Optimization and Control · Mathematics
Threshold-aware Learning to Generate Feasible Solutions for Mixed Integer Programs
Taehyun Yoon, Jinwon Choi, Hyokun Yun, Sungbin Lim
2023-08-02
Optimization and Control · Mathematics
Efficient primal heuristics for mixed-integer linear programs
Akang Wang, Linxin Yang, Sha Lai, Xiaodong Luo +6
2022-02-08
Optimization and Control · Mathematics
A diving heuristic for mixed-integer problems with unbounded semi-continuous variables
Katrin Halbig, Alexander Hoen, Ambros Gleixner, Jakob Witzig +1
2024-10-17
Machine Learning · Computer Science
Robust Explanation Constraints for Neural Networks
Matthew Wicker, Juyeon Heo, Luca Costabello, Adrian Weller
2022-12-19
Machine Learning · Computer Science
Post-hoc Uncertainty Learning using a Dirichlet Meta-Model
Maohao Shen, Yuheng Bu, Prasanna Sattigeri, Soumya Ghosh +2
2022-12-15
Machine Learning · Computer Science
Training a HyperDimensional Computing Classifier using a Threshold on its Confidence
Laura Smets, Werner Van Leekwijck, Ing Jyh Tsang, Steven Latre
2023-12-01
Machine Learning · Computer Science
Confidence-Aware Learning for Deep Neural Networks
Jooyoung Moon, Jihyo Kim, Younghak Shin, Sangheum Hwang
2020-08-14
Artificial Intelligence · Computer Science
Design and Implementation of an Heuristic-Enhanced Branch-and-Bound Solver for MILP
Warley Almeida Silva, Federico Bobbio, Flore Caye, Defeng Liu +3
2022-06-22
Artificial Intelligence · Computer Science
Neural Program Meta-Induction
Jacob Devlin, Rudy Bunel, Rishabh Singh, Matthew Hausknecht +1
2017-10-12
Machine Learning · Computer Science
Improving Predictor Reliability with Selective Recalibration
Thomas P. Zollo, Zhun Deng, Jake C. Snell, Toniann Pitassi +1
2024-10-10
Machine Learning · Computer Science
A Geometric Method for Improved Uncertainty Estimation in Real-time
Gabriella Chouraqui, Liron Cohen, Gil Einziger, Liel Leman
2023-01-11
Optimization and Control · Mathematics
Solving Mixed Integer Programs Using Neural Networks
Vinod Nair, Sergey Bartunov, Felix Gimeno, Ingrid von Glehn +15
2021-07-30
Machine Learning · Computer Science
h-calibration: Rethinking Classifier Recalibration with Probabilistic Error-Bounded Objective
Wenjian Huang, Guiping Cao, Jiahao Xia, Jingkun Chen +2
2025-09-23
Machine Learning · Computer Science
Mixtures of Laplace Approximations for Improved Post-Hoc Uncertainty in Deep Learning
Runa Eschenhagen, Erik Daxberger, Philipp Hennig, Agustinus Kristiadi
2021-11-08
Machine Learning · Computer Science
Less Approximates More: Harmonizing Performance and Confidence Faithfulness via Hybrid Post-Training for High-Stakes Tasks
Haokai Ma, Lee Yan Zhen, Gang Yang, Yunshan Ma +2
2026-04-10
Machine Learning · Computer Science
Fixing Overconfidence in Dynamic Neural Networks
Lassi Meronen, Martin Trapp, Andrea Pilzer, Le Yang +1
2023-12-11