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Discovering User Perceptions of
  Semantic Similarity in
  Near-duplicate Multimedia Files

Raynor Vliegendhart (speaker)
Martha Larson
Johan Pouwelse

WWW 2012 Workshop on Crowdsourcing Web Search (CrowdSearch 2012),
Lyon, France, April 17, 2012.
Outline

• Introduction
• Crowdsourcing Task
• Results
• Conclusions and Future Work




                                2
Question:
Are these the same? Why (not)?


            Chrono Cross -
            'Dream of the Shore Near Another World'
            Violin/Piano Cover


            Chrono Cross
            Dream of the Shore Near Another World
            Violin and Piano

                       sources: YouTube, IQYNEj51EUI (left), Iuh3YrJtK3M (right)

                                                                   3
Question:
Are these the same? Why (not)?


                 Chrono Cross -
                 'Dream of the Shore Near Another World'
                 Violin/Piano Cover
 Yes, it’s the
 same song
                 Chrono Cross
                 Dream of the Shore Near Another World
                 Violin and Piano

                            sources: YouTube, IQYNEj51EUI (left), Iuh3YrJtK3M (right)

                                                                        4
Question:
Are these the same? Why (not)?


            Chrono Cross -
            'Dream of the Shore Near Another World'
            Violin/Piano Cover
                         No, these are
                    different performances
                    by different performers
            Chrono Cross
            Dream of the Shore Near Another World
            Violin and Piano

                       sources: YouTube, IQYNEj51EUI (left), Iuh3YrJtK3M (right)

                                                                   5
Problem:
What constitutes a near duplicate?


Functional near-duplicate multimedia items are items
that fulfill the same purpose for the user.

Once the user has one of these items, there is no
additional need for another.




                                                    6
Problem:
What constitutes a near duplicate?

Our work:
• Discovering new notions of user-perceived
  similarity between multimedia files

• in a file-sharing setting

• through a crowdsourcing task.




                                              7
Motivation:
Clustering items in search results




                            screenshot from Tribler (tribler.org)

                                                   8
Motivation:
Clustering items in search results




                            screenshot from Tribler (tribler.org)

                                                   9
Outline

• Introduction
• Crowdsourcing Task
• Results
• Conclusions and Future Work




                                10
Crowdsourcing Task:
Point the odd one out

• Three multimedia files displayed as search results
• Worker points the odd one out and justifies why


• Challenge: eliciting serious judgments




                                                       11
Crowdsourcing Task:
   Eliciting serious judgments (1)

   “Imagine that you downloaded
    the three items in the list
    and that you view them.”

Harry Potter and the Sorcerers Stone Audio
Book (478 MB)

Harry Potter and the Sorcerer s Stone
(2001)(ENG GER NL) 2Lions- (4.36 GB)

Harry Potter.And.The.Sorcerer.Stone.DVDR.
NTSC.SKJACK.Universal.S (4.46 GB)


                                             12
Crowdsourcing Task:
Eliciting serious judgments (2)

• Don’t force workers to make a contrast
• Explain the definition of functional similarity


o The items are comparable. They are for all practical purposes the
  same. Someone would never really need all three of these.

o Each item can be considered unique. I can imagine that someone
  might really want to download all three of these items.

o One item is not like the other two. (Please mark that item in the list.)
  The other two items are comparable.

                                                                      13
Final HIT Design




                   14
Outline

• Introduction
• Crowdsourcing Task
• Results
• Conclusions and Future Work




                                15
Dataset




top 100 content   75 queries               75 results lists /
                                           32,773 filenames


                  1000 random triads (test set)
                  28 manually selected triads (validation set)

                                                         16
Results
                                                    1000 test triads
3 validation triads                          + 28 validation triads mixed in




 Recruitment                                            Main HIT
     HIT
                                                  (3 workers per test triad)



                      two HITs run concurrently
                                                                     17
Results
                                                1000 test triads
3 validation triads                      + 28 validation triads mixed in




