• Study Resource
  • Explore
    • Arts & Humanities
    • Business
    • Engineering & Technology
    • Foreign Language
    • History
    • Math
    • Science
    • Social Science

    Top subcategories

    • Advanced Math
    • Algebra
    • Basic Math
    • Calculus
    • Geometry
    • Linear Algebra
    • Pre-Algebra
    • Pre-Calculus
    • Statistics And Probability
    • Trigonometry
    • other →

    Top subcategories

    • Astronomy
    • Astrophysics
    • Biology
    • Chemistry
    • Earth Science
    • Environmental Science
    • Health Science
    • Physics
    • other →

    Top subcategories

    • Anthropology
    • Law
    • Political Science
    • Psychology
    • Sociology
    • other →

    Top subcategories

    • Accounting
    • Economics
    • Finance
    • Management
    • other →

    Top subcategories

    • Aerospace Engineering
    • Bioengineering
    • Chemical Engineering
    • Civil Engineering
    • Computer Science
    • Electrical Engineering
    • Industrial Engineering
    • Mechanical Engineering
    • Web Design
    • other →

    Top subcategories

    • Architecture
    • Communications
    • English
    • Gender Studies
    • Music
    • Performing Arts
    • Philosophy
    • Religious Studies
    • Writing
    • other →

    Top subcategories

    • Ancient History
    • European History
    • US History
    • World History
    • other →

    Top subcategories

    • Croatian
    • Czech
    • Finnish
    • Greek
    • Hindi
    • Japanese
    • Korean
    • Persian
    • Swedish
    • Turkish
    • other →
 
Profile Documents Logout
Upload
Lab 6 Oct 13th 2016 - adv quant techniques
Lab 6 Oct 13th 2016 - adv quant techniques

1 THE MULTIPLE LINEAR REGRESSION MODEL Notation: p
1 THE MULTIPLE LINEAR REGRESSION MODEL Notation: p

Single response variable Multiple response variables Multivariate
Single response variable Multiple response variables Multivariate

Linear Regression
Linear Regression

Chapter 11
Chapter 11

Note
Note

...  R2 close to 0 shows that the regression equation isn’t explaining the Y values any better than they’d be explained by assuming no relationship with X’s.  OLS (that is, minimizing the squared errors) gives us ’s that minimize RSS (keeps the residuals as small as possible) thus gives largest R2  ...
y - statler.wvu.edu
y - statler.wvu.edu

B. Plot of residuals indicates heteroscedasticity
B. Plot of residuals indicates heteroscedasticity

Multiple regression refresher
Multiple regression refresher

Abstract
Abstract

... ...
C22_CIS2033 - CIS @ Temple University
C22_CIS2033 - CIS @ Temple University

e388_08_Spr_Final
e388_08_Spr_Final

Lecture 5 - sambaker.com
Lecture 5 - sambaker.com

Lecture 9 - WordPress.com
Lecture 9 - WordPress.com

application of the model to oic member countries
application of the model to oic member countries

MATH 2311
MATH 2311

two-variable regression model: the problem of estimation
two-variable regression model: the problem of estimation

Exam #2 - Math.utah.edu
Exam #2 - Math.utah.edu

Advantages of Multivariate Analysis
Advantages of Multivariate Analysis

Section 4.3: Diagnostics on the Least
Section 4.3: Diagnostics on the Least

sheet
sheet

... The result of lm() is an object that contains various quantities related to the linear model. The following functions return some of these: > residuals(ld) > fitted(ld) > coef(ld) Printing the model object ld itself returns the coefficients. ˆ Inference for the Linear Model ...
Linear Regression
Linear Regression

May 5
May 5

Empirical Topics Data Descriptive statistics (e.g., mean, median
Empirical Topics Data Descriptive statistics (e.g., mean, median

Regression
Regression

< 1 ... 93 94 95 96 97 >

Coefficient of determination



In statistics, the coefficient of determination, denoted R2 or r2 and pronounced R squared, is a number that indicates how well data fit a statistical model – sometimes simply a line or a curve. An R2 of 1 indicates that the regression line perfectly fits the data, while an R2 of 0 indicates that the line does not fit the data at all. This latter can be because the data is utterly non-linear, or because it is random.It is a statistic used in the context of statistical models whose main purpose is either the prediction of future outcomes or the testing of hypotheses, on the basis of other related information. It provides a measure of how well observed outcomes are replicated by the model, as the proportion of total variation of outcomes explained by the model (pp. 187, 287).There are several definitions of R2 that are only sometimes equivalent. One class of such cases includes that of simple linear regression where r2 is used instead of R2. In this case, if an intercept is included, then r2 is simply the square of the sample correlation coefficient (i.e., r) between the outcomes and their predicted values. If additional explanators are included, R2 is the square of the coefficient of multiple correlation. In both such cases, the coefficient of determination ranges from 0 to 1.Important cases where the computational definition of R2 can yield negative values, depending on the definition used, arise where the predictions that are being compared to the corresponding outcomes have not been derived from a model-fitting procedure using those data, and where linear regression is conducted without including an intercept. Additionally, negative values of R2 may occur when fitting non-linear functions to data. In cases where negative values arise, the mean of the data provides a better fit to the outcomes than do the fitted function values, according to this particular criterion.
  • studyres.com © 2025
  • DMCA
  • Privacy
  • Terms
  • Report