Evaluating the Predictive Performance of Positive-Unlabelled Classifiers: a brief critical review and practical recommendations for improvement

06/06/2022
by   Jack D. Saunders, et al.
0

Positive-Unlabelled (PU) learning is a growing area of machine learning that aims to learn classifiers from data consisting of labelled positive and unlabelled instances. Whilst much work has been done proposing methods for PU learning, little has been written on the subject of evaluating these methods. Many popular standard classification metrics cannot be precisely calculated due to the absence of fully labelled data, so alternative approaches must be taken. This short commentary paper critically reviews the main PU learning evaluation approaches and the choice of predictive accuracy measures in 51 articles proposing PU classifiers and provides practical recommendations for improvements in this area.

READ FULL TEXT
research
05/21/2015

On the relation between accuracy and fairness in binary classification

Our study revisits the problem of accuracy-fairness tradeoff in binary c...
research
03/06/2023

Benchmark of Data Preprocessing Methods for Imbalanced Classification

Severe class imbalance is one of the main conditions that make machine l...
research
02/18/2022

Critical Checkpoints for Evaluating Defence Models Against Adversarial Attack and Robustness

From past couple of years there is a cycle of researchers proposing a de...
research
03/27/2023

Evaluating XGBoost for Balanced and Imbalanced Data: Application to Fraud Detection

This paper evaluates XGboost's performance given different dataset sizes...
research
12/04/2010

Efficient Optimization of Performance Measures by Classifier Adaptation

In practical applications, machine learning algorithms are often needed ...
research
05/27/2021

Intellige: A User-Facing Model Explainer for Narrative Explanations

Predictive machine learning models often lack interpretability, resultin...
research
06/08/2023

A brief review of contrastive learning applied to astrophysics

Reliable tools to extract patterns from high-dimensionality spaces are b...

Please sign up or login with your details

Forgot password? Click here to reset