• Non ci sono risultati.

Polynomial Regression

N/A
N/A
Protected

Academic year: 2021

Condividi "Polynomial Regression"

Copied!
5
0
0

Testo completo

(1)

18/03/20, 17*25 Orange Data Mining - Polynomial Regression

Pagina 1 di 5 https://orange.biolab.si/widget-catalog/educational/polynomial-regression/

Polynomial Regression

Educational widget that interactively shows regression line for different regressors.

Inputs

Data: input data set. It needs at least two continuous attributes.

Preprocessor: data preprocessors

Learner: regression algorithm used in the widget. Default set to Linear Regression.

Outputs

Learner: regression algorithm used in the widget Predictor: trained regressor

Coefficients: regressor coefficients if any

Description

This widget interactively shows the regression line using any of the regressors from the Model module. In the widget, polynomial expansion can be set. Polynomial expansion is a regulation of the degree of the

polynom that is used to transform the input data and has an effect on the shape of a curve. If polynomial expansion is set to 1 it means that

untransformed data are used in the regression.

(2)

Pagina 2 di 5 https://orange.biolab.si/widget-catalog/educational/polynomial-regression/

D. Regressor name.

E. Input: independent variable on axis x. Polynomial expansion: degree of polynomial expansion. Target: dependent variable on axis y.

F. Save Image saves the image to the computer in a .svg or .png format. Report includes widget parameters and visualization in the report.

Example

(3)

18/03/20, 17*25 Orange Data Mining - Polynomial Regression

Pagina 3 di 5 https://orange.biolab.si/widget-catalog/educational/polynomial-regression/

We loaded iris data set with the File widget. Then we connected Linear Regression learner to the Polynomial Regression widget. In the widget we selected petal length as our Input variable and petal width as our Target variable. We set Polynomial expansion to 1 which gives us a linear regression line. The result is shown in the figure below.

The line can fit better if we increase the Polynomial expansion parameter. Say, we set it to 3.

(4)

Pagina 4 di 5 https://orange.biolab.si/widget-catalog/educational/polynomial-regression/

To observe different results, change Linear Regression to any other regression learner from Orange. Example below is done with the Tree learner.

(5)

18/03/20, 17*25 Orange Data Mining - Polynomial Regression

Pagina 5 di 5 https://orange.biolab.si/widget-catalog/educational/polynomial-regression/

Riferimenti

Documenti correlati

Any method for going beyond first order for Cox regression must involve some form of spec- ification of the censoring model. Usual random censoring models are seldom intended to

The key idea in VART is to extend the use of test case executions from the conventional direct fault discovery to the generation of behavioral properties specific to the upgrade, by

We compute nearly optimal nested sensors configurations for global polynomial regression on domains with a complex shape, by resorting to the recent CATCH

In this work, an analytical solution in bipolar coordinates is presented for the steady thermal stresses induced in a 2D thermoelastic solid with two unequal

Track: 2nd International Conference on Human Factors in Transportation (Aviation, Maritime and Road and Rail).. Evolution of a new adjustable motorcycle test rig design for

Per il periodo precedente, e prima della nascita della «Stazione storica prussiana» nel 1888 (dal 1890 Isti- tuto storico prussiano), le notizie dall’archivio dei Monumenta e

[r]

12-4 PREDICTION OF NEW OBSERVATIONS 12-5 MODEL ADEQUACY CHECKING 12-5.1 Residual Analysis 12-5.2 Influential Observations 12-6 ASPECTS OF MULTIPLE REGRESSION MODELING 12-6.1