In multiple instance learning, objects are sets (bags) of feature vectors (instances) rather than individual feature vectors. In this paper, we address the problem of how these bags can best be represented. Two standard approaches are to use (dis)similarities between bags and prototype bags, or between bags and prototype instances. The first approach results in a relatively low-dimensional representation, determined by the number of training bags, whereas the second approach results in a relatively high-dimensional representation, determined by the total number of instances in the training set. However, an advantage of the latter representation is that the informativeness of the prototype instances can be inferred. In this paper, a third, i...
In multiple-Instance Learning (MIL), training class labels are attached to sets of bags composed of ...
Abstract In multi-instance learning, the training set comprises labeled bags that are composed of un...
Multi-instance learning deals with problems that treat bags of instances as training examples. In si...
In multiple instance learning, objects are sets (bags) of feature vectors (instances) rather than in...
Multiple instance learning (MIL) is concerned with learning from sets (bags) of objects (instances),...
Multiple instance learning (MIL) is concerned with learning from sets (bags) of objects (instances),...
Multiple instance learning (MIL) is an extension of supervised learning where the objects are repres...
Multi-instance (MI) learning is a branch of machine learning, where each object (bag) consists of mu...
In pattern recognition and data analysis, objects or events are often represented by a feature vecto...
Abstract In multi-instance learning, the training set comprises labeled bags that are composed of un...
Abstract In multi-instance learning, the training set comprises labeled bags that are com-posed of u...
In multiple-instance learning (MIL), an object is represented as a bag consisting of a set of featur...
Abstract. Multiple-instance learning consists of two alternating opti-mization steps: learning a cla...
Abstract: Multiple-Instance Learning (MIL) is used to predict the unlabeled bags ’ label by learning...
Abstract. Multiple Instance Learning (MIL) proposes a new paradigm when instance labeling, in the le...
In multiple-Instance Learning (MIL), training class labels are attached to sets of bags composed of ...
Abstract In multi-instance learning, the training set comprises labeled bags that are composed of un...
Multi-instance learning deals with problems that treat bags of instances as training examples. In si...
In multiple instance learning, objects are sets (bags) of feature vectors (instances) rather than in...
Multiple instance learning (MIL) is concerned with learning from sets (bags) of objects (instances),...
Multiple instance learning (MIL) is concerned with learning from sets (bags) of objects (instances),...
Multiple instance learning (MIL) is an extension of supervised learning where the objects are repres...
Multi-instance (MI) learning is a branch of machine learning, where each object (bag) consists of mu...
In pattern recognition and data analysis, objects or events are often represented by a feature vecto...
Abstract In multi-instance learning, the training set comprises labeled bags that are composed of un...
Abstract In multi-instance learning, the training set comprises labeled bags that are com-posed of u...
In multiple-instance learning (MIL), an object is represented as a bag consisting of a set of featur...
Abstract. Multiple-instance learning consists of two alternating opti-mization steps: learning a cla...
Abstract: Multiple-Instance Learning (MIL) is used to predict the unlabeled bags ’ label by learning...
Abstract. Multiple Instance Learning (MIL) proposes a new paradigm when instance labeling, in the le...
In multiple-Instance Learning (MIL), training class labels are attached to sets of bags composed of ...
Abstract In multi-instance learning, the training set comprises labeled bags that are composed of un...
Multi-instance learning deals with problems that treat bags of instances as training examples. In si...