International audienceWe describe a new approach for dealing with hierarchical classification with a large number of classes. We build on Error Correcting Output Codes and propose two algorithms that learn compact, binary, low dimensional class codes from a similarity information between classes. This allows building classification algorithms that performs similarly or better than the standard and performing one-vs-all approach, with much lower inference complexity
We study the problem of classifying data in a given taxonomy when classifications associated with mu...
In this paper, we reinterpret error-correcting output codes (ECOCs) as a framework for converting mu...
We theoretically analyze and compare the following five popular multiclass classification methods: O...
Multiclass learning problems involve finding a definition for an unknown function f(x) whose range ...
Abstract—We present a heuristic method for learning error correcting output codes matrices based on ...
In classification problems, especially those that categorize data into a large number of classes, th...
University of Minnesota Ph.D. dissertation. January 2009. Major: Statistics. Advisor: Xiaotong Shen....
Multiclass learning problems involve finding a definition for an unknown function f(x) whose range i...
We study the problem of hierarchical classification when labels corre-sponding to partial and/or mul...
<p>In this paper, we propose a hierarchical regularization framework for large-scale hierarchical cl...
A common way to model multiclass classification problems is by means of Error-Correcting Output Code...
In the framework of decomposition methods for multiclass classification problems, error correcting o...
We focus on methods to solve multiclass learning problems by using only simple and efficient binary ...
In this paper, we present a new type of multi-class learning algorithm called a linear-max algorithm...
Recently the maximum margin criterion has been employed to learn a discriminative class hierarchical...
We study the problem of classifying data in a given taxonomy when classifications associated with mu...
In this paper, we reinterpret error-correcting output codes (ECOCs) as a framework for converting mu...
We theoretically analyze and compare the following five popular multiclass classification methods: O...
Multiclass learning problems involve finding a definition for an unknown function f(x) whose range ...
Abstract—We present a heuristic method for learning error correcting output codes matrices based on ...
In classification problems, especially those that categorize data into a large number of classes, th...
University of Minnesota Ph.D. dissertation. January 2009. Major: Statistics. Advisor: Xiaotong Shen....
Multiclass learning problems involve finding a definition for an unknown function f(x) whose range i...
We study the problem of hierarchical classification when labels corre-sponding to partial and/or mul...
<p>In this paper, we propose a hierarchical regularization framework for large-scale hierarchical cl...
A common way to model multiclass classification problems is by means of Error-Correcting Output Code...
In the framework of decomposition methods for multiclass classification problems, error correcting o...
We focus on methods to solve multiclass learning problems by using only simple and efficient binary ...
In this paper, we present a new type of multi-class learning algorithm called a linear-max algorithm...
Recently the maximum margin criterion has been employed to learn a discriminative class hierarchical...
We study the problem of classifying data in a given taxonomy when classifications associated with mu...
In this paper, we reinterpret error-correcting output codes (ECOCs) as a framework for converting mu...
We theoretically analyze and compare the following five popular multiclass classification methods: O...