We present a new method for transductive learning, which can be seen as a transductive version of the k nearest-neighbor classifier. Unlike for many other transductive learning methods, the training problem has a meaningful relaxation that can be solved globally optimally using spectral methods. We propose an algorithm that robustly achieves good generalization performance and that can be trained efficiently. A key advantage of the algorithm is that it does not require additional heuristics to avoid unbalanced splits. Furthermore, we show a connection to transductive Support Vector Machines, and that an effective Co-Training algorithm arises as a special case. 1
The idea of local learning, classifying a particular point based on its neighbors, has been successf...
This course project provide the basic theory of spectral clustering from a graph partitioning point ...
Inductive learning is based on inferring a general rule from a finite data set and using it to label...
We consider spectral clustering and transductive inference for data with multiple views. A typical e...
Recent advances in ℓ1 optimization for imaging problems provide promising tools to solve the fundame...
Transductive learning is the problem of designing learning machines that succesfully generalize only...
We study the problem of learning kernel machines transductively for structured output variables. Tra...
Support vector machine (SVM) is a new learning method developed in recent years based on the foundat...
We study the problem of learning kernel ma-chines transductively for structured output variables. Tr...
This paper is concerned with transductive learning. Although transduction appears to be an easier ta...
Self-Supervised Learning (SSL) surmises that inputs and pairwise positive relationships are enough t...
Graph-based semi-supervised learning methods are based on some smoothness assumption about the data....
The architecture of a neural network constrains the space of functions it can implement. Equivarianc...
We pose transductive classification as a matrix completion problem. By assuming the underlying matri...
We propose a family of learning algorithms based on a new form of regularization which allows us to ...
The idea of local learning, classifying a particular point based on its neighbors, has been successf...
This course project provide the basic theory of spectral clustering from a graph partitioning point ...
Inductive learning is based on inferring a general rule from a finite data set and using it to label...
We consider spectral clustering and transductive inference for data with multiple views. A typical e...
Recent advances in ℓ1 optimization for imaging problems provide promising tools to solve the fundame...
Transductive learning is the problem of designing learning machines that succesfully generalize only...
We study the problem of learning kernel machines transductively for structured output variables. Tra...
Support vector machine (SVM) is a new learning method developed in recent years based on the foundat...
We study the problem of learning kernel ma-chines transductively for structured output variables. Tr...
This paper is concerned with transductive learning. Although transduction appears to be an easier ta...
Self-Supervised Learning (SSL) surmises that inputs and pairwise positive relationships are enough t...
Graph-based semi-supervised learning methods are based on some smoothness assumption about the data....
The architecture of a neural network constrains the space of functions it can implement. Equivarianc...
We pose transductive classification as a matrix completion problem. By assuming the underlying matri...
We propose a family of learning algorithms based on a new form of regularization which allows us to ...
The idea of local learning, classifying a particular point based on its neighbors, has been successf...
This course project provide the basic theory of spectral clustering from a graph partitioning point ...
Inductive learning is based on inferring a general rule from a finite data set and using it to label...