Quantitative Regression Analysis: Difference between revisions
Jump to navigation
Jump to search
imported>Jeremy No edit summary |
|||
(9 intermediate revisions by 3 users not shown) | |||
Line 1: | Line 1: | ||
__TOC__ | |||
These methods develop regression models which attempt to predict a quantity based on measurements of responses (x-block) and corresponding quantities (y-block) on known samples. | These methods develop regression models which attempt to predict a quantity based on measurements of responses (x-block) and corresponding quantities (y-block) on known samples. | ||
Line 7: | Line 8: | ||
:[[analysis]] - Graphical user interface for data analysis. | :[[analysis]] - Graphical user interface for data analysis. | ||
:[[cls]] - Classical Least Squares regression for multivariate Y. | :[[cls]] - Classical Least Squares regression for multivariate Y. | ||
:[[crossval]] - Cross-validation for decomposition and linear regression. | |||
:[[lreg]] - Predictions based on softmax multinomial logistic regression model. | |||
:[[mlr]] - Multiple Linear Regression for multivariate Y. | |||
:[[pcr]] - Principal components regression for multivariate Y. | :[[pcr]] - Principal components regression for multivariate Y. | ||
:[[pls]] - Partial least squares regression for multivariate Y. | :[[pls]] - Partial least squares regression for multivariate Y. | ||
:[[ | :[[stepwise_regrcls]] - Step-wise regression for CLS models. | ||
==Multiway Models== | ==Multiway Models== | ||
:[[npls]] - Multilinear-PLS (N-PLS) for true multi-way regression. | :[[npls]] - Multilinear-PLS (N-PLS) for true multi-way regression. | ||
:[[modelviewer]] - Visualization tool for multi-way models. | :[[modelviewer]] - Visualization tool for multi-way models. | ||
==Local, Non-linear, and Other Methods== | ==Local, Non-linear, and Other Methods== | ||
:[[ann]] - Artificial Neural Network regression models. | |||
:[[cr]] - Continuum Regression for multivariate y. | |||
:[[frpcr]] - Full-ratio PCR calibration and prediction. | :[[frpcr]] - Full-ratio PCR calibration and prediction. | ||
:[[ | :[[lwr]] - Locally weighted regression for univariate Y. | ||
:[[polypls]] - PLS regression with polynomial inner-relation. | :[[polypls]] - PLS regression with polynomial inner-relation. | ||
:[[ridge]] - Ridge regression by Hoerl-Kennard-Baldwin. | :[[ridge]] - Ridge regression by Hoerl-Kennard-Baldwin. | ||
:[[ | :[[svm]] - SVM Support Vector Machine for regression. | ||
:[[svmda]] - SVM Support Vector Machine for classification. | |||
:[[xgb]] - Gradient Boosted Tree Ensemble for regression using XGBoost. | |||
:[[xgbda]] - Gradient Boosted Tree Ensemble for classification (Discriminant Analysis) using XGBoost. | |||
==Other Topics== | ==Other Topics== |
Latest revision as of 11:19, 13 September 2020
These methods develop regression models which attempt to predict a quantity based on measurements of responses (x-block) and corresponding quantities (y-block) on known samples.
The y-block may contain a physical quantity which is directly related to the measurements in the x-block, or it may be a value which is indirectly related to the measured x-block values. In the latter case, the resulting model is considered an "inferential" model.
Standard Linear Modeling Methods
- analysis - Graphical user interface for data analysis.
- cls - Classical Least Squares regression for multivariate Y.
- crossval - Cross-validation for decomposition and linear regression.
- lreg - Predictions based on softmax multinomial logistic regression model.
- mlr - Multiple Linear Regression for multivariate Y.
- pcr - Principal components regression for multivariate Y.
- pls - Partial least squares regression for multivariate Y.
- stepwise_regrcls - Step-wise regression for CLS models.
Multiway Models
- npls - Multilinear-PLS (N-PLS) for true multi-way regression.
- modelviewer - Visualization tool for multi-way models.
Local, Non-linear, and Other Methods
- ann - Artificial Neural Network regression models.
- cr - Continuum Regression for multivariate y.
- frpcr - Full-ratio PCR calibration and prediction.
- lwr - Locally weighted regression for univariate Y.
- polypls - PLS regression with polynomial inner-relation.
- ridge - Ridge regression by Hoerl-Kennard-Baldwin.
- svm - SVM Support Vector Machine for regression.
- svmda - SVM Support Vector Machine for classification.
- xgb - Gradient Boosted Tree Ensemble for regression using XGBoost.
- xgbda - Gradient Boosted Tree Ensemble for classification (Discriminant Analysis) using XGBoost.
Other Topics
- Application of Models to New Data
- Model Analysis and Calculation Utilities
- Plotting Utilities
- Related Tools
(Sub topic of PLS_Toolbox_Topics)