We describe a generalization of the multiple-instance learning model in which a bag’s label is not based on a single instance’s proximity to a single target point. Rather, a bag is positive if and only if it contains a collection of instances, each near one of a set of target points. We list potential applications of this model (robot vision, content-based image retrieval, protein sequence identification, and drug discovery) and describe target concepts for these applications that cannot be represented in the conventional multiple-instance learning model. We then adapt a learning-theoretic algorithm for learning in this model and present empirical results
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...
Many visual recognition tasks can be represented as multiple instance problems. Two examples are ima...
We describe a generalization of the multiple-instance learning model in which a bag’s label is not b...
In pattern classification it is usually assumed that a train-ing set of labeled patterns is availabl...
In multi-instance learning, each example is represented by a bag of instances while associated with ...
Multiple instance learning (MIL) is an extension of supervised learning where the objects are repres...
Abstract: Multiple-Instance Learning (MIL) is used to predict the unlabeled bags ’ label by learning...
We present a new approach to multiple instance learning (MIL) that is particularly effective when th...
Many methods exist to solve multi-instance learning by using different mechanisms, but all these met...
Abstract. Multiple Instance Learning (MIL) proposes a new paradigm when instance labeling, in the le...
Multiple-instance learning is a variation on supervised learning, where the task is to learn a conce...
In traditional multi-instance (MI) learning, a single positive instance in a bag produces a positive...
Abstract—Multiple-instance problems arise from the situations where training class labels are attach...
We analyze and evaluate a generative process for multiple-instance learning (MIL) in which bags are ...
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...
Many visual recognition tasks can be represented as multiple instance problems. Two examples are ima...
We describe a generalization of the multiple-instance learning model in which a bag’s label is not b...
In pattern classification it is usually assumed that a train-ing set of labeled patterns is availabl...
In multi-instance learning, each example is represented by a bag of instances while associated with ...
Multiple instance learning (MIL) is an extension of supervised learning where the objects are repres...
Abstract: Multiple-Instance Learning (MIL) is used to predict the unlabeled bags ’ label by learning...
We present a new approach to multiple instance learning (MIL) that is particularly effective when th...
Many methods exist to solve multi-instance learning by using different mechanisms, but all these met...
Abstract. Multiple Instance Learning (MIL) proposes a new paradigm when instance labeling, in the le...
Multiple-instance learning is a variation on supervised learning, where the task is to learn a conce...
In traditional multi-instance (MI) learning, a single positive instance in a bag produces a positive...
Abstract—Multiple-instance problems arise from the situations where training class labels are attach...
We analyze and evaluate a generative process for multiple-instance learning (MIL) in which bags are ...
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...
Many visual recognition tasks can be represented as multiple instance problems. Two examples are ima...