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1 
Recommender Systems 
Collaborative Filtering & 
Content-Based Recommending
2 
Recommender Systems 
• Systems for recommending items (e.g. books, 
movies, CD’s, web pages, newsgroup messages) 
to users based on examples of their preferences. 
• Many on-line stores provide recommendations 
(e.g. Amazon, CDNow). 
• Recommenders have been shown to substantially 
increase sales at on-line stores. 
• There are two basic approaches to recommending: 
– Collaborative Filtering (a.k.a. social filtering) 
– Content-based
3 
Book Recommender 
Red 
Mars 
Found 
ation 
Juras-sic 
Park 
Lost 
World 
2001 
Differ-ence 
Engine 
Machine 
Learning 
User 
Profile 
Neuro-mancer 
2010
4 
Personalization 
• Recommenders are instances of personalization 
software. 
• Personalization concerns adapting to the individual 
needs, interests, and preferences of each user. 
• Includes: 
– Recommending 
– Filtering 
– Predicting (e.g. form or calendar appt. completion) 
• From a business perspective, it is viewed as part of 
Customer Relationship Management (CRM).
5 
Machine Learning and Personalization 
• Machine Learning can allow learning a user 
model or profile of a particular user based 
on: 
– Sample interaction 
– Rated examples 
• This model or profile can then be used to: 
– Recommend items 
– Filter information 
– Predict behavior
6 
Collaborative Filtering 
• Maintain a database of many users’ ratings of a 
variety of items. 
• For a given user, find other similar users whose 
ratings strongly correlate with the current user. 
• Recommend items rated highly by these similar 
users, but not rated by the current user. 
• Almost all existing commercial recommenders use 
this approach (e.g. Amazon).
7 
Collaborative Filtering 
A 9 
B 3 
C: 
: 
Z 5 
A 
B 
C 9 
: : 
Z 10 
A 5 
B 3 
C: 
: 
Z 7 
A 
B 
C 8 
: : 
Z 
A 6 
B 4 
C: 
: 
Z 
A 10 
B 4 
C 8 
. . 
Z 1 
User 
Database 
Active 
User 
Correlation 
Match 
A 9 
B 3 
C 
. . 
Z 5 
A 9 
B 3 
C: 
: 
Z 5 
A 10 
B 4 
C 8 
. . 
Z 1 
Extract 
Recommendations 
C
8 
Collaborative Filtering Method 
• Weight all users with respect to similarity 
with the active user. 
• Select a subset of the users (neighbors) to 
use as predictors. 
• Normalize ratings and compute a prediction 
from a weighted combination of the 
selected neighbors’ ratings. 
• Present items with highest predicted ratings 
as recommendations.
9 
Similarity Weighting 
• Typically use Pearson correlation coefficient between 
ratings for active user, a, and another user, u. 
c r r 
covar( , ) 
a u 
ra ru 
a u 
s s 
, = 
ra and ru are the ratings vectors for the m items rated by 
both a and u 
ri,j is user i’s rating for item j
10 
Covariance and Standard Deviation 
• Covariance: 
r r r r 
r 
• Standard Deviation: 
m 
r r 
m 
i 
a i a u i u 
a u 
å= 
- - 
= 1 
, , ( )( ) 
covar( , ) 
m 
r 
m 
i 
x i 
x 
å= 
= 1 
, 
r r 
m 
m 
i 
x i x 
rx 
å= 
- 
= 1 
2 
, ( ) 
s
11 
Significance Weighting 
• Important not to trust correlations based on 
very few co-rated items. 
• Include significance weights, sa,u, based on 
number of co-rated items, m. 
a u a u a u w s c , , , = 
ïþ 
ïý ü 
ïî 
ïí ì 
> 
1 if 50 
, m m 
= if £ 
50 
50 
m 
s a u
12 
Neighbor Selection 
• For a given active user, a, select correlated 
users to serve as source of predictions. 
• Standard approach is to use the most similar 
n users, u, based on similarity weights, wa,u 
• Alternate approach is to include all users 
whose similarity weight is above a given 
threshold.
