I am working with boolean values, trying to evaluate a recommending engine in Mahout. My questions are about the selection of the "correct" parameters of the evaluate function. Apologize in advance for the lengthy post.

```
IRStatistics evaluate(RecommenderBuilder recommenderBuilder,
DataModelBuilder dataModelBuilder,
DataModel dataModel,
IDRescorer rescorer,
int at,
double relevanceThreshold,
double evaluationPercentage) throws TasteException;
```

1) Can you think of an example in which the following two parameters must be used:

```
- DataModelBuilder dataModelBuilder
- IDRescorer rescorer
```

2) For the `double relevanceThreshold`

variable, I set the value GenericRecommenderIRStatsEvaluator.CHOOSE_THRESHOLD, however, I was wondering if a "better" model could be built by setting a different value.

3) In my project, I need to recommend at most 10 items per user. Does this mean that it shouldn't make sense to set a value bigger than 10 for variable `int at`

?

4) Given that I don't bother if I have to wait a lot for building the model, is it a good practice to set variable `double evaluationPercentage`

equal to 1? Can you think of any case where 1 will not give the optimum model?

5) Why precision / recall (note that I am working on boolean data) increases as long as the number of recommendations (i.e. variable `int at`

) increases (I proved that experimentally)?

6) Where does the `spiting of both testing and training tests`

is taking place within mahout, and how could I change that percentage (unless if this is not the case for item-based recommendations)?