I'm trying to understand the fundamentals of the Apriori (Basket) Algorithm for use in data mining,

It's best I explain the complication i'm having with an example:

Here is a transactional dataset:

```
t1: Milk, Chicken, Beer
t2: Chicken, Cheese
t3: Cheese, Boots
t4: Cheese, Chicken, Beer
t5: Chicken, Beer, Clothes, Cheese, Milk
t6: Clothes, Beer, Milk
t7: Beer, Milk, Clothes
```

The **minsup for the above is 0.5 or 50%.**

Taking from the above, my number of **transactions is clearly 7**, meaning for an itemset to be "frequent" it must have a count of *4/7*. As such this was my Frequent itemset 1:

**F1:**

```
Milk = 4
Chicken = 4
Beer = 5
Cheese = 4
```

I then created my candidates for the second refinement (C2) and narrowed it down to:

**F2:**

`{Milk, Beer} = 4`

This is where I get confused, if I am asked to display *all* frequent itemsets do I write down all of `F1`

and `F2`

or just `F2`

? `F1`

to me aren't "sets".

I am then asked to create association rules for the frequent itemsets I have just defined and calculate their "confidence" figures, I get this:

```
Milk -> Beer = 100% confidence
Beer -> Milk = 80% confidence
```

It seems superfluous to put `F1`

's itemsets in here as they will all have a confidence of 100% regardless and don't actually "associate" anything, which is the reason I am now questioning whether `F1`

are indeed "frequent"?

association rule. – Anony-Mousse Jan 7 '13 at 13:06