Analytics and Optimization

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8 — Analytics

From Code to Product gidgreen.com/course

Lecture 8

•  Introduction •  Website metrics •  Optimization •  Competitive intelligence •  Surveys •  Tools and books

From Code to Product Lecture 8 — Analytics— Slide 2 gidgreen.com/course

Why analytics?

•  Quantify success/failure – For yourselves – For investors – Against competition

•  Scientific decisions – No blind faith – Fewer arguments – Avoid HiPPO = highest paid person’s opinion

From Code to Product Lecture 8 — Analytics— Slide 3 gidgreen.com/course

Good analytics

•  Simple •  Few in number •  Relevant •  Unambiguous •  Actionable •  Instant (or nearly) •  Repeatable

From Code to Product Lecture 8 — Analytics— Slide 4 gidgreen.com/course

AARRR — Metrics for pirates

From Code to Product Lecture 8 — Analytics— Slide 5 gidgreen.com/course

Acquisition Site visit or app download

Activation Registration or usage

Retention Repeat usage

Referral Brings other people

Revenue Generate cash

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Some quotes

“What gets measured, gets managed.” — Peter Drucker

“The only metrics that entrepreneurs should invest energy in collecting are those that help them make decisions.”

— Eric Ries, The Lean Startup

From Code to Product Lecture 8 — Analytics— Slide 6 gidgreen.com/course

In-app analytics

•  Home rolled or third party •  Store usage information locally

– ‘Call home’ when online

•  Privacy concerns – Confirmation dialog?

•  Complete access to device – But you will be caught!

•  Problem: slow iteration

From Code to Product Lecture 8 — Analytics— Slide 7 gidgreen.com/course

Web analytics

•  All activity visible to site – Users don’t expect privacy

•  Web servers log requests – Also: Javascript solutions

•  Page view centric – Other events require integration – Coffee break? – Events not sessions

From Code to Product Lecture 8 — Analytics— Slide 8 gidgreen.com/course

A web server log line

www.websudoku.com 24.186.55.113 [06/May/2012:08:13:02 -0400] "GET / HTTP/1.1” 200 1045 "http://www.google.com/search?q=sudoku”

"Mozilla/5.0 (iPhone; CPU iPhone OS 5_1 like Mac OS X) AppleWebKit/534.46 (KHTML, like Gecko) Mobile/9B179 Safari/7534.48.3" From Code to Product Lecture 8 — Analytics— Slide 9 gidgreen.com/course

Javascript tracking code <script type="text/javascript”> var _gaq = _gaq || []; _gaq.push(['_setAccount', 'UA-1165533-3']); _gaq.push(['_trackPageview']); (function() { var ga = document.createElement('script'); ga.type = 'text/javascript'; ga.async = true; ga.src = ('https:' == document.location.protocol ? 'https://ssl' : 'http://www') + '.google-analytics.com/ga.js'; var s = document.getElementsByTagName('script')[0]; s.parentNode.insertBefore(ga, s); })(); </script>

From Code to Product Lecture 8 — Analytics— Slide 10 gidgreen.com/course

Metrics alternatives

From Code to Product Lecture 4 — UI Design— Slide 11 gidgreen.com/course

Server logs Javascript Home-made

Integration None Via HTML Server code

Convenience Download + analyze

Web-based access Up to you

Delay None Up to 24 hours Up to you

Reporting Varies Advanced Up to you

Other events Hard Via API Easy

Data leakage None Total! None

Track web users by…

•  IP address – Given for every web request – Good for geography – But: proxies, classrooms, router resets

•  Cookies – Track user browser over long term – But: clearing, multi-browsing, first request – Customization of web server

From Code to Product Lecture 8 — Analytics— Slide 12 gidgreen.com/course

Track web users by…

•  Log in – Reliable for registered users – But: anonymous users, multiple accounts – Requires custom logging tools

•  Solution: combine! –  Intelligently tie IPs, cookies and accounts – Example: user registration

•  Data always incomplete

From Code to Product Lecture 8 — Analytics— Slide 13 gidgreen.com/course

Lecture 8

•  Introduction •  Website metrics •  Optimization •  Competitive intelligence •  Surveys •  Tools and books

