Although discriminatively trained classifiers are usually more accurate when labeled training data is abundant, previous work has shown that when training data is limited, generative classifiers can out-perform them. This paper describes a hybrid model in which a high-dimensional subset of the parameters are trained to maximize generative likelihood, and another, small, subset of parameters are discriminatively trained to maximize conditional likelihood. We give a sample complexity bound showing that in order to fit the discriminative parameters well, the number of training examples required depends only on the logarithm of the number of feature occurrences and feature set size. Experimental results show that hybrid models can pro...
Abstract. For classication problems, it is important that the classier is trained with data which is...
International audienceGiven any generative classifier based on an inexact density model, we can defi...
In this paper, we introduce a new restricted Bayesian network classifier that extends naive Bayes by...
Although discriminatively-trained classifiers are usually more accurate when labeled training data i...
In discriminant analysis, probabilistic generative and discriminative approaches represent two parad...
In discriminant analysis, probabilistic generative and discriminative approaches represent two parad...
When labelled training data is plentiful, discriminative techniques are widely used since they give ...
Recent work has shown substantial performance improvements of discriminative probabilistic models ov...
Recent work has shown substantial performance improvements of discriminative probabilistic models ov...
In this paper, we study semi-supervised learning using hybrid generative/discriminative methods. Spe...
In machine learning, probabilistic models are described as be-longing to one of two categories: gene...
Machine learning practitioners are often faced with a choice between a discriminative and a generati...
Although discriminative learning in graphical models generally improves classification results, the ...
Machine learning practitioners are often faced with a choice between a discrimina-tive and a generat...
Machine learning methods often face a tradeoff between the accuracy of discriminative models and the...
Abstract. For classication problems, it is important that the classier is trained with data which is...
International audienceGiven any generative classifier based on an inexact density model, we can defi...
In this paper, we introduce a new restricted Bayesian network classifier that extends naive Bayes by...
Although discriminatively-trained classifiers are usually more accurate when labeled training data i...
In discriminant analysis, probabilistic generative and discriminative approaches represent two parad...
In discriminant analysis, probabilistic generative and discriminative approaches represent two parad...
When labelled training data is plentiful, discriminative techniques are widely used since they give ...
Recent work has shown substantial performance improvements of discriminative probabilistic models ov...
Recent work has shown substantial performance improvements of discriminative probabilistic models ov...
In this paper, we study semi-supervised learning using hybrid generative/discriminative methods. Spe...
In machine learning, probabilistic models are described as be-longing to one of two categories: gene...
Machine learning practitioners are often faced with a choice between a discriminative and a generati...
Although discriminative learning in graphical models generally improves classification results, the ...
Machine learning practitioners are often faced with a choice between a discrimina-tive and a generat...
Machine learning methods often face a tradeoff between the accuracy of discriminative models and the...
Abstract. For classication problems, it is important that the classier is trained with data which is...
International audienceGiven any generative classifier based on an inexact density model, we can defi...
In this paper, we introduce a new restricted Bayesian network classifier that extends naive Bayes by...