Answer:
It is not a Type I error neither a Type II error.
Step-by-step explanation:
Let [tex]\mu[/tex] be the true mean match score. The null hypothesis is [tex]H_{0}: \mu = 80[/tex] and the alternative hypothesis is [tex]H_{1}: \mu > 80[/tex] (upper-tail alternative). When the test shows that the mean match score is more than 80 when actually is equal to 80 a Type I error is made. On the other hand, when the test shows that the mean match score is equal to 80 when actually is more than 80 a type II error is made. Therefore, when the test shows that the mean match score is more than 80 when the person does not actually have a fingerprint match, does not correspond to a Type I error neither to a Type II error.