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Ismaïl BADACHE, Mohand BOUGHANEM 
IRIT, Toulouse University, France 
{badache, boughanem}@irit.fr
PresentationPlan 
Introduction 
RelatedWork 
Approach of Social Information Retrieval 
ExperimentalResults 
4 
1 
3 
Conclusion 
2 
5
1.1 Emergence of social Web 
Numberof active users2013 
1,2 
1,4 
1,7 
2,4 
2011 
2012 
2013 
2014 
Numberof Internet users 
Social content per 1 minute 
41000 Publications 
1,8 Million Like 
~350 GB of Data 
Facebook 
Source: 
blogdumoderateur.com 
quantcast.com 
semiocast.com 
1. Introduction 
2. RelatedWork 
5. Conclusion 
3. Approach of SIR 
4. ExperimentalResults 
1
Video 
Photo 
Web Page 
Web Resources 
Resource. . . 
Social Networks 
Bookmark 
Comment 
Share/Recommend 
Motion/Vote 
Like/+1 
Interaction 
Extraction and quantification of social properties 
Information RetrievalModel 
(Ranking) IntegrationQueryResults 
Fig1. Global presentation of our work 
Social Signals 
(Source of Evidence) 
Popularity 
Reputation 
Freshness 
2
1.2 Example of Social Signals 
3 
1. Introduction 
2. RelatedWork 
5. Conclusion 
3. Approach of SIR 
4. ExperimentalResults
1.3 Research Issues 
Whatarethemostusefulsignalsandpropertiestoevaluateapriorirelevance(importance)ofaresource? 
2 
Whattheoreticalmodeltocombineapriorirelevanceofresourcewithitstopicalrelevance? 
3 
What is the impact of social properties on IR system performance? 
4 
1 
Howtotranslatesocialsignalsintosocialproperties? 
4 
Whatarethemostfavoredsignalsandpropertieswhileusingattributeselectionalgorithms?andwhatarethemostcorrelatedwithdocumentsrelevance? 
5 
1. Introduction 
2. RelatedWork 
5. Conclusion 
3. Approach of SIR 
4. ExperimentalResults
1. Introduction 
2. RelatedWork 
5. Conclusion 
3. Approach of SIR 
4. ExperimentalResults 
2.1 Related Work 
5 
Sources ofevidence (Social Features) 
Properties 
Models 
Authors 
•Numberof:clicks,votes,recordsandrecommendations. 
Popularity 
Importance 
Linearcombination 
(Karweg et al., 2011) 
•Numberof:like,dislike,commentsonYouTube. 
•Theplaycount(numberoftimesauserlistenstoatrackonlastfm) 
•PresenceofaURLinatweet. 
Importance 
Machine learning 
and 
Linear combination 
(Chelaru et al., 2012) 
(Khodaei et al. 2012) 
(Alonso et al., 2010) 
•Numberofretweets. 
•Numberofannotations(tags). 
Popularity 
Machine learning 
(Yang et al., 2012) 
(Hong et al., 2011) 
(Pantelet al., 2012) 
•Socialapprovalvotes 
Importance 
Machine learning 
(Kazaiand Milic- Frayling.,2009)
•OurIRapproachconsistsofexploitingvariousandheterogeneoussocialsignalsfromdifferentsocialnetworkstotakeintoaccountinretrievalmodel. Inaddition,insteadofconsideringsocialfeaturesseparatelyasdoneinthepreviousworks,weproposetocombinethemtomeasurespecificsocialproperties,namelythepopularityandthereputationofaresource.Wealsoevaluatetheimpactoffreshnessofsignalintheperformance.Inourwork,weuselanguagemodelthatprovideatheoreticalfoundedwaytotakeintoaccountthenotionofaprioriprobabilitiesofadocument. 
1. Introduction 
2. RelatedWork 
5. Conclusion 
3. Approach of SIR 
4. ExperimentalResults 
3.1 A Modular Approach for Social IR 
6
•WeassumethatresourceDcanberepresentedbothbyasetoftextualkey-words 퐷푤={푤1,푤2,…푤푛}andasetofsocialactions(signals)performedonthisresource,퐷푎={푎1,푎2,…푎푚}. 