13 
Rating Prediction 
• Predict a rating, pa,i, for each item i, for active user, a, by 
using the n selected neighbor users, u Î {1,2,…n}. 
• To account for users different ratings levels, base 
predictions on differences from a user’s average rating. 
• Weight users’ ratings contribution by their similarity to 
the active user. 
w r r 
å 
å 
= 
= 
- 
= + n 
u 
a u 
n 
u 
a u u i u 
a i a 
w 
p r 
1 
, 
1 
, , 
, 
( )
14 
Problems with Collaborative Filtering 
• Cold Start: There needs to be enough other users 
already in the system to find a match. 
• Sparsity: If there are many items to be 
recommended, even if there are many users, the 
user/ratings matrix is sparse, and it is hard to find 
users that have rated the same items. 
• First Rater: Cannot recommend an item that has 
not been previously rated. 
– New items 
– Esoteric items 
• Popularity Bias: Cannot recommend items to 
someone with unique tastes. 
– Tends to recommend popular items.
15 
Content-Based Recommending 
• Recommendations are based on information on the 
content of items rather than on other users’ 
opinions. 
• Uses a machine learning algorithm to induce a 
profile of the users preferences from examples 
based on a featural description of content. 
• Some previous applications: 
– Newsweeder (Lang, 1995) 
– Syskill and Webert (Pazzani et al., 1996)
Advantages of Content-Based Approach 
• No need for data on other users. 
– No cold-start or sparsity problems. 
• Able to recommend to users with unique tastes. 
• Able to recommend new and unpopular items 
– No first-rater problem. 
• Can provide explanations of recommended 
items by listing content-features that caused an 
item to be recommended. 
16
17 
Disadvantages of Content-Based Method 
• Requires content that can be encoded as 
meaningful features. 
• Users’ tastes must be represented as a 
learnable function of these content features. 
• Unable to exploit quality judgments of 
other users. 
– Unless these are somehow included in the 
content features.
18 
LIBRA 
Learning Intelligent Book Recommending Agent 
• Content-based recommender for books using 
information about titles extracted from Amazon. 
• Uses information extraction from the web to 
organize text into fields: 
– Author 
– Title 
– Editorial Reviews 
– Customer Comments 
– Subject terms 
– Related authors 
– Related titles
19 
LIBRA System 
Amazon Pages 
Rated 
Examples 
Information 
Extraction 
Machine Learning 
Learner 
User Profile 
LIBRA 
Database 
Recommendations 
1.~~~~~~ 
2.~~~~~~~ 
3.~~~~~ 
::: 
Predictor
20 
Sample Amazon Page 
Age of Spiritual Machines
21 
Sample Extracted Information 
Title: <The Age of Spiritual Machines: When Computers Exceed Human Intelligence> 
Author: <Ray Kurzweil> 
Price: <11.96> 
Publication Date: <January 2000> 
ISBN: <0140282025> 
Related Titles: <Title: <Robot: Mere Machine or Transcendent Mind> 
Author: <Hans Moravec> > 
… 
Reviews: <Author: <Amazon.com Reviews> Text: <How much do we humans…> > 
… 
Comments: <Stars: <4> Author: <Stephen A. Haines> Text:<Kurzweil has …> > 
… 
Related Authors: <Hans P. Moravec> <K. Eric Drexler>… 
Subjects: <Science/Mathematics> <Computers> <Artificial Intelligence> …
22 
Libra Content Information 
• Libra uses this extracted information to 
form “bags of words” for the following 
slots: 
– Author 
– Title 
– Description (reviews and comments) 
– Subjects 
– Related Titles 
– Related Authors
23 
Libra Overview 
• User rates selected titles on a 1 to 10 scale. 
• Libra uses a naïve Bayesian text-categorization 
algorithm to learn a profile from these rated 
examples. 
– Rating 6–10: Positive 
– Rating 1–5: Negative 
• The learned profile is used to rank all other books as 
recommendations based on the computed posterior 
probability that they are positive. 
