This paper introduces a new framework for data efficient and versatile learning. Specifically: 1) We develop ML-PIP, a general framework for Meta-Learning approximate Probabilistic Inference for Prediction. ML-PIP extends existing probabilistic interpretations of meta-learning to cover a broad class of methods. 2) We introduce VERSA, an instance of the framework employing a flexible and versatile amortization network that takes few-shot learning datasets as inputs, with arbitrary numbers of shots, and outputs a distribution over task-specific parameters in a single forward pass. VERSA substitutes optimization at test time with forward passes through inference networks, amortizing the cost of inference and relieving the need for second deriv...
Despite the recent success in probabilistic modeling and their applications, generative models train...
© 2018 Copyright held by the owner/author(s). We introduce inference metaprogramming for probabilist...
285 pagesProbabilistic modeling, as known as probabilistic machine learning, provides a principled f...
This paper introduces a new framework for data efficient and versatile learning. Specifically: 1) We...
A natural progression in machine learning research is to automate and learn from data increasingly m...
In order to make predictions with high accuracy, conventional deep learning systems require large tr...
We introduce a new, rigorously-formulated Bayesian meta-learning algorithm that learns a probability...
Can meta-learning discover generic ways of processing time series (TS) from a diverse dataset so as ...
We introduce kernels with random Fourier features in the meta-learning framework for few-shot learni...
Meta-Learning promises to enable more data-efficient inference by harnessing previous experience fro...
We propose probabilistic task modelling – a generative probabilistic model for collections of tasks ...
In structured prediction, most inference al-gorithms allocate a homogeneous amount of computation to...
The State of the Art of the young domain of Meta-Learning [3] is held by the connectionist approach....
Probabilistic modeling lets us infer, predict and make decisions based on incomplete or noisy data. ...
We propose probabilistic task modelling – a generative probabilistic model for collections of tasks ...
Despite the recent success in probabilistic modeling and their applications, generative models train...
© 2018 Copyright held by the owner/author(s). We introduce inference metaprogramming for probabilist...
285 pagesProbabilistic modeling, as known as probabilistic machine learning, provides a principled f...
This paper introduces a new framework for data efficient and versatile learning. Specifically: 1) We...
A natural progression in machine learning research is to automate and learn from data increasingly m...
In order to make predictions with high accuracy, conventional deep learning systems require large tr...
We introduce a new, rigorously-formulated Bayesian meta-learning algorithm that learns a probability...
Can meta-learning discover generic ways of processing time series (TS) from a diverse dataset so as ...
We introduce kernels with random Fourier features in the meta-learning framework for few-shot learni...
Meta-Learning promises to enable more data-efficient inference by harnessing previous experience fro...
We propose probabilistic task modelling – a generative probabilistic model for collections of tasks ...
In structured prediction, most inference al-gorithms allocate a homogeneous amount of computation to...
The State of the Art of the young domain of Meta-Learning [3] is held by the connectionist approach....
Probabilistic modeling lets us infer, predict and make decisions based on incomplete or noisy data. ...
We propose probabilistic task modelling – a generative probabilistic model for collections of tasks ...
Despite the recent success in probabilistic modeling and their applications, generative models train...
© 2018 Copyright held by the owner/author(s). We introduce inference metaprogramming for probabilist...
285 pagesProbabilistic modeling, as known as probabilistic machine learning, provides a principled f...