Time-Aware Prospective Modeling of Users for Online Display Advertising
Prospective display advertising poses a great challenge for large advertising platforms as the strongest predictive signals of users are not eligible to be used in the conversion prediction systems. To that end efforts are made to collect as much information as possible about each user from various...
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Zusammenfassung: | Prospective display advertising poses a great challenge for large advertising
platforms as the strongest predictive signals of users are not eligible to be
used in the conversion prediction systems. To that end efforts are made to
collect as much information as possible about each user from various data
sources and to design powerful models that can capture weaker signals
ultimately obtaining good quality of conversion prediction probability
estimates. In this study we propose a novel time-aware approach to model
heterogeneous sequences of users' activities and capture implicit signals of
users' conversion intents. On two real-world datasets we show that our approach
outperforms other, previously proposed approaches, while providing
interpretability of signal impact to conversion probability. |
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DOI: | 10.48550/arxiv.1911.05100 |