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11
Past, Present & Future of Recommender Systems:
An Industry Perspective
Xavier Amatriain (Quora)
Justin Basilico (Netflix) RecSys 2016
@xamat @JustinBasilico
DeLorean image by JMortonPhoto.com & OtoGodfrey.com
2
1. Past
3
Netflix Prize
2006
4
For more information ...
5
2. Present
6
Recommender Systems in Industry
Recommender Systems are used pervasively across application
domains
7
Recommender Systems in Industry
click
upvote
downvote
expand
share
8
Beyond explicit feedback
▪ Applications typically oriented around an action: click, buy,
read, listen, watch, …
▪ Implicit Feedback
▪ More data: Implicit feedback comes as part of normal use
▪ Better data: Matches with actions we want to predict
▪ Augment with contextual information
▪ Content for cold-start
▪ Hybrid: Combine together when you can
9
Ranking
▪ Ranking items is central
to recommending
▪ News feeds
▪ Items in catalogs
▪ …
▪ Most recsys can be
assimilated to:
▪ A learning-to-rank approach
▪ A feature engineering
problem
10
Everything is a RecommendationRows
Ranking
11
3. Future
12
Many interesting future directions
1. Indirect feedback
2. Value-awareness
3. Full-page optimization
4. Personalizing the how
▪ Others
▪ Intent/session awareness
▪ Interactive recommendations
▪ Context awareness
▪ Deep learning for
recommendations
▪ Conversational interfaces/bots
for recommendations
▪ …
13
Indirect Feedback
Challenges
▪ User can only click on what you show
▪ But, what you show is the result of what your model
predicted is good
▪ No counterfactuals
▪ Implicit data has no real “negatives”
Potential solutions
▪ Attention models
▪ Context is also indirect/implicit feedback
▪ Explore/exploit approaches and learning across
time
▪ ...
click
upvote
downvote
expand
share
14
Value-aware recommendations
▪ Recsys optimize for probability of action
▪ Not all clicks/actions have the same “reward”
▪ Different margin in ecommerce
▪ Different “quality” of content
▪ Long-term retention vs. short-term clicks (clickbait)
▪ …
▪ In Quora, the value of showing a story to a user is
approximated by weighted sum of actions:
v = ∑a
va
1{ya
= 1}
▪ Extreme application of value-aware recommendations:
suggest items to create that have the highest value
▪ Netflix: Which shows to produce or license
▪ Quora: Answers and questions that are not in the service
15
Full page optimization
▪ Recommendations are rarely displayed in
isolation
▪ Rankings are combined with many other elements
to make a page
▪ Want to optimize the whole page
▪ Means jointly solving for set of items and
their placement
▪ While incorporating
▪ Diversity, freshness, exploration
▪ Depth and coverage of the item set
▪ Non-recommendation elements (navigation,
editorial, etc.)
▪ Needs work hand-in-hand with the UX
16
Personalizing How We Recommend (… not just what we recommend)
▪ Algorithm level: Ideal balance of diversity, novelty,
popularity, freshness, etc. may depend on the person
▪ Display level: How you present items or explain
recommendations can also be personalized
▪ Select the best information and presentation for a user to quickly
decide whether or not they want an item
▪ Interaction level: Balancing the needs of lean-back users and
power users
17
Rows
Example: Rows & Beyond
Hero
Image
Predicted
rating
Evidence
Synopsis
Horizontal
Image
Row Title
Metadata
Ranking
18
4. Conclusions
19
Conclusions
▪ Approaches have evolved a lot in the past 10 years
▪ Looking forward to the next 10
▪ Industry and academia working together has advanced the
field since the beginning, we should make sure that
continues
20
Thank You
Justin Basilico
jbasilico@netflix.com
@JustinBasilico
Xavier Amatriain
xavier@quora.com
@xamat

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Past, Present & Future of Recommender Systems: An Industry Perspective

  • 1. 11 Past, Present & Future of Recommender Systems: An Industry Perspective Xavier Amatriain (Quora) Justin Basilico (Netflix) RecSys 2016 @xamat @JustinBasilico DeLorean image by JMortonPhoto.com & OtoGodfrey.com
  • 6. 6 Recommender Systems in Industry Recommender Systems are used pervasively across application domains
  • 7. 7 Recommender Systems in Industry click upvote downvote expand share
  • 8. 8 Beyond explicit feedback ▪ Applications typically oriented around an action: click, buy, read, listen, watch, … ▪ Implicit Feedback ▪ More data: Implicit feedback comes as part of normal use ▪ Better data: Matches with actions we want to predict ▪ Augment with contextual information ▪ Content for cold-start ▪ Hybrid: Combine together when you can
  • 9. 9 Ranking ▪ Ranking items is central to recommending ▪ News feeds ▪ Items in catalogs ▪ … ▪ Most recsys can be assimilated to: ▪ A learning-to-rank approach ▪ A feature engineering problem
  • 10. 10 Everything is a RecommendationRows Ranking
  • 12. 12 Many interesting future directions 1. Indirect feedback 2. Value-awareness 3. Full-page optimization 4. Personalizing the how ▪ Others ▪ Intent/session awareness ▪ Interactive recommendations ▪ Context awareness ▪ Deep learning for recommendations ▪ Conversational interfaces/bots for recommendations ▪ …
  • 13. 13 Indirect Feedback Challenges ▪ User can only click on what you show ▪ But, what you show is the result of what your model predicted is good ▪ No counterfactuals ▪ Implicit data has no real “negatives” Potential solutions ▪ Attention models ▪ Context is also indirect/implicit feedback ▪ Explore/exploit approaches and learning across time ▪ ... click upvote downvote expand share
  • 14. 14 Value-aware recommendations ▪ Recsys optimize for probability of action ▪ Not all clicks/actions have the same “reward” ▪ Different margin in ecommerce ▪ Different “quality” of content ▪ Long-term retention vs. short-term clicks (clickbait) ▪ … ▪ In Quora, the value of showing a story to a user is approximated by weighted sum of actions: v = ∑a va 1{ya = 1} ▪ Extreme application of value-aware recommendations: suggest items to create that have the highest value ▪ Netflix: Which shows to produce or license ▪ Quora: Answers and questions that are not in the service
  • 15. 15 Full page optimization ▪ Recommendations are rarely displayed in isolation ▪ Rankings are combined with many other elements to make a page ▪ Want to optimize the whole page ▪ Means jointly solving for set of items and their placement ▪ While incorporating ▪ Diversity, freshness, exploration ▪ Depth and coverage of the item set ▪ Non-recommendation elements (navigation, editorial, etc.) ▪ Needs work hand-in-hand with the UX
  • 16. 16 Personalizing How We Recommend (… not just what we recommend) ▪ Algorithm level: Ideal balance of diversity, novelty, popularity, freshness, etc. may depend on the person ▪ Display level: How you present items or explain recommendations can also be personalized ▪ Select the best information and presentation for a user to quickly decide whether or not they want an item ▪ Interaction level: Balancing the needs of lean-back users and power users
  • 17. 17 Rows Example: Rows & Beyond Hero Image Predicted rating Evidence Synopsis Horizontal Image Row Title Metadata Ranking
  • 19. 19 Conclusions ▪ Approaches have evolved a lot in the past 10 years ▪ Looking forward to the next 10 ▪ Industry and academia working together has advanced the field since the beginning, we should make sure that continues