# What's difference between Collaborative Filtering Item-based recommendation and Content-based recommendation

I am puzzled about what the item-based recommendation is in 《mahout in action》.There is the algorithm in the book:

``````for every item i that u has no preference for yet
for every item j that u has a preference for
compute a similarity s between i and j
add u's preference for j, weighted by s, to a running average
return the top items, ranked by weighted average
``````

what can I calculate the similarity between items? If using the content, isn't it content-based recommendation ?

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# Item-Based Collaborative Filtering

The original Item-based recommendation is totally based on user-item ranking (e.g., a user rated a movie with 3 stars, or a user "likes" a video). When you compute the similarity between items, you are not supposed to know anything other than all users' history of ratings. So the similarity between items is computed based on the ratings instead of the meta data of item content.

Let me give you an example. Suppose you have only access to some rating data like below:

``````user 1 likes: movie, cooking
user 2 likes: movie, biking, hiking
user 3 likes: biking, cooking
user 4 likes: hiking
``````

Suppose now you want to make recommendations for user 4.

First you create an inverted index for items, you will get:

``````movie:     user 1, user 2
cooking:   user 1, user 3
biking:    user 2, user 3
hiking:    user 2, user 4
``````

Since this is a binary rating (like or not), we can use a similarity measure like Jaccard Similarity to compute item similarity.

``````                                 |user1|
similarity(movie, cooking) = --------------- = 1/3
|user1,2,3|
``````

In the enumerator, user1 is the only element that movie and cooking both has. In the denominator the union of movie and cooking has 3 distinct users (user1,2,3). `|.|` here denote the size of the set. So we know the similarity between movie and cooking is 1/3 in our case. You just do the same thing for all possible item pairs `(i,j)`.

After you are done with the similarity computation for all pairs, say, you need to make a recommendation for user 4.

• Look at the similarity score of `similarity(hiking, x)` where x is any other tags you might have.

If you need to make a recommendation for user 3, you can aggregate the similarity score from each items in its list. For example,

``````score(movie)  = Similarity(biking, movie) + Similarity(cooking, movie)
score(hiking) = Similarity(biking, hiking) + Similarity(cooking, hiking)
``````

# Content-Based Recommendation

The point of content-based is that we have to know the content of both user and item. Usually you construct user-profile and item-profile using the content of shared attribute space. For example, for a movie, you represent it with the movie stars in it and the genres (using a binary coding for example). For user profile, you can do the same thing based on the users likes some movie stars etc. Then the similarity of user and item can be computed using e.g., cosine similarity.

Here is a concrete example:

Suppose this is our user-profile (using binary encoding, 0 means not-like, 1 means like), which contains user's preference over 5 movie stars and 5 movie genres:

``````         Movie stars 0 - 4    Movie Genres
user 1:    0 0 0 1 1          1 1 1 0 0
user 2:    1 1 0 0 0          0 0 0 1 1
user 3:    0 0 0 1 1          1 1 1 1 0
``````

Suppose this is our movie-profile:

``````         Movie stars 0 - 4    Movie Genres
movie1:    0 0 0 0 1          1 1 0 0 0
movie2:    1 1 1 0 0          0 0 1 0 1
movie3:    0 0 1 0 1          1 0 1 0 1
``````

To calculate how good a movie is to a user, we use cosine similarity:

``````                                 dot-product(user1, movie1)
similarity(user 1, movie1) = ---------------------------------
||user1|| x ||movie1||

0x0+0x0+0x0+1x0+1x1+1x1+1x1+1x0+0x0+0x0
= -----------------------------------------
sqrt(5) x sqrt(3)

= 3 / (sqrt(5) x sqrt(3)) = 0.77460
``````

Similarly:

``````similarity(user 2, movie2) = 3 / (sqrt(4) x sqrt(5)) = 0.67082
similarity(user 3, movie3) = 3 / (sqrt(6) x sqrt(5)) = 0.54772
``````

Hope this helps.

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thank you for your post, and it's so detailed . – cstur4 May 14 '13 at 12:21
Cooking has 2 distinct users? – Ali Gajani May 6 '14 at 4:38

"Item-based" really means "item-similarity-based". You can put whatever similarity metric you like in here. Yes, if it's based on content, like a cosine similarity over term vectors, you could also call this "content-based".

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Great honor to get your answer.And In order to compare the effect of two recommendation methods, I use the RMSRecommenderEvaluator to evaluate.Although with the same parameter, but it can't guarantee the same training data and evaluate data.What can I do to compare them with the same data？ – cstur4 May 4 '13 at 9:25
You mean because the random training set is different? Try calling `RandomUtils.useTestSeed()` before anything else executes. – Sean Owen May 4 '13 at 10:36
But I want to run several test case, and I want the result different. – cstur4 May 4 '13 at 12:38
I think you will have to hack the code a bit to save and then reuse the same training set. But its probably as good to run the random tests many times and compare means. – Sean Owen May 4 '13 at 13:15
Yes, I run RecommenderEvaluator several times, and sort the result.It's what I expect to get.But Why don't design a API to change the STANDARD_SEED in RandomWrapper, thus to change the random utility? – cstur4 May 4 '13 at 14:11