This research focuses on analyzing the robustness of different regression paradigms under regressand noise, which has not been examined in depth in the specialized literature. Furthermore, their synergy with fourteen noise preprocessing techniques adapted from the field of classification, known as noise filters, is studied. In order to do this, several noise levels are injected into the output variable of 20 real-world datasets. They are used to evaluate the performance of each regression algorithm with and without the employment of noise filters. The results obtained allow building a robustness ranking of the regression methods to regressand noise. This provides interesting findings, such as some learning paradigms change their well-know b...
We conduct a comparative study to investigate two noise es-timation approaches for robust speech rec...
Developing robust and less complex models capable of coping with environment volatility is the quest...
One of the significant problems in classification is class noise which has numerous potential conseq...
The authors thank the anonymous reviewers for the time spent on this research work, as well as all ...
Colloque avec actes et comité de lecture. internationale.International audienceNoise degrades the pe...
Imperfections in data can arise from many sources. The qual-ity of the data is of prime concern to a...
Data analysis usually aims to identify a particular signal, such as an intervention effect. Conventi...
Noise filtering can be considered an important preprocessing step in the data mining process, making...
The problem of learning from noisy data sets has been the focus of much attention for many years. Th...
Data analysis usually aims to identify a particular signal, such as an intervention effect. Conventi...
The accuracy of the interpolation depends on the true noise level and the estimated noise level. How...
This report presents a review of the main research directions in noise robust automatic speech recog...
Machine learning techniques often have to deal with noisy data, which may affect the accuracy of the...
In classification, noise may deteriorate the system performance and increase the complexity of the m...
Bootstrap samples with noise are shown to be an effective smoothness and capacity control technique ...
We conduct a comparative study to investigate two noise es-timation approaches for robust speech rec...
Developing robust and less complex models capable of coping with environment volatility is the quest...
One of the significant problems in classification is class noise which has numerous potential conseq...
The authors thank the anonymous reviewers for the time spent on this research work, as well as all ...
Colloque avec actes et comité de lecture. internationale.International audienceNoise degrades the pe...
Imperfections in data can arise from many sources. The qual-ity of the data is of prime concern to a...
Data analysis usually aims to identify a particular signal, such as an intervention effect. Conventi...
Noise filtering can be considered an important preprocessing step in the data mining process, making...
The problem of learning from noisy data sets has been the focus of much attention for many years. Th...
Data analysis usually aims to identify a particular signal, such as an intervention effect. Conventi...
The accuracy of the interpolation depends on the true noise level and the estimated noise level. How...
This report presents a review of the main research directions in noise robust automatic speech recog...
Machine learning techniques often have to deal with noisy data, which may affect the accuracy of the...
In classification, noise may deteriorate the system performance and increase the complexity of the m...
Bootstrap samples with noise are shown to be an effective smoothness and capacity control technique ...
We conduct a comparative study to investigate two noise es-timation approaches for robust speech rec...
Developing robust and less complex models capable of coping with environment volatility is the quest...
One of the significant problems in classification is class noise which has numerous potential conseq...