Order for this Paper or Similar Assignment Writing Help

Click to fill the order details form in a few minute.

Posted: January 28th, 2022

Quantative Analysis essay

EFIM10014

Quantitative Analysis in Management

Regression Analysis: Model Validation II

Sophie Lythreatis

1QAM Week 10

QAM Week 10 2

Content:

• There are 4 assumptions of the regression model

• 1st assumption of the regression model

• 2nd assumption of the regression model

3

Assumptions of the Regression Model

• The mathematics underlying the regression procedure is based upon a number of assumptions

• If these are not valid, then even though the regression procedure will produce a regression line, it could be totally meaningless as a predictive tool

• We need to ensure the assumptions are valid

• The four main assumptions are:

• Constant error variance (homoscedasticity)

• Normality of residuals

• Independent residuals (no autocorrelation)

• Independence of explanatory/independent variables (no multicollinearity)

QAM Week 10

QAM Week 10 4

1. Constant error variance (homoscedasticity)

When we don’t have homoscedasticity, we have

HETEROSCEDASTICITY

What does this mean?

5

6

QAM Week 10 7

• The errors terms are assumed to be:

Homoscedastic (The same variance at every X)

• This assumption means that the variance of the

residuals is constant for all values of a given

explanatory/independent variable.

• The case of unequal error variances is called

heteroscedasticity (this is a problem!)

Homoscedasticity

8

How do we check for heteroscedasticity?

• The easiest way to check for this is a scatterplot of the residuals against each explanatory/independent variable

• A residual plot is a graph that shows the residuals/errors on the vertical axis and the independent variable on the horizontal axis.

QAM Week 10

QAM Week 10 9

x

Residual plot against x

x

0

Good R

e si

d u

a l

Residual Plot Against x

Residual Plot Against x

x

0

R e si

d u

a l

Nonconstant Variance

QAM Week 10 12

Heteroskedasticity Heteroskedasticity No Heteroskedasticity

Residual Plots

13Example

-18

-12

-6

0

6

12

18

75.0 82.5 90.0 97.5 105.0 112.5 120.0

Promote

R e s

id

Residuals seem slightly more widely scattered in the middle, so it seems

there is a possibility of mild heteroscedasticity.

QAM Week 10

14

Extreme Heteroscedasticity

-3000

-2000

-1000

0

1000

2000

3000

4000

0 40000 80000 120000 160000 200000

Salary

R e

s id

QAM Week 10

15

Consequences and Cure for Heteroscedasticity

• This “fan shaped” pattern is the classic indication of heteroscedasticity

• Heteroscedasticity leads to the standard error of the regression coefficient being inaccurate. This means C.I and H.T. for this coefficient could be misleading

• There are two ways to deal with heteroscedasticity: • Use Weighted Least Squares as the regression technique. Use a

logarithmic transformation of the response variable

• Curing heteroscedasticity is beyond the scope of this unit.

QAM Week 10

16

QAM Week 10 17

2. Normality of residuals

The error terms/residuals are assumed to be:

1. Homoscedastic (constant error variance)

2. Normally distributed

18

Normality of Residuals • The residuals should form a normal distribution

• There are many formal tests available for this (Chi Squared, Shapiro- Wilks, Anderson-Darling, Lilliefors, Q-Q Plot etc).

• This assumption is usually satisfied for most data sets, unless the residuals are severely non-normal.

• As a quick practical step it is not unusual just to plot a histogram of the residuals and qualitatively observe whether or not there is marked deviation from a normal distribution.

• If the residuals appear non-normally distributed, there are transformation of variable techniques available but these are beyond the scope of this unit.

QAM Week 10

QAM Week 10

Normality of residuals

20

Histogram of Residuals

The residuals closely resemble a normal distribution indicating no significant

issue with this assumption.

QAM Week 10

QAM Week 10 21

In this video, we looked at 2 assumptions of the

regression model that need to be satisfied to

validate our model.

In the next video, we look at the remaining 2

assumptions of the regression model.

Check Price Discount

Study Notes & Homework Samples: »

Why Choose our Custom Writing Services

We prioritize delivering top quality work sought by students.

Top Tutors

The team is composed solely of exceptionally skilled graduate writers, each possessing specialized knowledge in specific subject areas and extensive expertise in academic writing.

Discounted Pricing

Our writing services uphold the utmost quality standards while remaining budget-friendly for students. Our pricing is not only equitable but also competitive in comparison to other writing services available.

0% similarity Index

Guaranteed Plagiarism-Free Content: We assure you that every product you receive is entirely free from plagiarism. Prior to delivery, we meticulously scan each final draft to ensure its originality and authenticity for our valued customers.

How it works

When you decide to place an order with Dissertation Help, here is what happens:

Complete the Order Form

You will complete our order form, filling in all of the fields and giving us as much instructions detail as possible.

Assignment of Writer

We analyze your order and match it with a custom writer who has the unique qualifications for that subject, and he begins from scratch.

Order in Production and Delivered

You and your writer communicate directly during the process, and, once you receive the final draft, you either approve it or ask for revisions.

Giving us Feedback (and other options)

We want to know how your experience went. You can read other clients’ testimonials too. And among many options, you can choose a favorite writer.

Expert paper writers are just a few clicks away

Place an order in 3 easy steps. Takes less than 5 mins.

Calculate the price of your order

You will get a personal manager and a discount.
We'll send you the first draft for approval by at
Total price:
$0.00