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Personalizing Television.
#ppalooza - Personalization Palooza 2016 - NYC MEDIA LAB
Screens User
Marketing & Editorial Team
ONE SIZE

FITS ALL UX
Brand
Dangers
Most of the audience

does not find relevant content 

with low effort.
When it’s time to optimize bills, a
portion of subscribers doesn’t see
enough value.
Users don’t see the content offers
suitable for them.
The screen is small and people
don’t scroll or dig enough to
find what’s good for them
Lower ARPU
Lower retention
Users tend to ignore

or even “mute” sources 

that are not relevant.
E-mail and mobile notifications
contain generic suggestions
Low ROI on marketing to
subscribers
At the end of the free trial most of
the prospects didn’t see the full
value of the offering
The free trial period provides a
generic user experience
Low conversion ratio of
free trials
One-size-fits-all Impact
Screens User
Marketing & Editorial Team
ONE SIZE

FITS ALL UX
Brand
Screens User
Marketing & Editorial Team
UXUX Autopilot
ONE-TO-ONE
Actionable Analytics
Brand
Marketing & Editorial Team
UX Autopilot
Actionable Analytics
EDITORIAL CURATION
BUSINESS RULES
A/B TESTING
SELF-TUNING
Hints
KPIs
UX
USAGE TRACKING
ContentWise
Automate the Digital Storefront
Deliver a Personalized, One to One User Experience
Assist the Content Curation Process
Personalization of TV & Video Services
Search, Discovery, Prediction ➜ UX Autopilot
Multi-catalog, Multi-language, Multi-screen
Analytics, A/B Testing, Metadata Management
EFFECT: Widening the Catalog Coverage
Catalog portion
watched by users
OTT Service
80%
42%
No Personalization
With ContentWise
EFFECT: The Long Tail That Really Works
Playback Distribution
Content Assets
ContentWise uplift
Popular
content
No Personalization
Playbacks
? ? ? ? ? ?
HOW TO: Targeted Promotions
You have 20 movies to promote

but space on screen for 3 elements only.
You’d like to display the relevant ones to each user.
Let’s say that we have 20 movies to promote
but space on screen for only 3 elements.
We want to display the relevant ones for each user.
HOW TO: Targeted Promotions
HOW TO: Next-to-play & Binge-viewing
Episode 5
Episode 5
Ep.6
Alternative
content
News 1 News 2 News 3 …
Prediction Discovery
HOW TO: Next-to-play & Binge-viewing
Personalize Through Navigation
Content in a flat list. No visual help to
process what’s on the screen.
Collections and micro-genres:
easily scannable
Surface a personalized
set of collections
including content with
one or more relevant
“features” (micro-genres)
LIVE EVENT LIVE EVENT
EPG
AppsSports
Highlights
LIVE EVENTLIVE EVENT
Cross-domain
LIVE EVENT VIDEO CLIP APP LIVE EVENT
EPG
AppsSports
Highlights
LIVE EVENTLIVE EVENT
Surfacing elements
from other catalogs
Cross-domain
Classic Recommender System
Collaborative Filtering
Suggests content that has been relevant for other users
with a viewing history similar to mine.
WHO LIKED THIS ALSO LIKED…
Tends to surface popular content
Cannot suggest new additions (“cold start problem”)
Content-based
Suggests content similar to what I watched in the past.
Tends to stay confined in the user’s comfort zone
Limits true catalog exploration
Hybrid Algorithm
Blends collaborative and content-based models to balance

