© 2017 IEEE. Practically, we are often in the dilemma that the labeled data at hand are inadequate to train a reliable classifier, and more seriously, some of these labeled data may be mistakenly labeled due to the various human factors. Therefore, this paper proposes a novel semi-supervised learning paradigm that can handle both label insufficiency and label inaccuracy. To address label insufficiency, we use a graph to bridge the data points so that the label information can be propagated from the scarce labeled examples to unlabeled examples along the graph edges. To address label inaccuracy, Graph Trend Filtering (GTF) and Smooth Eigenbase Pursuit (SEP) are adopted to filter out the initial noisy labels. GTF penalizes the l-0 norm of lab...
Large scale datasets collected using non-expert labelers are prone to labeling errors. Errors in the...
Leveraging weak or noisy supervision for building effective machine learning models has long been an...
<p>We apply a graph regularization approach for semi-supervised learning, and the purpose of the pro...
With the advent of the Internet it is now possible to col-lect hundreds of millions of images. These...
This paper presents a novel noise-robust graph-based semi-supervised learning algorithm to deal with...
Reducing the amount of labels required to train convolutional neural networks without performance de...
AbstractSemi-supervised learning is a machine learning approach which is able to employ both labeled...
We consider the problem of semi-supervised graph-based learning. Since in semi-supervised settings, ...
Recent studies have shown that graph-based approaches are effective for semi-supervised learning. Th...
This thesis focuses on how unlabeled data can improve supervised learning classi-fiers in all contex...
We consider the problem of semi-supervised graphbased learning. Since in semi-supervised settings, t...
In the literature, most existing graph-based semi-supervised learning methods only use the label inf...
Abstract—Graphs play a role in many semi-supervised learn-ing algorithms, where unlabeled samples ar...
Graph-based semi-supervised learning has been intensively investigated for a long history. However, ...
In the supervised learning the data are divided into training set and unclassified set. A classifier...
Large scale datasets collected using non-expert labelers are prone to labeling errors. Errors in the...
Leveraging weak or noisy supervision for building effective machine learning models has long been an...
<p>We apply a graph regularization approach for semi-supervised learning, and the purpose of the pro...
With the advent of the Internet it is now possible to col-lect hundreds of millions of images. These...
This paper presents a novel noise-robust graph-based semi-supervised learning algorithm to deal with...
Reducing the amount of labels required to train convolutional neural networks without performance de...
AbstractSemi-supervised learning is a machine learning approach which is able to employ both labeled...
We consider the problem of semi-supervised graph-based learning. Since in semi-supervised settings, ...
Recent studies have shown that graph-based approaches are effective for semi-supervised learning. Th...
This thesis focuses on how unlabeled data can improve supervised learning classi-fiers in all contex...
We consider the problem of semi-supervised graphbased learning. Since in semi-supervised settings, t...
In the literature, most existing graph-based semi-supervised learning methods only use the label inf...
Abstract—Graphs play a role in many semi-supervised learn-ing algorithms, where unlabeled samples ar...
Graph-based semi-supervised learning has been intensively investigated for a long history. However, ...
In the supervised learning the data are divided into training set and unclassified set. A classifier...
Large scale datasets collected using non-expert labelers are prone to labeling errors. Errors in the...
Leveraging weak or noisy supervision for building effective machine learning models has long been an...
<p>We apply a graph regularization approach for semi-supervised learning, and the purpose of the pro...