• User can also provide explicit positive/negative 
keywords, which are used as priors to bias the role 
of these features in categorization.
24 
Bayesian Categorization in LIBRA 
• Model is generalized to generate a vector of bags 
of words (one bag for each slot). 
– Instances of the same word in different slots are treated 
as separate features: 
• “Chrichton” in author vs. “Chrichton” in description 
• Training examples are treated as weighted positive 
or negative examples when estimating conditional 
probability parameters: 
– An example with rating 1 £ r £ 10 is given: 
positive probability: (r – 1)/9 
negative probability: (10 – r)/9
25 
Implementation 
• Stopwords removed from all bags. 
• A book’s title and author are added to its own 
related title and related author slots. 
• All probabilities are smoothed using Laplace 
estimation to account for small sample size. 
• Lisp implementation is quite efficient: 
– Training: 20 exs in 0.4 secs, 840 exs in 11.5 secs 
– Test: 200 books per second
26 
Explanations of Profiles and 
Recommendations 
• Feature strength of word wk appearing in a 
slot sj : 
P w s 
( | positive, ) 
k j 
k j P w 
( | negative,s ) 
strength( , ) log 
k j 
w s =
27 
Experimental Data 
• Amazon searches were used to find books 
in various genres. 
• Titles that have at least one review or 
comment were kept. 
• Data sets: 
– Literature fiction: 3,061 titles 
– Mystery: 7,285 titles 
– Science: 3,813 titles 
– Science Fiction: 3.813 titles
28 
Rated Data 
• 4 users rated random examples within a 
genre by reviewing the Amazon pages 
about the title: 
– LIT1 936 titles 
– LIT2 935 titles 
– MYST 500 titles 
– SCI 500 titles 
– SF 500 titles
29 
Experimental Method 
• 10-fold cross-validation to generate learning curves. 
• Measured several metrics on independent test data: 
– Precision at top 3: % of the top 3 that are positive 
– Rating of top 3: Average rating assigned to top 3 
– Rank Correlation: Spearman’s, rs, between system’s and 
user’s complete rankings. 
• Test ablation of related author and related title slots 
(LIBRA-NR). 
– Test influence of information generated by Amazon’s 
collaborative approach.
30 
Experimental Result Summary 
• Precision at top 3 is fairly consistently in the 90’s 
% after only 20 examples. 
• Rating of top 3 is fairly consistently above 8 after 
only 20 examples. 
• All results are always significantly better than 
random chance after only 5 examples. 
• Rank correlation is generally above 0.3 (moderate) 
after only 10 examples. 
• Rank correlation is generally above 0.6 (high) 
after 40 examples.
31 
Precision at Top 3 for Science
32 
Rating of Top 3 for Science
33 
Rank Correlation for Science
34 
User Studies 
• Subjects asked to use Libra and get 
recommendations. 
• Encouraged several rounds of feedback. 
• Rated all books in final list of 
recommendations. 
• Selected two books for purchase. 
• Returned reviews after reading selections. 
• Completed questionnaire about the system.
35 
Combining Content and Collaboration 
• Content-based and collaborative methods have 
complementary strengths and weaknesses. 
• Combine methods to obtain the best of both. 
• Various hybrid approaches: 
– Apply both methods and combine recommendations. 
– Use collaborative data as content. 
– Use content-based predictor as another collaborator. 
– Use content-based predictor to complete 
collaborative data.
36 
Movie Domain 
• EachMovie Dataset [Compaq Research Labs] 
– Contains user ratings for movies on a 0–5 scale. 
– 72,916 users (avg. 39 ratings each). 
– 1,628 movies. 
– Sparse user-ratings matrix – (2.6% full). 
• Crawled Internet Movie Database (IMDb) 
– Extracted content for titles in EachMovie. 
• Basic movie information: 
– Title, Director, Cast, Genre, etc. 
• Popular opinions: 
– User comments, Newspaper and Newsgroup reviews, etc.