•WeconsiderasetX={Popularity,Reputation,Freshness}of3socialpropertiesthatcharacterizearesourceD.Eachpropertyisquantifiedbyaspecificactionsgroup.Thesepropertiesareconsideredasaprioriknowledgeofaresource. 
3.2 Social Signals and Social Properties 
Web Resource 
-Textual key-words 
-Social Signals 
-Like 
-+1 
-Share 
-Comment 
-Dates of actions 
Web Resource 
-Textual key-words 
-Social Signals 
-Like 
-+1 
-Share 
-Comment 
-Dates of actions 
Reputation 
Popularity 
Freshness 
7 
1. Introduction 
2. RelatedWork 
5. Conclusion 
3. Approach of SIR 
4. ExperimentalResults
3.1 ProposedApproach 
•Thelanguagemodellingapproachcomputestheprobability푃(퐷|푄)ofadocumentDbeinggeneratedbyaqueryQbyusingtheBayestheorem: 
•푃(퐷)isadocumentpriorprobability.Itisusefulforincorporatingothersourcesofinformationtotheretrievalprocess. 
•푃(푄)canbeignoredbecauseitdoesnotaffecttherankingofdocuments. 
3.3 Query Likelihood and Document Priors 
(1) 
(2) 
8 
푆푐표푟푒푄,퐷=푃퐷푄= 푃(퐷)∙푃(푄|퐷) 푃(푄) 
푆푐표푟푒푄,퐷=푃퐷푄=푷푫∙푃(푄|퐷) 
Document Prior Probability 
Query-Likelihood Score 
1. Introduction 
2. RelatedWork 
5. Conclusion 
3. Approach of SIR 
4. ExperimentalResults
3.1 ProposedApproach 
•PopularityP:Theresourcepopularitycanbeestimatedaccordingtotherateofsharingthisresourceonsocialnetworks. 
•ReputationR:TheresourcereputationcanbeestimatedbasedonsocialactivitiesthathavepositivemeaningsuchasFacebooklike.Indeed,resourcereputationdependsonthedegreeofusers'appreciationonsocialnetworks. 
Thegeneralformulaisthefollowing: 
Where: 
3.4 Estimating Priors: Popularity and Reputation 
푃푥푎푖 푥= 퐶표푢푛푡(푎푖 푥,퐷) 퐶표푢푛푡(푎. 푥,퐷) 
(3) 
(4) 
9 
푃푥퐷= 푎푖 푥∈퐴 푃푥푎푖 푥 
1. Introduction 
2. RelatedWork 
5. Conclusion 
3. Approach of SIR 
4. ExperimentalResults
3.1 ProposedApproach 
•ToavoidZeroprobability,wesmooth푃푥푎푖 푥bycollectionCusingDirichlet. Theformulabecomesasfollows: 
Where: 
•퐶표푢푛푡푎풊 푥,퐷representsnumberofoccurrenceofspecificaction푎푖 푥performedonaresource. 
•푎푖 푥designsaction푎푖usedtomeasureaproperty푥.푎. 푥isthetotalnumberofsocialsignalsassociatedtoproperty푥,indocumentsDorincollectionC. 
3.5 Estimating Priors: Popularity Pand Reputation R 
(5) 
(6) 
10 
푃푥퐷= 푎푖 푥∈퐴 퐶표푢푛푡푎푖 푥,퐷+휇∙푃(푎푖 푥|퐶) 퐶표푢푛푡푎∙ 푥,퐷+휇 
푃(푎푖 푥|퐶)= 퐶표푢푛푡(푎푖 푥,퐶) 퐶표푢푛푡(푎. 푥,퐶) 
1. Introduction 
2. RelatedWork 
5. Conclusion 
3. Approach of SIR 
4. ExperimentalResults
3.1 ProposedApproach 
•Inadditiontosimplecountingofsocialactions,weproposetoconsiderthetimeassociatedwithsignal.Weassumethattheresourceassociatedwithfreshsignalsshouldbepromotedcomparingtothoseassociatedwitholdsignals.Therefore, insteadofcountingeachoccurrenceofagivensignal,webiasthiscounting, noted퐶표푢푛푡퐵,bythedateoftheoccurrenceofthesignal.Thecorrespondingformulaisasfollows: 
•푇푎푖={푡1,푎푖,푡2,푎푖,…푡푘,푎푖}asetofkdatetimeatwhicheachaction푎푖wasproduced. 
