I'll leave the other answer because that looks more like how such a table structure should be, I think.
But you described in your other thread to have a table that looks like this:
create table store_data (
That actually looks like data that is aggregated already and that you do now want to analyze again. You query could look like this. It first aggregates the sum of the sales, so you can order shops and products by sales too (the sales in the table seem to be for the subproducts. After that, you can add ranks to the shops and products by sales. I added a rank to the subproducts too. I used rank here, so there is a gap in the numbering when more records have the same sales. This way, when you got 8 records with a rank of 1, because they all have the same sales, the 6th record will actually have rank 9 instead of 2, so you will only select the 8 top stores (you wanted 5, but why skip the other 3 if they actually sold exactly the same) and not 4 others too.
rank() over (order by storesales) as storerank,
rank() over (partition by store order by productsales) as productrank,
rank() over (partition by store, product order by subproductsales) as subproductrank
sum(sales) over (partition by store) as STORESALES,
sum(sales) over (partition by store, product) as PRODUCTSALES,
sum(sales) over (partition by store, product, subproduct) as SUBPRODUCTSALES
ts.storerank <= 2 and
ts.productrank <= 3 and
ts.subproductrank <= 4