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Missing Not at Random in Matrix Completion: The Effectiveness of
  Estimating Missingness Probabilities Under a Low Nuclear Norm Assumption
v1v2 (latest)

Missing Not at Random in Matrix Completion: The Effectiveness of Estimating Missingness Probabilities Under a Low Nuclear Norm Assumption

28 October 2019
Wei-Ying Ma
George H. Chen
ArXiv (abs)PDFHTML

Papers citing "Missing Not at Random in Matrix Completion: The Effectiveness of Estimating Missingness Probabilities Under a Low Nuclear Norm Assumption"

32 / 32 papers shown
Title
Optimal Transfer Learning for Missing Not-at-Random Matrix Completion
Akhil Jalan
Yassir Jedra
Arya Mazumdar
Soumendu Sundar Mukherjee
Purnamrita Sarkar
505
0
0
28 Feb 2025
Collaborative Imputation of Urban Time Series through Cross-city Meta-learning
Collaborative Imputation of Urban Time Series through Cross-city Meta-learning
Tong Nie
Wei Ma
Jian Sun
Yu Yang
Jiannong Cao
AI4TSAI4CE
87
0
0
20 Jan 2025
Exploiting Observation Bias to Improve Matrix Completion
Exploiting Observation Bias to Improve Matrix Completion
Yassir Jedra
Sean Mann
Charlotte Park
Devavrat Shah
458
1
0
03 Jan 2025
Learning Counterfactual Distributions via Kernel Nearest Neighbors
Learning Counterfactual Distributions via Kernel Nearest Neighbors
Kyuseong Choi
Jacob Feitelberg
Anish Agarwal
Raaz Dwivedi
OODOffRL
441
1
0
17 Oct 2024
Symmetric Matrix Completion with ReLU Sampling
Symmetric Matrix Completion with ReLU Sampling
Huikang Liu
Peng Wang
Longxiu Huang
Qing Qu
Laura Balzano
81
3
0
09 Jun 2024
Fine-Grained Dynamic Framework for Bias-Variance Joint Optimization on
  Data Missing Not at Random
Fine-Grained Dynamic Framework for Bias-Variance Joint Optimization on Data Missing Not at Random
Mingming Ha
Xuewen Tao
Wenfang Lin
Qionxu Ma
Wujiang Xu
Lin Chen
84
2
0
24 May 2024
Doubly Robust Inference in Causal Latent Factor Models
Doubly Robust Inference in Causal Latent Factor Models
Alberto Abadie
Anish Agarwal
Raaz Dwivedi
Abhin Shah
CMLOOD
92
3
0
18 Feb 2024
ImputeFormer: Low Rankness-Induced Transformers for Generalizable
  Spatiotemporal Imputation
ImputeFormer: Low Rankness-Induced Transformers for Generalizable Spatiotemporal Imputation
Tong Nie
Guoyang Qin
Wei Ma
Yuewen Mei
Jiangming Sun
AI4TSAI4CE
117
36
0
04 Dec 2023
Deep Generative Imputation Model for Missing Not At Random Data
Deep Generative Imputation Model for Missing Not At Random Data
Jia-Lve Chen
Yuanbo Xu
Pengyang Wang
Yongjian Yang
SyDa
51
9
0
16 Aug 2023
Regression with Sensor Data Containing Incomplete Observations
Regression with Sensor Data Containing Incomplete Observations
Takayuki Katsuki
Takayuki Osogami
123
1
0
26 Apr 2023
Synthetic Combinations: A Causal Inference Framework for Combinatorial
  Interventions
Synthetic Combinations: A Causal Inference Framework for Combinatorial Interventions
Abhineet Agarwal
Anish Agarwal
Suhas Vijaykumar
CML
72
9
0
24 Mar 2023
Bilateral Self-unbiased Learning from Biased Implicit Feedback
Bilateral Self-unbiased Learning from Biased Implicit Feedback
Jae-woong Lee
Seongmin Park
Joonseok Lee
Jongwuk Lee
CML
76
12
0
26 Jul 2022
Sequential Nature of Recommender Systems Disrupts the Evaluation Process
Sequential Nature of Recommender Systems Disrupts the Evaluation Process
Ali Shirali
52
4
0
26 May 2022
FragmGAN: Generative Adversarial Nets for Fragmentary Data Imputation
  and Prediction
FragmGAN: Generative Adversarial Nets for Fragmentary Data Imputation and Prediction
Fang Fang
Shenliao Bao
AI4CEGAN
57
7
0
09 Mar 2022
Identifiable Generative Models for Missing Not at Random Data Imputation
