@inproceedings{BergOJP:CP2017, author = {Jeremias Berg and Emilia Oikarinen and Matti J\"arvisalo and Kai Puolam\"aki}, title = {Minimum-Width Confidence Bands via Constraint Optimization}, booktitle = {Proceedings of the 23rd International Conference on Principles and Practice of Constraint Programming (CP 2017)}, editor = {J. Christopher Beck}, pages = {443--459}, volume = {10416}, series = {Lecture Notes in Computer Science}, publisher = {Springer}, year = {2017}, } Abstract: The use of constraint optimization has recently proven to be a successful approach to providing solutions to various NP-hard search and optimization problems in data analysis. In this work we extend the use of constraint optimization systems further within data analysis to a central problem arising from the analysis of multivariate data, namely, determining minimum-width multivariate confidence intervals, i.e., the minimum-width confidence band problem (MWCB). Pointing out drawbacks in recently proposed formalizations of variants of MWCB, we propose a new problem formalization which generalizes the earlier formulations and allows for circumvention of their drawbacks. We present two constraint models for the new problem in terms of mixed integer programming and maximum satisfiability, as well as a greedy approach. Furthermore, we empirically evaluate the scalability of the constraint optimization approaches and solution quality compared to the greedy approach on real-world datasets.