2023+
Maity, S., Yurochkin, M., & Sun, Y. (2023+). An investigation of allocation and representation harms in contrastive learning. (under review in ICLR 2024) [preprint]
Maia Polo, F.*, Maity, S.*, Banerjee M., Sun, Y., & Yurochkin, M. (2023+). Estimating Fréchet bounds for validating programmatic weak supervision. (under review in ICLR 2024).
Ngweta, L.*, Maity, S.*, Agarwal, M., Gittens, A., Sun, Y., & Yurochkin, M. (2023+). Aligners: Decoupling LLMs and Alignment. (draft in progress).
Maity, S.*, Roy, S.*, Xue, S.*, Yurochkin, M., & Sun, Y. (2023+). How does overparametrization affect performance on minority groups?. (to be submitted). [preprint]
Maity, S., Dutta, D., Terhorst, J., Sun, Y., & Banerjee, M. (2023). A linear adjustment based approach to posterior drift in transfer learning. Biometrika, 2023. [paper]
Maity, S., Yurochkin, M., Banerjee, M., & Sun, Y. (2023). Understanding new tasks through the lens of training data via exponential tilting. In The Eleventh International Conference on Learning Representations, 2023. [paper]
Maity, S.*, Mukherjee, D.*, Banerjee, M., & Sun, Y. (2023). Predictor-corrector algorithms for stochastic optimization under gradual distribution shift. In The Eleventh International Conference on Learning Representations, 2023. [paper]
Bakshi, S.*, & Maity, S.* (2023). Bayes classifier cannot be learned from noisy responses with unknown noise rates. Accepted as Tiny paper in the Eleventh International Conference on Learning Representations, 2023. [paper]
Ngweta, L.*, Maity, S.*, Gittens, A., Sun, Y., & Yurochkin, M. (2023). Simple disentanglement of style and content in visual representations. In Fortieth International Conference on Machine Learning, 2023. [paper]
2022
Maity, S., Sun, Y., & Banerjee, M. (2022). Minimax optimal approaches to the label shift problem in non-parametric settings. Journal of Machine Learning Research, 23(346), 1−45. [paper]
Maity, S., Sun, Y., & Banerjee, M. (2022). Meta-analysis of heterogeneous data: integrative sparse regression in high-dimensions. Journal of Machine Learning Research, 23(198), 1-50. [paper]
Kwon, B. C., Kartoun, U., Khurshid, S., Yurochkin, M., Maity, S., Brockman, D. G., ... & Ng, K. (2022). RMExplorer: A Visual Analytics Approach to Explore the Performance and the Fairness of Disease Risk Models on Population Subgroups. In 2022 IEEE Visualization and Visual Analytics (VIS) (pp. 50-54). IEEE. [paper]
Bhattacharyya, R., Burman, A., Singh, K., Banerjee, S., Maity, S., Auddy, A., ... & Baladandayuthapani, V. (2022). Role of multiresolution vulnerability indices in COVID-19 spread in India: a Bayesian model-based analysis. BMJ Open, 12(11), e056292. [paper]
2021
Maity, S.*, Xue, S.*, Yurochkin, M., & Sun, Y. (2021). Statistical inference for individual fairness. In International Conference on Learning Representations, 2021. [paper]
Maity, S.*, Mukherjee, D.*, Yurochkin, M., & Sun, Y. (2021). Does enforcing fairness mitigate biases caused by subpopulation shift?. In NeurIPS 2021. [paper]