taste-matching, popularity and serendipity.
New content items are assigned an initial score based on each
user’s taste and content metadata.
This puts them “in motion” and, if they are watched and become
popular in certain audience segments, the collaborative
component starts prevailing.
PROBLEM: new content is “cold”
SOLUTION
12am 4am 8am 12pm 4pm 8pm
TV Screen
Mobile
Contextual User Habits
Learns user’s habits in the context of time, location and device.
Predicts user’s intentions by surfacing content typically watched
in the specific context.
For example:
- around 3pm of a Sunday, on the living room TV
- at 6pm of a Wednesday, on the smartphone, out of
home
Very effective for shared devices with no user login.
PROBLEM: Shared Devices Without Login
SOLUTION
Semantic Enrichment and Knowledge Graph
Movie Episode
Gossip Video
Talk Show
Clip
spouse
2015..
spouse
2000..2005
Gossip Video
appearsIn appearsInactorOf appearsIn
Season
Series
Special
spinOff
appearsIn Channel
BrandTalk Show
Brand
Movie
sequelOf
franchise
James
Bond
franchise
Schedule
interviewedIn
UX Engine
Consumer UI
Admin Console
You are in control
One API for all
client platforms
Don’t fly blind: Analytics on UX Performance
EXAMPLE: effect of a rule change on the relevant KPIs
On-boarding Trial Training Retention
Convert to
paying user
Sign-up 2nd payment
Monthly
renewal
Cold start
WIP: Shift Gears as User Relationship Matures
WIP: Think in Two Dimensions Vertical Layouts
Personalized Selection
TOP PICKS FOR YOU
TRENDING SERIES
ACTION MOVIES
COMEDIES SET IN NEW YORK
SPY MOVIES BASED ON BOOKS
Alice
TOP PICKS FOR YOU
MOST VIEWED
NEW ARRIVALS
WHAT’S TRENDING
TRENDING SERIES
FAMILY MOVIE NIGHT
DS: <GENRE> MOVIES
DS: COMEDIES SET IN <CITY>
DS: <EDITORIAL COLLECTION>
WATCH IT AGAIN
BECAUSE YOU LIKED…
OSCAR WINNERS
ENABLED STREAMS VERTICAL LAYOUT
MANUALLY PINNED
ALGORITHMIC SELECTION
THE FUTURE?
Own your knowledge:
audience behavior & content performance
Know your users through
the stories they like:
emotional traits
lifestyle traits
social traits
Own the ability to expose
YOUR users to the
relevant brand messages
Thank you!
www.contentwise.tv
Visit our website or contact us
pan@contentwise.tv

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Personalizing TV with ContentWise's UX Autopilot

