Project Overview
In a post-cookie digital landscape, reliance on third-party data is a strategic risk. We worked with a Tier-1 travel platform to transition from fragile, last-click tracking to a robust Hybrid Attribution model. By synthesizing Marketing Mix Modeling (MMM) with granular Multi-Touch Attribution (MTA), we provided the executive team with a unified view of performance, enabling capital allocation that is both aggressive and defensible.
Strategic Solution
The Approach
We moved beyond simple analytics to build a Predictive Decision Engine:
- Hybrid Attribution Architecture: Combined the macro-level strategic view of MMM (for budgeting) with the micro-level tactical view of MTA (for optimization), eliminating blind spots.
- Signal Resilience: Implemented server-side tracking and a first-party identity graph to maintain visibility despite browser privacy restrictions (ITP/ETP).
- Incrementality at Scale: Deployed automated holdout testing to scientifically validate “true lift,” ensuring budget isn’t wasted on users who would have converted organically.
- AI-Driven Bidding: Connected model outputs directly to ad platforms for automated, value-based bidding adjustments in real-time.
Data Ecosystem
The solution integrated high-velocity data streams into a secure warehouse:
- Paid Media: Google Ads, Meta, Youtube
- Organic Signals: SEO rankings, direct traffic, and app engagement.
- Business Logic: Margins, cancellations, and competitive pricing intelligence.
ML Model Development
We utilized a sophisticated ensemble of models to ensure stability and accuracy:
- Context-Aware Deep Learning: We deployed a “Fusion Model” that combines user behavior (clicks) with static customer data (demographics) to predict conversion probability with 88% accuracy.
- Time-Decay Attention: Specially designed algorithms that account for long booking windows (up to 60 days), correctly attributing value to early research interactions often ignored by standard models.
- Uplift Modeling: Distinguishing between “persuadable” customers and “sure things” to maximize marginal ROI.
Navigating Complexity
- Privacy Compliance: Engineered the entire pipeline to be GDPR/CCPA compliant, using differential privacy techniques to protect user data while maintaining utility.
- Cross-Device Stitching: Solved identity fragmentation by mapping users across App and Web environments, revealing that 40% of conversions involved multiple devices.
- Adoption & Trust: Transitioned stakeholders from deterministic (last-click) to probabilistic decision-making through rigorous backtesting and “ghost ad” validation.
Business Impact
Financial Performance
- Efficiency: Achieved a 28% reduction in Customer Acquisition Cost (CAC) by defunding low-incrementality display inventory.
- Scale: drove 19% top-line revenue growth by reinvesting savings into high-performing video channels.
- Profitability: Improved Return on Ad Spend (ROAS) by 35%, validating the shift to value-based bidding.
Strategic Gains
- Operational Agility: Reduced budget planning cycles from quarterly to weekly.
- Competitive Moat: Built a proprietary first-party data asset that competitors relying on platform-native tools cannot replicate.
- Market Response: Enabled rapid pivot during seasonal spikes, capturing 15% more market share during peak holiday travel.
Evaluation Methods
- Geo-Lift Studies: Gold-standard testing to verify channel effectiveness.
- Counterfactual Analysis: “What-if” simulations to stress-test budget allocation strategies before deployment.
- Continuous Validation: Automated monitoring of model drift to ensure ongoing reliability.
Technology Stack
- Orchestration: Apache Airflow
- Machine Learning: Torch, Scikit-learn
- Data Warehousing: Google BigQuery, GCP data lake
- Visualization: Looker