•푓퐹(푡푗,푎푖 푥,퐷)representsfreshnessfunction,estimatedbyusingGaussianKernel,itcalculatesadistancebetweencurrenttime푡푐푢푟푟푒푛푡andactiontime푡푗,푎푖 푥 
3.6 Estimating Priors with considering Freshness F 
퐶표푢푛푡퐵푡푗,푎푖 푥,퐷= 푗=1 푘 푓퐹(푡푗,푎푖 푥,퐷) 
= 푗=1 푘 푒푥푝− ‖푡푐푢푟푟푒푛푡−푡푗,푎푖 푥‖22휎2 
(7) 
11 
1. Introduction 
2. RelatedWork 
5. Conclusion 
3. Approach of SIR 
4. ExperimentalResults
3.1 ProposedApproach 
•Inourcase,wehavevarioussourcesofsocialinformationthatinfluencestheaprioriprobabilityofrelevance.Thisprobabilityiscalculatedbycombiningtwomainsocialproperties(popularityandreputation).Theproblemcanbeformalizedasfollows: 
•푃푃퐷,푃푅(퐷)defineaprioriprobabilitiesrelatedtopopularityPandreputationRthatincludefreshnessfunction. 
•푃푃⊕푅퐷definestheprobabilityofpriorscombination. 
3.7 Combining Priors 
(8) 
12 
푃푃⊕푅퐷=푃푃(퐷)∙푃푅(퐷) 
1. Introduction 
2. RelatedWork 
5. Conclusion 
3. Approach of SIR 
4. ExperimentalResults
3.1 ProposedApproach 
•Objectives 
1.First,toevaluatewhethersocialsignals,takenfromdifferentsocialnetworksimprovethesearch. 
2.Second,toevaluatetheimpactofeachsignaltakenseparatelyandgroupedtorepresentacertainproperty. 
3.andfinallytomeasuretheimpactofthefreshness. 
•Evaluationchallenge 
1.AbsenceofastandardframeworkforevaluationinsocialIR. 
2.Collectsocialsignalsfrom5socialnetworksandmountexperimentation. 
1. Introduction 
2. RelatedWork 
5. Conclusion 
4.1 Experimental Evaluation 
3. Approach of SIR 
4. ExperimentalResults 
13
3.1 ProposedApproach 
•TextualContent:167438DocumentsfromINEXIMDb. 
4.2 Description of DataSet 
3. Approach of SIR 
4. ExperimentalResults 
14 
Field 
Description 
Status 
ID 
Identifying the film (document) 
- 
Title 
Film's title 
indexed 
Year 
Year of the film release 
indexed 
Rated 
Film classficationby content type 
- 
Released 
Date of making the film 
indexed 
Runtime 
Length of the film 
indexed 
Genre 
Film genre (Action, Drama, etc.) 
indexed 
Director 
Director of the film project 
indexed 
Writer 
Writers and writers of the film 
indexed 
Actors 
Main actors of the film 
indexed 
Plot 
Text summary of the film 
indexed 
Poster 
URL of the link poster 
- 
url 
URL of the Web source document 
- 
UGC 
Social data recovered 
- 
1. Introduction 
2. RelatedWork 
5. Conclusion
3.1 ProposedApproach 
•SocialContent:8socialdatafrom5socialnetworks. 
•QueryandRelevanceJudgment:fromINEXIMDb 
-30queries(topics)andtheirQrelsfromthesetofINEXIMDb. 
