Connected TV – Advanced Analysis
Connected TV – Advanced Analysis
Custom Campaign Analysis and Data Activation with APIs, Data Science, and Process Automation for Efficient Marketing
Custom Campaign Analysis and Data Activation with APIs, Data Science, and Process Automation for Efficient Marketing
Connected TV (CTV) offers powerful opportunities for brands – but unlocking its full potential requires advanced data strategies and precise measurement. This page explores how data-driven analysis, audience activation, and automated workflows can elevate CTV campaigns. Discover what’s possible.
Custom Campaign Analysis and Data Activation with APIs, Data Science, and Process Automation for Efficient Marketing
Custom Campaign Analysis and Data Activation with APIs, Data Science, and Process Automation for Efficient Marketing
Connected TV (CTV) offers powerful opportunities for brands – but unlocking its full potential requires advanced data strategies and precise measurement. This page explores how data-driven analysis, audience activation, and automated workflows can elevate CTV campaigns. Discover what’s possible.
Advanced Measurement & Audience Strategies for CTV
Advanced Measurement & Audience Strategies for CTV
YouTube Connected TV Audiences
YouTube Connected TV Audiences
Digitl develops advanced audience strategies for YouTube Connected TV (CTV) campaigns with predictive analytics and custom scoring models that use the data infrastructure of Google Analytics 4 (GA4) and BigQuery. First-party behavioral data is collected in GA4 and exported to BigQuery, where advanced processing – including machine learning in Vertex AI – can be applied to generate high-value audience segments, such as those with high conversion likelihood. These audience segments can be pushed back into GA4, enabling the creation of remarketing lists. These lists can then be synced with Display & Video 360 (DV360) for precise targeting or lookalike audience building and activation across YouTube CTV inventory. This workflow supports data-driven activation of strategic audience segments and enables more personalized and performance-oriented connected TV campaigns.
Attention Score
Attention Score
Attention Score offers a more nuanced way to evaluate the effectiveness of YouTube campaigns on Connected TV. Unlike traditional metrics such as viewability or video completion rate, the Attention Score aggregates multiple signals – including viewability, audibility, and user interaction – to quantify the actual attention an ad receives. This metric helps advertisers move beyond surface-level indicators to understand how engaging their content truly is. Analysis of campaign data through Attention Score can uncover optimization opportunities by highlighting underperforming creative, placements, or formats. Connected TV, in particular, has consistently shown higher Attention Scores compared to other devices, underlining its strength in capturing user focus in a lean-back, immersive environment. With this data-driven insight Digitl supports better media planning and resource allocation, giving advertisers confidence to invest in CTV as a high-attention, high-impact channel.
Regression-Based Analysis
Regression-Based Analysis
Digitl applies regression-based analysis to enhance measurement of Connected TV campaigns – quantifying the relationship between media exposure and business outcomes. By integrating first-party sales data and applying statistical models, this approach can isolate the impact of CTV activity. Regression-based contribution assessment enables advertisers to move beyond surface metrics and directly assess how CTV contributes to ROI. This methodology supports data-backed media decisions and provides a foundation for continuous improvement, as performance drivers and limiting factors can be identified and acted upon with greater precision. This type of analysis is particularly valuable when used alongside attention metrics, offering a comprehensive view of campaign effectiveness across both engagement and business impact.
Marketing Mix Modeling
Marketing Mix Modeling
Marketing Mix Modeling (MMM) helps advertisers assess the impact of various marketing channels on sales and business outcomes. By evaluating the contribution of CTV alongside other channels, MMM provides valuable insights into how different media types influence overall performance. This allows advertisers to optimize budget allocation effectively, ensuring resources are directed to the most impactful channels. Incorporating external factors, such as seasonality or market trends, With expertise in different kinds of Marketing Mix Modeling, Digitl helps create a more accurate picture of campaign performance. These insights empower advertisers to make data-driven decisions to enhance their media strategy and maximize return on ad spend (ROAS).
Additional Services by Digitl for Connected TV
Additional Services by Digitl for Connected TV
Marketing Technology Services that support CTV teams with knowledge and resources about Tech and Data.
Implementation
Implementation
Setup and integration of CTV advertising within marketing infrastructure, including the implementation of triggers and tags for performance tracking and advanced analysis.
Dashboards & Reports
Dashboards & Reports
Automated aggregation of data for KPI reporting to analyse the effect and performance of CTV campaigns. Creation of appealing Dashboards that go beyond pure metrics.
Data Integration
Data Integration
Integration of Offline-, CRM- or User data. Use predictions of CLV or other KPIs in your marketing technology infrastructure to active it with Connected TV campaigns.
AI
AI
Gemini, ChatGPT and other AI models to increase efficiency of media buying and optimization of workflows by using AI Agents and GenAI modules.
Process Automation
Process Automation
Orchestration of automated workflows in AWS, Azure or Google Cloud for data activation, predictions, advanced analysis or reporting to drive efficiency of CTV campaigns.
Marketing Mix Modeling
Marketing Mix Modeling
MMM to analyze the impact of Connected TV campaigns on overall marketing performance or use statistics for incrementality testing to understand the added value on performance or branding KPIs.