I am new in machine learning. I did a test but do not know how to explain and evaluate.

Case 1:

I first divide randomly the data (data A, about 8000 words) into 10 groups (a1..a10). Within each group, I use 90% of data to build ngram model. This ngram model is then tested on the other 10% data of the same group. The result is below 10% accuracy. Other 9 groups are done same way (respectively build model and respectively tested on the remained 10% data of that group). All results are about 10% accuracy. (Is this 10 fold cross-validation?)

Case 2:

I first build a ngram model based on **entire** data set (data A) of about 8000 words. Then I divide this A into 10 groups(a1,a2,a3..a10), randomly of course. I then use this ngram to test respectively a1,a2..a10. I found the model is almost 96% accuracy on all groups.

How to explain such situations. Thanks in advance.