Preprints and Publications
Preprints
Tractable Robust Markov Decision Processes
Julien Grand-Clément, Nian Si, Shengbo Wang
Multi-source Stable Variable Importance Measure via Adversarial Machine Learning
Zitao Wang, Nian Si, Zijian Guo, Molei Liu
Experimental Design in Live-Interaction Platforms
Chenran Weng, Xiao Lei, Nian Si
Statistical Learning of Distributionally Robust Stochastic Control in Continuous State Spaces
Shengbo Wang, Nian Si, Jose Blanchet, Zhengyuan Zhou
Seller-Side Experiments under Interference Induced by Feedback Loops in Two-Sided Platforms
Zhihua Zhu, Zheng Cai, Liang Zheng, Nian Si
On the Foundation of Distributionally Robust Reinforcement Learning
Shengbo Wang, Nian Si, Jose Blanchet, Zhengyuan Zhou
Tackling Interference Induced by Data Training Loops in A/B Tests: A Weighted
Training Approach
Nian Si
Calibration-then-Calculation: A Variance Reduced Metric Framework in Deep Click-Through Rate Prediction Models
Yewen Fan, Nian Si, Xiangchen Song, Kun Zhang
A/B Tests Under a Safety Budget: A Simulation-Optimization Point of View
Nian Si, Jose Blanchet, Ramesh Johari, Zeyu Zheng
preprint
Optimal Bidding and Experimentation for Multi-layer Auctions in Online Advertising
Nian Si, San Gultekin, Jose Blanchet, Aaron Flores
Selecting the Best Optimizing System
Nian Si, Zeyu Zheng
ScoreFusion: Fusing Score-based Generative Models via Kullback-Leibler Barycenters
Hao Liu, Junze (Tony) Ye, Jose Blanchet, Nian Si
Journal Papers
Sample Complexity of Variance-reduced Distributionally Robust Q-learning
Shengbo Wang, Nian Si, Jose Blanchet, Zhengyuan Zhou
Journal of Machine Learning Research, 2024
Drift Control of High-Dimensional RBM: A Computational Method Based on Neural Networks
Baris Ata, Michael Harrison, Nian Si*
Stochastic Systems, 2024
Singular Control of (Reflected) Brownian Motion: A Computational Method Suitable for Queueing Applications
Baris Ata, Michael Harrison, Nian Si*
Queueing Systems: Theory and Applications (QUESTA) , 2024
Distributional Robust Batch Contextual Bandits
Nian Si, Fan Zhang, Zhengyuan Zhou, Jose Blanchet
Management Science, 2023
2021 MSOM Student Paper Prize Finalist
Confidence Regions in Wasserstein Distributionally Robust Estimation
Jose Blanchet, Karthyek Murthy, Nian Si*
Biometrika, 2021
Efficient Steady-state Simulation of High-dimensional Stochastic Networks
Jose Blanchet, Xinyun Chen, Peter Glynn, Nian Si*
Stochastic Systems, 2021
Optimal Uncertainty Size in Distributionally Robust Inverse Covariance Estimation
Jose Blanchet, Nian Si*
Operations Research Letters, 2019
Efficient Computation Of the Likelihood Expansions for Diffusion Models
Chenxu Li, Yu An, Dachuan Chen, Qi Lin, Nian Si
IISE Transactions, 2016
2018 Operations Engineering & Analytics Best Paper Award
Conference Proceedings
A Finite Sample Complexity Bound for Distributionally Robust Q-learning
Shengbo Wang, Nian Si, Jose Blanchet, Zhengyuan Zhou
Artificial Intelligence and Statistics Conference (AISTATS) , 2023
Calibration Matters: Tackling Maximization Bias in Large-scale Advertising Recommendation Systems
Yewen Fan†, Nian Si†, Kun Zhang
International Conference on Learning Representations (ICLR) , 2023
A Preliminary Study of Regularization Framework for Constructing Task-Specific Simulators
Dilara Aykanat,Zeyu Zheng, Nian Si
Winter Simulation Conference (WSC) , 2023
Quantifying the Empirical Wasserstein Distance to a Set of Measures: Beating the Curse of Dimensionality
Nian Si, Jose Blanchet, Soumyadip Ghosh, Mark Squillante
Neural Information Processing Systems (NeurIPS), 2020
Spotlight presentation; top 4% of submissions
Testing Group Fairness via Optimal Transport Projections
Nian Si, Karthyek Murthy, Jose Blanchet, Viet Anh Nguyen
International Conference on Machine Learning (ICML), 2021
Distributionally Robust Policy Evaluation and Learning in Offline Contextual Bandits
Nian Si†, Fan Zhang†, Zhengyuan Zhou, Jose Blanchet
International Conference on Machine Learning (ICML), 2020
Robust Bayesian Classification Using an Optimistic Score Ratio
Viet Anh Nguyen, Nian Si, Jose Blanchet
International Conference on Machine Learning (ICML), 2020
Technical Reports
* stands for alphabetical order.
† stands for equal contribution.
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