From Code to Product Lecture 8 — Analytics— Slide 14 gidgreen.com/course

Basic website metrics

From Code to Product Lecture 8 — Analytics— Slide 15 gidgreen.com/course

Immediate questions

•  When does one visit end? – GA: 30 minutes without activity

•  What makes a visitor unique? – GA: Tracking cookie

•  How is duration calculated? – GA: Time between first and last pages

•  What makes a visitor new? – GA: Never visited your site before

From Code to Product Lecture 8 — Analytics— Slide 16 gidgreen.com/course

Geography

From Code to Product Lecture 6 — BM — Advertising— Slide 17 gidgreen.com/course

Demographics

From Code to Product Lecture 6 — BM — Advertising— Slide 18 gidgreen.com/course

Frequency report

From Code to Product Lecture 8 — Analytics— Slide 19 gidgreen.com/course

Sources of traffic

•  Type-in (no referrer) –  Includes browser bookmarks

•  Search engines – Navigational search = type-in

•  Referrals – Website links or social media

•  Paid advertising •  Email campaigns

From Code to Product Lecture 8 — Analytics— Slide 20 gidgreen.com/course

The multitouch problem

•  There’s history before the referrer – Who deserves the credit, e.g. affiliates

•  So who gets the credit? – Last click (standard) – First click (unrealistic) – Even split – Split weighted to last

•  Real question: what gives best ROI?

From Code to Product Lecture 8 — Analytics— Slide 21 gidgreen.com/course

Search engine queries

From Code to Product Lecture 8 — Analytics— Slide 22 gidgreen.com/course

Also: internal site search

Popular pages

From Code to Product Lecture 8 — Analytics— Slide 23 gidgreen.com/course

Landing/entry pages

From Code to Product Lecture 8 — Analytics— Slide 24 gidgreen.com/course

“You can’t choose your home page” — A. Kaushik

Clickmaps and heatmaps

From Code to Product Lecture 8 — Analytics— Slide 25 gidgreen.com/course

Conversion funnel

From Code to Product Lecture 8 — Analytics— Slide 26 gidgreen.com/course

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Sampling methods

•  Popular site => lots of data – Burden to collect, slow to analyze

•  Don’t record all events – Choose important pages – Random subset of visitors – Random subset of pageviews

•  Sub-sample when analyzing – By page or visitor

From Code to Product Lecture 8 — Analytics— Slide 27 gidgreen.com/course

Staleness due to changes in…

•  Content •  User familiarity •  Search engine rankings •  Market •  Technology •  Cookies

– Long-term analysis would be great!

From Code to Product Lecture 8 — Analytics— Slide 28 gidgreen.com/course

Lecture 8

•  Introduction •  Website metrics •  Optimization •  Competitive intelligence •  Surveys •  Tools and books

From Code to Product Lecture 8 — Analytics— Slide 29 gidgreen.com/course

Optimization

•  You don’t know how users behave – Example: show price early on?

•  Small changes => big results – But which small changes?

•  Use a scientific methodology – Easy to set up – Easy to get report – Statistical significance

From Code to Product Lecture 8 — Analytics— Slide 30 gidgreen.com/course

Wording example

From Code to Product Lecture 8 — Analytics— Slide 31 gidgreen.com/course

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A/B testing

•  Two parallel variations – Current vs challenger

•  Assign randomly and evenly – What about previous visitors? – Repeat requests within a session?

•  Set test length in advance – Length of time or number of visits

•  Chi-squared (or similar) test

From Code to Product Lecture 8 — Analytics— Slide 32 gidgreen.com/course

Contingency table

Product purchased

Not purchased

9 575

13 563

From Code to Product Lecture 8 — Analytics— Slide 33 gidgreen.com/course

Multivariate testing

From Code to Product Lecture 8 — Analytics— Slide 34 gidgreen.com/course

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Multivariate testing

•  Best to use third-party tool •  Full factorial vs partial factorial

– Certainty vs efficiency

From Code to Product Lecture 8 — Analytics— Slide 35 gidgreen.com/course

Optimization pitfalls

•  Preconception driven – Too many similar tests – Checking before it’s done

•  Wrong goal – e.g. started vs completed purchases

•  Unfair test – Different time periods – New vs returning users

From Code to Product Lecture 8 — Analytics— Slide 36 gidgreen.com/course

More complex tests

•  Non-binary outcomes – Size of purchase, length of stay

•  Cohort / longitudinal tests •  Whole-site multivariate testing •  Pricing

– How to prevent a riot?

