Now showing items 1-4 of 4

    • Identifying regions of trusted prediction 

      Ananthakrishnan, Nivasini (University of Waterloo, 2021-07-20)
      Quantifying the probability of a label prediction being correct on a given test point or a given sub-population enables users to better decide how to use and when to trust machine learning derived predictors. In this work, ...
    • A PAC-Theory of Clustering with Advice 

      Zokaei Ashtiani, Mohammad (University of Waterloo, 2018-05-17)
      In the absence of domain knowledge, clustering is usually an under-specified task. For any clustering application, one can choose among a variety of different clustering algorithms, along with different preprocessing ...
    • Theoretical foundations for efficient clustering 

      Kushagra, Shrinu (University of Waterloo, 2019-06-07)
      Clustering aims to group together data instances which are similar while simultaneously separating the dissimilar instances. The task of clustering is challenging due to many factors. The most well-studied is the high ...
    • Trade-Offs between Fairness, Interpretability, and Privacy in Machine Learning 

      Agarwal, Sushant (University of Waterloo, 2020-05-14)
      Algorithms have increasingly been deployed to make consequential decisions, and there have been many ethical questions raised about how these algorithms function. Three ethical considerations we look at in this work are ...


      University of Waterloo Library
      200 University Avenue West
      Waterloo, Ontario, Canada N2L 3G1
      519 888 4883

      All items in UWSpace are protected by copyright, with all rights reserved.

      DSpace software

      Service outages