The multiple instance classification problem [6,2,12] is formulated using a linear or nonlinear kernel as the minimization of a linear function in a finite dimensional (noninteger) real space subject to linear and bilinear constraints. A linearization algorithm is proposed that solves a succession of fast linear programs that converges in a few iterations to a local solution. Computational results on a number of datasets indicate that the proposed algorithm is competitive with the considerably more complex integer programming and other formulations. A distinguishing aspect of our linear classifier not shared by other multiple instance classifiers is the sparse number of features it utilizes. In some tasks the reduction amounts to less than ...
International audienceThis paper deals with multi-class classification problems. Many methods extend...
In multiple-Instance Learning (MIL), training class labels are attached to sets of bags composed of ...
Regularized kernel discriminant analysis (RKDA) performs linear discriminant analysis in the fea-tur...
The multiple instance classification problem [6,2,12] is formulated using a linear or nonlinear ker...
Multi-instance learning deals with problems that treat bags of instances as training examples. In si...
In many applications it is desirable to learn from several kernels. "Multiple kernel learning" (MKL)...
A finite concave minimization algorithm is proposed for constructing kernel classifiers that use a m...
MasterIn this paper, we propose an improved method for classification that employs a combination of ...
© 2016 IEEE. While kernel methods using a single Gaussian kernel have proven to be very successful f...
AbstractThis paper proposed a novel classification model which introduced the kernel function into t...
We propose a direct approach to learning sparse kernel classifiers for multi-instance (MI) classific...
Learning from ambiguous training data is highly relevant in many applications. We present a new lear...
Learning from ambiguous training data is highly relevant in many applications. We present a new lear...
AbstractClassification is a main data mining task, which aims at predicting the class label of new i...
AbstractWe analyze theoretically the generalization properties of multi-class data classification te...
International audienceThis paper deals with multi-class classification problems. Many methods extend...
In multiple-Instance Learning (MIL), training class labels are attached to sets of bags composed of ...
Regularized kernel discriminant analysis (RKDA) performs linear discriminant analysis in the fea-tur...
The multiple instance classification problem [6,2,12] is formulated using a linear or nonlinear ker...
Multi-instance learning deals with problems that treat bags of instances as training examples. In si...
In many applications it is desirable to learn from several kernels. "Multiple kernel learning" (MKL)...
A finite concave minimization algorithm is proposed for constructing kernel classifiers that use a m...
MasterIn this paper, we propose an improved method for classification that employs a combination of ...
© 2016 IEEE. While kernel methods using a single Gaussian kernel have proven to be very successful f...
AbstractThis paper proposed a novel classification model which introduced the kernel function into t...
We propose a direct approach to learning sparse kernel classifiers for multi-instance (MI) classific...
Learning from ambiguous training data is highly relevant in many applications. We present a new lear...
Learning from ambiguous training data is highly relevant in many applications. We present a new lear...
AbstractClassification is a main data mining task, which aims at predicting the class label of new i...
AbstractWe analyze theoretically the generalization properties of multi-class data classification te...
International audienceThis paper deals with multi-class classification problems. Many methods extend...
In multiple-Instance Learning (MIL), training class labels are attached to sets of bags composed of ...
Regularized kernel discriminant analysis (RKDA) performs linear discriminant analysis in the fea-tur...