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+ | @inproceedings{Noel:2012:NOF:2187836.2187952, | ||
+ | author = {Noel, Joseph and Sanner, Scott and Tran, Khoi-Nguyen and Christen, Peter and Xie, title = {New objective functions for social collaborative filtering}, | ||
+ | url = {http://doi.acm.org/10.1145/2187836.2187952} | ||
+ | } | ||
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In addition, we are not clear which part of extensions actually contributed the increase of accuracy, because there are no systematic analyses. | In addition, we are not clear which part of extensions actually contributed the increase of accuracy, because there are no systematic analyses. | ||
Thus, we cannot get much insight to improve the proposed method. | Thus, we cannot get much insight to improve the proposed method. | ||
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=== possible impact === | === possible impact === | ||
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+ | If they were able to publish data, it would have much more impact. | ||
Revision as of 14:07, 24 September 2012
Contents
Nozomi Nori
Q & A
- Who am I?
- I'm Nozomi Nori, a first year Ph.D. student at LTI.
- What do I hope to get out of the class?
- Some training and hint for my research.
- What kind project would I like to do?
- I prefer review.
Review
@inproceedings{Noel:2012:NOF:2187836.2187952,
author = {Noel, Joseph and Sanner, Scott and Tran, Khoi-Nguyen and Christen, Peter and Xie, title = {New objective functions for social collaborative filtering}, url = {http://doi.acm.org/10.1145/2187836.2187952}
}
summary
This paper points out three aspects which existing social CF (collaborative filtering) have overlooked; (1) learning similarities among users (2) learning restricted common interests among users and (3) direct joint features over user and items. Then this paper proposes a unified framework that can consider the three aspects by introducing a new objective function. Specifically, they extended matrix factorization based CF in the following three ways.
- (1)
In existing social CF, it is fixed how to compute similarities among users, given some features for users. It would be more desirable if we can learn such similarities among various profile attributes, by using correlations of users. To achieve this, they extended existing social regularization, which constrains the latent projection of users based on their social network information. They incorporated users' features in this regularization, by representing users by their features and mapping from these features to latent spaces.
- (2)
Existing social CF treats similarities among users only in global perspective. While two users are not globally similar, there may be sub-areas of interests which can be correlated to each other. To deal with this co-preference, they added another regularization. They forced the following two components to be similar; (1) positive examples of preferences that are defined for 3-tuple (user, item, user) and (2) similarities based on each user/item/user latent representations.
- (3)
Existing MF methods also did not model direct joint features over user and items. Given a pair of (user (x), item (y)), newly introduced feature here is, for each friend (z) of the user (x), whether the friend (z) liked/disliked the item (y), and they used this feature in linear regressor. This allows the regressor to predict for any user (x) whether they are likely to follow their friend z’s preference for (y). They combined the output of the linear regression prediction with a MF based CF (matchbox prediction).
To evaluate the accuracy of the proposed method, they created a Facebook application that recommends links to users every day and
conducted live online user trials over five months, with over 100 Facebook App users and data from over 37,000 Facebook users.
In the experiment, they compared the proposed method to several methods (including k-Nearest Neighbor, SVM, Matchbox CF, and several social CF) in live online recommendation tasks, showing that the proposed method has highest accuracy in "like" prediction task.
In addition, they conducted user behaviors analyses by using real data they collected.
They also got some feedback from users, shedding light for the design of future social recommendation applications.
strengths and weaknesses
- Strength
The problems the authors pointed out regarding existing social CF are genuine to social media, but have not yet been fully considered. The authors propose a method that can solve the problem in a unified way based on MF. In addition, they actually created a Facebook application to collect user behavior data in Facebook. By doing so, they got rich features and conducted detailed analyses on users behaviors, too.
- weakness
They manually set the weight for each objective function, and this might be time-consuming in practical situations. In addition, we are not clear which part of extensions actually contributed the increase of accuracy, because there are no systematic analyses. Thus, we cannot get much insight to improve the proposed method.
possible impact
If they were able to publish data, it would have much more impact.
recommendation for whether or not to assign the paper as required/optional reading in later classes.
No.
Study Plan
To understand some matrix calculation, I read some of the paper; K. B. Petersen and M. S. Pedersen. The matrix cookbook, 2008.