We believe that the cluster assumption is key to successful semi-supervised learning. Based on this, we propose three semi-supervised algorithms: 1. deriving graph-based distances that emphazise low density regions between clusters, followed by training a standard SVM; 2. optimizing the Transductive SVM objective function, which places the decision boundary in low density regions, by gradient descent; 3. combining the first two to make maximum use of the cluster assumption. We compare with state of the art algorithms and demonstrate superior accuracy for the latter two methods
Semi-supervised clustering algorithms aim to improve clustering results using limited supervision. T...
Semi-supervised classification is drawing increasing attention in the era of big data, as the gap be...
In many machine learning domains, there is a large supply of unlabeled data but limited labeled data...
We believe that the cluster assumption is key to successful semi-supervised learning. Based on this,...
We believe that the cluster assumption is key to successful semi-supervised learning. Based on this,...
We believe that the cluster assumption is key to successful semi-supervised learning. Based on this,...
Semi Supervised Learning involves using both labeled and unlabeled data to train a classifier or for...
In the field of machine learning, semi-supervised learning (SSL) occupies the middle ground, between...
In the field of machine learning, semi-supervised learning (SSL) occupies the middle ground, between...
Associating distinct groups of objects (clusters) with contiguous regions of high probability densit...
In the field of machine learning, semi-supervised learning (SSL) occupies the middle ground, between...
In many machine learning domains (e.g. text processing, bioinformatics), there is a large supply of ...
Semi-supervised clustering employs a small amount of labeled data to aid unsupervised learning. Prev...
Semi-supervised classification is drawing increasing attention in the era of big data, as the gap be...
Semi-supervised clustering algorithms aim to improve clustering results using limited supervision. T...
Semi-supervised clustering algorithms aim to improve clustering results using limited supervision. T...
Semi-supervised classification is drawing increasing attention in the era of big data, as the gap be...
In many machine learning domains, there is a large supply of unlabeled data but limited labeled data...
We believe that the cluster assumption is key to successful semi-supervised learning. Based on this,...
We believe that the cluster assumption is key to successful semi-supervised learning. Based on this,...
We believe that the cluster assumption is key to successful semi-supervised learning. Based on this,...
Semi Supervised Learning involves using both labeled and unlabeled data to train a classifier or for...
In the field of machine learning, semi-supervised learning (SSL) occupies the middle ground, between...
In the field of machine learning, semi-supervised learning (SSL) occupies the middle ground, between...
Associating distinct groups of objects (clusters) with contiguous regions of high probability densit...
In the field of machine learning, semi-supervised learning (SSL) occupies the middle ground, between...
In many machine learning domains (e.g. text processing, bioinformatics), there is a large supply of ...
Semi-supervised clustering employs a small amount of labeled data to aid unsupervised learning. Prev...
Semi-supervised classification is drawing increasing attention in the era of big data, as the gap be...
Semi-supervised clustering algorithms aim to improve clustering results using limited supervision. T...
Semi-supervised clustering algorithms aim to improve clustering results using limited supervision. T...
Semi-supervised classification is drawing increasing attention in the era of big data, as the gap be...
In many machine learning domains, there is a large supply of unlabeled data but limited labeled data...