•  Spot diminishing returns – Focus on registration, payment, etc…

From Code to Product Lecture 8 — Analytics— Slide 37 gidgreen.com/course

Lecture 8

•  Introduction •  Website metrics •  Optimization •  Competitive intelligence •  Surveys •  Tools and books

From Code to Product Lecture 8 — Analytics— Slide 38 gidgreen.com/course

Finding competitors

From Code to Product Lecture 8 — Analytics— Slide 39 gidgreen.com/course

Searches for product

From Code to Product Lecture 8 — Analytics— Slide 40 gidgreen.com/course

But…

From Code to Product Lecture 8 — Analytics— Slide 41 gidgreen.com/course

Ranking for general searches

From Code to Product Lecture 8 — Analytics— Slide 42 gidgreen.com/course

App Store searches

From Code to Product Lecture 8 — Analytics— Slide 43 gidgreen.com/course

Online mentions

From Code to Product Lecture 8 — Analytics— Slide 44 gidgreen.com/course

Website traffic

From Code to Product Lecture 8 — Analytics— Slide 45 gidgreen.com/course

Website traffic

From Code to Product Lecture 8 — Analytics— Slide 46 gidgreen.com/course

Downloads/installs

From Code to Product Lecture 8 — Analytics— Slide 47 gidgreen.com/course

Registrations

From Code to Product Lecture 8 — Analytics— Slide 48 gidgreen.com/course

Revenue

From Code to Product Lecture 8 — Analytics— Slide 49 gidgreen.com/course

Also: UK private companies

Revenue

From Code to Product Lecture 8 — Analytics— Slide 50 gidgreen.com/course

$200k

Lecture 8

•  Introduction •  Website metrics •  Optimization •  Competitive intelligence •  Surveys •  Tools and books

From Code to Product Lecture 8 — Analytics— Slide 51 gidgreen.com/course

Why surveys?

•  Customer feedback en masse –  Initiated by you (email/web) – Avoid vocal minority

•  Understand market – Job descriptions – Size of company – Use of product

•  How did you find me?

From Code to Product Lecture 8 — Analytics— Slide 52 gidgreen.com/course

Why surveys?

•  Help with strategic decisions – Premium offerings – Major new versions

•  Customer satisfaction – Quantify word of mouth

•  Understand abandonment – But hard to motivate response

•  Open-ended feedback

From Code to Product Lecture 8 — Analytics— Slide 53 gidgreen.com/course

Sources of bias

•  Non-response bias – Busy customer ≠ bad customer

•  Response bias – Word questions objectively

•  Predictions vs facts – Would you pay? How much?

•  Snapshot in time – Lots of data vs ongoing data

From Code to Product Lecture 8 — Analytics— Slide 54 gidgreen.com/course

Good survey design

•  Keep it short! – Focus on objectives

•  Minimize burden on user – Easy questions, especially at start – Multiple choice

•  Make it feel anonymous – Social desirability bias

•  Free text at end

From Code to Product Lecture 8 — Analytics— Slide 55 gidgreen.com/course

Bad questions

When did you last go online and buy something?

Would you buy our superior product?

Are you willing to pay for things online?

If we created a reliable and bug-free product which had all of the features that you requested in

response to the questions in this survey, would you be willing to pay us $10 per month for it?

What are you looking for?

From Code to Product Lecture 8 — Analytics— Slide 56 gidgreen.com/course

Lecture 8

•  Introduction •  Website metrics •  Optimization •  Competitive intelligence •  Surveys •  Tools and books

From Code to Product Lecture 8 — Analytics— Slide 57 gidgreen.com/course

Analytics tools

From Code to Product Lecture 8 — Analytics— Slide 58 gidgreen.com/course

Other tools

From Code to Product Lecture 8 — Analytics— Slide 59 gidgreen.com/course

Books

From Code to Product Lecture 8 — Analytics— Slide 60 gidgreen.com/course

We didn’t cover…

•  Social media analytics – Popularity – Sentiment analysis

•  Video analytics – Attention – Embeds

•  Content reuse

From Code to Product Lecture 8 — Analytics— Slide 61 gidgreen.com/course