A critical review of multi-output support vector regression
Single-output regression is a widely used statistical modeling method to predict an output
based on one or more features of a datapoint. If a dataset has multiple outputs, they can be …
based on one or more features of a datapoint. If a dataset has multiple outputs, they can be …
Kernel methods and their potential use in signal processing
F Pérez-Cruz, O Bousquet - IEEE signal processing magazine, 2004 - ieeexplore.ieee.org
The notion of kernels, recently introduced, has drawn much interest as it allows one to obtain
nonlinear algorithms from linear ones in a simple and elegant manner. This, in conjunction …
nonlinear algorithms from linear ones in a simple and elegant manner. This, in conjunction …
[图书][B] Support vector machines for pattern classification
S Abe - 2005 - Springer
Since the introduction of support vector machines, we have witnessed the huge
development in theory, models, and applications of what is so-called kernel-based methods …
development in theory, models, and applications of what is so-called kernel-based methods …
Hybrid machine learning algorithm and statistical time series model for network-wide traffic forecast
T Ma, C Antoniou, T Toledo - Transportation Research Part C: Emerging …, 2020 - Elsevier
We propose a novel approach for network-wide traffic state prediction where the statistical
time series model ARIMA is used to postprocess the residuals out of the fundamental …
time series model ARIMA is used to postprocess the residuals out of the fundamental …
Multioutput support vector regression for remote sensing biophysical parameter estimation
This letter proposes a multioutput support vector regression (M-SVR) method for the
simultaneous estimation of different biophysical parameters from remote sensing images …
simultaneous estimation of different biophysical parameters from remote sensing images …
[图书][B] Predicting structured data
G BakIr - 2007 - books.google.com
Machine learning develops intelligent computer systems that are able to generalize from
previously seen examples. A new domain of machine learning, in which the prediction must …
previously seen examples. A new domain of machine learning, in which the prediction must …
Multi-step-ahead time series prediction using multiple-output support vector regression
Accurate time series prediction over long future horizons is challenging and of great interest
to both practitioners and academics. As a well-known intelligent algorithm, the standard …
to both practitioners and academics. As a well-known intelligent algorithm, the standard …
Variational label enhancement
Label distribution covers a certain number of labels, representing the degree to which each
label describes the instance. When dealing with label ambiguity, label distribution could …
label describes the instance. When dealing with label ambiguity, label distribution could …
Multiple-output support vector regression with a firefly algorithm for interval-valued stock price index forecasting
Highly accurate interval forecasting of a stock price index is fundamental to successfully
making a profit when making investment decisions, by providing a range of values rather …
making a profit when making investment decisions, by providing a range of values rather …
SVM multiregression for nonlinear channel estimation in multiple-input multiple-output systems
M Sánchez-Fernández… - IEEE transactions on …, 2004 - ieeexplore.ieee.org
This paper addresses the problem of multiple-input multiple-output (MIMO) frequency
nonselective channel estimation. We develop a new method for multiple variable regression …
nonselective channel estimation. We develop a new method for multiple variable regression …