LGMLOct 16, 2022

Positive-Unlabeled Learning using Random Forests via Recursive Greedy Risk Minimization

arXiv:2210.08461v118 citationsh-index: 22Has Code
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This work addresses the under-explored potential of tree-based methods in PU learning, offering a robust and efficient alternative to neural network-based approaches for applications requiring PU data.

The paper tackles the problem of learning from positive and unlabeled (PU) data by proposing new random forest algorithms, specifically PU extra trees, which demonstrate strong performance on several datasets.

The need to learn from positive and unlabeled data, or PU learning, arises in many applications and has attracted increasing interest. While random forests are known to perform well on many tasks with positive and negative data, recent PU algorithms are generally based on deep neural networks, and the potential of tree-based PU learning is under-explored. In this paper, we propose new random forest algorithms for PU-learning. Key to our approach is a new interpretation of decision tree algorithms for positive and negative data as \emph{recursive greedy risk minimization algorithms}. We extend this perspective to the PU setting to develop new decision tree learning algorithms that directly minimizes PU-data based estimators for the expected risk. This allows us to develop an efficient PU random forest algorithm, PU extra trees. Our approach features three desirable properties: it is robust to the choice of the loss function in the sense that various loss functions lead to the same decision trees; it requires little hyperparameter tuning as compared to neural network based PU learning; it supports a feature importance that directly measures a feature's contribution to risk minimization. Our algorithms demonstrate strong performance on several datasets. Our code is available at \url{https://github.com/puetpaper/PUExtraTrees}.

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