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The Ethereal
Follow the TRACE: Exploiting Post-Click Trajectories for Online Delayed Conversion Rate Prediction
April 25, 2026 ยท Grace Period ยท ๐ SIGIR 2026
Authors
Xinyue Zhang, Yuanhao Ding, Xiang Ao
arXiv ID
2604.23197
Category
cs.LG: Machine Learning
Citations
0
Venue
SIGIR 2026
Abstract
Delayed feedback poses a core challenge for online CVR prediction, forcing a trade-off between label accuracy and data freshness. Existing methods address this through delay modeling or sample reweighting, yet neglect how post-click behaviors evolve over the observation period. To overcome this limitation, we formalize this evolution as feedback trajectory and propose TRACE. Instead of forcing hard labels on unrevealed samples, our method evaluates how well the accumulated feedback status aligns with conversion versus non-conversion, dynamically refining posteriors without waiting for final outcomes. To counteract early-stage trajectory sparsity, we further design a reliability-gated retrospective completer that leverages full-lifecycle data to provide adaptive posterior guidance for unrevealed samples. Extensive experiments validate TRACE's superiority over state-of-the-art baselines and confirm the retrospective completion module as a model-agnostic enhancer for existing systems. Our code is available at https://github.com/LunaZhangxy/TRACE.
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