-Top1000documentsreturnedbyeachtopic. 
4.2 Description of DataSet 
3. Approach of SIR 
4. ExperimentalResults 
ACEBOOK 
Like 
Share 
Comment 
Date oflast action 
WITTER 
Tweet 
GOOGLE+ 
+1 
Share 
LINKED 
DELICIOUS 
Bookmark 
15 
1. Introduction 
2. RelatedWork 
5. Conclusion
3.1 ProposedApproach 
4.3 Quantifying of Social Properties 
3. Approach of SIR 
4. ExperimentalResults 
SocialProperties 
SocialSignals 
Social Networks 
Popularity P 
Numberof«Comment» 
C1 
Facebook 
Numberof «Tweet» 
C2 
Twitter 
Numberof «Share» 
C3 
LinkedIn 
Numberof «Share» 
C4 
Facebook 
Reputation R 
Numberof « Like» 
C5 
Google+ 
Numberof «+1» 
C6 
Facebook 
Numberof «Bookmark» 
C7 
Delicious 
Freshness F 
Dates oflastactions 
C8 
Facebook 
•Eachsocialpropertyisquantifiedbasedonsocialsignalsaccordingtotheirnatureandsignification. 
16 
1. Introduction 
2. RelatedWork 
5. Conclusion
0 
0,1 
0,2 
0,3 
0,4 
0,5 
0,6 
Like 
Share 
Comment 
Tweet 
Mention+1 
Bookmark 
Share(LIn) 
Resultsof individualintegrationof social signals 3.1 ProposedApproach 
4.4 Results: Single Priors and Combination Priors 
3. Approach of SIR 
4. ExperimentalResults 
Facebook signals 
17 
0 
0,1 
0,2 
0,3 
0,4 
0,5 
0,6 
0,7 
Popularity 
Reputation 
All Criteria 
All Properties 
Differentcombinationsof social signals(social properties) 
0 
0,1 
0,2 
0,3 
0,4 
0,5 
Lucene Solr 
ML.Hiemstra 
baselines (Topical Models) 
P@10 
P@20 
nDCG 
MAP 
1. Introduction 
2. RelatedWork 
5. Conclusion
3.1 ProposedApproach 
4.4 Results: Impact of the Freshness 
3. Approach of SIR 
4. ExperimentalResults 
18 
0 
0,1 
0,2 
0,3 
0,4 
0,5 
Lucene Solr 
ML.Hiemstra 
baselines (Topical Models) 
P@10 
P@20 
nDCG 
MAP 
0 
0,1 
0,2 
0,3 
0,4 
0,5 
0,6 
0,7 
Share 
Comment 
Share+Comment 
Popularity 
All Criteria 
All Properties 
Without Integration of Freshness 
0 
0,1 
0,2 
0,3 
0,4 
0,5 
0,6 
0,7 
Share 
Comment 
Share+Comment 
Popularity 
All Criteria 
All Properties 
WithIntegrationof Freshness 
F 
F 
F 
F 
F 
F 
F 
1. Introduction 
2. RelatedWork 
5. Conclusion
3.1 ProposedApproach 
4.5 Results: Feature Selection Algorithms Study 
3. Approach of SIR 
4. ExperimentalResults 
Table 1. SelectedSocial Signals WithAttributeSelectionAlgorithms 
---: Highly selected 
---: Moderately selected 
---: Lessfavored 
19 
1. Introduction 
2. RelatedWork 
5. Conclusion
3.1 ProposedApproach 
4.6 Results: Ranking Correlation Analysis 
3. Approach of SIR 
4. ExperimentalResults 
Fig 1.Spearman correlation between social signals and relevance 
Fig2.Spearman correlationbetweensocial propertiesand relevance 
20 
1. Introduction 
2. RelatedWork 
5. Conclusion
3.1 ProposedApproach 
4.6 Results: Ranking Correlation Analysis 
3. Approach of SIR 
4. ExperimentalResults 
Fig3.Spearman's Rho correlation values for the social signals pairs 
21 
Thesocialsignalspairs:(tweet,share(LIn)),(bookmark,Tweet)and(mention+1, bookmark)arehighlycorrelated,i.e.,thesimilarityscoresofthesepairsarehigherthan0.70 
bookmark, share(LIn) are the less important criteriafollowed by mention+1. 
