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The likelihood ratio test of common factors under non ideal conditions

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Academic year: 2020

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Figure 1.  Relationships between different spatial models for cross-sectional data
Figure 2.  Power and empirical size of LR COM  test under heteroscedasticity
Figure 3.  Power and empirical size of LR COM  test for non-normal   distributions functions
Figure 4.  Power and empirical size of LR COM  test for dense weighting matrices
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