Question

Consider the following results of a multiple regression model of dollar price of unleaded gas (dependent...

Consider the following results of a multiple regression model of dollar price of unleaded gas (dependent variable) and a set of independent variables: price of crude oil, value of S&P500, price U.S. Dollars against Euros, personal disposal income (in million of dollars) :

Coefficient

t-statistics

Intercept

0.5871

68.90

Crude Oil

0.0651

32.89

S&P 500

-0.0020

18.09

Price of $

-0.0415

14.20

PDI

0.0001

17.32

R-Square = 97%

  1. What will be forecasted price of unleaded gas if the value of independent variables are as follows:

Crude Oil = 95; S&P500 = 1775; Price of $ = 0.80 Euros; PDI = 800

  1. $3.27
  2. $2.66
  3. $2.99
  4. $3.04
  1. What is the interpretation of R-Square?
  1. 97% of the movement in unleaded gas price can be explained by this forecasting model.
  2. 97% of the movement in unleaded gas price can be explained by changes in crude oil prices.
  3. 97% of the time this forecasting model will correctly predict the price of unleaded gas.
  4. the sum of squared residuals is close to 97%.
  1. What is the interpretation of coefficient for S&P500?
  1. Every 1 unit increase in the value of S&P500 will cause unleaded gas price to decrease by 0.2%.
  2. Every 1 unit increase in the value of S&P500 will cause unleaded gas price to decrease by 0.20 cents.
  3. Every 1 unit increase in the value of S&P500 will cause unleaded gas price to increase by 0.20 cents.
  4. Every 1% increase in the value of S&P500 will cause unleaded gas price to increase by 0.20 cents.
  1. The variable which is being forecasted is referred as:
  1. independent variable
  2. explanatory variable
  3. exogenous variable
  4. endogenous variable
  1. Ideally, in forecasting what kind of correlations should exist between a set of independent variables?
  1. correlation less than -1
  2. correlation greater than 1
  3. high correlation
  4. low correlation
  1. The R-square of a regression equation of a dependent variable (Y) and a set of independent variables represents:
  1. the % forecasted values of the regression model that is above the actual value.
  2. the % total error of the forecasting model.
  3. the % movements in Y that can be explained by the forecasting model
  4. the % of total residuals of the forecasting model.

Homework Answers

Answer #1

What will be forecasted price of unleaded gas if the value of independent variables are as follows: Crude Oil = 95; S&P500 = 1775; Price of $ = 0.80 Euros; PDI = 800
=0.5871+95*0.0651+1775*(-0.0020)+0.80*(-0.0415)+800*0.0001=3.2684

What is the interpretation of R-Square?
97% of the movement in unleaded gas price can be explained by this forecasting model.

What is the interpretation of coefficient for S&P500?
Every 1 unit increase in the value of S&P500 will cause unleaded gas price to decrease by 0.20 cents.

The variable which is being forecasted is referred as:
endogenous variable

Ideally, in forecasting what kind of correlations should exist between a set of independent variables?
low correlation

The R-square of a regression equation of a dependent variable (Y) and a set of independent variables represents:
the % movements in Y that can be explained by the forecasting model

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