What do you mean by regression analysis how it is different from correlation analysis?

A correlation or simple linear regression analysis can determine if two numeric variables are significantly linearly related. A correlation analysis provides information on the strength and direction of the linear relationship between two variables, while a simple linear regression analysis estimates parameters in a linear equation that can be used to predict values of one variable based on the other.

Correlation

The Pearson correlation coefficient, r, can take on values between -1 and 1.  The further away r is from zero, the stronger the linear relationship between the two variables.  The sign of r corresponds to the direction of the relationship.  If r is positive, then as one variable increases, the other tends to increase.  If r is negative, then as one variable increases, the other tends to decrease.  A perfect linear relationship [r=-1 or r=1] means that one of the variables can be perfectly explained by a linear function of the other.

Examples:

 

Linear Regression

A linear regression analysis produces estimates for the slope and intercept of the linear equation predicting an outcome variable, Y, based on values of a predictor variable, X.  A general form of this equation is shown below:

The intercept, b0,  is the predicted value of Y when X=0.  The slope, b1, is the average change in Y for every one unit increase in X.  Beyond giving you the strength and direction of the linear relationship between X and Y, the slope estimate allows an interpretation for how Y changes when X increases. This equation can also be used to predict values of Y for a value of X.

Examples:

       

Inference

Inferential tests can be run on both the correlation and slope estimates calculated from a random sample from a population. Both analyses are t-tests run on the null hypothesis that the two variables are not linearly related. If run on the same data, a correlation test and slope test provide the same test statistic and p-value.

Assumptions:

  • Random samples
  • Independent observations
  • The predictor variable and outcome variable are linearly related [assessed by visually checking a scatterplot].
  • The population of values for the outcome are normally distributed for each value of the predictor [assessed by confirming the normality of the residuals].
  • The variance of the distribution of the outcome is the same for all values of the predictor [assessed by visually checking a residual plot for a funneling pattern].

Hypotheses:

Ho: The two variables are not linearly related.
Ha: The two variables are linearly related.

Relevant Equations:

Degrees of freedom: df = n-2

Example 1: Hand calculation

These videos investigate the linear relationship between people’s heights and arm span measurements.

Correlation:

Regression:

Sample conclusion: Investigating the relationship between armspan and height, we find a large positive correlation [r=.95], indicating a strong positive linear relationship between the two variables. We calculated the equation for the line of best fit as Armspan=-1.27+1.01[Height]. This indicates that for a person who is zero inches tall, their predicted armspan would be -1.27 inches. This is not a possible value as the range of our data will fall much higher. For every 1 inch increase in height, armspan is predicted to increase by 1.01 inches.

Example 2: Performing analysis in Excel 2016 on
Some of this analysis requires you to have the add-in Data Analysis ToolPak in Excel enabled.

Dataset used in videos

Correlation matrix and p-value:
PDF directions corresponding to video

Creating scatterplots:
PDF directions corresponding to video

Linear model [first half of tutorial]:
PDF directions corresponding to video

Creating residual plots:
PDF directions corresponding to video

Sample conclusion: In evaluating the relationship between how happy someone is and how funny others rated them, the scatterplot indicates that there appears to be a moderately strong positive linear relationship between the two variables, which is supported by the correlation coefficient [r = .65]. A check of the assumptions using the residual plot did not indicate any problems with the data. The linear equation for predicting happy from funny was Happy=.04+0.46[Funny]. The y-intercept indicates that for a person whose funny rating was zero, their happiness is predicted to be .04. Funny rating does significantly predict happiness such that for every 1 point increase in funny rating the males are predicted to increase by .46 in happiness [t = 3.70, p = .002].

Example 3: Performing analysis in R

The following videos investigate the relationship between BMI and blood pressure for a sample of medical patients.

Dataset used in videos

Correlation:
R script file used in video

Regression:
R script file used in video

What is regression analysis how does it differ from correlation analysis?

Difference Between Correlation And Regression.

How is regression different than correlation?

Regression is primarily used to build models/equations to predict a key response, Y, from a set of predictor [X] variables. Correlation is primarily used to quickly and concisely summarize the direction and strength of the relationships between a set of 2 or more numeric variables.

What do you mean by regression analysis?

Regression analysis is a powerful statistical method that allows you to examine the relationship between two or more variables of interest. While there are many types of regression analysis, at their core they all examine the influence of one or more independent variables on a dependent variable.

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