I analysis database of supermarket by association rules algorithm although, min confidence(0.04) and min support(0.002) is low but result that got them is trivial rule ( fresh items that bought daily) for example:

Tomato --> Cucumber

Milk --> eggs

I don’t thing this rules may be benefit for any thing.

I use sql server business intelligence for analysis.

Is it possible that my database can not help me in the forecasting or other problem

  • Why are these not good rules? Sounds pretty much like the definition of a good association rule to me. It tells you what items are strongly correlated. (Of course rules with more than 2 items get more interesting.) – Anony-Mousse Oct 14 '15 at 19:00
  • Not good rule because it is fresh items that bought daily continuous for example vegetables already bought with each other not rules I think good rule for example oil – rice or oil -- Soup powder – Ahmad Akkad Oct 14 '15 at 20:17
  • Well, try to make that a mathematical property. In my opinion, tomato & cucumber is a good rule, based on confidence and support as definitions for "good". – Anony-Mousse Oct 14 '15 at 20:21

Confidence, by itself, does not tell you much. You also need to consider lift (how much more likely are cucumbers when tomato is present than when tomato is not present). You can also use the chi-square value calculated from a contingency table with counts of cucumbers when tomatoes are present and not present. A higher chi-square value generally indicates a more interesting rule.

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