I have a very specific recommendation problem.
Suppose I have 3 types of values/entities - item, property, value. There are N items, A properties and B values. Each item has some number of property-value pairs. Example:
Item#1
2374-23783
8455-5783
744-2438
Item#2
5435-23783
8455-54654
544-9778
...
Now, given an "anonymous" item, say, Item#x with 3-4 sample property value pairs like above, I want to get recommendations for a specific property. Example:
Item#x
5435-23783
544-9778
744-2438
8455-?? (get recommendation)
Now, intuition - the recommended value for property 8455 in Item#x may be 54654. You'll see that the properties 5435 and 744 have same values in Item#2 as in Item#x. Therefore, it's more probable that the value for 8455 will be similar to what value 8455 has in Item#2.
Question:
What kind of model do you think would be best for this problem? What approach should I use? Collaborative filtering - but how? Simply dumping all property-value pairs into the dataset and fetching recommendations wouldn't satisfy my needs, obviously.
Can you add any implementation specific details too? Mahout? Myrrix? Machine learning/recommendation libraries?