This topic contains a solution. Click here to go to the answer

Author Question: A seasonal binary (or indicator or dummy) variable, in the case of monthly data, A) is a binary ... (Read 282 times)

cagreen833

  • Hero Member
  • *****
  • Posts: 544
A seasonal binary (or indicator or dummy) variable, in the case of monthly data,
 
  A) is a binary variable that take on the value of 1 for a given month and is 0 otherwise.
  B) is a variable that has values of 1 to 12 in a given year.
  C) is a variable that contains 1s during a given year and is 0 otherwise.
  D) does not exist, since a month is not a season.

Question 2

Statistical inference was a concept that was not too difficult to understand when using cross-sectional data.
 
  For example, it is obvious that a population mean is not the same as a sample mean (take weight of students at your college/university as an example). With a bit of thought, it also became clear that the sample mean had a distribution. This meant that there was uncertainty regarding the population mean given the sample information, and that you had to consider confidence intervals when making statements about the population mean. The same concept carried over into the two-dimensional analysis of a simple regression: knowing the height-weight relationship for a sample of students, for example, allowed you to make statements about the population height-weight relationship. In other words, it was easy to understand the relationship between a sample and a population in cross-sections. But what about time-series? Why should you be allowed to make statistical inference about some population, given a sample at hand (using quarterly data from 1962-2010, for example)? Write an essay explaining the relationship between a sample and a population when using time series.
  What will be an ideal response?



Related Topics

Need homework help now?

Ask unlimited questions for free

Ask a Question
Marked as best answer by a Subject Expert

lauravaras

  • Sr. Member
  • ****
  • Posts: 347
Answer to Question 1

Answer: A

Answer to Question 2

Answer: Essays will differ by students. What is crucial here is the emphasis on stationarity or the concept that the distribution remains constant over time. If the dependent variable and regressors are non-stationary, then conventional hypothesis tests, confidence intervals, and forecasts can be unreliable. However, if they are stationary, then it is plausible to argue that a sample will repeat itself again and again and again, when getting additional data. It is in that sense that inference to a larger population can be made. There are two concepts crucial to stationarity which are discussed in the textbook: (i) trends, and (ii) breaks. Students should bring up methods for testing for stationarity and breaks, such as the DF and ADF statistics, and the QLR test.





 

Did you know?

Autoimmune diseases occur when the immune system destroys its own healthy tissues. When this occurs, white blood cells cannot distinguish between pathogens and normal cells.

Did you know?

The Babylonians wrote numbers in a system that used 60 as the base value rather than the number 10. They did not have a symbol for "zero."

Did you know?

Nearly 31 million adults in America have a total cholesterol level that is more than 240 mg per dL.

Did you know?

Fewer than 10% of babies are born on their exact due dates, 50% are born within 1 week of the due date, and 90% are born within 2 weeks of the date.

Did you know?

Cucumber slices relieve headaches by tightening blood vessels, reducing blood flow to the area, and relieving pressure.

For a complete list of videos, visit our video library