I am wondering what algorithm would be clever to use for a tag driven e-commerce enviroment:

  • Each item has several tags. IE:

    Item name: "Metallica - Black Album CD", Tags: "metallica", "black-album", "rock", "music"

  • Each user has several tags and friends(other users) bound to them. IE:

    Username: "testguy", Interests: "python", "rock", "metal", "computer-science" Friends: "testguy2", "testguy3"

I need to generate recommendations to such users by checking their interest tags and generating recommendations in a sophisticated way.


  • A Hybrid recommendation algorithm can be used as each user has friends.(mixture of collaborative + context based recommendations).
  • Maybe using user tags, similar users (peers) can be found to generate recommendations.

  • Maybe directly matching tags between users and items via tags.

Any suggestion is welcome. Any python based library is also welcome as I will be doing this experimental engine on python language.


5 Answers 5


1) Weight your tags.

Tags fall into several groups of interest:

  • My tags that none of my friends share
  • Tags a number of my friends share, but I don't
  • My tags that are shared by a number of my friends.

(sometimes you may want to consider friend-of-a-friend tags too, but in my experience the effort hasn't been worth it. YMMV.)

Identify all tags that the person and/or the person's friends have in interests, and attach a weight to the tags for this individual. One simple possible formula for tag weight is

(tag_is_in_my_list) * 2 + (friends_with_tag)/(number_of_friends)

Note the magic number 2, which makes your own opinion worth twice as much as that of all of your friends put together. Feel free to tweak :-)

2) Weight your items

For each item that has any of the tags in your list, just add up all of the weighted values of the tags. A higher value = more interest.

3) Apply a threshold.

The simplest way is to show the user the top n results.

More sophisticated systems also apply anti-tags (i.e. topics of non-interest) and do many other things, but I have found this simple formula effective and quick.

  • 1
    Thanks alot for your kind answer! I am a bit confused about the formula: What does exactly tag_is_in_my_list mean? if it some kind of binary as 1 or 0 ? Cheers
    – Hellnar
    May 12, 2010 at 11:15
  • any example/sample implementation on this
    – user962206
    Apr 30, 2013 at 12:16

If you can, track down a copy of O'Reilly's Programming Collective Intelligence, by Toby Segaran. There's a model solution in it for exactly this problem (with a whole bunch of really, really good other stuff).


Your problem is similar to product recommendation engines, such as Amazon's well publicized site. These use a learning algorithm called association rules, which basically build a conditional probability of user X buying product Y based on common features Z between the user and product. A lot of open source toolkits implement association rules, such as Orange and Weka.


You can use the Python Semantic module for Drools to specify your rules in python scripting language. You can accomplish this easily using Drools. It is a terrific rules engine that we used to solve several recommendation engines.


I would use a Restricted Boltzmann Machine. Gets around the problem of similar but not identical tags quite neatly.

  • Could you flesh this answer out a little more, like HOME you would use an RBM?
    – dwanderson
    Mar 12, 2014 at 15:33

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