Mobile Analytics
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Transcript of Mobile Analytics
![Page 1: Mobile Analytics](https://reader035.fdocuments.in/reader035/viewer/2022062513/5550d852b4c905e8318b5185/html5/thumbnails/1.jpg)
MOBILE ANALYTICS
Measurements and Metrics
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REFERENCE: Lean Startup by Eric Ries
VALIDATED LEARNING LOOP
• Analytics and Metrics Process = Build + Measure + Learn
• Best summarized by Eric Ries’s Validated Learning Loop in Lean Startup methodology
Not just code. Also alignment of measurement and business strategy
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REFERENCE: Lean Startup by Eric Ries
OUTCOMES
• Analytics don’t end with measurement
• Must translate data into desirable outcomes
Test, measure, and take action
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BUSINESS REQUIREMENTS
• FUNDAMENTAL QUESTION: WHAT DEFINES SUCCESS?
• All analysis start with a question • Understand what metrics and data are needed to make
better decisions and perform better• Analyze mobile app architecture
– Any constraints that may inhibit measurements– How to leverage technology
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Reference: dave McClure, 500 startups. Picture courtesy of walt Disney pictures
PRODUCT USAGE METRICS
• What do you need to do to build your product and learn about your users?
• Dave McClure’s AARRR model provides 5 useful metrics to learning about your product and how it is used
AARRR!
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Reference: dave McClure, 500 startups
THE AARRR MODEL
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FUNNEL ANALYSIS
• A funnel of steps that a user go through before meeting a goal, for example– Steps leading to contacting the company– Steps leading to purchasing the product– Steps leading to purchasing in-app modules/features– Steps leading to purchasing merchandise or tokens (for games(
• Funnel analysis = understanding conversions• A step in a funnel = a page view (web) = a screen or action
(mobile app)
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WEB VS MOBILE
WEB MOBILE APP
Session tracking done primarily thru cookies and Javascript
Session tracking done primarily thru UDID
Human user interface is keyboard and mouse based
Human user interface is gestural and touch-based
Web measurement model is centered around page views, referrals, search,
and visitsMeasurement model is less about
referrals and search
Unique visitors are tied to individual or server IP addresses
Unique visitors are measured differently because of gateway IPs of
carriers
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SOLUTIONS
• Flurry – http://flurry.com/ • Localytics – http://localytics.com/ • Webtrends –
http://webtrends.com/products/analytics/mobile/ • AppClix – http://www.appclix.com/ • Kontagent – http://kontagent.com/ • Bango – http://bango.com/ • Apsalar – http://apsalar.com/ • Claritics – http://claritics.com/ • Others that we may have missed…
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MOBILE METRICS CATEGORIES
• Application• Content• User Behavior• People/Location• Technical
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COMMON MOBILE METRICS 1
• Applications– #Downloads– Conversions
(Monetization)– Engagement/loyalty
(over time)– User acquisition– User retention– Cohort analysis
(retention, engagement, monetization)
• Content– Screens– Visits, unique visits– In-app – Ads– Links– Other events
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COMMON MOBILE METRICS 2
• User Behavior– Screen flow (useful for
navigation and usability)– Exits (how users are
exiting an app)– Sessions (length,
frequency, type of users)
• People/Location– Users– Social identity– Countries/Regions– Languages– Marketplaces– Carriers– Age
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COMMON MOBILE METRICS 3
• Technical– Errors– Devices– Operating systems– App Versions– Connections
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Reference: Localytics report
REPORT TERMINOLOGY
• Common report terminology• Example: Breakdown of OS versions used to run the app
DIMENSION: OS VersionFILTER: Time Duration
METRIC: Session
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STRATEGIES
• Define a few funnels to understand how user usage drives towards a goal like registration, purchase
• If possible apply some of the advanced tracking and reporting features in the analytics tool to provide deeper insights– Filters (at the log and report levels)– Funnel analysis– Profiling
• Keep refining how metrics are tracked
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EVENT TAGGING
• Data collection• Mapping: Actions » Events » Metrics• Need to define events to tag so that we can
measure the metrics• Example:
– Start Time = Time when a player starts playing a game
– End Time = Time when a player ends a game– Defines the names for both events
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Picture: Sean Dreilinger - http://www.flickr.com/photos/seandreilinger/2326448445/in/photostream/
Questions?