 Recruitment                         8
                                                  Main HIT
     HIT
                      14 qualified
                       workers

                                              free-text judgments
< 36h                                          for 308 test triads

                                                              18
Card Sort

• Print judgments on small pieces of paper
• Group similar judgments into piles
• Merge piles iteratively
• Label each pile




                                             19
Card Sort

Example: “different language”
• “The third item is a Hindi language version of the movie”
• “This is a Spanish version of the movie represented by the other
 two”
•…




                                                               20
User-perceived
Similarity Dimensions

Different movie vs. TV show                     Different movie
Normal cut vs. extended cut                     Movie vs. trailer
Cartoon vs. movie                               Comic vs. movie
Movie vs. book                                  Audiobook vs. movie
Game vs. corresponding movie                    Sequels (movies)
Commentary document vs. movie                   Soundtrack vs. corresponding movie
Movie/TV show vs. unrelated audio album         Movie vs. wallpaper
Different episode                               Complete season vs. individual episodes
Episodes from different season                  Graphic novel vs. TV episode
Multiple episodes vs. full season               Different realization of same legend/story
Different songs                                 Different albums
Song vs. album                                  Collection vs. album
Album vs. remix                                 Event capture vs. song
Explicit version                                Bonus track included
Song vs. collection of songs+videos             Event capture vs. unrelated movie
Language of subtitles                           Different language
Mobile vs. normal version                       Quality and/or source
Different codec/container (MP4 audio vs. MP3)   Different game
Crack vs. game                                  Software versions
Different game, same series                     Different application
Addon vs. main application                      Documentation (pdf) vs. software
List (text document) vs. unrelated item         Safe vs. X-Rated


                                                                                             21
Outline

• Introduction
• Crowdsourcing Task
• Results
• Conclusions and Future Work




                                22
Conclusions

• A wealth of user-perceived dimensions of similarity discovered,
  some we could not have thought of
• Quick results due to interesting crowdsourcing task,
  with the focus on engagement and encouraging serious workers




                                                               23
Future Work

• Expand experiments, larger worker volume
• Other multimedia search settings
• Crowdsourcing the card sorting process


• Use findings to guide design of clustering algorithms
 Done: first version is deployed in Tribler




                                                          24
Questions?




             25

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Crowdsearch2012 discoveringuserperceptionsofsemanticsimilarity

