Numerous benchmarks for Few-Shot Learning have been proposed in the last...
Meta-learning and other approaches to few-shot learning are widely studi...
An indigenous perspective on the effectiveness of debiasing techniques f...
Contrastive self-supervised learning methods famously produce high quali...
This paper investigates a family of methods for defending against advers...
Providing invariances in a given learning task conveys a key inductive b...
Although deep neural networks are capable of achieving performance super...
Optimisers are an essential component for training machine learning mode...
The domain generalization (DG) problem setting challenges a model traine...
Self-supervised learning is a powerful paradigm for representation learn...
Self-supervised representation learning methods aim to provide powerful ...
Safe interaction between vehicles requires the ability to choose actions...
We present a "learning to learn" approach for automatically constructing...
Current state-of-the-art few-shot learners focus on developing effective...
Self-supervised visual representation learning has seen huge progress in...
Stochastic Neural Networks (SNNs) that inject noise into their hidden la...
Recent work on decision making and planning for autonomous driving has m...
In order to drive effectively, a driver must be aware of how they can ex...
In the absence of large labelled datasets, self-supervised learning
tech...
We investigate approaches to regularisation during fine-tuning of deep n...
We address the problem of simultaneously learning a k-means clustering a...
We present an online algorithm that induces decision trees using gradien...
Effective regularisation of neural networks is essential to combat
overf...
We investigate the effect of explicitly enforcing the Lipschitz continui...
Similarity metrics are a core component of many information retrieval an...