This paper focuses on kernel methods for multi-instance learning. Existing methods require the prediction of the bag to be identical to the maximum of those of its individual instances. However, this is too restrictive as only the sign is important in classification. In this paper, we provide a more complete regularization framework for MI learning by allowing the use of different loss functions between the outputs of a bag and its associated instances. This is especially important as we generalize this for multi-instance regression. Moreover, both bag and instance information can now be directly used in the optimization. Instead of using heuristics to solve the resultant nonlinear optimization problem, we use the constrained concave-convex...
Although attention mechanisms have been widely used in deep learning for many tasks, they are rarely...
In pattern recognition and data analysis, objects or events are often represented by a feature vecto...
We analyze and evaluate a generative process for multiple-instance learning (MIL) in which bags are ...
In recent years, the Multiple-Instance Learning (MIL) problem is becoming more and more popular in t...
We propose a direct approach to learning sparse kernel classifiers for multi-instance (MI) classific...
Multi-instance multi-label learning (MIML) is a framework for supervised classification where the ob...
Most existing Multiple-Instance Learning (MIL) algorithms assume data instances and/or data bags are...
Most existing Multiple-Instance Learning (MIL) algorithms assume data instances and/or data bags are...
I propose to investigate learning in the multiple-instance (MI) framework as a problem of learning f...
Multi-instance (MI) learning is a branch of machine learning, where each object (bag) consists of mu...
In multiple-Instance Learning (MIL), training class labels are attached to sets of bags composed of ...
Support vector machines (SVM) have been highly successful in many machine learning problems. Recentl...
Support vector machines (SVM) have been highly successful in many machine learning problems. Recentl...
Multiple instance learning (MIL) is concerned with learning from sets (bags) of objects (instances),...
Multiple-instance Learning (MIL) is a new paradigm of supervised learning that deals with the classi...
Although attention mechanisms have been widely used in deep learning for many tasks, they are rarely...
In pattern recognition and data analysis, objects or events are often represented by a feature vecto...
We analyze and evaluate a generative process for multiple-instance learning (MIL) in which bags are ...
In recent years, the Multiple-Instance Learning (MIL) problem is becoming more and more popular in t...
We propose a direct approach to learning sparse kernel classifiers for multi-instance (MI) classific...
Multi-instance multi-label learning (MIML) is a framework for supervised classification where the ob...
Most existing Multiple-Instance Learning (MIL) algorithms assume data instances and/or data bags are...
Most existing Multiple-Instance Learning (MIL) algorithms assume data instances and/or data bags are...
I propose to investigate learning in the multiple-instance (MI) framework as a problem of learning f...
Multi-instance (MI) learning is a branch of machine learning, where each object (bag) consists of mu...
In multiple-Instance Learning (MIL), training class labels are attached to sets of bags composed of ...
Support vector machines (SVM) have been highly successful in many machine learning problems. Recentl...
Support vector machines (SVM) have been highly successful in many machine learning problems. Recentl...
Multiple instance learning (MIL) is concerned with learning from sets (bags) of objects (instances),...
Multiple-instance Learning (MIL) is a new paradigm of supervised learning that deals with the classi...
Although attention mechanisms have been widely used in deep learning for many tasks, they are rarely...
In pattern recognition and data analysis, objects or events are often represented by a feature vecto...
We analyze and evaluate a generative process for multiple-instance learning (MIL) in which bags are ...