TF4CTR: Twin Focus Framework for CTR Prediction via Adaptive Sample Differentiation
Honghao Li, Qiuze Ru, Yiwen Zhang, Yi Zhang, Lei Sang, and Yun Yang

TL;DR
This paper introduces TF4CTR, a novel framework for CTR prediction that differentiates samples and dynamically fuses feature interactions, significantly improving model accuracy and generalization in recommender systems.
Contribution
The paper proposes a new framework integrating sample differentiation, tailored supervision, and dynamic feature fusion to enhance CTR prediction accuracy and model robustness.
Findings
Effective on five real-world datasets
Enhances various baseline models
Improves generalization and accuracy
Abstract
Effective feature interaction modeling is critical for enhancing the accuracy of click-through rate (CTR) prediction in industrial recommender systems. Most of the current deep CTR models resort to building complex network architectures to better capture intricate feature interactions or user behaviors. However, we identify two limitations in these models: (1) the samples given to the model are undifferentiated, which may lead the model to learn a larger number of easy samples in a single-minded manner while ignoring a smaller number of hard samples, thus reducing the model's generalization ability; (2) differentiated feature interaction encoders are designed to capture different interactions information but receive consistent supervision signals, thereby limiting the effectiveness of the encoder. To bridge the identified gaps, this paper introduces a novel CTR prediction framework by…
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Taxonomy
TopicsMedical Image Segmentation Techniques · Advanced X-ray and CT Imaging · Radiomics and Machine Learning in Medical Imaging
MethodsFocus
