Design by Numbers: A Data-Driven UX Process

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Design by NumbersA Data-Driven UX Process

Brian Rimel @brianrimelUX Consultant, OpenSource Connections

User-Centered Design

Internal enterprise applications

Access to users

Why Data?Balancing the qualitative and quantitative

You can’t always trust your users

Limited data doesn’t tell the whole story

The HEART Framework

Src: https://library.gv.com/how-to-choose-the-right-ux-metrics-for-your-product-5f46359ab5be

PULSE MetricsPage views, Uptime, Latency,

Seven-day active users, Earnings

Unnecessary Data Creates Noise

HEART MetricsHappiness, Engagement, Adoption,

Retention, Task Success

HappinessSatisfaction or Delight

System Usability Scale, Net Promoter Score

EngagementLevel of involvement

Number of visits per user per week

AdoptionNew users/uses of a feature

Number of accounts created in the last 7 days

RetentionRate at which existing users return

Percentage of seven-day active users that are still active 30 days later

Task SuccessTraditional behavior metrics for efficiency,

effectiveness, and error rate.Percentage of completion errors for a given task

Goals

Signals

Metrics

Goals Signals Metrics

HappinessThe user feels the welcome wizard is

easy to useLevel of user satisfaction Mean SUS Score

Engagement - - -

Adoption - - -Retention - - -

Task Success

The welcome wizard should be

as simple as possible

The number of errors during the

processRate of error

per step

Example: Welcome Wizard

Goals should be SMARTSpecific, Measurable, Attainable, Realistic, Time-Based

Normalize the DataWhat does an increase in total active users tell us?

A Limited-Data Process

Initial Metrics Gathering

Existing metrics influence feature priority

Kano Survey for feature-level satisfaction

Kano Survey

src: http://uxmag.com/articles/leveraging-the-kano-model-for-optimal-results

Feature Must-beOne-

Dimensional

Attractive

Unimportant

Undesired

Advanced Search 87% 8% 4% 1% 0%

Prioritizing of Features

1.2.3. Advanced Search4.5.6.7.8.9.10.

From Kano Survey:87% Must-be feature

From Usage Statistics:22% Engagement/Week

Why the discrepancy?

Goals Signals Metrics

HappinessThe user feels

comfortable using advanced search

Level of confidence SUS Survey

Engagement

The features enable consistent

searching

Number of advanced searches

Searches per day per user

Adoption - - -Retention - - -

Task Success

The advanced search process is easily understood

User enters a query, but does not complete

the search

Percentage of Abandoned Searches

Advanced Search: Goals & Metrics

User Interview & Testing

Identify discrepancy between stated importance and usage metrics

Establish baseline metricsMeasure satisfaction - SUS Survey

System Usability Scale (SUS)

src: https://www.usability.gov/how-to-and-tools/methods/system-usability-scale.html

Review FindingsMetric Initial Testing

Mean SUS Score 56Error Rate / Step 21%

Okay, so where is the problem?Let’s map it!

Mapping the Journey

Develop Prototypes

User Testing of Prototype

Continue measuring baseline metrics

A/B Testing

Follow-up SUS Survey

Results & Recommendations

Great! But, what does this mean?Context critical to interpretation

Metric Initial Testing Prototype Testing

Mean SUS Score 56 73Error Rate / Step 21% 12%

The Customer Journey

Long-Term Metrics

Tracking Engagement, Adoption, Retention, and Task Success over timePeriodic usability testing of full application

The Data-Driven Process

Tools

Kibana Dashboard

“Extremely satisfied is like extremely edible.”

- Jared Spool

Key Takeaways• Collaboratively define SMART goals• Revisit and challenge goals• Continuously monitor metrics over time• Balance quantitative and qualitative

measures

Questions

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