I am not sure whether this is the right platform to ask this question. But my problem statement is : I have a book shop & x no of clients (x is huge).

A client can tell me whether a book is a good or bad (not recommended). I have a internal logic to club books together , so if a client says a book is bad, he is saying that similar books are bad too and don't show him that.

I oblige and hide those books. Clients can also interact among themselves, and have a mutual confidence level between them. A case arises when client A says Book X1 is bad. Hence i blacklist X1,X2,X3,X4 etc.

But his friend client B says X3 is good. So now i have to show X3 to A. I was thinking to build a social network of all my clients based on their interaction, and be able to calculate their mutual confidence level. So in the above senario if mutual confidence level is very high will will show X3 to A, or else i won't show X3 to A.

I wanted to get myself kickstarted on building the social network and assigning a wt. to a path between 2 nodes (my clients). Please suggest me some good pointers where i can start. Any book, websites etc.



From a high level, you will want to look into the fields of Machine Learning, Data Mining, and graph mining/analysis.

In terms of machine learning and data mining, you will want to look into collaborative filtering - I recommend this book. There is a lot of work in this field, notice how websites like Amazon have a feature that shows you what other items were purchased along with the item you are currently looking at.

In terms of building a social network, you will first need to figure out what database system you want to use. There exists graph databases like Neo4J and FlockDB that are designed with graphs in mind.. you may alternatively opt for something more general like MySQL instead, depends on how far you want to go.

Once you have that decided you'll want to leverage this "social graph" data, which is where concepts like random walks, community structure/detection, and centrality come in. I recommend going through this series of lectures Twitter gave at UC Berkeley to get a better idea of leveraging social data.

  • thanks adelbertc for the quick reply. i will checkout the book. On the database front i was thinking of using hbase. Do you think that will be a problem? – S Kr Feb 21 '13 at 19:32
  • why hbase? graph algorithms with it are possible but I wouldn't recommend it if you can start with neo4j or orientdb. have a look docs.google.com/spreadsheet/… – Karussell Feb 21 '13 at 20:46
  • It is certainly possible to use HBase, but as with all architecture decisions you should ask yourself why before you start using it. HBase is built on HDFS, and was designed for storing massive amounts of sparse data (something SQL systems are less adept at handling). Twitter's FlockDB database however was designed with online social networking and graph analysis in mind. – adelbertc Feb 21 '13 at 23:01

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