I am planning to implement product recommendation in my eCommerce site using neo4j graph database .
Recommendation will be based on User action on a product. Actions will be
- Product View , - Rating , - Read book - Download book , - Purchase , - Add to card , - Review , - Share - Some more action applicable to our site.
The graph structure will be
User (Node )
Product ( Node )
Action ( Relationship between User and Product node )
- Weight ( Given based on the action , eg : purchase : 10 , view : 1 etc)
- Timestamp (Time at which action occurred )
Later I will add social relationship between the User nodes .
I found different recommendation methods and algorithms from my initial analysis from internet . Following are the list which is categorized based on my understanding . Some of term might be incorrect or redundant or wrong categorization ( Correct me if I am wrong ).
- Item-Item similarity - k-nearest neighbors (k-NN) algorithm - Pearson correlation coefficient. - User-User similarity - Matrix Factorization - Singular Value Decomposition (SVD) - Restricted Boltzmann Machines (RBM) - Non-Negative Matrix Factorization ( NNMF ) - Latent factor analysis - Co-visitation analysis - Latent topic analysis - Cluster model - Association rule - Bi-gram matrix association rule - Ensembles
My problem is to identify which all methods are applicable in my eCommerce site and can be solved using neo4j graph database ( Based on the above model ).