Click-Through Rate Prediction in Online Advertising: A Literature Review
- URL: http://arxiv.org/abs/2202.10462v1
- Date: Tue, 22 Feb 2022 01:05:38 GMT
- Title: Click-Through Rate Prediction in Online Advertising: A Literature Review
- Authors: Yanwu Yang and Panyu Zhai
- Abstract summary: We make a systematic literature review on state-of-the-art and latest CTR prediction research.
We give a classification of state-of-the-art CTR prediction models in the extant literature.
We identify current research trends, main challenges and potential future directions worthy of further explorations.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Predicting the probability that a user will click on a specific advertisement
has been a prevalent issue in online advertising, attracting much research
attention in the past decades. As a hot research frontier driven by industrial
needs, recent years have witnessed more and more novel learning models employed
to improve advertising CTR prediction. Although extant research provides
necessary details on algorithmic design for addressing a variety of specific
problems in advertising CTR prediction, the methodological evolution and
connections between modeling frameworks are precluded. However, to the best of
our knowledge, there are few comprehensive surveys on this topic. We make a
systematic literature review on state-of-the-art and latest CTR prediction
research, with a special focus on modeling frameworks. Specifically, we give a
classification of state-of-the-art CTR prediction models in the extant
literature, within which basic modeling frameworks and their extensions,
advantages and disadvantages, and performance assessment for CTR prediction are
presented. Moreover, we summarize CTR prediction models with respect to the
complexity and the order of feature interactions, and performance comparisons
on various datasets. Furthermore, we identify current research trends, main
challenges and potential future directions worthy of further explorations. This
review is expected to provide fundamental knowledge and efficient entry points
for IS and marketing scholars who want to engage in this area.
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