Title
Position-Aware Deep Character-Level CTR Prediction for Sponsored Search
Abstract
Predicting the click-through rate of an advertisement is a critical component of online advertising platforms. In sponsored search, the click-through rate estimates the probability that a displayed advertisement is clicked by a user after she submits a query to the search engine. Commercial search engines typically rely on machine learning models trained with a large number of features to make such predictions. This inevitably requires a lot of engineering efforts to define, compute, and select the appropriate features. In this paper, we propose two novel approaches (one working at character level and the other working at word level) that use deep convolutional neural networks to predict the click-through rate of a query-advertisement pair. Specifically, the proposed architectures consider as input only the textual content appearing in a query-advertisement pair and the page position at which the advertisement appears on the search result page of the query, and produce as output a click-through rate prediction. By comparing the character-level model with the word-level model, we show that language representation can be learnt from scratch at character level when trained on enough data. Through extensive experiments using billions of query-advertisement pairs of a popular commercial search engine, we demonstrate that both approaches significantly outperform a baseline model built on well-selected text features and a state-of-the-art word2vec-based approach. We also show the importance of the position feature in the proposed approaches in improving the prediction accuracy. When combining the predictions of the deep models introduced in this study with the prediction of the model in production of the same commercial search engine, we significantly improve the accuracy and the calibration of the click-through rate prediction of the production system. We also show the potential of leveraging the CTR prediction of the proposed deep learning models for query-ad relevance modeling and query-ad matching tasks in sponsored search.
Year
DOI
Venue
2021
10.1109/TKDE.2019.2941881
IEEE Transactions on Knowledge and Data Engineering
Keywords
DocType
Volume
Deep learning,NLP,online advertising,sponsored search,CTR prediction
Journal
33
Issue
ISSN
Citations 
4
1041-4347
1
PageRank 
References 
Authors
0.41
0
4
Name
Order
Citations
PageRank
Xiao Bai141.05
Reza Abasi210.41
Bora Edizel341.82
Amin Mantrach410.41