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Qianqian Wang1,2, Fang'ai Liu3, Xiaohui Zhao3
1School of Data and Computer Science, Shandong Women's University, Jinan, 250300, Shandong, P.R. China. wangqq_sdnu@163.com.
This study introduces the Session Interest Model with Feature Co-Action Network (SIFAN) to improve click-through rate (CTR) prediction accuracy by modeling user behavior within sessions and preserving feature interactions. SIFAN significantly outperforms existing models in predicting customer clicks.
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