We consider ordinal classication and instance ranking problems where each attribute is known to have an increasing or decreasing relation with the class label or rank. For example, it stands to reason that the number of query terms occurring in a document has a positive in uence on its relevance to the query. We aim to exploit such monotonicity constraints by using labeled attribute vectors to draw conclusions about the class labels of order related unlabeled ones. Assuming we have a pool of unlabeled attribute vectors, and an oracle that can be queried for class labels, the central problem is to choose a query point whose label is expected to provide the most information. We evaluate dierent query strategies by comparing the number of infe...
The performance of an ordinal classifier is highly affected by the amount of absolute information (l...
In many settings in practice it is expensive to obtain labeled data while unlabeled data is abundant...
Selecting a subset of samples to label from a large pool of unlabeled data points, such that a suffi...
We consider ordinal classification and instance ranking problems where each attribute is known to ha...
Abstract To date, a large number of active learning algorithms have been proposed, but active learni...
Traditional active learning methods require the labeler to provide a class label for each queried in...
In many real world applications classification models are required to be in line with domain knowled...
Traditional active learning methods request experts to provide ground truths to the queried instance...
Machine learning methods for classification problems commonly assume that the class values are unord...
Abstract—In many decision making tasks, values of features and decision are ordinal. Moreover, there...
Ordinal (i.e., ordered) classifiers are used to make judgments that we make on a regular basis, both...
This dissertation develops and analyzes active learning algorithms for binary classification problem...
Semisupervised learning is a type of machine learning technique that constructs a classifier by lear...
AbstractAn active learner has a collection of data points, each with a label that is initially hidde...
Active learning has been extensively studied and shown to be useful in solving real problems. The ty...
The performance of an ordinal classifier is highly affected by the amount of absolute information (l...
In many settings in practice it is expensive to obtain labeled data while unlabeled data is abundant...
Selecting a subset of samples to label from a large pool of unlabeled data points, such that a suffi...
We consider ordinal classification and instance ranking problems where each attribute is known to ha...
Abstract To date, a large number of active learning algorithms have been proposed, but active learni...
Traditional active learning methods require the labeler to provide a class label for each queried in...
In many real world applications classification models are required to be in line with domain knowled...
Traditional active learning methods request experts to provide ground truths to the queried instance...
Machine learning methods for classification problems commonly assume that the class values are unord...
Abstract—In many decision making tasks, values of features and decision are ordinal. Moreover, there...
Ordinal (i.e., ordered) classifiers are used to make judgments that we make on a regular basis, both...
This dissertation develops and analyzes active learning algorithms for binary classification problem...
Semisupervised learning is a type of machine learning technique that constructs a classifier by lear...
AbstractAn active learner has a collection of data points, each with a label that is initially hidde...
Active learning has been extensively studied and shown to be useful in solving real problems. The ty...
The performance of an ordinal classifier is highly affected by the amount of absolute information (l...
In many settings in practice it is expensive to obtain labeled data while unlabeled data is abundant...
Selecting a subset of samples to label from a large pool of unlabeled data points, such that a suffi...