  • 1. Discovering User Perceptions of Semantic Similarity in Near-duplicate Multimedia Files Raynor Vliegendhart (speaker) Martha Larson Johan Pouwelse WWW 2012 Workshop on Crowdsourcing Web Search (CrowdSearch 2012), Lyon, France, April 17, 2012.
  • 2. Outline • Introduction • Crowdsourcing Task • Results • Conclusions and Future Work 2
  • 3. Question: Are these the same? Why (not)? Chrono Cross - 'Dream of the Shore Near Another World' Violin/Piano Cover Chrono Cross Dream of the Shore Near Another World Violin and Piano sources: YouTube, IQYNEj51EUI (left), Iuh3YrJtK3M (right) 3
  • 4. Question: Are these the same? Why (not)? Chrono Cross - 'Dream of the Shore Near Another World' Violin/Piano Cover Yes, it’s the same song Chrono Cross Dream of the Shore Near Another World Violin and Piano sources: YouTube, IQYNEj51EUI (left), Iuh3YrJtK3M (right) 4
  • 5. Question: Are these the same? Why (not)? Chrono Cross - 'Dream of the Shore Near Another World' Violin/Piano Cover No, these are different performances by different performers Chrono Cross Dream of the Shore Near Another World Violin and Piano sources: YouTube, IQYNEj51EUI (left), Iuh3YrJtK3M (right) 5
  • 6. Problem: What constitutes a near duplicate? Functional near-duplicate multimedia items are items that fulfill the same purpose for the user. Once the user has one of these items, there is no additional need for another. 6
  • 7. Problem: What constitutes a near duplicate? Our work: • Discovering new notions of user-perceived similarity between multimedia files • in a file-sharing setting • through a crowdsourcing task. 7
  • 8. Motivation: Clustering items in search results screenshot from Tribler (tribler.org) 8
  • 9. Motivation: Clustering items in search results screenshot from Tribler (tribler.org) 9
  • 10. Outline • Introduction • Crowdsourcing Task • Results • Conclusions and Future Work 10
  • 11. Crowdsourcing Task: Point the odd one out • Three multimedia files displayed as search results • Worker points the odd one out and justifies why • Challenge: eliciting serious judgments 11
  • 12. Crowdsourcing Task: Eliciting serious judgments (1) “Imagine that you downloaded the three items in the list and that you view them.” Harry Potter and the Sorcerers Stone Audio Book (478 MB) Harry Potter and the Sorcerer s Stone (2001)(ENG GER NL) 2Lions- (4.36 GB) Harry Potter.And.The.Sorcerer.Stone.DVDR. NTSC.SKJACK.Universal.S (4.46 GB) 12
  • 13. Crowdsourcing Task: Eliciting serious judgments (2) • Don’t force workers to make a contrast • Explain the definition of functional similarity o The items are comparable. They are for all practical purposes the same. Someone would never really need all three of these. o Each item can be considered unique. I can imagine that someone might really want to download all three of these items. o One item is not like the other two. (Please mark that item in the list.) The other two items are comparable. 13
  • 15. Outline • Introduction • Crowdsourcing Task • Results • Conclusions and Future Work 15
  • 16. Dataset top 100 content 75 queries 75 results lists / 32,773 filenames 1000 random triads (test set) 28 manually selected triads (validation set) 16
  • 17. Results 1000 test triads 3 validation triads + 28 validation triads mixed in Recruitment Main HIT HIT (3 workers per test triad) two HITs run concurrently 17
  • 18. Results 1000 test triads 3 validation triads + 28 validation triads mixed in Recruitment 8 Main HIT HIT 14 qualified workers free-text judgments < 36h for 308 test triads 18
  • 19. Card Sort • Print judgments on small pieces of paper • Group similar judgments into piles • Merge piles iteratively • Label each pile 19
  • 20. Card Sort Example: “different language” • “The third item is a Hindi language version of the movie” • “This is a Spanish version of the movie represented by the other two” •… 20
  • 21. User-perceived Similarity Dimensions Different movie vs. TV show Different movie Normal cut vs. extended cut Movie vs. trailer Cartoon vs. movie Comic vs. movie Movie vs. book Audiobook vs. movie Game vs. corresponding movie Sequels (movies) Commentary document vs. movie Soundtrack vs. corresponding movie Movie/TV show vs. unrelated audio album Movie vs. wallpaper Different episode Complete season vs. individual episodes Episodes from different season Graphic novel vs. TV episode Multiple episodes vs. full season Different realization of same legend/story Different songs Different albums Song vs. album Collection vs. album Album vs. remix Event capture vs. song Explicit version Bonus track included Song vs. collection of songs+videos Event capture vs. unrelated movie Language of subtitles Different language Mobile vs. normal version Quality and/or source Different codec/container (MP4 audio vs. MP3) Different game Crack vs. game Software versions Different game, same series Different application Addon vs. main application Documentation (pdf) vs. software List (text document) vs. unrelated item Safe vs. X-Rated 21
  • 22. Outline • Introduction • Crowdsourcing Task • Results • Conclusions and Future Work 22
  • 23. Conclusions • A wealth of user-perceived dimensions of similarity discovered, some we could not have thought of • Quick results due to interesting crowdsourcing task, with the focus on engagement and encouraging serious workers 23
  • 24. Future Work • Expand experiments, larger worker volume • Other multimedia search settings • Crowdsourcing the card sorting process • Use findings to guide design of clustering algorithms Done: first version is deployed in Tribler 24