Disentangled variational auto-encoder enhanced by counterfactual data for debiasing recommendation

被引:0
|
作者
Yupu Guo
Fei Cai
Jianming Zheng
Xin Zhang
Honghui Chen
机构
[1] National University of Defense Technology,
来源
关键词
Recommender systems; Debias; Data sparsity;
D O I
暂无
中图分类号
学科分类号
摘要
Recommender system always suffers from various recommendation biases, seriously hindering its development. In this light, a series of debias methods have been proposed in the recommender system, especially for two most common biases, i.e., popularity bias and amplified subjective bias. However, existing debias methods usually concentrate on correcting a single bias. Such single-functionality debiases neglect the bias-coupling issue in which the recommended items are collectively attributed to multiple biases. Besides, previous work cannot tackle the lacking supervised signals brought by sparse data, yet which has become a commonplace in the recommender system. In this work, we introduce a disentangled debias variational auto-encoder framework (DB-VAE) to address the single-functionality issue as well as a counterfactual data enhancement method to mitigate the adverse effect due to the data sparsity. In specific, DB-VAE first extracts two types of extreme items only affected by a single bias based on the collier theory, which are, respectively, employed to learn the latent representation of corresponding biases, thereby realizing the bias decoupling. In this way, the exact unbiased user representation can be learned by these decoupled bias representations. Furthermore, the data generation module employs Pearl’s framework to produce massive counterfactual data to help fully train the model, making up the lacking supervised signals due to the sparse data. Extensive experiments on three real-world data sets demonstrate the effectiveness of our proposed model. Specifically, our model outperforms the best baseline by 19.5% in terms of Recall@20 and 9.5% in terms of NDCG@100 in the best scenario. Besides, the counterfactual data can further improve DB-VAE, especially on the data set with low sparsity.
引用
收藏
页码:3119 / 3132
页数:13
相关论文
共 50 条
  • [31] Disentangling Latent Factors of Variational Auto-encoder with Whitening
    Hahn, Sangchul
    Choi, Heeyoul
    ARTIFICIAL NEURAL NETWORKS AND MACHINE LEARNING - ICANN 2019: IMAGE PROCESSING, PT III, 2019, 11729 : 590 - 603
  • [32] Fair Transfer Learning with Factor Variational Auto-Encoder
    Liu, Shaofan
    Sun, Shiliang
    Zhao, Jing
    NEURAL PROCESSING LETTERS, 2023, 55 (03) : 2049 - 2061
  • [33] Meta conditional variational auto-encoder for domain generalization
    Ge, Zhiqiang
    Song, Zhihuan
    Li, Xin
    Zhang, Lei
    COMPUTER VISION AND IMAGE UNDERSTANDING, 2022, 222
  • [34] Unsupervised Anomaly Detection in Flight Data Using Convolutional Variational Auto-Encoder
    Memarzadeh, Milad
    Matthews, Bryan
    Avrekh, Ilya
    AEROSPACE, 2020, 7 (08)
  • [35] Disentangled causal representation learning for debiasing recommendation with uniform data
    Yang, Xinxin
    Li, Xinwei
    Liu, Zhen
    Wang, Yannan
    Lu, Sibo
    Liu, Feng
    APPLIED INTELLIGENCE, 2024, 54 (08) : 6760 - 6775
  • [36] Inpainting of Vintage Films Based on Variational Auto-encoder
    Li, Yuhang
    Ding, Youdong
    Yu, Bing
    2020 5TH INTERNATIONAL CONFERENCE ON MECHANICAL, CONTROL AND COMPUTER ENGINEERING (ICMCCE 2020), 2020, : 612 - 616
  • [37] A contrastive variational graph auto-encoder for node clustering
    Mrabah, Nairouz
    Bouguessa, Mohamed
    Ksantini, Riadh
    PATTERN RECOGNITION, 2024, 149
  • [38] MIVAE: Multiple Imputation based on Variational Auto-Encoder
    Ma, Qian
    Li, Xia
    Bai, Mei
    Wang, Xite
    Ning, Bo
    Li, Guanyu
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2023, 123
  • [39] Fair Transfer Learning with Factor Variational Auto-Encoder
    Shaofan Liu
    Shiliang Sun
    Jing Zhao
    Neural Processing Letters, 2023, 55 : 2049 - 2061
  • [40] Symbolic expression generation via variational auto-encoder
    Popov, Sergei
    Lazarev, Mikhail
    Belavin, Vladislav
    Derkach, Denis
    Ustyuzhanin, Andrey
    PEERJ COMPUTER SCIENCE, 2023, 9