Safe optimization algorithms for variable selection and hyperparameter tuning.
E. Ndiaye.
Université Paris-Saclay, October 4th, 2018.
Manuscript ,
slides .
Publications
Exact and Approximate Conformal Inference in Multiple Dimensions.
C. Johnstone, E. Ndiaye.
Arxiv, 2022.
paper ,
code in preparation .
A Confidence Machine for Sparse High-Order Interaction Model.
D. Das, E. Ndiaye, I. Takeuchi.
Arxiv, 2022.
paper ,
code in preparation .
Stable Conformal Prediction Sets.
E. Ndiaye.
International Conference on Machine Learning, 2022.
paper ,
code .
Continuation Path with Linear Convergence Rate.
E. Ndiaye, I. Takeuchi.
Arxiv, 2021.
paper ,
code in preparation .
Root-finding Approaches for Computing Conformal Prediction Set.
E. Ndiaye, I. Takeuchi.
Accepted to Machine Learning , 2021.
paper ,
code .
Screening Rules and its Complexity for Active Set Identification.
E. Ndiaye, O. Fercoq, J. Salmon.
Journal of Convex Analysis, 2020.
paper ,
code .
Computing Full Conformal Prediction Set with Approximate Homotopy.
E. Ndiaye, I. Takeuchi.
Advances in Neural Information Processing Systems, 2019.
paper ,
code .
Safe Grid Search with Optimal Complexity.
E. Ndiaye, T. Le, O. Fercoq, J. Salmon, I. Takeuchi.
International Conference on Machine Learning, 2019.
paper ,
code .
Gap Safe screening rules for sparsity enforcing penalties.
E. Ndiaye, O. Fercoq, A. Gramfort, J. Salmon.
Journal of Machine Learning Research, 2017.
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code .
Efficient Smoothed Concomitant Lasso Estimation for High Dimensional Regression.
E. Ndiaye, O. Fercoq, V. Leclère, A. Gramfort, J. Salmon.
Journal of Physics: Conference Series, 2017.
paper ,
code .
GAP Safe Screening Rules for Sparse-Group-Lasso.
E. Ndiaye, O. Fercoq, A. Gramfort, J. Salmon.
Advances in Neural Information Processing Systems, 2016.
paper ,
code .
GAP Safe screening rules for sparse multi-task and multi-class models.
E. Ndiaye, O. Fercoq, A. Gramfort, J. Salmon.
Advances in Neural Information Processing Systems, 2015.
paper .
code .
Teaching
Instructor for the class ISyE 6740, Computational Data Science. Spring 2022, Graduate level.
Teaching assistant at Nagoya Institute of Technology. Book reading in machine learning with both graduate and undergraduate students.
Teaching assistant at Télécom ParisTech.
Master courses in optimization and machine learning:
Linear Models, Clustering, Bootstrap, Ensemble Methods, First Order Optimization and Stochastic Algorithm etc.