The goal of pattern classification can be approached from two points of view: informative- where the classifier learns the class densities, or discriminative- where the focus is on learning the class boundaries without regard to the underlying class densities. We review and synthesize the tradeoffs between these two approaches for simple classifiers, and extend the results to modern techniques such as Naive Bayes and Generalized Additive Models. Data mining applications often operate in the domain of high dimensional features where the tradeoffs between informative and discriminative classifiers are especially relevant. Experimental results are provided for simulated and real data
In many scientific and engineering applications, detecting and under-standing differences between tw...
Although discriminatively-trained classifiers are usually more accurate when labeled training data i...
Discriminative learning methods for classification perform well when training and test data are draw...
International audienceGiven any generative classifier based on an inexact density model, we can defi...
Discriminative learning of Bayesian network classifiers has recently received considerable attention...
Abstract. Discriminative and generative methods provide two distinct approaches to machine learning ...
The aim of the study was to find out how humans learn to use informative features to categorise nove...
Human categorization research is dominated by work in classification learning. The field may be in d...
The aim of the study was to find out how humans learn to use informative features to categorise nove...
Density models are a popular tool for building classifiers. When using density models to build a cla...
<p>Schematic comparison of discriminative (A) and generative (B) learning methods. In the discrimina...
The learning metrics principle describes a way to derive metrics to the data space from paired data...
In pattern recognition, a classifier is trained solve the multiple hypotheses test-ing problem in wh...
This paper experimentally compares the performance of discriminative and generative classifiers for ...
Discriminative learning methods for classification perform well when training and test data are draw...
In many scientific and engineering applications, detecting and under-standing differences between tw...
Although discriminatively-trained classifiers are usually more accurate when labeled training data i...
Discriminative learning methods for classification perform well when training and test data are draw...
International audienceGiven any generative classifier based on an inexact density model, we can defi...
Discriminative learning of Bayesian network classifiers has recently received considerable attention...
Abstract. Discriminative and generative methods provide two distinct approaches to machine learning ...
The aim of the study was to find out how humans learn to use informative features to categorise nove...
Human categorization research is dominated by work in classification learning. The field may be in d...
The aim of the study was to find out how humans learn to use informative features to categorise nove...
Density models are a popular tool for building classifiers. When using density models to build a cla...
<p>Schematic comparison of discriminative (A) and generative (B) learning methods. In the discrimina...
The learning metrics principle describes a way to derive metrics to the data space from paired data...
In pattern recognition, a classifier is trained solve the multiple hypotheses test-ing problem in wh...
This paper experimentally compares the performance of discriminative and generative classifiers for ...
Discriminative learning methods for classification perform well when training and test data are draw...
In many scientific and engineering applications, detecting and under-standing differences between tw...
Although discriminatively-trained classifiers are usually more accurate when labeled training data i...
Discriminative learning methods for classification perform well when training and test data are draw...