37 
Content-Boosted Collaborative Filtering 
EachMovie Web Crawler IMDb 
Movie 
Content 
Database 
Full User 
Ratings Matrix 
Collaborative 
Filtering 
User Ratings 
Matrix (Sparse) Content-based 
Predictor 
Active 
User Ratings 
Recommendations
38 
Content-Boosted CF - I 
Content-Based 
Predictor 
Training Examples 
Pseudo User-ratings Vector 
Items with Predicted Ratings 
User-ratings Vector 
User-rated 
UnratIetde mItsems
39 
Content-Boosted CF - II 
User Ratings 
Matrix 
Content-Based 
Predictor 
• Compute pseudo user ratings matrix 
Pseudo User 
Ratings Matrix 
– Full matrix – approximates actual full user ratings matrix 
• Perform CF 
– Using Pearson corr. between pseudo user-rating vectors
40 
Experimental Method 
• Used subset of EachMovie (7,893 users; 299,997 
ratings) 
• Test set: 10% of the users selected at random. 
– Test users that rated at least 40 movies. 
– Train on the remainder sets. 
• Hold-out set: 25% items for each test user. 
– Predict rating of each item in the hold-out set. 
• Compared CBCF to other prediction approaches: 
– Pure CF 
– Pure Content-based 
– Naïve hybrid (averages CF and content-based 
predictions)
41 
Metrics 
• Mean Absolute Error (MAE) 
– Compares numerical predictions with user ratings 
• ROC sensitivity [Herlocker 99] 
– How well predictions help users select high-quality 
items 
– Ratings ³ 4 considered “good”; < 4 considered “bad” 
• Paired t-test for statistical significance
42 
Results - I 
1.06 
1.04 
1.02 
1 
0.98 
0.96 
0.94 
0.92 
0.9 
MAE 
MAE 
Algorithm 
CF 
Content 
Naïve 
CBCF 
CBCF is significantly better (4% over CF) at (p < 0.001)
43 
Results - II 
0.68 
0.66 
0.64 
0.62 
0.6 
0.58 
ROC-4 
ROC Sensitivity 
Algorithm 
CF 
Content 
Naïve 
CBCF 
CBCF outperforms rest (5% improvement over CF)
44 
Active Learning 
(Sample Section, Learning with Queries) 
• Used to reduce the number of training 
examples required. 
• System requests ratings for specific items 
from which it would learn the most. 
• Several existing methods: 
– Uncertainty sampling 
– Committee-based sampling
45 
Semi-Supervised Learning 
(Weakly Supervised, Bootstrapping) 
• Use wealth of unlabeled examples to aid 
learning from a small amount of labeled data. 
• Several recent methods developed: 
– Semi-supervised EM (Expectation Maximization) 
– Co-training 
– Transductive SVM’s
46 
Conclusions 
• Recommending and personalization are 
important approaches to combating 
information over-load. 
• Machine Learning is an important part of 
systems for these tasks. 
• Collaborative filtering has problems. 
• Content-based methods address these 
problems (but have problems of their own). 
• Integrating both is best.

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Recommender systems

  • 1. 1 Recommender Systems Collaborative Filtering & Content-Based Recommending
  • 2. 2 Recommender Systems • Systems for recommending items (e.g. books, movies, CD’s, web pages, newsgroup messages) to users based on examples of their preferences. • Many on-line stores provide recommendations (e.g. Amazon, CDNow). • Recommenders have been shown to substantially increase sales at on-line stores. • There are two basic approaches to recommending: – Collaborative Filtering (a.k.a. social filtering) – Content-based
  • 3. 3 Book Recommender Red Mars Found ation Juras-sic Park Lost World 2001 Differ-ence Engine Machine Learning User Profile Neuro-mancer 2010
  • 4. 4 Personalization • Recommenders are instances of personalization software. • Personalization concerns adapting to the individual needs, interests, and preferences of each user. • Includes: – Recommending – Filtering – Predicting (e.g. form or calendar appt. completion) • From a business perspective, it is viewed as part of Customer Relationship Management (CRM).
