Classification problems in machine learning involve assigning labels to various kinds of output types, from single assignment binary and multi-class classification to more complex assignments such as category ranking, sequence identification, and structured-output classification. Traditionally, most machine learning algorithms and theory is developed for the binary setting. In this dissertation, we provide a framework to unify these problems. Through this framework, many algorithms and significant theoretic understanding developed in the binary domain is extended to more complex settings. First, we introduce Constraint Classification, a learning framework that provides a unified view of complex-output problems. Within this framework, eac...
Real-world applications of Machine Learning (ML) require modeling and reasoning about complex, heter...
Abstract. Semi-supervised learning has been widely studied in the literature. However, most previous...
We present a new perspective on the popular multi-class algorithmic techniques of one-vs-all and err...
Classification problems in machine learning involve assigning labels to various kinds of output type...
Learning general functional dependencies between arbitrary input and output spaces is one of the key...
University of Minnesota Ph.D. dissertation. January 2009. Major: Statistics. Advisor: Xiaotong Shen....
We study multi-label prediction for structured output sets, a problem that occurs, for example, in o...
We study multi-label prediction for structured output spaces, a problem that occurs, for example, in...
We study multi-label prediction for structured output sets, a problem that occurs, for example, in o...
Structured output learning is the machine learning task of building a classifier to predict structure...
We present a unifying framework for studying the solution of multiclass categorization prob-lems by ...
The constraint classification framework captures many flavors of multiclass classification including...
Many of the Natural Language Processing tasks that we would like to model with machine learning tech...
Research on multi-label classification is concerned with developing and evaluating algorithms that l...
We present an algorithmic framework for supervised classification learning where the set of labels i...
Real-world applications of Machine Learning (ML) require modeling and reasoning about complex, heter...
Abstract. Semi-supervised learning has been widely studied in the literature. However, most previous...
We present a new perspective on the popular multi-class algorithmic techniques of one-vs-all and err...
Classification problems in machine learning involve assigning labels to various kinds of output type...
Learning general functional dependencies between arbitrary input and output spaces is one of the key...
University of Minnesota Ph.D. dissertation. January 2009. Major: Statistics. Advisor: Xiaotong Shen....
We study multi-label prediction for structured output sets, a problem that occurs, for example, in o...
We study multi-label prediction for structured output spaces, a problem that occurs, for example, in...
We study multi-label prediction for structured output sets, a problem that occurs, for example, in o...
Structured output learning is the machine learning task of building a classifier to predict structure...
We present a unifying framework for studying the solution of multiclass categorization prob-lems by ...
The constraint classification framework captures many flavors of multiclass classification including...
Many of the Natural Language Processing tasks that we would like to model with machine learning tech...
Research on multi-label classification is concerned with developing and evaluating algorithms that l...
We present an algorithmic framework for supervised classification learning where the set of labels i...
Real-world applications of Machine Learning (ML) require modeling and reasoning about complex, heter...
Abstract. Semi-supervised learning has been widely studied in the literature. However, most previous...
We present a new perspective on the popular multi-class algorithmic techniques of one-vs-all and err...