Assessing binary classifiers using only positive and unlabeled data

04/26/2015
by   Marc Claesen, et al.
0

Assessing the performance of a learned model is a crucial part of machine learning. However, in some domains only positive and unlabeled examples are available, which prohibits the use of most standard evaluation metrics. We propose an approach to estimate any metric based on contingency tables, including ROC and PR curves, using only positive and unlabeled data. Estimating these performance metrics is essentially reduced to estimating the fraction of (latent) positives in the unlabeled set, assuming known positives are a random sample of all positives. We provide theoretical bounds on the quality of our estimates, illustrate the importance of estimating the fraction of positives in the unlabeled set and demonstrate empirically that we are able to reliably estimate ROC and PR curves on real data.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/14/2023

PULSNAR – Positive unlabeled learning selected not at random: class proportion estimation when the SCAR assumption does not hold

Positive and Unlabeled (PU) learning is a type of semi-supervised binary...
research
02/02/2017

Recovering True Classifier Performance in Positive-Unlabeled Learning

A common approach in positive-unlabeled learning is to train a classific...
research
08/26/2022

Confusion Matrices and Accuracy Statistics for Binary Classifiers Using Unlabeled Data: The Diagnostic Test Approach

Medical researchers have solved the problem of estimating the sensitivit...
research
10/19/2020

Can I Trust My Fairness Metric? Assessing Fairness with Unlabeled Data and Bayesian Inference

We investigate the problem of reliably assessing group fairness when lab...
research
03/02/2021

Botcha: Detecting Malicious Non-Human Traffic in the Wild

Malicious bots make up about a quarter of all traffic on the web, and de...
research
06/28/2016

Estimating the class prior and posterior from noisy positives and unlabeled data

We develop a classification algorithm for estimating posterior distribut...
research
03/04/2023

Towards Improved Illicit Node Detection with Positive-Unlabelled Learning

Detecting illicit nodes on blockchain networks is a valuable task for st...

Please sign up or login with your details

Forgot password? Click here to reset