Probabilistic task modelling for meta-learning

06/09/2021
by   Cuong C. Nguyen, et al.
0

We propose probabilistic task modelling – a generative probabilistic model for collections of tasks used in meta-learning. The proposed model combines variational auto-encoding and latent Dirichlet allocation to model each task as a mixture of Gaussian distribution in an embedding space. Such modelling provides an explicit representation of a task through its task-theme mixture. We present an efficient approximation inference technique based on variational inference method for empirical Bayes parameter estimation. We perform empirical evaluations to validate the task uncertainty and task distance produced by the proposed method through correlation diagrams of the prediction accuracy on testing tasks. We also carry out experiments of task selection in meta-learning to demonstrate how the task relatedness inferred from the proposed model help to facilitate meta-learning algorithms.

READ FULL TEXT
research
06/11/2018

Bayesian Model-Agnostic Meta-Learning

Learning to infer Bayesian posterior from a few-shot dataset is an impor...
research
12/26/2019

Variational Metric Scaling for Metric-Based Meta-Learning

Metric-based meta-learning has attracted a lot of attention due to its e...
research
01/26/2018

Recasting Gradient-Based Meta-Learning as Hierarchical Bayes

Meta-learning allows an intelligent agent to leverage prior learning epi...
research
07/17/2020

Probabilistic Active Meta-Learning

Data-efficient learning algorithms are essential in many practical appli...
research
07/05/2021

Meta-learning Amidst Heterogeneity and Ambiguity

Meta-learning aims to learn a model that can handle multiple tasks gener...
research
04/27/2020

Empirical Bayes Transductive Meta-Learning with Synthetic Gradients

We propose a meta-learning approach that learns from multiple tasks in a...
research
03/03/2021

Meta-Learning with Variational Bayes

The field of meta-learning seeks to improve the ability of today's machi...

Please sign up or login with your details

Forgot password? Click here to reset