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Rich Zemel

Researcher at University of Toronto

Publications -  6
Citations -  8696

Rich Zemel is an academic researcher from University of Toronto. The author has contributed to research in topics: Image segmentation & Graph (abstract data type). The author has an hindex of 6, co-authored 6 publications receiving 6917 citations. Previous affiliations of Rich Zemel include Canadian Institute for Advanced Research.

Papers
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Proceedings Article

Show, Attend and Tell: Neural Image Caption Generation with Visual Attention

TL;DR: An attention based model that automatically learns to describe the content of images is introduced that can be trained in a deterministic manner using standard backpropagation techniques and stochastically by maximizing a variational lower bound.
Proceedings Article

Learning Fair Representations

TL;DR: A learning algorithm for fair classification that achieves both group fairness (the proportion of members in a protected group receiving positive classification is identical to the proportion in the population as a whole), and individual fairness (similar individuals should be treated similarly).
Proceedings Article

Multimodal Neural Language Models

TL;DR: This work introduces two multimodal neural language models: models of natural language that can be conditioned on other modalities and imagetext modelling, which can generate sentence descriptions for images without the use of templates, structured prediction, and/or syntactic trees.
Proceedings Article

Stochastic k-Neighborhood Selection for Supervised and Unsupervised Learning

TL;DR: KNCA is presented, which generalizes NCA by learning distance metrics that are appropriate for kNN with arbitrary k, and shows that kNCA often improves classification accuracy over state of the art methods, produces qualitative differences in the embeddings as k is varied, and is more robust with respect to label noise.
Proceedings Article

High Order Regularization for Semi-Supervised Learning of Structured Output Problems

TL;DR: A new max-margin framework for semi-supervised structured output learning is proposed, that allows the use of powerful discrete optimization algorithms and high order regularizers defined directly on model predictions for the unlabeled examples.