• 综合
  • 标题
  • 关键词
  • 摘要
  • 学者
  • 期刊-刊名
  • 期刊-ISSN
  • 会议名称
搜索

作者:

Zhou, Xiaowan (Zhou, Xiaowan.) | Shi, Yuliang (Shi, Yuliang.)

收录:

EI Scopus

摘要:

CTR prediction is an important research direction in the field of recommendation system. In recent years, DeepFM has been concerned because it can learn the low- and high-order feature interactions end-to-end, and it has become one of the best models for CTR prediction. However, due to the inadequate feature interactions in the FM component of DeepFM model, the prediction accuracy is reduced. Compared with DeepFFM, although the FFM component of DeepFFM model attributes the same feature to the same filed to alleviates the inadequate feature interactions in FM model, its binomial parameter number is far greater than DeepFM, which increases the pressure of recommendation system. In this paper, we propose a new model called DeepFaFM. It provides a scalable coding matrix with adjustable factors, which can dynamically balance the operation pressure according to the actual production situation. Compared with DeepFM, which is one of the latest classification models, it has the advantages of DeepFM, improves the inadequate feature interactions in the operation of DeepFM, and improves the accuracy of the model. Experiments show that DeepFaFM is better than DeepFM in accuracy, and is equivalent to DeepFFM but its operation efficiency is significantly higher than DeepFFM. In particular, DeepFaFM has a scalable variable, which can dynamically balance the accuracy and calculation pressure according to the actual production situation, improving the flexibility of the model. © 2020 IEEE.

关键词:

Recommender systems Neural networks Forecasting

作者机构:

  • [ 1 ] [Zhou, Xiaowan]Beijing University of Technology, Faculty of Information Technology, Beijing, China
  • [ 2 ] [Shi, Yuliang]Beijing University of Technology, Faculty of Information Technology, Beijing, China

通讯作者信息:

电子邮件地址:

查看成果更多字段

相关关键词:

相关文章:

来源 :

年份: 2020

页码: 2559-2563

语种: 英文

被引次数:

WoS核心集被引频次:

SCOPUS被引频次: 1

ESI高被引论文在榜: 0 展开所有

万方被引频次:

中文被引频次:

近30日浏览量: 0

归属院系:

在线人数/总访问数:522/3906552
地址:北京工业大学图书馆(北京市朝阳区平乐园100号 邮编:100124) 联系我们:010-67392185
版权所有:北京工业大学图书馆 站点建设与维护:北京爱琴海乐之技术有限公司