Multi-instance learning and semi-supervised learning are different branches of machine learning. The former attempts to learn from a training set consists of labeled bags each containing many unlabeled instances; the latter tries to exploit abundant unlabeled instances when learning with a small number of labeled examples. In this paper, we establish a bridge between these two branches by showing that multi-instance learning can be viewed as a special case of semi-supervised learning. Based on this recognition, we propose the MissSVM algorithm which addresses multi-instance learning using a special semisupervised support vector machine. Experiments show that solving multi-instance problems from the view of semi-supervised learning is feasib...
In traditional multi-instance (MI) learning, a single positive instance in a bag produces a positive...
Multiple instance learning (MIL) is an extension of supervised learning where the objects are repres...
Multiple instance (MI) learning is a relatively new topic in machine learning. It is concerned with...
Multi-instance (MI) learning is a variant of supervised learning where labeled examples consist of b...
Abstract In multi-instance learning, the training set comprises labeled bags that are composed of un...
Motivated by various challenging real-world applications, such as drug activity prediction and image...
Abstract In multi-instance learning, the training set comprises labeled bags that are com-posed of u...
Abstract In multi-instance learning, the training set comprises labeled bags that are composed of un...
In this paper we empirically investigate the benefits of multi-view multi-instance (MVMI) learning f...
In recent years, the Multiple-Instance Learning (MIL) problem is becoming more and more popular in t...
We empirically study the relationship between supervised and multiple instance (MI) learning. Algori...
Abstract—Multiple-instance problems arise from the situations where training class labels are attach...
Multi-instance (MI) learning is a variant of inductive machine learning, where each learning example...
Multiple-instance Learning (MIL) is a new paradigm of supervised learning that deals with the classi...
In multi-instance learning, each example is represented by a bag of instances while associated with ...
In traditional multi-instance (MI) learning, a single positive instance in a bag produces a positive...
Multiple instance learning (MIL) is an extension of supervised learning where the objects are repres...
Multiple instance (MI) learning is a relatively new topic in machine learning. It is concerned with...
Multi-instance (MI) learning is a variant of supervised learning where labeled examples consist of b...
Abstract In multi-instance learning, the training set comprises labeled bags that are composed of un...
Motivated by various challenging real-world applications, such as drug activity prediction and image...
Abstract In multi-instance learning, the training set comprises labeled bags that are com-posed of u...
Abstract In multi-instance learning, the training set comprises labeled bags that are composed of un...
In this paper we empirically investigate the benefits of multi-view multi-instance (MVMI) learning f...
In recent years, the Multiple-Instance Learning (MIL) problem is becoming more and more popular in t...
We empirically study the relationship between supervised and multiple instance (MI) learning. Algori...
Abstract—Multiple-instance problems arise from the situations where training class labels are attach...
Multi-instance (MI) learning is a variant of inductive machine learning, where each learning example...
Multiple-instance Learning (MIL) is a new paradigm of supervised learning that deals with the classi...
In multi-instance learning, each example is represented by a bag of instances while associated with ...
In traditional multi-instance (MI) learning, a single positive instance in a bag produces a positive...
Multiple instance learning (MIL) is an extension of supervised learning where the objects are repres...
Multiple instance (MI) learning is a relatively new topic in machine learning. It is concerned with...