no code implementations • 14 Jun 2024 • Tameem Adel, Sam Bilson, Mark Levene, Andrew Thompson
We then discuss three research areas within TAI that we are working on at NPL, and examine the certification of AI systems in terms of adherence to the characteristics of TAI.
1 code implementation • ICLR 2021 • Javier Antorán, Umang Bhatt, Tameem Adel, Adrian Weller, José Miguel Hernández-Lobato
Both uncertainty estimation and interpretability are important factors for trustworthy machine learning systems.
no code implementations • ICLR 2020 • Tameem Adel, Han Zhao, Richard E. Turner
Approaches to continual learning aim to successfully learn a set of related tasks that arrive in an online manner.
1 code implementation • ICLR 2020 • Han Zhao, Amanda Coston, Tameem Adel, Geoffrey J. Gordon
We propose a novel algorithm for learning fair representations that can simultaneously mitigate two notions of disparity among different demographic subgroups in the classification setting.
no code implementations • NeurIPS Workshop Deep_Invers 2019 • Andreas Kattamis, Tameem Adel, Adrian Weller
Finally, we examine the adversarial invariancy of the early DIP outputs, and hypothesize that these outputs may remove non-robust image features.
no code implementations • ICLR 2019 • Tameem Adel, Cuong V. Nguyen, Richard E. Turner, Zoubin Ghahramani, Adrian Weller
We present a framework for interpretable continual learning (ICL).
no code implementations • ICML 2018 • Tameem Adel, Zoubin Ghahramani, Adrian Weller
We use a generative model which takes as input the representation in an existing (generative or discriminative) model, weakly supervised by limited side information.
1 code implementation • 15 Feb 2017 • Luisa M. Zintgraf, Taco S. Cohen, Tameem Adel, Max Welling
This article presents the prediction difference analysis method for visualizing the response of a deep neural network to a specific input.
no code implementations • 27 Aug 2016 • Tameem Adel, Cassio P. de Campos
To the best of our knowledge, this is the first exact algorithm for this problem.
no code implementations • 28 Jun 2016 • Alexander Moreno, Tameem Adel, Edward Meeds, James M. Rehg, Max Welling
Approximate Bayesian Computation (ABC) is a framework for performing likelihood-free posterior inference for simulation models.
no code implementations • 3 Aug 2015 • Tameem Adel, Alexander Wong, Daniel Stashuk
In this study, a spectral graph-theoretic grouping strategy for weakly supervised classification is introduced, where a limited number of labelled samples and a larger set of unlabelled samples are used to construct a larger annotated training set composed of strongly labelled and weakly labelled samples.
no code implementations • 26 Sep 2013 • Tameem Adel, Benn Smith, Ruth Urner, Daniel Stashuk, Daniel J. Lizotte
We present a comprehensive study of the use of generative modeling approaches for Multiple-Instance Learning (MIL) problems.