# Quantitatve Analysis ---S6 Diagnostic Tests

Heteroscedasticity

  1. The variance of the errors is not constant.
  2. Tests:
  • GQ test:Split the total sample of length T into two sub-samples of length T1 and T2. The regression model is estimated on each
    sub-sample and the two residual variances are calculated.
  • White test: White’s general test for heteroscedasticity is one of the best
    approaches because it makes few assumptions about the form of
    the heteroscedasticity.
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  • Solution:
    (1)
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    (2) Transform the variables into logs or reducing by some other
    measure of “size”.
    (3) Use White’s heteroscedasticity consistent standard error
    estimates.

Multicollinearity

  1. Problems if near multicollinearity is present
  • R2 will be high but the individual coefficients will have high standard
    errors.
  • The regression becomes very sensitive to small changes in the
    specification.
  • Thus confidence intervals for the parameters will be very wide, and
    significance tests might therefore give inappropriate conclusions.
  1. Solution:
  • ridge regression or principal
    component, usually bring more problems than they solve.
  • The easiest ways to “cure” the problems are
    – drop one of the collinear variables
    – transform the highly correlated variables into a ratio
    – go out and collect more data e.g.
    – a longer run of data
    – switch to a higher frequency

Specification & Measurement Errors

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2. Omission of an important variable

  • The estimated coefficients on all the other variables will be biased
    and inconsistent
    unless the excluded variable is uncorrelated with all the included variables.
  • Even if the condition of uncorrelatedness is satisfied, the estimate of the coefficient on the constant term will be biased.
  • The standard errors will also be biased
  1. Inclusion of an irrelevant variable
  • Also called the error of commission.
  • Coefficient estimates will still be consistent and unbiased
  • But the variance of the estimators will be inefficient.
  1. Measurement Error

Parameter

  1. Parameter Stability Tests
    The idea is essentially to split the data into sub-periods and then to estimate up to three models, for each of the sub-parts and for all the data and then to “compare” the RSS of the models
    There are two types of test we can look at:
    – Chow test (analysis of variance test)
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    – Predictive failure tests
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