Positive unlabeled learning is a binary classification problem with positive and unlabeled data. It is common in domains where negative labels are costly or impossible to obtain, e.g., medicine and personalized advertising. We apply the locally purified state tensor network to the positive unlabeled learning problem and test our model on the MNIST image and 15 categorical/mixed datasets. On the MNIST dataset, we achieve state-of-the-art results even with very few labeled positive samples. Similarly, we significantly improve the state-of-the-art on categorical datasets. Further, we show that the agreement fraction between outputs of different models on unlabeled samples is a good indicator of the model's performance. Finally, our method can ...
International audienceIn many machine learning settings, labeled examples are difficult to collect w...
Semi-supervised learning can be applied to datasets that contain both labeled and unlabeled instance...
© 2012 IEEE. Positive and unlabeled learning (PU learning) aims to train a binary classifier based o...
The goal of binary classification is to train a model that can distinguish between examples belongin...
International audienceIn common binary classification scenarios, the presence of both positive and n...
Positive-unlabeled learning (PU learning) is an important case of binary classification where the tr...
This paper studies the problem of Positive Unlabeled learning (PU learning), where positive and unla...
International audienceStandard supervised classification methods make the assumption that the traini...
Positive-unlabeled (PU) learning aims at learning a binary classifier from only positive and unlabel...
Developing partially supervised models is becoming increasingly relevant in the context of modern ma...
Positive-unlabeled learning is an essential problem in many real-world applications with only labele...
© 2015 Elsevier B.V. We present a novel approach to learn binary classifiers when only positive and ...
International audienceIn this paper, we propose a new approach which addresses the Positive Unlabele...
AbstractIn many machine learning settings, labeled examples are difficult to collect while unlabeled...
Recent advances in weakly supervised classification allow us to train a classifier only from positiv...
International audienceIn many machine learning settings, labeled examples are difficult to collect w...
Semi-supervised learning can be applied to datasets that contain both labeled and unlabeled instance...
© 2012 IEEE. Positive and unlabeled learning (PU learning) aims to train a binary classifier based o...
The goal of binary classification is to train a model that can distinguish between examples belongin...
International audienceIn common binary classification scenarios, the presence of both positive and n...
Positive-unlabeled learning (PU learning) is an important case of binary classification where the tr...
This paper studies the problem of Positive Unlabeled learning (PU learning), where positive and unla...
International audienceStandard supervised classification methods make the assumption that the traini...
Positive-unlabeled (PU) learning aims at learning a binary classifier from only positive and unlabel...
Developing partially supervised models is becoming increasingly relevant in the context of modern ma...
Positive-unlabeled learning is an essential problem in many real-world applications with only labele...
© 2015 Elsevier B.V. We present a novel approach to learn binary classifiers when only positive and ...
International audienceIn this paper, we propose a new approach which addresses the Positive Unlabele...
AbstractIn many machine learning settings, labeled examples are difficult to collect while unlabeled...
Recent advances in weakly supervised classification allow us to train a classifier only from positiv...
International audienceIn many machine learning settings, labeled examples are difficult to collect w...
Semi-supervised learning can be applied to datasets that contain both labeled and unlabeled instance...
© 2012 IEEE. Positive and unlabeled learning (PU learning) aims to train a binary classifier based o...