In: Statistics and Probability
(b) Briefly discuss the alternative tests, at least two in case, employed to detect the problems of autocorrelation and heteroscedasticity in the estimated regression model.
(c) Using the data on consumer prices, broad money (M2) and Treasury bill rate, as given in question (1), test the quantity theory of money (QTM) as represented by:
pt=β0+β1mt+β1yt+ut such that β0>;β1>0;β2<0;β1=1;β2=-1
Based on the estimated value of the diagnostic tests, describe whether the model suffers from any problems such non-normality, autocorrelation, heteroscedasticity and model mis-specification.
Explanatory variable is manipulated by the researcher for the given experimental study. Here, the researcher imposes conditions on the variable and the results are observed. Hence, it is clear that result of the manipulated variable is noted and the manipulated variable is known as explanatory variable. Also, there may be more than one explanatory variable for the given study.
For example consider the variables number of hours spent in
studying and the test scores of the students. Here, the number of
hours spent influences the test score obtained by the student.
Hence, the variable number of hours spent is known as explanatory
variable.
Also, there is one major difference between an independent variable
and explanatory variable. The independent variable remains
unaffected by other independent variables whereas for the
explanatory variables, the variables are not independent.
For example, consider the two explanatory variables in an
experiment are fast food and soda. Many fast food restaurants
encourage having soda after intake of food. Hence, the two
variables involved in the study are not independent to each other.
Moreover, both the variable influences the weight gain of the
subject. Hence, it can be concluded that these two variables are
explanatory variables.