For classification problems, it is important that the classifier is trained with data which is likely to appear in the future. Discriminative models, because of their nature to focus on the boundary between classes rather than data itself, usually do not have the capability to deal with noisy training data. We propose the use of generative models as filters to make discriminative models more robust against noise. Firstly the distribution of the training data is estimated, then examples which do not satisfy some criterion, like having low likelihood, will be considered as outliers and discarded before training discriminative models. The idea was tested on a noisy data set from the UCI Machine Learning Repository
ABSTRACT When building a classifier from clean training data for a particular test environment, know...
When labelled training data is plentiful, discriminative techniques are widely used since they give ...
To some extent the problem of noise reduction in machine learning has been finessed by the developme...
Abstract. For classication problems, it is important that the classier is trained with data which is...
This report analyzes the difference between discriminative and generative image classifiers when tes...
In a standard classification framework a set of trustworthy learning data are employed to build a de...
International audienceWe consider Gaussian mixture model (GMM)-based classification from noisy featu...
In a standard classification framework a set of trustworthy learning data are employed to build a de...
Although discriminatively trained classifiers are usually more accurate when labeled training data ...
In classification, noise may deteriorate the system performance and increase the complexity of the m...
One of the significant problems in classification is class noise which has numerous potential conseq...
Noise in training data increases the tendency of many machine learning methods to overfit the traini...
Supported by the Projects TIN2011-28488, TIN2013-40765-P, P10-TIC-06858 and P11-TIC-7765. J.A. Saez ...
Although discriminatively-trained classifiers are usually more accurate when labeled training data i...
Class noise, as know as the mislabeled data in training set, can lead to poor accuracy in classifica...
ABSTRACT When building a classifier from clean training data for a particular test environment, know...
When labelled training data is plentiful, discriminative techniques are widely used since they give ...
To some extent the problem of noise reduction in machine learning has been finessed by the developme...
Abstract. For classication problems, it is important that the classier is trained with data which is...
This report analyzes the difference between discriminative and generative image classifiers when tes...
In a standard classification framework a set of trustworthy learning data are employed to build a de...
International audienceWe consider Gaussian mixture model (GMM)-based classification from noisy featu...
In a standard classification framework a set of trustworthy learning data are employed to build a de...
Although discriminatively trained classifiers are usually more accurate when labeled training data ...
In classification, noise may deteriorate the system performance and increase the complexity of the m...
One of the significant problems in classification is class noise which has numerous potential conseq...
Noise in training data increases the tendency of many machine learning methods to overfit the traini...
Supported by the Projects TIN2011-28488, TIN2013-40765-P, P10-TIC-06858 and P11-TIC-7765. J.A. Saez ...
Although discriminatively-trained classifiers are usually more accurate when labeled training data i...
Class noise, as know as the mislabeled data in training set, can lead to poor accuracy in classifica...
ABSTRACT When building a classifier from clean training data for a particular test environment, know...
When labelled training data is plentiful, discriminative techniques are widely used since they give ...
To some extent the problem of noise reduction in machine learning has been finessed by the developme...