1. Introduction 
2. RelatedWork 
5. Conclusion
3.1 ProposedApproach 
1. Introduction 
2. RelatedWork 
5. Conclusion 
5. Conclusion 
3. ProposedApproaches 
4. ExperimentalResults 
•Social Information Retrieval based on Language Model 
-Topical relevance (retrieval model based content only). 
-Social relevance (retrieval model based content and social features). 
•Experimental Evaluation 
-Superiority of proposed approach compared to textual models (baselines). 
-Positive ranking correlation between social signals and relevance. 
-Attribute selection algorithms. 
•Perspectives 
-Integration of other social features. 
-Further study on the impact of the temporal property. 
-Comparison of the proposed models with other social models. 
-Experimentalevaluationon other types of dataset. 
22
http://www.irit.fr/~Ismail.Badache/ 
Thank you @IIiX2014for travel support

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Social Priors to Estimate Relevance of a Resource

  • 1. Ismaïl BADACHE, Mohand BOUGHANEM IRIT, Toulouse University, France {badache, boughanem}@irit.fr
  • 2. PresentationPlan Introduction RelatedWork Approach of Social Information Retrieval ExperimentalResults 4 1 3 Conclusion 2 5
  • 3. 1.1 Emergence of social Web Numberof active users2013 1,2 1,4 1,7 2,4 2011 2012 2013 2014 Numberof Internet users Social content per 1 minute 41000 Publications 1,8 Million Like ~350 GB of Data Facebook Source: blogdumoderateur.com quantcast.com semiocast.com 1. Introduction 2. RelatedWork 5. Conclusion 3. Approach of SIR 4. ExperimentalResults 1
  • 4. Video Photo Web Page Web Resources Resource. . . Social Networks Bookmark Comment Share/Recommend Motion/Vote Like/+1 Interaction Extraction and quantification of social properties Information RetrievalModel (Ranking) IntegrationQueryResults Fig1. Global presentation of our work Social Signals (Source of Evidence) Popularity Reputation Freshness 2
  • 5. 1.2 Example of Social Signals 3 1. Introduction 2. RelatedWork 5. Conclusion 3. Approach of SIR 4. ExperimentalResults
  • 6. 1.3 Research Issues Whatarethemostusefulsignalsandpropertiestoevaluateapriorirelevance(importance)ofaresource? 2 Whattheoreticalmodeltocombineapriorirelevanceofresourcewithitstopicalrelevance? 3 What is the impact of social properties on IR system performance? 4 1 Howtotranslatesocialsignalsintosocialproperties? 4 Whatarethemostfavoredsignalsandpropertieswhileusingattributeselectionalgorithms?andwhatarethemostcorrelatedwithdocumentsrelevance? 5 1. Introduction 2. RelatedWork 5. Conclusion 3. Approach of SIR 4. ExperimentalResults
  • 7. 1. Introduction 2. RelatedWork 5. Conclusion 3. Approach of SIR 4. ExperimentalResults 2.1 Related Work 5 Sources ofevidence (Social Features) Properties Models Authors •Numberof:clicks,votes,recordsandrecommendations. Popularity Importance Linearcombination (Karweg et al., 2011) •Numberof:like,dislike,commentsonYouTube. •Theplaycount(numberoftimesauserlistenstoatrackonlastfm) •PresenceofaURLinatweet. Importance Machine learning and Linear combination (Chelaru et al., 2012) (Khodaei et al. 2012) (Alonso et al., 2010) •Numberofretweets. •Numberofannotations(tags). Popularity Machine learning (Yang et al., 2012) (Hong et al., 2011) (Pantelet al., 2012) •Socialapprovalvotes Importance Machine learning (Kazaiand Milic- Frayling.,2009)
