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I'm trying to understand efficient usage patterns with neo4j, specifically in reference to high degree nodes. To give an idea of what I'm talking about, I have User nodes that have attributes which I have modeled as nodes. So there are relationships in my table such as


and so on and so forth. The problem is that some of these AgeCategory nodes are very high degree, on the order of 100k, and queries such as

MATCH (u:User)-->(:AgeCategory)<--(v:User), (u)-->(:FavoriteLanguage)<--(v)
WHERE u.uid = "AAA111" AND v.uid <> u.uid
RETURN v.uid

(matching all users that share the same age category and favorite language as AAA111) are very, very slow, since you have to run over the FavoriteLanguage linked list once for every element in the AgeCategory linked list (or at least that's how I understand it).

I think it's pretty clear from the fact that this query takes minutes to resolve that I'm doing something wrong, but I am curious what the right procedure for dealing with queries like this is. Should I pull down the matching users from each query individually and compare them with an in-memory hash? Is there a way to put an index on the relationships on a node? Is this even a good idea for a schema to begin with?

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1 Answer 1

up vote 6 down vote accepted

My intuition is it would be more efficient to first retrieve the two end points (AgeCategory and FavoriteLanguage) for the given node u, and then query the middle node v for a path with these two fixed end points.

To prove that, I created a test graph with the following components,

  1. A node u:User with u.uid = 'AAA111'
  2. A node c:AgeCategory
  3. A node l:FavoriteLanguage
  4. A relationship between u and c, u-[:HAS_AGE]->c
  5. A relationship between u and l, u-[:LIKE_LANGUAGE]->l
  6. 100,000 nodes v, each of which shar the same c:AgeCategory and l:FavoriteLanguage with the ndoe u, that is each v connects to l and c, v-[:HAS_AGE]->c, v-[:LIKE_LANGUAGE]->l

I run the following query 10 times, and got the average running time 10500 millis.

Match l:FavoriteLanguage<-[:LIKE_LANGUAGE]-u:User-[:HAS_AGE]->c:AgeCategory
Where u.uid = 'AAA111'
With l,c
Match l<-[:LIKE_LANGUAGE]-v:User-[:HAS_AGE]->c 
Where v.uid <> 'AAA111'
Return v.uid

With 10,000 v nodes, this query takes around 2000 millis, your query takes about 27000 millis.

With 100,000 v node, this query takes around 10500 millis, it seems to take forever with your original query.

So you might give this query a try and see if it can improve the performance with your graph.

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