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My cypher query is as follows ( I am looking to find out users that have bought in sectors)

START n=node:sectors('SECTOR_ID:65, SECTOR_ID:66 ...') // 20 sectors  
MATCH (n)-[:HAS_DOMAIN]->(dom)-[:HAS_CAT]->(cat)<-[:BELONGS_TO]-(prod)-[:BOUGHT_BY]->(user)
RETURN n.sector_name, COUNT(user), COLLECT(DISTINCT(product.name)), ... etc.

I find that because on every traversal the number of paths rises exponentially, the final query has a result time of 25 seconds. So, i.e. if a sector has 50 domains, each domain has 1000 categories and each category has 250K++ products.

It seems to me this is the 'supernode problem'... or there are just too many paths!

Should I be using the Traverser API? Should I try to model my data in a different way?

Any ideas welcome!

Neo4j 1.8.3, Linux


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Does it make any difference if you break the query in two with WITH? I don't think I've ever queried with such an open-ended pattern, but my sense would be to profile memory usage and compare with the same query broken, something like ...->(cat) WITH cat MATCH..., as I would expect it to force complete matching the first half of the pattern before continuing with the rest. Fuzzy hunch caveat emptor. –  jjaderberg Oct 21 '13 at 21:06
There could be a number of things going on here - Firstly, your doing a ton of lookups on Sectors - each of these could take ~1sec. Have you tried searching back from the Users? All users who Purchased something and navigate back to the sectors based on the relationships that exist? –  Mike Holdsworth Oct 22 '13 at 2:50
@Mike No, the lookup takes just a few millis (through Lucene). The costs start becoming large when the paths multiply. No, I cannot start from the users, I want to get aggregate statistics on users per sector. –  Nikos Oct 22 '13 at 9:42
@jjaderberg . I can see how that will help, since the same products can belong into different categories. I will try it out and report –  Nikos Oct 22 '13 at 9:44
If you have unnecessary duplicates you might also try filtering these earlier. For instance, applying DISTINCT(product) earlier might avoid matching the same set of users from a product many times. –  jjaderberg Oct 22 '13 at 9:52

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