  • 9. •WeassumethatresourceDcanberepresentedbothbyasetoftextualkey-words 퐷푤={푤1,푤2,…푤푛}andasetofsocialactions(signals)performedonthisresource,퐷푎={푎1,푎2,…푎푚}. •WeconsiderasetX={Popularity,Reputation,Freshness}of3socialpropertiesthatcharacterizearesourceD.Eachpropertyisquantifiedbyaspecificactionsgroup.Thesepropertiesareconsideredasaprioriknowledgeofaresource. 3.2 Social Signals and Social Properties Web Resource -Textual key-words -Social Signals -Like -+1 -Share -Comment -Dates of actions Web Resource -Textual key-words -Social Signals -Like -+1 -Share -Comment -Dates of actions Reputation Popularity Freshness 7 1. Introduction 2. RelatedWork 5. Conclusion 3. Approach of SIR 4. ExperimentalResults
  • 10. 3.1 ProposedApproach •Thelanguagemodellingapproachcomputestheprobability푃(퐷|푄)ofadocumentDbeinggeneratedbyaqueryQbyusingtheBayestheorem: •푃(퐷)isadocumentpriorprobability.Itisusefulforincorporatingothersourcesofinformationtotheretrievalprocess. •푃(푄)canbeignoredbecauseitdoesnotaffecttherankingofdocuments. 3.3 Query Likelihood and Document Priors (1) (2) 8 푆푐표푟푒푄,퐷=푃퐷푄= 푃(퐷)∙푃(푄|퐷) 푃(푄) 푆푐표푟푒푄,퐷=푃퐷푄=푷푫∙푃(푄|퐷) Document Prior Probability Query-Likelihood Score 1. Introduction 2. RelatedWork 5. Conclusion 3. Approach of SIR 4. ExperimentalResults
  • 11. 3.1 ProposedApproach •PopularityP:Theresourcepopularitycanbeestimatedaccordingtotherateofsharingthisresourceonsocialnetworks. •ReputationR:TheresourcereputationcanbeestimatedbasedonsocialactivitiesthathavepositivemeaningsuchasFacebooklike.Indeed,resourcereputationdependsonthedegreeofusers'appreciationonsocialnetworks. Thegeneralformulaisthefollowing: Where: 3.4 Estimating Priors: Popularity and Reputation 푃푥푎푖 푥= 퐶표푢푛푡(푎푖 푥,퐷) 퐶표푢푛푡(푎. 푥,퐷) (3) (4) 9 푃푥퐷= 푎푖 푥∈퐴 푃푥푎푖 푥 1. Introduction 2. RelatedWork 5. Conclusion 3. Approach of SIR 4. ExperimentalResults
  • 12. 3.1 ProposedApproach •ToavoidZeroprobability,wesmooth푃푥푎푖 푥bycollectionCusingDirichlet. Theformulabecomesasfollows: Where: •퐶표푢푛푡푎풊 푥,퐷representsnumberofoccurrenceofspecificaction푎푖 푥performedonaresource. •푎푖 푥designsaction푎푖usedtomeasureaproperty푥.푎. 푥isthetotalnumberofsocialsignalsassociatedtoproperty푥,indocumentsDorincollectionC. 3.5 Estimating Priors: Popularity Pand Reputation R (5) (6) 10 푃푥퐷= 푎푖 푥∈퐴 퐶표푢푛푡푎푖 푥,퐷+휇∙푃(푎푖 푥|퐶) 퐶표푢푛푡푎∙ 푥,퐷+휇 푃(푎푖 푥|퐶)= 퐶표푢푛푡(푎푖 푥,퐶) 퐶표푢푛푡(푎. 푥,퐶) 1. Introduction 2. RelatedWork 5. Conclusion 3. Approach of SIR 4. ExperimentalResults
