escort- In Delhi / NcrCall Girls in DELHI Cantt, ( Call Me )-8377877756-Female Escort- In Delhi / Ncr
Call Girls in DELHI Cantt, ( Call Me )-8377877756-Female Escort- In Delhi / Ncr
 
Call Girls In Connaught Place Delhi ❤️88604**77959_Russian 100% Genuine Escor...
Call Girls In Connaught Place Delhi ❤️88604**77959_Russian 100% Genuine Escor...Call Girls In Connaught Place Delhi ❤️88604**77959_Russian 100% Genuine Escor...
Call Girls In Connaught Place Delhi ❤️88604**77959_Russian 100% Genuine Escor...
 

Data Gone Wrong - GDCNext 2013

  • 1. 1
  • 2. It’s the cornerstone of many of the biggest businesses in the US, including Google & Amazon, and the backbone of most scientific undertakings. 2
  • 3. There’s plenty of cheerleading for data so I want to spend today on cautionary tales & advice, in the hope of helping keep data more on the Iron Man side of the Robert Downey Jr spectrum. 3
  • 4. I love using numbers & testing to understand the world, I’m not a data hater by any means. If you want to know about medieval Transylvania or the Ottoman invasion of Hungary, I’m you’re woman. That didn’t get me far on the job market. Partly to do something different, partly to do games. But despite that intention it hasn’t been as different as I expected – user acquisition for games and catalogs is fundamentally the same. But Kongregate, because we’re an open platform with over 70k games and now a mobile game publisher, has provided some incredibly rich opportunities for data mining. 4
  • 5. Part of the reason I’m telling you this is to make my first point: And for an organization to do data right you can’t toss analysis back and forth over a wall to quants. It takes intimate knowledge of a game (and the development) to do good analysis and multiple perspectives and theories are good. 5
  • 6. Sometimes it’s immediately obvious – we had a mobile game we launched recently, an endless runner, that wasn’t filtering purchases from jailbroken phones and was showing an ARPPU of $500, not very plausible and easily caught. But most issues are much more subtle – tracking pixels not firing correctly for a particular game on a particular browser, tutorial steps being completed twice by some players but not by others, clients reporting strange timestamps, etc. For this reason you should never rely on any analytic system where you can’t go in and inspect individual records. If you can’t check the detail you’ll never be able to find and fix problems. We use Google Analytics for reference and corroboration but nothing very crucial, and are using it less and less because of this. 6
  • 7. This looks like 4 separate pictures photoshopped together to create an appealing color grid, right? 7
  • 8. Wrong. So much of data is like these pictures – a set-up that appears straightforwardly to be one thing from one angle, turns out to be completely different from another. 8
  • 9. Except of course you know I’m setting you up 9
  • 10. I mentioned lifetime conversion and showed daily ARPPU. Lifetime conversion may be similar between the two games, but daily conversion is 40% higher for game 1. This is why $/DAU is not a very interesting stat on its own. If someone quotes just D1 retention and $/DAU that’s not enough information to judge how a game monetizes. 10
  • 11. It’s a living, changing system. Flat views are not enough. 11
  • 12. So here are a series of likely traps analysts can fall into. I know I have. They’re not in a particular order of importance because they’re all important. We tend to think of playerbases as monolithic but really they are aggregations of all sorts of subgroups. It’s sort of like watching a meal go through a snake. Though with time cohorts it’s easy to lose track of events and changes in the game, so you can’t rely on those, either. 12
  • 13. 13
  • 14. 14
  • 15. You may have noticed that win rates got a bit wacky towards the later missions of the graph of the last chart – this is a sample size issue. Even games that overall have very substantial playerbases like Tyrant may end up with small sample sizes when you’re looking at uncommon behavior in subgroups. Early test market data is often tantalizing & fascinating, but it’s often the most unreliable because you’re combining small sample sizes and a non-representative subgroup – the people who discover you first are the most hard-core. 15
  • 16. not normal (bell-curve) distributions, which affects everything. Theoretically it’s not even possible to calculate the average value of a power distribution since the infrequent top values could be infinite. The sample size depends on the frequency of the event – tutorial completion & D1 retention should be fine with just a few hundred users, % buyer with 500+, but I don’t like to look at ARPPU with much less than 5,000. These are just my rules of thumb based on experience and probably have no mathematical basis. 16
  • 17. 17
  • 18. 18
  • 19. If you ask small questions you’ll usually get small answers. And the dirty secret of testing is that most test are inconclusive anyway. It’s hard to move important metrics. So prioritize tests that significanly affect the game, like energy limits and regeneration over button colors. 19
  • 20. Your existing players are used to things working a certain way – a change in UI that makes things clearer for a new player may annoy/confuse an elder player. Where possible I like to test disruptive changes on new players only, and then roll out the test to other players if the test proves successful. A pricing change that increases non-buyer conversion might reduce repeat buyer revenue. For example if you’re A/B testing your store, don’t assign people to the test unless they interact with the store. It’s often easier to split people as they arrive in your game, or some other thing, but a) there’s a chance you would end up with non-equal distribution of interaction with the tested feature and b)any signal from the test group would get lost in the noise of a larger sample. 20
  • 21. Early results tend to be both volatile and fascinating – differences are exaggerated or totally change direction. People tend to remember the early, interesting results rather than the actual results. People also often want to end the test early if they see a big swing, which is a bad idea. We tested to see what gain we were getting from bonusing buying larger currency packages, which had to be judged on total revenue to make sure we were capturing both transaction size and repeat purchase factors. To make sure the 15% lift was real we broke buyers into cohorts by how much they’d spent ($0-$10, $100-$200, $200-$500, etc) and checked the distribution in each test. On the bonus side of the test we saw fewer buyer <$20 and 30%+ gains on all the cohorts above $100+, so we were confident that the gain was not being driven but a few big spenders. Again this should be worked backward from the frequency and distribution of the metric you’re judging the test on. There’s internet calculators to help you figure out what you need to get to statistical significance given an expected lift. My advice (if you have the playerbase and patience) is to then double or triple that. Why do I want my sample sizes so much bigger than the minimum? 21
  • 22. It comes down to some of the issues with judging results by statistical significance itself. It doesn’t mean what you probably think it means. Statistical significance tests assume that there is some true difference in lift, and that if you test there will be a bell curve distribution of results, with the true lift as the average. Your 5% result could be right on the mean, or it could be an outlier on either end. If it’s statistically significant then the chance is low (usually 5% or less) that there’s no lift at all. But the true lift could be 1% or 10%. It’s possible you’d get two outlier results in the same direction, but becomes less and less likely, and more likely that your test results represent the true mean. And the size of the effect you are testing does matter as it helps you understand the relative importance of different factors, and what to prioritize testing next. 22
  • 23. For example we’ve had a lot of tests that increased registration and reduced retention, so much so that we now judge tests based on % retained registrations because that’s what we really care about, but that’s not always possible. 23
  • 24. A good example of this is adding a Facebook login button on our website. If a player comes back on a different browser they need to be able to login. 24
  • 25. 25
  • 26. This is about how you think about your business. 26