Learning from Positive and Unlabelled examples (LPU) has emerged as an important problem in data mining and information retrieval applications. Existing techniques are not ideally suited for real world scenarios where the datasets are linearly inseparable, as they either build linear classifiers or the non-linear classifiers fail to achieve the desired performance. In this work, we propose to extend maximum margin clustering ideas and present an iterative procedure to design a non-linear classifier for LPU. In particular, we build a least squares support vector classifier, suitable for handling this problem due to symmetry of its loss function. Further, we present techniques for appropriately initializing the labels of unlabelled examples a...
Positive and unlabelled learning (PU learning) has been investigated to deal with the situation wher...
Maximum margin clustering was proposed lately and has shown promising performance in recent studies ...
The goal of binary classification is to train a model that can distinguish between examples belongin...
Learning from Positive and Unlabelled examples (LPU) has emerged as an important problem in data min...
© 2012 IEEE. Positive and unlabeled learning (PU learning) aims to train a binary classifier based o...
The problem of PU Learning, i.e., learning classifiers with positive and unlabelled examples (but no...
PU learning occurs frequently in Web pages classification and text retrieval applications because us...
Positive and unlabeled (PU) learning targets a binary classifier on labeled positive data and unlabe...
Semi-supervised learning can be applied to datasets that contain both labeled and unlabeled instance...
This paper studies Positive and Unlabeled learning (PU learning), of which the target is to build a ...
An emerging topic in machine learning is how to learn classifiers from datasets containing only posi...
The objective of this work is to learn sub-categories. Rather than casting this as a problem of unsu...
We present a maximum margin framework that clusters data using latent vari-ables. Using latent repre...
The objective of this work is to learn sub-categories. Rather than casting this as a problem of unsu...
The positive and unlabeled (PU) learning problem focuses on learning a classifier from positive and ...
Positive and unlabelled learning (PU learning) has been investigated to deal with the situation wher...
Maximum margin clustering was proposed lately and has shown promising performance in recent studies ...
The goal of binary classification is to train a model that can distinguish between examples belongin...
Learning from Positive and Unlabelled examples (LPU) has emerged as an important problem in data min...
© 2012 IEEE. Positive and unlabeled learning (PU learning) aims to train a binary classifier based o...
The problem of PU Learning, i.e., learning classifiers with positive and unlabelled examples (but no...
PU learning occurs frequently in Web pages classification and text retrieval applications because us...
Positive and unlabeled (PU) learning targets a binary classifier on labeled positive data and unlabe...
Semi-supervised learning can be applied to datasets that contain both labeled and unlabeled instance...
This paper studies Positive and Unlabeled learning (PU learning), of which the target is to build a ...
An emerging topic in machine learning is how to learn classifiers from datasets containing only posi...
The objective of this work is to learn sub-categories. Rather than casting this as a problem of unsu...
We present a maximum margin framework that clusters data using latent vari-ables. Using latent repre...
The objective of this work is to learn sub-categories. Rather than casting this as a problem of unsu...
The positive and unlabeled (PU) learning problem focuses on learning a classifier from positive and ...
Positive and unlabelled learning (PU learning) has been investigated to deal with the situation wher...
Maximum margin clustering was proposed lately and has shown promising performance in recent studies ...
The goal of binary classification is to train a model that can distinguish between examples belongin...