Media Mix Modeling Skill
Overview
The Media Mix Modeling Skill provides advanced econometric modeling capabilities for measuring marketing effectiveness and optimizing budget allocation. This skill enables marketing mix model development, channel contribution analysis, saturation curve modeling, and scenario planning using statistical techniques and machine learning approaches including Google Lightweight MMM and custom Python/R implementations.
Capabilities
Marketing Mix Model Development
- Bayesian model specification
- Frequentist regression modeling
- Time series decomposition
- Variable selection and feature engineering
- Model training and validation
- Holdout testing and backtesting
- Model diagnostics and validation
- Documentation and reproducibility
Channel Contribution Analysis
- Base vs. incremental decomposition
- Channel-level contribution calculation
- Marginal contribution analysis
- Diminishing returns identification
- Channel interaction effects
- Year-over-year contribution comparison
- Share of contribution trending
- Contribution waterfall visualization
Saturation Curve Modeling
- Diminishing returns function fitting
- Hill function parameterization
- S-curve response modeling
- Optimal spend level identification
- Saturation point calculation
- Response curve visualization
- Per-channel curve comparison
- Confidence interval estimation
Adstock/Carryover Effects
- Adstock decay estimation
- Carryover rate calculation
- Geometric decay modeling
- Weibull decay functions
- Peak lag identification
- Effective frequency calculation
- Media half-life analysis
- Long-term effect quantification
Budget Optimization Algorithms
- Constrained optimization
- Marginal ROI maximization
- Budget allocation simulation
- Channel mix optimization
- Spend threshold identification
- Diminishing returns avoidance
- Cross-channel trade-off analysis
- Multi-objective optimization
Scenario Planning
- What-if budget scenarios
- Channel reallocation modeling
- Seasonal budget planning
- New channel introduction simulation
- Budget cut impact analysis
- Growth scenario modeling
- Competitive response scenarios
- Economic downturn planning
Incremental Lift Calculation
- Incremental revenue estimation
- Lift over baseline calculation
- Test vs. control comparison
- Geo-matched market testing
- Synthetic control methods
- Causal impact analysis
- Incrementality confidence intervals
- Attribution vs. incrementality reconciliation
Cross-Channel Synergy Analysis
- Interaction term modeling
- Synergy effect quantification
- Complementary channel identification
- Cannibalization detection
- Optimal channel combination
- Sequencing effect analysis
- Cross-media amplification
- Halo effect measurement
Seasonality Adjustment
- Seasonal pattern identification
- Holiday effect modeling
- Trend decomposition
- Cyclical pattern adjustment
- Weather impact incorporation
- Event-based adjustment
- Calendar normalization
- Forecast seasonality application
Process Integration
This skill integrates with the following marketing processes:
- marketing-roi-analysis.js - ROI calculation and budget optimization
- attribution-modeling-setup.js - Attribution model calibration
- integrated-campaign-planning.js - Budget allocation and planning
Dependencies
- Python data science libraries (pandas, numpy, scipy, statsmodels)
- Google Lightweight MMM / Robyn
- R statistical libraries
- Bayesian modeling frameworks (PyMC, Stan)
- Optimization libraries (scipy.optimize, cvxpy)
- Visualization libraries (matplotlib, plotly)
Usage
Model Development
skill: media-mix-modeling
action: build-model
parameters:
model_type: bayesian_mmm
framework: lightweight_mmm
data_configuration:
date_column: week
target_variable: revenue
media_variables:
- tv_spend
- digital_display_spend
- paid_search_spend
- paid_social_spend
- radio_spend
control_variables:
- price_index
- competitor_spend
- economic_indicator
- seasonality_index
model_settings:
adstock:
type: geometric
max_lag: 8
saturation:
type: hill
priors:
type: informative
source: prior_mmm_results
validation:
holdout_weeks: 12
cross_validation_folds: 5
Channel Contribution Analysis
skill: media-mix-modeling
action: analyze-contributions
parameters:
model_id: "mmm_2024_q4"
analysis_period:
start_date: "2024-01-01"
end_date: "2024-12-31"
outputs:
- type: contribution_breakdown
format: waterfall_chart
- type: channel_roi
format: bar_chart
- type: contribution_over_time
format: stacked_area
- type: marginal_contribution
format: line_chart
export:
format: [pdf, csv, xlsx]
destination: "reports/mmm_contributions"
Budget Optimization
skill: media-mix-modeling
action: optimize-budget
parameters:
model_id: "mmm_2024_q4"
optimization_settings:
objective: maximize_revenue
total_budget: 10000000
constraints:
- channel: tv_spend
min_percent: 0.20
max_percent: 0.40
- channel: paid_search_spend
min_percent: 0.15
max_percent: 0.30
- channel: paid_social_spend
min_percent: 0.10
max_percent: 0.25
business_rules:
- type: minimum_presence
channels: [tv, digital_display]
- type: maximum_concentration
single_channel_cap: 0.50
scenarios:
- name: "optimal_allocation"
constraints: default
- name: "digital_first"
overrides:
digital_channels_min: 0.60
- name: "brand_building"
overrides:
tv_min: 0.35
Scenario Planning
skill: media-mix-modeling
action: run-scenarios
parameters:
model_id: "mmm_2024_q4"
scenarios:
- name: "Budget Cut 20%"
budget_change: -0.20
allocation: optimized
- name: "Budget Increase 30%"
budget_change: 0.30
allocation: optimized
- name: "TV Elimination"
channel_changes:
tv_spend: 0
reallocate: true
- name: "New Channel Test"
new_channels:
- name: connected_tv
estimated_roi: 2.5
test_budget: 500000
- name: "Q1 Seasonal Plan"
period: "2025-01-01 to 2025-03-31"
seasonality_adjustment: true
comparison_metrics:
- total_revenue
- incremental_revenue
- overall_roi
- channel_roi
Saturation Analysis
skill: media-mix-modeling
action: analyze-saturation
parameters:
model_id: "mmm_2024_q4"
channels:
- tv_spend
- paid_search_spend
- paid_social_spend
analysis:
- type: response_curves
spend_range: [0, 2x_current]
granularity: 100_points
- type: optimal_spend
threshold: 0.95_saturation
- type: marginal_roi_curve
spend_range: [0.5x_current, 1.5x_current]
visualization:
charts:
- response_curves_overlay
- marginal_roi_comparison
- saturation_heatmap
Best Practices
- Data Quality: Ensure sufficient historical data (2+ years recommended)
- Variable Selection: Include relevant control variables (pricing, competition, economy)
- Model Validation: Use holdout periods and cross-validation
- Uncertainty Quantification: Report confidence intervals, not just point estimates
- Regular Refresh: Update models quarterly with new data
- Triangulation: Validate MMM results with experiments where possible
- Stakeholder Communication: Present results in business-friendly formats
- Documentation: Maintain model documentation and assumptions log
Related Skills
- SK-005: Marketing Analytics Platform
- SK-014: BI and Dashboard Platform
- SK-018: CRM Integration
Related Agents
- AG-008: Marketing Analytics Director
- AG-012: Media Planning Expert