Practical Conditional Neural Processes Via Tractable Dependent Predictions

03/16/2022
by   Stratis Markou, et al.
15

Conditional Neural Processes (CNPs; Garnelo et al., 2018a) are meta-learning models which leverage the flexibility of deep learning to produce well-calibrated predictions and naturally handle off-the-grid and missing data. CNPs scale to large datasets and train with ease. Due to these features, CNPs appear well-suited to tasks from environmental sciences or healthcare. Unfortunately, CNPs do not produce correlated predictions, making them fundamentally inappropriate for many estimation and decision making tasks. Predicting heat waves or floods, for example, requires modelling dependencies in temperature or precipitation over time and space. Existing approaches which model output dependencies, such as Neural Processes (NPs; Garnelo et al., 2018b) or the FullConvGNP (Bruinsma et al., 2021), are either complicated to train or prohibitively expensive. What is needed is an approach which provides dependent predictions, but is simple to train and computationally tractable. In this work, we present a new class of Neural Process models that make correlated predictions and support exact maximum likelihood training that is simple and scalable. We extend the proposed models by using invertible output transformations, to capture non-Gaussian output distributions. Our models can be used in downstream estimation tasks which require dependent function samples. By accounting for output dependencies, our models show improved predictive performance on a range of experiments with synthetic and real data.

READ FULL TEXT

page 21

page 22

page 23

research
08/22/2021

Efficient Gaussian Neural Processes for Regression

Conditional Neural Processes (CNP; Garnelo et al., 2018) are an attracti...
research
03/25/2023

Autoregressive Conditional Neural Processes

Conditional neural processes (CNPs; Garnelo et al., 2018a) are attractiv...
research
01/10/2021

The Gaussian Neural Process

Neural Processes (NPs; Garnelo et al., 2018a,b) are a rich class of mode...
research
05/30/2023

Adaptive Conditional Quantile Neural Processes

Neural processes are a family of probabilistic models that inherit the f...
research
09/10/2020

Generalized Multi-Output Gaussian Process Censored Regression

When modelling censored observations, a typical approach in current regr...
research
07/25/2014

Efficient Bayesian Nonparametric Modelling of Structured Point Processes

This paper presents a Bayesian generative model for dependent Cox point ...
research
03/23/2023

Adversarially Contrastive Estimation of Conditional Neural Processes

Conditional Neural Processes (CNPs) formulate distributions over functio...

Please sign up or login with your details

Forgot password? Click here to reset