Marketing Campaign Analytics: A/B Testing & Attribution
Intermediate
120 min
35 views
0 solutions
Overview
Analyze marketing campaign performance using A/B testing, attribution modeling, and customer journey analytics to optimize marketing ROI.
Case Details
## Business Context
A digital marketing team has run multiple campaigns across channels (Google Ads, Facebook, Email, Organic) over the past quarter. They need to understand which campaigns drove conversions and how to allocate next quarter's budget.
## Challenges
1. Multi-Touch Attribution
- Customers interact with multiple touchpoints
- Last-click attribution undervalues awareness campaigns
- Need to assign credit appropriately
2. A/B Testing Analysis
- Multiple tests ran simultaneously
- Need to determine statistical significance
- Account for seasonality and external factors
3. Channel Performance
- Compare ROI across channels
- Understand funnel progression
- Identify bottlenecks
4. Budget Optimization
- Recommend budget allocation
- Forecast expected conversions
- Consider diminishing returns
## Data Available
- Campaign data (impressions, clicks, spend)
- User-level journey data (touchpoints, timestamps)
- Conversion data (purchases, value, timestamps)
- A/B test assignments and results
- Channel costs and budgets
## Analytics Tasks
### Descriptive Analytics
- Campaign performance summary
- Channel-wise conversion rates
- Customer journey visualization
### Diagnostic Analytics
- Why did Campaign A outperform Campaign B?
- Which touchpoints are most influential?
- What's the optimal frequency?
### Predictive Analytics
- Forecast conversions for budget scenarios
- Predict customer LTV by acquisition channel
- Estimate diminishing returns curves
### Prescriptive Analytics
- Recommend budget allocation
- Suggest campaign optimizations
- Propose testing roadmap
## Deliverables
1. Marketing Dashboard
- Campaign performance overview
- Channel attribution breakdown
- A/B test results
- Funnel visualization
2. Attribution Model
- Compare models (first-click, last-click, linear, time-decay)
- Recommend best model for business
- Show credit allocation
3. Budget Recommendation
- Optimal allocation by channel
- Expected impact on conversions
- Sensitivity analysis
4. Testing Roadmap
- Priority tests for next quarter
- Sample size calculations
- Success metrics
## Success Criteria
- Clear attribution insights
- Statistically valid A/B test conclusions
- Actionable budget recommendations
- Professional dashboard design
A digital marketing team has run multiple campaigns across channels (Google Ads, Facebook, Email, Organic) over the past quarter. They need to understand which campaigns drove conversions and how to allocate next quarter's budget.
## Challenges
1. Multi-Touch Attribution
- Customers interact with multiple touchpoints
- Last-click attribution undervalues awareness campaigns
- Need to assign credit appropriately
2. A/B Testing Analysis
- Multiple tests ran simultaneously
- Need to determine statistical significance
- Account for seasonality and external factors
3. Channel Performance
- Compare ROI across channels
- Understand funnel progression
- Identify bottlenecks
4. Budget Optimization
- Recommend budget allocation
- Forecast expected conversions
- Consider diminishing returns
## Data Available
- Campaign data (impressions, clicks, spend)
- User-level journey data (touchpoints, timestamps)
- Conversion data (purchases, value, timestamps)
- A/B test assignments and results
- Channel costs and budgets
## Analytics Tasks
### Descriptive Analytics
- Campaign performance summary
- Channel-wise conversion rates
- Customer journey visualization
### Diagnostic Analytics
- Why did Campaign A outperform Campaign B?
- Which touchpoints are most influential?
- What's the optimal frequency?
### Predictive Analytics
- Forecast conversions for budget scenarios
- Predict customer LTV by acquisition channel
- Estimate diminishing returns curves
### Prescriptive Analytics
- Recommend budget allocation
- Suggest campaign optimizations
- Propose testing roadmap
## Deliverables
1. Marketing Dashboard
- Campaign performance overview
- Channel attribution breakdown
- A/B test results
- Funnel visualization
2. Attribution Model
- Compare models (first-click, last-click, linear, time-decay)
- Recommend best model for business
- Show credit allocation
3. Budget Recommendation
- Optimal allocation by channel
- Expected impact on conversions
- Sensitivity analysis
4. Testing Roadmap
- Priority tests for next quarter
- Sample size calculations
- Success metrics
## Success Criteria
- Clear attribution insights
- Statistically valid A/B test conclusions
- Actionable budget recommendations
- Professional dashboard design
What You'll Learn
- Problem-solving and analytical thinking
- Data-driven decision making
- Business strategy development
- Professional report writing
Submission Deadline
Jun 15, 2026 23:59
0
Solutions Submitted
Difficulty
Intermediate
Estimated Time
120 minutes
Relevance
Fresh
Source
Marketing Analytics Case - Based on Puneet Arora Data Analytics Tutorial