Alert button
Picture for Tianci Liu

Tianci Liu

Alert button

Towards Poisoning Fair Representations

Add code
Bookmark button
Alert button
Sep 28, 2023
Tianci Liu, Haoyu Wang, Feijie Wu, Hengtong Zhang, Pan Li, Lu Su, Jing Gao

Figure 1 for Towards Poisoning Fair Representations
Figure 2 for Towards Poisoning Fair Representations
Figure 3 for Towards Poisoning Fair Representations
Figure 4 for Towards Poisoning Fair Representations
Viaarxiv icon

SimFair: A Unified Framework for Fairness-Aware Multi-Label Classification

Add code
Bookmark button
Alert button
Feb 22, 2023
Tianci Liu, Haoyu Wang, Yaqing Wang, Xiaoqian Wang, Lu Su, Jing Gao

Figure 1 for SimFair: A Unified Framework for Fairness-Aware Multi-Label Classification
Figure 2 for SimFair: A Unified Framework for Fairness-Aware Multi-Label Classification
Figure 3 for SimFair: A Unified Framework for Fairness-Aware Multi-Label Classification
Figure 4 for SimFair: A Unified Framework for Fairness-Aware Multi-Label Classification
Viaarxiv icon

COEP: Cascade Optimization for Inverse Problems with Entropy-Preserving Hyperparameter Tuning

Add code
Bookmark button
Alert button
Oct 26, 2022
Tianci Liu, Tong Yang, Quan Zhang, Qi Lei

Figure 1 for COEP: Cascade Optimization for Inverse Problems with Entropy-Preserving Hyperparameter Tuning
Figure 2 for COEP: Cascade Optimization for Inverse Problems with Entropy-Preserving Hyperparameter Tuning
Figure 3 for COEP: Cascade Optimization for Inverse Problems with Entropy-Preserving Hyperparameter Tuning
Figure 4 for COEP: Cascade Optimization for Inverse Problems with Entropy-Preserving Hyperparameter Tuning
Viaarxiv icon

Density Regression and Uncertainty Quantification with Bayesian Deep Noise Neural Networks

Add code
Bookmark button
Alert button
Jun 12, 2022
Daiwei Zhang, Tianci Liu, Jian Kang

Figure 1 for Density Regression and Uncertainty Quantification with Bayesian Deep Noise Neural Networks
Figure 2 for Density Regression and Uncertainty Quantification with Bayesian Deep Noise Neural Networks
Figure 3 for Density Regression and Uncertainty Quantification with Bayesian Deep Noise Neural Networks
Figure 4 for Density Regression and Uncertainty Quantification with Bayesian Deep Noise Neural Networks
Viaarxiv icon

Flows Succeed Where GANs Fail: Lessons from Low-Dimensional Data

Add code
Bookmark button
Alert button
Jun 17, 2020
Tianci Liu, Jeffrey Regier

Figure 1 for Flows Succeed Where GANs Fail: Lessons from Low-Dimensional Data
Figure 2 for Flows Succeed Where GANs Fail: Lessons from Low-Dimensional Data
Figure 3 for Flows Succeed Where GANs Fail: Lessons from Low-Dimensional Data
Viaarxiv icon

Dimensionality Reduction on Grassmannian via Riemannian Optimization: A Generalized Perspective

Add code
Bookmark button
Alert button
Nov 17, 2017
Tianci Liu, Zelin Shi, Yunpeng Liu

Figure 1 for Dimensionality Reduction on Grassmannian via Riemannian Optimization: A Generalized Perspective
Figure 2 for Dimensionality Reduction on Grassmannian via Riemannian Optimization: A Generalized Perspective
Figure 3 for Dimensionality Reduction on Grassmannian via Riemannian Optimization: A Generalized Perspective
Figure 4 for Dimensionality Reduction on Grassmannian via Riemannian Optimization: A Generalized Perspective
Viaarxiv icon