Theoretical Machine Learning Seminar

Theoretical Machine Learning Seminar

August 27, 2020 | 3:00pm - 4:30pm

Many challenging problems in modern applications amount to finding relevant results from an enormous output space of potential candidates, for example, finding the best matching product from a large catalog or suggesting related search phrases on a...

Theoretical Machine Learning Seminar

August 25, 2020 | 12:30pm - 1:45pm

Classical algorithms typically provide "one size fits all" performance, and do not leverage properties or patterns in their inputs. A recent line of work aims to address this issue by developing algorithms that use machine learning predictions to...

Theoretical Machine Learning Seminar

August 20, 2020 | 3:00pm - 4:30pm

Suppose you are monitoring discrete events in real time. Can you predict what events will happen in the future, and when? Can you fill in past events that you may have missed? A probability model that supports such reasoning is the neural Hawkes...

Theoretical Machine Learning Seminar

August 18, 2020 | 12:30pm - 1:45pm

A brief review will be provided first on how deep learning has disrupted speech recognition and language processing industries since 2009. Then connections will be drawn between the techniques (deep learning or otherwise) for modeling speech and...

Theoretical Machine Learning Seminar

August 13, 2020 | 3:00pm - 4:30pm

There are three core orthogonal problems in reinforcement learning: (1) Crediting actions (2) generalizing across rich observations (3) Exploring to discover the information necessary for learning. Good solutions to pairs of these problems are...

Theoretical Machine Learning Seminar

August 11, 2020 | 12:30pm - 1:45pm

Probably Approximately Correct (PAC) learning has attempted to analyse the generalisation of learning systems within the statistical learning framework. It has been referred to as a ‘worst case’ analysis, but the tools have been extended to analyse...

Theoretical Machine Learning Seminar

August 06, 2020 | 3:00pm - 4:30pm

In handling wide range of experiences ranging from data instances, knowledge, constraints, to rewards, adversaries, and lifelong interplay in an ever-growing spectrum of tasks, contemporary ML/AI research has resulted in thousands of models...

Theoretical Machine Learning Seminar

August 04, 2020 | 12:30pm - 1:45pm

Unsupervised learning, in particular learning general nonlinear representations, is one of the deepest problems in machine learning. Estimating latent quantities in a generative model provides a principled framework, and has been successfully used...

Theoretical Machine Learning Seminar

July 30, 2020 | 3:00pm - 4:30pm

For autonomous robots to operate in the open, dynamically changing world, they will need to be able to learn a robust set of skills from relatively little experience. This talk begins by introducing Grounded Simulation Learning as a way to bridge...

Theoretical Machine Learning Seminar

July 28, 2020 | 12:30pm - 1:45pm

I will introduce Generalized Energy Based Models (GEBM) for generative modelling. These models combine two trained components: a base distribution (generally an implicit model), which can learn the support of data with low intrinsic dimension in a...