Gaussian Process Probes (GPP) for Uncertainty-Aware Probing

05/29/2023
by   Zi Wang, et al.
0

Understanding which concepts models can and cannot represent has been fundamental to many tasks: from effective and responsible use of models to detecting out of distribution data. We introduce Gaussian process probes (GPP), a unified and simple framework for probing and measuring uncertainty about concepts represented by models. As a Bayesian extension of linear probing methods, GPP asks what kind of distribution over classifiers (of concepts) is induced by the model. This distribution can be used to measure both what the model represents and how confident the probe is about what the model represents. GPP can be applied to any pre-trained model with vector representations of inputs (e.g., activations). It does not require access to training data, gradients, or the architecture. We validate GPP on datasets containing both synthetic and real images. Our experiments show it can (1) probe a model's representations of concepts even with a very small number of examples, (2) accurately measure both epistemic uncertainty (how confident the probe is) and aleatory uncertainty (how fuzzy the concepts are to the model), and (3) detect out of distribution data using those uncertainty measures as well as classic methods do. By using Gaussian processes to expand what probing can offer, GPP provides a data-efficient, versatile and uncertainty-aware tool for understanding and evaluating the capabilities of machine learning models.

READ FULL TEXT

page 2

page 4

page 5

page 6

page 7

page 19

page 21

research
06/13/2016

Prediction performance after learning in Gaussian process regression

This paper considers the quantification of the prediction performance in...
research
10/20/2022

Uncertainty Disentanglement with Non-stationary Heteroscedastic Gaussian Processes for Active Learning

Gaussian processes are Bayesian non-parametric models used in many areas...
research
04/28/2021

Distributional Gaussian Process Layers for Outlier Detection in Image Segmentation

We propose a parameter efficient Bayesian layer for hierarchical convolu...
research
11/17/2017

How Wrong Am I? - Studying Adversarial Examples and their Impact on Uncertainty in Gaussian Process Machine Learning Models

Machine learning models are vulnerable to adversarial examples: minor, i...
research
06/27/2022

Distributional Gaussian Processes Layers for Out-of-Distribution Detection

Machine learning models deployed on medical imaging tasks must be equipp...
research
10/24/2018

Scalable Gaussian Processes on Discrete Domains

Kernel methods on discrete domains have shown great promise for many cha...
research
07/27/2020

A concept of a measuring system for probe kinesthetic parameters identification during echocardiography examination

Echocardiography is the most commonly used imaging technique in clinical...

Please sign up or login with your details

Forgot password? Click here to reset