Identifiable Generative Models for Missing Not at Random Data Imputation
Chao Ma
Cheng Zhang
72
36
0
27 Oct 2021
Learning to Recommend Using Non-Uniform Data
Learning to Recommend Using Non-Uniform Data
W. Chen
Mohsen Bayati
CML
68
1
0
21 Oct 2021
Causal Matrix Completion
Causal Matrix Completion
Anish Agarwal
M. Dahleh
Devavrat Shah
Dennis Shen
CML
461
54
0
30 Sep 2021
Matrix Completion of World Trade
Matrix Completion of World Trade
G. Gnecco
Federico Nutarelli
M. Riccaboni
17
0
0
08 Sep 2021
How Low Can We Go: Trading Memory for Error in Low-Precision Training
How Low Can We Go: Trading Memory for Error in Low-Precision Training
Chengrun Yang
Ziyang Wu
Jerry Chee
Christopher De Sa
Madeleine Udell
60
2
0
17 Jun 2021
Correcting Exposure Bias for Link Recommendation
Correcting Exposure Bias for Link Recommendation
Shantanu Gupta
Hao Wang
Zachary Chase Lipton
Bernie Wang
CML
80
35
0
13 Jun 2021
Matrix completion with data-dependent missingness probabilities
Matrix completion with data-dependent missingness probabilities
Sohom Bhattacharya
S. Chatterjee
127
20
0
04 Jun 2021
Enhanced Doubly Robust Learning for Debiasing Post-click Conversion Rate
  Estimation
Enhanced Doubly Robust Learning for Debiasing Post-click Conversion Rate Estimation
Siyuan Guo
Lixin Zou
Yiding Liu
Wenwen Ye
Suqi Cheng
Shuaiqiang Wang
Hechang Chen
Dawei Yin
Yi-Ju Chang
70
93
0
28 May 2021
Prediction in the presence of response-dependent missing labels
Prediction in the presence of response-dependent missing labels
Hyebin Song
Garvesh Raskutti
Rebecca Willett
20
0
0
25 Mar 2021
TenIPS: Inverse Propensity Sampling for Tensor Completion
TenIPS: Inverse Propensity Sampling for Tensor Completion
Chengrun Yang
Lijun Ding
Ziyang Wu
Madeleine Udell
143
8
0
01 Jan 2021
On Model Identification and Out-of-Sample Prediction of Principal
  Component Regression: Applications to Synthetic Controls
On Model Identification and Out-of-Sample Prediction of Principal Component Regression: Applications to Synthetic Controls
Anish Agarwal
Devavrat Shah
Dennis Shen
78
2
0
27 Oct 2020
Chemical Property Prediction Under Experimental Biases
Chemical Property Prediction Under Experimental Biases
Yang Liu
H. Kashima
AI4CE
48
1
0
18 Sep 2020
Theoretical Modeling of the Iterative Properties of User Discovery in a
  Collaborative Filtering Recommender System
Theoretical Modeling of the Iterative Properties of User Discovery in a Collaborative Filtering Recommender System
Sami Khenissi
M. Boujelbene
O. Nasraoui
51
23
0
21 Aug 2020
NeuMiss networks: differentiable programming for supervised learning
  with missing values
NeuMiss networks: differentiable programming for supervised learning with missing values
Marine Le Morvan
Julie Josse
Thomas Moreau
Erwan Scornet
Gaël Varoquaux
88
8
0
03 Jul 2020
not-MIWAE: Deep Generative Modelling with Missing not at Random Data
not-MIWAE: Deep Generative Modelling with Missing not at Random Data
Niels Bruun Ipsen
Pierre-Alexandre Mattei
J. Frellsen
DRL
70
57
0
23 Jun 2020
On the Fairness of Randomized Trials for Recommendation with Heterogeneous Demographics and Beyond
Zifeng Wang
Xi Chen
Rui Wen
Shao-Lun Huang
130
1
0
25 Jan 2020
Towards Resolving Propensity Contradiction in Offline Recommender
  Learning
Towards Resolving Propensity Contradiction in Offline Recommender Learning
Yuta Saito
Masahiro Nomura
OffRL
96
13
0
16 Oct 2019
Estimation and imputation in Probabilistic Principal Component Analysis
  with Missing Not At Random data
Estimation and imputation in Probabilistic Principal Component Analysis with Missing Not At Random data
Aude Sportisse
Claire Boyer
Julie Josse
114
29
0
06 Jun 2019
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