We study the problem of learning kernel machines transductively for structured output variables. Transductive learning can be reduced to combinatorial optimization problems over all possible labelings of the unlabeled data. In order to scale transductive learning to structured variables, we transform the corresponding non-convex, combinatorial, constrained optimization problems into continuous, unconstrained optimization problems. The discrete optimization parameters are eliminated and the resulting differentiable problems can be optimized efficiently. We study the effectiveness of the generalized TSVM on multiclass classification and label-sequence learning problems empirically
In many real world prediction problems the output is a structured object like a sequence or a tree o...
In structured output learning, obtaining la-beled data for real-world applications is usu-ally costl...
Classical optimization techniques have found widespread use in machine learning. Convex optimization...
We study the problem of learning kernel machines transductively for structured output variables. Tra...
We study the problem of learning kernel ma-chines transductively for structured output variables. Tr...
Structured output learning is the machine learning task of building a classifier to predict structure...
The problem of learning a mapping between input and structured, interdependent output variables cove...
In structured output learning, obtaining labeled data for real-world applications is usually costly,...
Recently, extreme learning machine (ELM) has attracted increasing attention due to its successful ap...
We derive a general Convex Linearly Con-strained Program (CLCP) parameterized by a matrix G, constru...
Structured output prediction in machine learning is the study of learning to predict complex objects...
Transductive learning is the problem of designing learning machines that succesfully generalize only...
Classification problems in machine learning involve assigning labels to various kinds of output type...
In the first part, we deal with the unlabeled data that are in good quality and follow the condition...
Learning general functional dependencies is one of the main goals in machine learning. Recent progre...
In many real world prediction problems the output is a structured object like a sequence or a tree o...
In structured output learning, obtaining la-beled data for real-world applications is usu-ally costl...
Classical optimization techniques have found widespread use in machine learning. Convex optimization...
We study the problem of learning kernel machines transductively for structured output variables. Tra...
We study the problem of learning kernel ma-chines transductively for structured output variables. Tr...
Structured output learning is the machine learning task of building a classifier to predict structure...
The problem of learning a mapping between input and structured, interdependent output variables cove...
In structured output learning, obtaining labeled data for real-world applications is usually costly,...
Recently, extreme learning machine (ELM) has attracted increasing attention due to its successful ap...
We derive a general Convex Linearly Con-strained Program (CLCP) parameterized by a matrix G, constru...
Structured output prediction in machine learning is the study of learning to predict complex objects...
Transductive learning is the problem of designing learning machines that succesfully generalize only...
Classification problems in machine learning involve assigning labels to various kinds of output type...
In the first part, we deal with the unlabeled data that are in good quality and follow the condition...
Learning general functional dependencies is one of the main goals in machine learning. Recent progre...
In many real world prediction problems the output is a structured object like a sequence or a tree o...
In structured output learning, obtaining la-beled data for real-world applications is usu-ally costl...
Classical optimization techniques have found widespread use in machine learning. Convex optimization...