Interpretation
For Moran’s  coefficient,
 coefficient,  indicates positive autocorrelation. Positive autocorrelation suggests that neighboring values
 indicates positive autocorrelation. Positive autocorrelation suggests that neighboring values  and
 and  tend to have similar feature values
 tend to have similar feature values  and
 and  , respectively. When
, respectively. When  , this is a sign of negative autocorrelation, or dissimilar values at neighboring locations. A measure of strength of the autocorrelation is the size of the absolute difference
, this is a sign of negative autocorrelation, or dissimilar values at neighboring locations. A measure of strength of the autocorrelation is the size of the absolute difference  .
. 
Geary’s  coefficient interpretation is analogous to that of Moran’s
 coefficient interpretation is analogous to that of Moran’s  . The only difference is that
. The only difference is that  indicates negative autocorrelation and dissimilarity, whereas
 indicates negative autocorrelation and dissimilarity, whereas  signifies positive autocorrelation and similarity of values.
 signifies positive autocorrelation and similarity of values. 
The VARIOGRAM procedure uses the mathematical definitions in the preceding section to provide the observed and expected values, and the standard deviation of the autocorrelation coefficients in the autocorrelation statistics table. The  scores for each type of statistics are computed as follows:
 scores for each type of statistics are computed as follows: 
for Moran’s  coefficient, and
 coefficient, and 
for Geary’s  coefficient. PROC VARIOGRAM also reports the two-sided p-value for each coefficient under the null hypothesis that the sample values are not autocorrelated. Smaller p-values correspond to stronger autocorrelation for both the
 coefficient. PROC VARIOGRAM also reports the two-sided p-value for each coefficient under the null hypothesis that the sample values are not autocorrelated. Smaller p-values correspond to stronger autocorrelation for both the  and
 and  statistics. However, the p-value does not tell you whether the autocorrelation is positive or negative. Based on the preceding remarks, you have positive autocorrelation when
 statistics. However, the p-value does not tell you whether the autocorrelation is positive or negative. Based on the preceding remarks, you have positive autocorrelation when  or
 or  , and you have negative autocorrelation when
, and you have negative autocorrelation when  or
 or  .
.