  • 5. 5 Machine Learning and Personalization • Machine Learning can allow learning a user model or profile of a particular user based on: – Sample interaction – Rated examples • This model or profile can then be used to: – Recommend items – Filter information – Predict behavior
  • 6. 6 Collaborative Filtering • Maintain a database of many users’ ratings of a variety of items. • For a given user, find other similar users whose ratings strongly correlate with the current user. • Recommend items rated highly by these similar users, but not rated by the current user. • Almost all existing commercial recommenders use this approach (e.g. Amazon).
  • 7. 7 Collaborative Filtering A 9 B 3 C: : Z 5 A B C 9 : : Z 10 A 5 B 3 C: : Z 7 A B C 8 : : Z A 6 B 4 C: : Z A 10 B 4 C 8 . . Z 1 User Database Active User Correlation Match A 9 B 3 C . . Z 5 A 9 B 3 C: : Z 5 A 10 B 4 C 8 . . Z 1 Extract Recommendations C
  • 8. 8 Collaborative Filtering Method • Weight all users with respect to similarity with the active user. • Select a subset of the users (neighbors) to use as predictors. • Normalize ratings and compute a prediction from a weighted combination of the selected neighbors’ ratings. • Present items with highest predicted ratings as recommendations.
  • 9. 9 Similarity Weighting • Typically use Pearson correlation coefficient between ratings for active user, a, and another user, u. c r r covar( , ) a u ra ru a u s s , = ra and ru are the ratings vectors for the m items rated by both a and u ri,j is user i’s rating for item j
  • 10. 10 Covariance and Standard Deviation • Covariance: r r r r r • Standard Deviation: m r r m i a i a u i u a u å= - - = 1 , , ( )( ) covar( , ) m r m i x i x å= = 1 , r r m m i x i x rx å= - = 1 2 , ( ) s
  • 11. 11 Significance Weighting • Important not to trust correlations based on very few co-rated items. • Include significance weights, sa,u, based on number of co-rated items, m. a u a u a u w s c , , , = ïþ ïý ü ïî ïí ì > 1 if 50 , m m = if £ 50 50 m s a u
  • 12. 12 Neighbor Selection • For a given active user, a, select correlated users to serve as source of predictions. • Standard approach is to use the most similar n users, u, based on similarity weights, wa,u • Alternate approach is to include all users whose similarity weight is above a given threshold.
  • 13. 13 Rating Prediction • Predict a rating, pa,i, for each item i, for active user, a, by using the n selected neighbor users, u Î {1,2,…n}. • To account for users different ratings levels, base predictions on differences from a user’s average rating. • Weight users’ ratings contribution by their similarity to the active user. w r r å å = = - = + n u a u n u a u u i u a i a w p r 1 , 1 , , , ( )
  • 14. 14 Problems with Collaborative Filtering • Cold Start: There needs to be enough other users already in the system to find a match. • Sparsity: If there are many items to be recommended, even if there are many users, the user/ratings matrix is sparse, and it is hard to find users that have rated the same items. • First Rater: Cannot recommend an item that has not been previously rated. – New items – Esoteric items • Popularity Bias: Cannot recommend items to someone with unique tastes. – Tends to recommend popular items.
  • 15. 15 Content-Based Recommending • Recommendations are based on information on the content of items rather than on other users’ opinions. • Uses a machine learning algorithm to induce a profile of the users preferences from examples based on a featural description of content. • Some previous applications: – Newsweeder (Lang, 1995) – Syskill and Webert (Pazzani et al., 1996)
  • 16. Advantages of Content-Based Approach • No need for data on other users. – No cold-start or sparsity problems. • Able to recommend to users with unique tastes. • Able to recommend new and unpopular items – No first-rater problem. • Can provide explanations of recommended items by listing content-features that caused an item to be recommended. 16
  • 17. 17 Disadvantages of Content-Based Method • Requires content that can be encoded as meaningful features. • Users’ tastes must be represented as a learnable function of these content features. • Unable to exploit quality judgments of other users. – Unless these are somehow included in the content features.