  • 13. 3.1 ProposedApproach •Inadditiontosimplecountingofsocialactions,weproposetoconsiderthetimeassociatedwithsignal.Weassumethattheresourceassociatedwithfreshsignalsshouldbepromotedcomparingtothoseassociatedwitholdsignals.Therefore, insteadofcountingeachoccurrenceofagivensignal,webiasthiscounting, noted퐶표푢푛푡퐵,bythedateoftheoccurrenceofthesignal.Thecorrespondingformulaisasfollows: •푇푎푖={푡1,푎푖,푡2,푎푖,…푡푘,푎푖}asetofkdatetimeatwhicheachaction푎푖wasproduced. •푓퐹(푡푗,푎푖 푥,퐷)representsfreshnessfunction,estimatedbyusingGaussianKernel,itcalculatesadistancebetweencurrenttime푡푐푢푟푟푒푛푡andactiontime푡푗,푎푖 푥 3.6 Estimating Priors with considering Freshness F 퐶표푢푛푡퐵푡푗,푎푖 푥,퐷= 푗=1 푘 푓퐹(푡푗,푎푖 푥,퐷) = 푗=1 푘 푒푥푝− ‖푡푐푢푟푟푒푛푡−푡푗,푎푖 푥‖22휎2 (7) 11 1. Introduction 2. RelatedWork 5. Conclusion 3. Approach of SIR 4. ExperimentalResults
  • 14. 3.1 ProposedApproach •Inourcase,wehavevarioussourcesofsocialinformationthatinfluencestheaprioriprobabilityofrelevance.Thisprobabilityiscalculatedbycombiningtwomainsocialproperties(popularityandreputation).Theproblemcanbeformalizedasfollows: •푃푃퐷,푃푅(퐷)defineaprioriprobabilitiesrelatedtopopularityPandreputationRthatincludefreshnessfunction. •푃푃⊕푅퐷definestheprobabilityofpriorscombination. 3.7 Combining Priors (8) 12 푃푃⊕푅퐷=푃푃(퐷)∙푃푅(퐷) 1. Introduction 2. RelatedWork 5. Conclusion 3. Approach of SIR 4. ExperimentalResults
  • 15. 3.1 ProposedApproach •Objectives 1.First,toevaluatewhethersocialsignals,takenfromdifferentsocialnetworksimprovethesearch. 2.Second,toevaluatetheimpactofeachsignaltakenseparatelyandgroupedtorepresentacertainproperty. 3.andfinallytomeasuretheimpactofthefreshness. •Evaluationchallenge 1.AbsenceofastandardframeworkforevaluationinsocialIR. 2.Collectsocialsignalsfrom5socialnetworksandmountexperimentation. 1. Introduction 2. RelatedWork 5. Conclusion 4.1 Experimental Evaluation 3. Approach of SIR 4. ExperimentalResults 13
  • 16. 3.1 ProposedApproach •TextualContent:167438DocumentsfromINEXIMDb. 4.2 Description of DataSet 3. Approach of SIR 4. ExperimentalResults 14 Field Description Status ID Identifying the film (document) - Title Film's title indexed Year Year of the film release indexed Rated Film classficationby content type - Released Date of making the film indexed Runtime Length of the film indexed Genre Film genre (Action, Drama, etc.) indexed Director Director of the film project indexed Writer Writers and writers of the film indexed Actors Main actors of the film indexed Plot Text summary of the film indexed Poster URL of the link poster - url URL of the Web source document - UGC Social data recovered - 1. Introduction 2. RelatedWork 5. Conclusion
  • 17. 3.1 ProposedApproach •SocialContent:8socialdatafrom5socialnetworks. •QueryandRelevanceJudgment:fromINEXIMDb -30queries(topics)andtheirQrelsfromthesetofINEXIMDb. -Top1000documentsreturnedbyeachtopic. 4.2 Description of DataSet 3. Approach of SIR 4. ExperimentalResults ACEBOOK Like Share Comment Date oflast action WITTER Tweet GOOGLE+ +1 Share LINKED DELICIOUS Bookmark 15 1. Introduction 2. RelatedWork 5. Conclusion
  • 18. 3.1 ProposedApproach 4.3 Quantifying of Social Properties 3. Approach of SIR 4. ExperimentalResults SocialProperties SocialSignals Social Networks Popularity P Numberof«Comment» C1 Facebook Numberof «Tweet» C2 Twitter Numberof «Share» C3 LinkedIn Numberof «Share» C4 Facebook Reputation R Numberof « Like» C5 Google+ Numberof «+1» C6 Facebook Numberof «Bookmark» C7 Delicious Freshness F Dates oflastactions C8 Facebook •Eachsocialpropertyisquantifiedbasedonsocialsignalsaccordingtotheirnatureandsignification. 16 1. Introduction 2. RelatedWork 5. Conclusion
