Reed-Muller codes achieve capacity on erasure channels S Kudekar, S Kumar, M Mondelli, HD Pfister, E Şaşoğlu, R Urbanke Proceedings of the forty-eighth annual ACM symposium on Theory of Computing …, 2016 | 204 | 2016 |
Unified scaling of polar codes: Error exponent, scaling exponent, moderate deviations, and error floors M Mondelli, SH Hassani, RL Urbanke IEEE Transactions on Information Theory 62 (12), 6698-6712, 2016 | 144 | 2016 |
From polar to Reed-Muller codes: A technique to improve the finite-length performance M Mondelli, SH Hassani, RL Urbanke IEEE Transactions on Communications 62 (9), 3084-3091, 2014 | 144 | 2014 |
Fundamental limits of weak recovery with applications to phase retrieval M Mondelli, A Montanari Conference On Learning Theory, 1445-1450, 2018 | 126 | 2018 |
How to achieve the capacity of asymmetric channels M Mondelli, SH Hassani, RL Urbanke IEEE Transactions on Information Theory 64 (5), 3371-3393, 2018 | 99* | 2018 |
Achieving Marton’s region for broadcast channels using polar codes M Mondelli, SH Hassani, I Sason, RL Urbanke IEEE Transactions on Information Theory 61 (2), 783-800, 2014 | 98 | 2014 |
On the decoding of polar codes on permuted factor graphs N Doan, SA Hashemi, M Mondelli, WJ Gross 2018 IEEE Global Communications Conference (GLOBECOM), 1-6, 2018 | 83 | 2018 |
Construction of polar codes with sublinear complexity M Mondelli, SH Hassani, RL Urbanke IEEE Transactions on Information Theory 65 (5), 2782-2791, 2018 | 73 | 2018 |
Tight Bounds on the Smallest Eigenvalue of the Neural Tangent Kernel for Deep ReLU Networks Q Nguyen, M Mondelli, G Montufar International Conference on Machine Learning (ICML), 2021, 2021 | 72 | 2021 |
Analysis of a two-layer neural network via displacement convexity A Javanmard, M Mondelli, A Montanari Annals of Statistics 48 (6), 3619-3642, 2020 | 68 | 2020 |
Global Convergence of Deep Networks with One Wide Layer Followed by Pyramidal Topology Q Nguyen, M Mondelli Advances in Neural Information Processing Systems (NeurIPS), 2020, 2020 | 66 | 2020 |
Binary linear codes with optimal scaling: Polar codes with large kernels A Fazeli, H Hassani, M Mondelli, A Vardy IEEE Transactions on Information Theory 67 (9), 5693-5710, 2020 | 62* | 2020 |
On the Connection Between Learning Two-Layer Neural Networks and Tensor Decomposition M Mondelli, A Montanari International Conference on Artificial Intelligence and Statistics (AISTATS …, 2019 | 57 | 2019 |
Decoder partitioning: Towards practical list decoding of polar codes SA Hashemi, M Mondelli, SH Hassani, C Condo, RL Urbanke, WJ Gross IEEE Transactions on Communications 66 (9), 3749-3759, 2018 | 54 | 2018 |
Scaling exponent of list decoders with applications to polar codes M Mondelli, SH Hassani, RL Urbanke IEEE Transactions on Information Theory 61 (9), 4838-4851, 2015 | 49 | 2015 |
Decoding Reed-Muller and polar codes by successive factor graph permutations SA Hashemi, N Doan, M Mondelli, WJ Gross 2018 IEEE 10th International Symposium on Turbo Codes & Iterative …, 2018 | 47 | 2018 |
Approximate message passing with spectral initialization for generalized linear models M Mondelli, R Venkataramanan Journal of Statistical Mechanics: Theory and Experiment 2022 (11), 114003, 2022 | 39 | 2022 |
Landscape Connectivity and Dropout Stability of SGD Solutions for Over-parameterized Neural Networks A Shevchenko, M Mondelli International Conference on Machine Learning (ICML), 2020, 2020 | 37 | 2020 |
Estimation in rotationally invariant generalized linear models via approximate message passing R Venkataramanan, K Kögler, M Mondelli International Conference on Machine Learning (ICML), 2022, 2022 | 33 | 2022 |
Partitioned list decoding of polar codes: Analysis and improvement of finite length performance SA Hashemi, M Mondelli, SH Hassani, R Urbanke, WJ Gross GLOBECOM 2017-2017 IEEE Global Communications Conference, 1-7, 2017 | 30 | 2017 |