  • 18. 18 LIBRA Learning Intelligent Book Recommending Agent • Content-based recommender for books using information about titles extracted from Amazon. • Uses information extraction from the web to organize text into fields: – Author – Title – Editorial Reviews – Customer Comments – Subject terms – Related authors – Related titles
  • 19. 19 LIBRA System Amazon Pages Rated Examples Information Extraction Machine Learning Learner User Profile LIBRA Database Recommendations 1.~~~~~~ 2.~~~~~~~ 3.~~~~~ ::: Predictor
  • 20. 20 Sample Amazon Page Age of Spiritual Machines
  • 21. 21 Sample Extracted Information Title: <The Age of Spiritual Machines: When Computers Exceed Human Intelligence> Author: <Ray Kurzweil> Price: <11.96> Publication Date: <January 2000> ISBN: <0140282025> Related Titles: <Title: <Robot: Mere Machine or Transcendent Mind> Author: <Hans Moravec> > … Reviews: <Author: <Amazon.com Reviews> Text: <How much do we humans…> > … Comments: <Stars: <4> Author: <Stephen A. Haines> Text:<Kurzweil has …> > … Related Authors: <Hans P. Moravec> <K. Eric Drexler>… Subjects: <Science/Mathematics> <Computers> <Artificial Intelligence> …
  • 22. 22 Libra Content Information • Libra uses this extracted information to form “bags of words” for the following slots: – Author – Title – Description (reviews and comments) – Subjects – Related Titles – Related Authors
  • 23. 23 Libra Overview • User rates selected titles on a 1 to 10 scale. • Libra uses a naïve Bayesian text-categorization algorithm to learn a profile from these rated examples. – Rating 6–10: Positive – Rating 1–5: Negative • The learned profile is used to rank all other books as recommendations based on the computed posterior probability that they are positive. • User can also provide explicit positive/negative keywords, which are used as priors to bias the role of these features in categorization.
  • 24. 24 Bayesian Categorization in LIBRA • Model is generalized to generate a vector of bags of words (one bag for each slot). – Instances of the same word in different slots are treated as separate features: • “Chrichton” in author vs. “Chrichton” in description • Training examples are treated as weighted positive or negative examples when estimating conditional probability parameters: – An example with rating 1 £ r £ 10 is given: positive probability: (r – 1)/9 negative probability: (10 – r)/9
  • 25. 25 Implementation • Stopwords removed from all bags. • A book’s title and author are added to its own related title and related author slots. • All probabilities are smoothed using Laplace estimation to account for small sample size. • Lisp implementation is quite efficient: – Training: 20 exs in 0.4 secs, 840 exs in 11.5 secs – Test: 200 books per second
  • 26. 26 Explanations of Profiles and Recommendations • Feature strength of word wk appearing in a slot sj : P w s ( | positive, ) k j k j P w ( | negative,s ) strength( , ) log k j w s =
  • 27. 27 Experimental Data • Amazon searches were used to find books in various genres. • Titles that have at least one review or comment were kept. • Data sets: – Literature fiction: 3,061 titles – Mystery: 7,285 titles – Science: 3,813 titles – Science Fiction: 3.813 titles
  • 28. 28 Rated Data • 4 users rated random examples within a genre by reviewing the Amazon pages about the title: – LIT1 936 titles – LIT2 935 titles – MYST 500 titles – SCI 500 titles – SF 500 titles
  • 29. 29 Experimental Method • 10-fold cross-validation to generate learning curves. • Measured several metrics on independent test data: – Precision at top 3: % of the top 3 that are positive – Rating of top 3: Average rating assigned to top 3 – Rank Correlation: Spearman’s, rs, between system’s and user’s complete rankings. • Test ablation of related author and related title slots (LIBRA-NR). – Test influence of information generated by Amazon’s collaborative approach.
  • 30. 30 Experimental Result Summary • Precision at top 3 is fairly consistently in the 90’s % after only 20 examples. • Rating of top 3 is fairly consistently above 8 after only 20 examples. • All results are always significantly better than random chance after only 5 examples. • Rank correlation is generally above 0.3 (moderate) after only 10 examples. • Rank correlation is generally above 0.6 (high) after 40 examples.
