shanda innovations
DESCRIPTION
Context-aware Ensemble of Multifaceted Factorization Models for Recommendation. Kevin Y. W. Chen. Shanda Innovations. Performance. 0.43959 (public score)/ 0.41874 (private score) 2 nd place Honorable Mention . New Challenges. Richer features in the social networks - PowerPoint PPT PresentationTRANSCRIPT
Shanda Innovations
Context-aware Ensemble of Multifaceted Factorization
Models for Recommendation
Kevin Y. W. Chen
Performance• 0.43959(public score)/0.41874(private
score)• 2nd place Honorable Mention
New Challenges• Richer features in the social networks
– follower/followee, actions• Items are complicate
– items are specific users• Cold-start problem
– 77.1% users do not have training records
• Training data is quite noisy – ratio of negative samples is 92.82%
Outline• Preprocessing
– denoise– supplement
• Pairwise Training– Max-margin optimization problem
• Multifaceted Factorization Models– Extend the SVD++
• Context-aware Ensemble – Logistic Regression
Preprocess: Session analysis• Negative : Positive = 92 : 8 ?
– not all the negative ratings imply that the users rejected to follow the recommended items
• Eliminating these “omitted” records is necessary– These negative samples can not indicate
users' interests
Preprocess: Session analysis• Session slicing according to the time
interval
• Select the right samples from the right session:
Preprocess: Session analysis• Training dataset after preprocessing
– Negative: 67,955,449 -> 7,594,443 (11.2%)
– Positive: 5,253,828 ->4,999,118• Benefits
– improve precision (0.0037)– reduce computational complexity
Pairwise-training• MAP
– pairwise ranking job• Training pair
– (u, i) and (u, j)• Objective function
Preprocess: Supply positive samples• Lack of positive samples
– An ideal pairwise training requires a good balance between the number of negative and positive samples
• Choose the users– users who have a far smaller number of
positive samples than negative samples• Generate the positive samples
– Figure out from social graphs
The procedure of data preprocessing
Multifaceted Factorization Models• Latent Factor Model
– stochastic gradient descent • MFM extends the SVD++
– integrate all kinds of valuable features in social networks
MFM: Demographic features• User and item profiles
– age(u), age(i)– gender(u), gender(i)– tweetnum(u)
• Combinations– uid*gender(i)– uid*age(i)– gender(u)*iid– age(u)*iid
MFM: Integrate Social Relationships• Influence of social relations• Cold start:
– 77.1% users do not have any rating records in the training set
• User feature vector:– Incorporate SNS relations and actions
• Bring significant improvement– MAP: 0.3495 ->0.3688 ->0.3701
MFM: Utilizing Keywords and Tags• Share common interests
– explicit feedbacks
• User feature vectors:
MFM: Date-Time Dependent Biases• Users' action differs when time changes
• The popularities of items change over time
k-Nearest Neighbors• Similar to SVD++• Find the neighbors
– calculate the distance based on Keywords and tags
• Intersection of explicit and implicit feedbacks
Ensemble• When will the user follow an item?
– pay attention to the item– be interested in the item
• User behavior modeling– predict whether the user noticed the
recommendation area at that time• User interest modeling
– a item meet the user’s tastes -- MFM
User Behavior Modeling• Durations of users on each
recommendation are very valuable clues
• Context of durations
Experiment
Experiment
The framework
Summary• A proper data preprocessing is necessary• Pairwise training (top-N recommendation)• Social relations and actions can be used as
implicit feedbacks• Integrate all kinds of valuable features• Users' interests and users' behaviors are
both need to be considered
Shanda Innovations Team
Yunwen Chen, Zuotao Liu, Daqi Ji, Yingwei Xin, Wenguang Wang, Lu Yao, Yi Zou
Q&AKevin Y. W. ChenShanda Innovations