# Complex cypher queries with mathematical formula

I have a graph with 2 kinds of nodes: person & food. I have 1 kind of relationship - Ate with an attribute - count. Each time a person eats a food, the count attribute of the relationship gets incremented.

My goal is to calculate similarity between two person nodes. I found this algorithm online to calculate the similarity and I want to use it. How does one convert this to a Cypher Query ?

sim = 0
for k = 1 to n:
sim = sim + (1 - Math.abs((N1k/H1 - N2k/H2)))(N1k+N2k)/(H1+H2)


where:

sim = similarity index
H1 = total number of food items eaten by person 1
H2 = total number of food items eaten by person 2
n = number of food nodes in common
N1k = number of times person 1 has eaten 'kth' food item out of the 'n' common food items
N2k = number of times person 2 has eaten 'kth' food item out of the 'n' common food items

I have the skeleton ready but I just don't know how proceed.

Start me=node(name="%s")
MATCH me-[r1:Ate]->some_food<-[r2:Ate]-other_dude
// do some stuff here to find out sim
RETURN other_dude, sim
ORDER BY sim DESC
LIMIT 10


Help appreciated !

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I'm trying to write your query, but I need to understand this: "N1k = number of times person 1 has eaten 'kth' food item out of the 'n' common food items". What does kth mean? –  Andres May 29 '12 at 13:58

I saw this question on Neo4j mailing list, but couldn't respond yesterday.

I'm a newbie when it comes to Cypher. However, I could help you with a solution to your problem in Gremlin. I could create a graph similar to yours and ran a Gremlin traversal on it.

My Graph looks like:

gremlin> g.v(1,2,3,4)_().outE('eats').inV.path{it.name}{it.count}{it.name}
==>[Neo, 5, Meat]
==>[Neo, 1, Cheese]
==>[Neo, 4, Chicken]
==>[Morpheus, 3, Cheese]
==>[Morpheus, 2, Chicken]
==>[Trinity, 1, Apple]
==>[Trinity, 4, Meat]
==>[Trinity, 2, Cheese]
==>[Smith, 3, Apple]
==>[Smith, 4, Ham]
==>[Smith, 5, Pork]
gremlin>


I wrote a traversal to generate similarity indices for any one vertex, indicated by start against an array of remaining IDs. My final traversal looks like:

simarray=[];start=3;
[1,2,4].each{
p1=start;p2=it;
first=g.v(p1);
second=g.v(p2);
sim=0;
h1=first.out('eats').count().toFloat();
h2=second.out('eats').count().toFloat();
first.outE('eats').as('edges')
.inV.in('eats').has('id',second.id).back('edges')
.each{
n1k = it.count;
n2k = it.inV.inE('eats').outV
.has('id', second.id).back(2).count.next();
sim = sim + (1 - ((n1k/h1)-(n2k/h2)).abs())*(n1k+n2k)/(h1+h2)
};
};
simarray


Output:

gremlin> simarray=[];start=3;[1,2,4].each{p1=start;p2=it; first=g.v(p1); second=g.v(p2); sim=0; h1=first.out('eats').count().toFloat(); h2=second.out('eats').count().toFloat(); first.outE('eats').as('edges').inV.in('eats').has('id',second.id).back('edges').each{n1k = it.count; n2k = it.inV.inE('eats').outV.has('id', second.id).back(2).count.next(); sim = sim + (1 - ((n1k/h1)-(n2k/h2)).abs())*(n1k+n2k)/(h1+h2)}; simarray.add(sim)};simarray
==>0.7857142857142856
==>0.7142857142857143
==>0.14285714285714285


Above traversal directly translates to your formula/calculation. It could be optimized for performance w.r.t. Graph traversal. Further, you might want to go through Gremlin's Documentation to understand things in detail. https://github.com/tinkerpop/gremlin/wiki

Apart from the Neo4j mailing list, which you're already a member of, you could also raise your queries on Gremlin mailing list: https://groups.google.com/group/gremlin-users

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Wow,that was nifty @rhetonik! Well done. –  Peter Neubauer May 30 '12 at 6:11
Thanks @PeterNeubauer! :) –  rhetonik May 30 '12 at 6:44
Just realised, we badly need a console.neo4j.org with Gremlin support, I'll start working on it towards the end of this week. –  rhetonik May 30 '12 at 6:45
That would be cool Nikhil, contributions are always welcome! Also, better visuals are apprecitated and JavaScript cleanup :) –  Peter Neubauer May 31 '12 at 17:41
Thanks @rhetonik :) –  codemaniac Jun 5 '12 at 11:46
show 1 more comment

Not very good with formulae but there are two blog posts on calculating similarity that you may be interested in- you can always tweak it to be more precise as per your formula-

This one uses Gremlin: http://blog.everymansoftware.com/2012/02/similarity-based-recommendation-engines.html

And this uses Cypher: http://thought-bytes.blogspot.in/2012/02/similarity-based-recommendations-with.html

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My use case is actually more complex. The formula I mentioned above is perfect for my case. I was hoping I could use only that. Does Cypher not support such kinds of queries ? If not, any other query language that Neo4j supports ?? –  codemaniac May 29 '12 at 5:16
It does have the math you need docs.neo4j.org/chunked/stable/… but I'm not very certain that the entire thing can be calculated in a single query. Have to think about this some more –  Luanne May 29 '12 at 6:50
Thanks Luanne ! Do you have links to any examples using nested Cypher queries ?? Or any other way to split the task into many queries and chain them ? –  codemaniac May 29 '12 at 6:58
Actually take a look at the new cypher features in 1.8M03 like With and Foreach docs.neo4j.org/chunked/milestone/cypher-query-lang.html –  Luanne May 29 '12 at 8:01