  • 1. Personalizing Television. #ppalooza - Personalization Palooza 2016 - NYC MEDIA LAB
  • 2. Screens User Marketing & Editorial Team ONE SIZE
 FITS ALL UX Brand
  • 3. Dangers Most of the audience
 does not find relevant content 
 with low effort. When it’s time to optimize bills, a portion of subscribers doesn’t see enough value. Users don’t see the content offers suitable for them. The screen is small and people don’t scroll or dig enough to find what’s good for them Lower ARPU Lower retention Users tend to ignore
 or even “mute” sources 
 that are not relevant. E-mail and mobile notifications contain generic suggestions Low ROI on marketing to subscribers At the end of the free trial most of the prospects didn’t see the full value of the offering The free trial period provides a generic user experience Low conversion ratio of free trials One-size-fits-all Impact
  • 4. Screens User Marketing & Editorial Team ONE SIZE
 FITS ALL UX Brand
  • 5. Screens User Marketing & Editorial Team UXUX Autopilot ONE-TO-ONE Actionable Analytics Brand
  • 6. Marketing & Editorial Team UX Autopilot Actionable Analytics EDITORIAL CURATION BUSINESS RULES A/B TESTING SELF-TUNING Hints KPIs UX USAGE TRACKING
  • 7. ContentWise Automate the Digital Storefront Deliver a Personalized, One to One User Experience Assist the Content Curation Process
  • 8. Personalization of TV & Video Services Search, Discovery, Prediction ➜ UX Autopilot Multi-catalog, Multi-language, Multi-screen Analytics, A/B Testing, Metadata Management
  • 9. EFFECT: Widening the Catalog Coverage Catalog portion watched by users OTT Service 80% 42% No Personalization With ContentWise
  • 10. EFFECT: The Long Tail That Really Works Playback Distribution Content Assets ContentWise uplift Popular content No Personalization Playbacks
  • 11. ? ? ? ? ? ? HOW TO: Targeted Promotions You have 20 movies to promote
 but space on screen for 3 elements only. You’d like to display the relevant ones to each user.
  • 12. Let’s say that we have 20 movies to promote but space on screen for only 3 elements. We want to display the relevant ones for each user. HOW TO: Targeted Promotions
  • 13. HOW TO: Next-to-play & Binge-viewing Episode 5
  • 14. Episode 5 Ep.6 Alternative content News 1 News 2 News 3 … Prediction Discovery HOW TO: Next-to-play & Binge-viewing
  • 15. Personalize Through Navigation Content in a flat list. No visual help to process what’s on the screen. Collections and micro-genres: easily scannable
  • 16. Surface a personalized set of collections including content with one or more relevant “features” (micro-genres)
  • 17. LIVE EVENT LIVE EVENT EPG AppsSports Highlights LIVE EVENTLIVE EVENT Cross-domain
  • 18. LIVE EVENT VIDEO CLIP APP LIVE EVENT EPG AppsSports Highlights LIVE EVENTLIVE EVENT Surfacing elements from other catalogs Cross-domain
  • 19. Classic Recommender System Collaborative Filtering Suggests content that has been relevant for other users with a viewing history similar to mine. WHO LIKED THIS ALSO LIKED… Tends to surface popular content Cannot suggest new additions (“cold start problem”) Content-based Suggests content similar to what I watched in the past. Tends to stay confined in the user’s comfort zone Limits true catalog exploration
  • 20. Hybrid Algorithm Blends collaborative and content-based models to balance
 taste-matching, popularity and serendipity. New content items are assigned an initial score based on each user’s taste and content metadata. This puts them “in motion” and, if they are watched and become popular in certain audience segments, the collaborative component starts prevailing. PROBLEM: new content is “cold” SOLUTION
  • 21. 12am 4am 8am 12pm 4pm 8pm TV Screen Mobile Contextual User Habits Learns user’s habits in the context of time, location and device. Predicts user’s intentions by surfacing content typically watched in the specific context. For example: - around 3pm of a Sunday, on the living room TV - at 6pm of a Wednesday, on the smartphone, out of home Very effective for shared devices with no user login. PROBLEM: Shared Devices Without Login SOLUTION
  • 22. Semantic Enrichment and Knowledge Graph Movie Episode Gossip Video Talk Show Clip spouse 2015.. spouse 2000..2005 Gossip Video appearsIn appearsInactorOf appearsIn Season Series Special spinOff appearsIn Channel BrandTalk Show Brand Movie sequelOf franchise James Bond franchise Schedule interviewedIn
  • 23. UX Engine Consumer UI Admin Console You are in control One API for all client platforms
  • 24. Don’t fly blind: Analytics on UX Performance EXAMPLE: effect of a rule change on the relevant KPIs
  • 25. On-boarding Trial Training Retention Convert to paying user Sign-up 2nd payment Monthly renewal Cold start WIP: Shift Gears as User Relationship Matures
  • 26. WIP: Think in Two Dimensions Vertical Layouts Personalized Selection TOP PICKS FOR YOU TRENDING SERIES ACTION MOVIES COMEDIES SET IN NEW YORK SPY MOVIES BASED ON BOOKS Alice TOP PICKS FOR YOU MOST VIEWED NEW ARRIVALS WHAT’S TRENDING TRENDING SERIES FAMILY MOVIE NIGHT DS: <GENRE> MOVIES DS: COMEDIES SET IN <CITY> DS: <EDITORIAL COLLECTION> WATCH IT AGAIN BECAUSE YOU LIKED… OSCAR WINNERS ENABLED STREAMS VERTICAL LAYOUT MANUALLY PINNED ALGORITHMIC SELECTION
  • 27. THE FUTURE? Own your knowledge: audience behavior & content performance Know your users through the stories they like: emotional traits lifestyle traits social traits Own the ability to expose YOUR users to the relevant brand messages
  • 28. Thank you! www.contentwise.tv Visit our website or contact us pan@contentwise.tv