  • 19. 0 0,1 0,2 0,3 0,4 0,5 0,6 Like Share Comment Tweet Mention+1 Bookmark Share(LIn) Resultsof individualintegrationof social signals 3.1 ProposedApproach 4.4 Results: Single Priors and Combination Priors 3. Approach of SIR 4. ExperimentalResults Facebook signals 17 0 0,1 0,2 0,3 0,4 0,5 0,6 0,7 Popularity Reputation All Criteria All Properties Differentcombinationsof social signals(social properties) 0 0,1 0,2 0,3 0,4 0,5 Lucene Solr ML.Hiemstra baselines (Topical Models) P@10 P@20 nDCG MAP 1. Introduction 2. RelatedWork 5. Conclusion
  • 20. 3.1 ProposedApproach 4.4 Results: Impact of the Freshness 3. Approach of SIR 4. ExperimentalResults 18 0 0,1 0,2 0,3 0,4 0,5 Lucene Solr ML.Hiemstra baselines (Topical Models) P@10 P@20 nDCG MAP 0 0,1 0,2 0,3 0,4 0,5 0,6 0,7 Share Comment Share+Comment Popularity All Criteria All Properties Without Integration of Freshness 0 0,1 0,2 0,3 0,4 0,5 0,6 0,7 Share Comment Share+Comment Popularity All Criteria All Properties WithIntegrationof Freshness F F F F F F F 1. Introduction 2. RelatedWork 5. Conclusion
  • 21. 3.1 ProposedApproach 4.5 Results: Feature Selection Algorithms Study 3. Approach of SIR 4. ExperimentalResults Table 1. SelectedSocial Signals WithAttributeSelectionAlgorithms ---: Highly selected ---: Moderately selected ---: Lessfavored 19 1. Introduction 2. RelatedWork 5. Conclusion
  • 22. 3.1 ProposedApproach 4.6 Results: Ranking Correlation Analysis 3. Approach of SIR 4. ExperimentalResults Fig 1.Spearman correlation between social signals and relevance Fig2.Spearman correlationbetweensocial propertiesand relevance 20 1. Introduction 2. RelatedWork 5. Conclusion
  • 23. 3.1 ProposedApproach 4.6 Results: Ranking Correlation Analysis 3. Approach of SIR 4. ExperimentalResults Fig3.Spearman's Rho correlation values for the social signals pairs 21 Thesocialsignalspairs:(tweet,share(LIn)),(bookmark,Tweet)and(mention+1, bookmark)arehighlycorrelated,i.e.,thesimilarityscoresofthesepairsarehigherthan0.70 bookmark, share(LIn) are the less important criteriafollowed by mention+1. 1. Introduction 2. RelatedWork 5. Conclusion
  • 24. 3.1 ProposedApproach 1. Introduction 2. RelatedWork 5. Conclusion 5. Conclusion 3. ProposedApproaches 4. ExperimentalResults •Social Information Retrieval based on Language Model -Topical relevance (retrieval model based content only). -Social relevance (retrieval model based content and social features). •Experimental Evaluation -Superiority of proposed approach compared to textual models (baselines). -Positive ranking correlation between social signals and relevance. -Attribute selection algorithms. •Perspectives -Integration of other social features. -Further study on the impact of the temporal property. -Comparison of the proposed models with other social models. -Experimentalevaluationon other types of dataset. 22
  • 25. http://www.irit.fr/~Ismail.Badache/ Thank you @IIiX2014for travel support