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ISYE 6414 - All Units Exam Practice Questions and Answers

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ISYE 6414 - All Units Exam Practice Questions and Answers response (dependent) variables - Answer️️ -one particular variable that we are interested in understanding or modeling (y) predicting or explanatory (independent) variables - Answer️️ -a set of other variables that might be usef...

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  • September 13, 2024
  • 52
  • 2024/2025
  • Exam (elaborations)
  • Questions & answers
  • ISYE 6414
  • ISYE 6414
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ISYE 6414 - All Units Exam Practice
Questions and Answers

response (dependent) variables - Answer✔️✔️-one particular variable that we are

interested in understanding or modeling (y)


predicting or explanatory (independent) variables - Answer✔️✔️-a set of other variables

that might be useful in predicting or modeling the response variable (x1, x2)

What kind of variable is a response variable and why? - Answer✔️✔️-random, because it

varies with changes in the predictor/s along with other random changes.

What kind of variable is a predicting variable and why? - Answer✔️✔️-fixed, because it

does not change with the response but it is fixed before the response is measured.

linear relationship - Answer✔️✔️-a simple deterministic relationship between 2 factors, x

and y

what are three things that a regression analysis is used for? - Answer✔️✔️-1. Prediction

of the response variable, 2. Modeling the relationship between the response and

explanatory variables, 3. Testing hypotheses of association relationships

B0 = ? - Answer✔️✔️-intercept

B1 = ? - Answer✔️✔️-slope

for our linear model where: Y = B0 + B1 + EPSILON (E), what does the epsilon

represent? - Answer✔️✔️-deviance of the data from the linear model (error term)

,what are the 4 assumptions of linear regression? - Answer✔️✔️-Linearity/Mean Zero,

Constant Variance, Independence, Normality

Linearity/Mean zero assumption - Answer✔️✔️-Means that the expected value

(deviances) of errors is zero. This leads to difficulties in estimating B0 and means that

our model does not include a necessary systematic component

Constant variance assumption - Answer✔️✔️-Means that it cannot be true that the model

is more accurate for some parts of the population, and less accurate for other parts of

the populations. This can result in less accurate parameters and poorly-calibrated

prediction intervals.

Assumption of Independence - Answer✔️✔️-Means that the deviances, or in fact the

response variables ys, are independently drawn from the data-generating process. (this

most often occurs in time series data) This can result in very misleading assessments of

the strength of regression.

Normality assumption - Answer✔️✔️-This is needed if we want to do any confidence or

prediction intervals, or hypothesis test, which we usually do. If this assumption is

violated, hypothesis test and confidence and prediction intervals and be very

misleading.

what are the 3 parameters we estimated in regression? - Answer✔️✔️-B0, B1, sigma

squared (variance of the one pop.)

What do we mean by model parameters in statistics? - Answer✔️✔️-Model parameters

are unknown quantities, and they stay unknown regardless how much data are

observed. We estimate those parameters given the model assumptions and the data,


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,but through estimation, we're not identifying the true parameters. We're just estimating

approximations of those parameters.

What is the estimated sampling distribution of s^2? - Answer✔️✔️-chi-square with n-1 DF

Why do we lose 1 DF for s^2? - Answer✔️✔️-we replace mu with zbar

what is the relationship between s^2 and sigma^2? - Answer✔️✔️-S^2 estimates sigma^2

What is the estimated sampling distribution of sigma^2? - Answer✔️✔️-chi-square with n-

2 DF (~ equivalent to MSE)

Why do we lose 2 DF for sigma^2? - Answer✔️✔️-we replaced two parameters, B0 and

B1

In SLR, we are interested in the behavior of which parameter? - Answer✔️✔️-B1

If we have a positive value for B1,.... - Answer✔️✔️-then that's consistent with a direct

relationship between the predicting variable x and the response variable y.

If we have a negative value for B1,.... - Answer✔️✔️-is consistent with an inverse

relationship between x and y

When B1 is close to zero... - Answer✔️✔️-we interpret that there is not a significant

association between predicting variables, between the predicting variable x, and the

response variable y.

How do we interpret B1? - Answer✔️✔️-It is the estimated expected change in the

response variable associated with one unit of change in the predicting variable.

How we interpret ^B0? - Answer✔️✔️-It is the estimated expected value of the response

variable, when the predicting variable equals zero.

What is the sampling distribution of ^B1? - Answer✔️✔️-t distribution with N-2 DF

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, What can we use to test for statistical significance? - Answer✔️✔️-t-test

What would we do if the T value is large? - Answer✔️✔️-Reject the null hypothesis that

β1 is equal to zero. If the null hypothesis is rejected, we interpret this that β1 is

statistically significant.

what does 'statistical significance' mean? - Answer✔️✔️-B1 is statistically different from

zero.

what is the distribution of B1? - Answer✔️✔️-Normal

The estimators for the regression coefficients are:

A) Biased but with small variance

B) Unbiased under normality assumptions but biased otherwise.

C) Unbiased regardless of the distribution of the data. - Answer✔️✔️-C

The assumption of normality:



A) It is needed for deriving the estimators of the regression coefficients.

B) It is not needed for linear regression modeling and inference.

C) It is needed for the sampling distribution of the estimators of the regression

coefficients and hence for inference.

D) It is needed for deriving the expectation and variance of the estimators of the

regression coefficients. - Answer✔️✔️-C

What is 'X*'? - Answer✔️✔️-predictor

Where does uncertainty from estimation come from? - Answer✔️✔️-from estimation alone




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