The Landmark Selection Method for Multiple Output Prediction K Balasubramanian, G Lebanon Proc. of the 29th International Conference on Machine Learning (ICML), 2012 | 122 | 2012 |
Zeroth-order (Non)-Convex Stochastic Optimization via Conditional Gradient and Gradient Updates K Balasubramanian, S Ghadimi Advances in Neural Information Processing Systems (NeurIPS), 2018 | 112 | 2018 |
Zeroth-order Nonconvex Stochastic Optimization: Handling Constraints, High-Dimensionality and Saddle-Points K Balasubramanian, S Ghadimi Foundations of Computational Mathematics, 2022 | 107 | 2022 |
Unsupervised Supervised Learning I: Estimating Classification and Regression Errors without Labels. P Donmez, G Lebanon, K Balasubramanian Journal of Machine Learning Research 11 (4), 2010 | 79 | 2010 |
Towards a theory of non-log-concave sampling: first-order stationarity guarantees for Langevin Monte Carlo K Balasubramanian, S Chewi, MA Erdogdu, A Salim, S Zhang Conference on Learning Theory, 2896-2923, 2022 | 72 | 2022 |
Ultrahigh Dimensional Feature Screening via RKHS Embeddings K Balasubramanian, BK Sriperumbudur, G Lebanon International Conference on Artificial Intelligence and Statistics (AISTATS), 2013 | 58 | 2013 |
High-dimensional Non-Gaussian Single Index Models via Thresholded Score Function Estimation HL Zhuoran Yang, Krishnakumar Balasubramanian International Conference on Machine Learning, 2017 | 56 | 2017 |
An Analysis of Constant Step Size SGD in the Non-convex Regime: Asymptotic Normality and Bias L Yu, K Balasubramanian, S Volgushev, MA Erdogdu 35th Conference on Neural Information Processing Systems (NeurIPS), 2021 | 49 | 2021 |
Stochastic Multi-level Composition Optimization Algorithms with Level-Independent Convergence Rates K Balasubramanian, S Ghadimi, A Nguyen SIAM Journal on Optimization (to appear); arXiv preprint arXiv:2008.10526, 2021 | 47 | 2021 |
Zeroth-order algorithms for nonconvex–strongly-concave minimax problems with improved complexities Z Wang, K Balasubramanian, S Ma, M Razaviyayn Journal of Global Optimization (to appear), 2022 | 46* | 2022 |
On the Optimality of Kernel-Embedding Based Goodness-of-Fit Tests. K Balasubramanian, T Li, M Yuan Journal of Machine Learning Research 22, 1:1-1:45, 2021 | 43* | 2021 |
Normal Approximation for Stochastic Gradient Descent via Non-Asymptotic Rates of Martingale CLT A Anastasiou, K Balasubramanian, M Erdogdu Conference on Learning Theory, 2019 | 43 | 2019 |
Smooth sparse coding via marginal regression for learning sparse representations K Balasubramanian, K Yu, G Lebanon International Conference on Machine Learning, 289-297, 2013 | 42 | 2013 |
Learning Non-Gaussian Multi-Index Model via Second-Order Stein’s Method Z Yang, K Balasubramanian, Z Wang, H Liu Advances in Neural Information Processing Systems, 6099-6108, 2017 | 40* | 2017 |
Smooth Sparse Coding via Marginal Regression for Learning Sparse Representations K Balasubramanian, K Yu, G Lebanon Artificial Intelligence, 2016 | 39 | 2016 |
On the Ergodicity, Bias and Asymptotic Normality of Randomized Midpoint Sampling Method Y He, K Balasubramanian, MA Erdogdu Advances in Neural Information Processing Systems 33, 2020 | 37 | 2020 |
Stochastic Zeroth-order Riemannian Derivative Estimation and Optimization J Li, K Balasubramanian, S Ma Mathematics of Operations Research, 2022 | 34* | 2022 |
Unsupervised Supervised Learning II: Training Margin Based Classifiers without Labels. K Balasubramanian, P Donmez, G Lebanon Journal of Machine Learning Research 12, 1-30, 2011 | 33* | 2011 |
Improved discretization analysis for underdamped Langevin Monte Carlo S Zhang, S Chewi, M Li, K Balasubramanian, MA Erdogdu The Thirty Sixth Annual Conference on Learning Theory, 36-71, 2023 | 30 | 2023 |
Forward-backward Gaussian variational inference via JKO in the Bures-Wasserstein Space MZ Diao, K Balasubramanian, S Chewi, A Salim International Conference on Machine Learning, 7960-7991, 2023 | 29 | 2023 |