  • 31. 31 Precision at Top 3 for Science
  • 32. 32 Rating of Top 3 for Science
  • 33. 33 Rank Correlation for Science
  • 34. 34 User Studies • Subjects asked to use Libra and get recommendations. • Encouraged several rounds of feedback. • Rated all books in final list of recommendations. • Selected two books for purchase. • Returned reviews after reading selections. • Completed questionnaire about the system.
  • 35. 35 Combining Content and Collaboration • Content-based and collaborative methods have complementary strengths and weaknesses. • Combine methods to obtain the best of both. • Various hybrid approaches: – Apply both methods and combine recommendations. – Use collaborative data as content. – Use content-based predictor as another collaborator. – Use content-based predictor to complete collaborative data.
  • 36. 36 Movie Domain • EachMovie Dataset [Compaq Research Labs] – Contains user ratings for movies on a 0–5 scale. – 72,916 users (avg. 39 ratings each). – 1,628 movies. – Sparse user-ratings matrix – (2.6% full). • Crawled Internet Movie Database (IMDb) – Extracted content for titles in EachMovie. • Basic movie information: – Title, Director, Cast, Genre, etc. • Popular opinions: – User comments, Newspaper and Newsgroup reviews, etc.
  • 37. 37 Content-Boosted Collaborative Filtering EachMovie Web Crawler IMDb Movie Content Database Full User Ratings Matrix Collaborative Filtering User Ratings Matrix (Sparse) Content-based Predictor Active User Ratings Recommendations
  • 38. 38 Content-Boosted CF - I Content-Based Predictor Training Examples Pseudo User-ratings Vector Items with Predicted Ratings User-ratings Vector User-rated UnratIetde mItsems
  • 39. 39 Content-Boosted CF - II User Ratings Matrix Content-Based Predictor • Compute pseudo user ratings matrix Pseudo User Ratings Matrix – Full matrix – approximates actual full user ratings matrix • Perform CF – Using Pearson corr. between pseudo user-rating vectors
  • 40. 40 Experimental Method • Used subset of EachMovie (7,893 users; 299,997 ratings) • Test set: 10% of the users selected at random. – Test users that rated at least 40 movies. – Train on the remainder sets. • Hold-out set: 25% items for each test user. – Predict rating of each item in the hold-out set. • Compared CBCF to other prediction approaches: – Pure CF – Pure Content-based – Naïve hybrid (averages CF and content-based predictions)
  • 41. 41 Metrics • Mean Absolute Error (MAE) – Compares numerical predictions with user ratings • ROC sensitivity [Herlocker 99] – How well predictions help users select high-quality items – Ratings ³ 4 considered “good”; < 4 considered “bad” • Paired t-test for statistical significance
  • 42. 42 Results - I 1.06 1.04 1.02 1 0.98 0.96 0.94 0.92 0.9 MAE MAE Algorithm CF Content Naïve CBCF CBCF is significantly better (4% over CF) at (p < 0.001)
  • 43. 43 Results - II 0.68 0.66 0.64 0.62 0.6 0.58 ROC-4 ROC Sensitivity Algorithm CF Content Naïve CBCF CBCF outperforms rest (5% improvement over CF)
  • 44. 44 Active Learning (Sample Section, Learning with Queries) • Used to reduce the number of training examples required. • System requests ratings for specific items from which it would learn the most. • Several existing methods: – Uncertainty sampling – Committee-based sampling
  • 45. 45 Semi-Supervised Learning (Weakly Supervised, Bootstrapping) • Use wealth of unlabeled examples to aid learning from a small amount of labeled data. • Several recent methods developed: – Semi-supervised EM (Expectation Maximization) – Co-training – Transductive SVM’s
  • 46. 46 Conclusions • Recommending and personalization are important approaches to combating information over-load. • Machine Learning is an important part of systems for these tasks. • Collaborative filtering has problems. • Content-based methods address these problems (but have problems of their own). • Integrating both is best.