SlideShare a Scribd company logo
The Conclusion for  SIGIR 2011 Zhejiang Univ CCNT Yueshen XU
目录 IR 领域的思考 1 IR 领域中知名学者与研究机构  2 会议本身的体验 3 由 SIGIR 想到的其他会议 4
从 SIGIR 看当今 IR 领域的组成 Learning to Rank, Query Analysis Personalization, Retrieval Model Web IR, Image Search, Index Recommender System, Multimedia IR Vertical & Entity Research Communities, Social Media Offer Methods: CF, Classification, Clustering  SIGIR/IR Traditional IR DM NLP&TM Common Latent Semantic Analysis Content Analysis, Sentiment Analysis Linguistic Analysis Multilingual IR  Text Summarization Effectiveness, Efficiency
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],当今 IR 的领域组成 Traditional IR DM New Topic ,[object Object],[object Object],[object Object],[object Object],[object Object],TM&NLP ,[object Object],[object Object],Common Field Topic Point
以后怎么找点,解决问题呢 IR Learning  to Rank Ranking Adaption Gradient Boosted Tree IR Retrieval Model Pseudo -Relevance Feedback Boosting Approach Field Topic Point Method Field From Papers Field From Papers
想出的一点研究层次 Research Levels Point Topic Field Discipline ,[object Object],[object Object],[object Object],[object Object],Discipline Field Topic Point ,[object Object],[object Object],[object Object],[object Object]
由 SIGIR 形成对 IR 的基本认识 Application System Demo Deployment etc. Methodology Problem Relevance Feedback Ranking Adaption Active Query etc. Object of Research in IR Algorithm Mathematic Strategy what we should concern about what  those companies  are interested in obtain from  those papers
对 IR 中方法论的认识 Method-logy Algorithm Mathe -matic Strategy Mathe -matic Data Structure ! Index etc. Text Semantic Analysis etc. Probability Model, CF, Clustering, Classification etc.------prevail Architecture, Procedure,-------informal method, associating with corporations and application
从 SIGIR 中的 session 看 problem Data Close to DM Medium Text, Image, Multimedia Inherence Data Structure is vital. Other deployment, linguistic etc. What should we model and research? Probability Model CF Clustering Classification  Text Mining, Content Analysis Social Media Text Summarization Sentiment Analysis Ranking Query Index Retrieval Model Image Search Vertical & Entity Search Interested in by companies
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],从评估与实验中看标准化 Ranking Relevance Web/Log  Collections Assess with Classical Indicator Test with Standard Data Set ,[object Object],[object Object],Fee!
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],从普通大学的表现看团队的重要性 ,[object Object]
目录 IR 领域的思考 1 IR 领域中知名学者与研究机构  2 会议本身的体验 3 由 SIGIR 想到的其他会议 4
本次会议中的知名华人学者 ( 部分 ) Rong Jin MSU  Tutorials invited speaker Statistical learning etc. Luo Si Purdue Univ Tutorials invited speaker Intelligent tutoring, text mining for life science etc. Chengxiang Zhai   UIUC Keynote invited speaker Text Mining, Machine Learning etc. Tie-Yan Liu MSRA Session Chair & Workshop chair Learning to rank, Large-scale graph learning etc.
本次会议中的知名国外学者 ( 部分 ) W.Bruce Croft  UMA Program Co-chair Session chair Workshop chair  Salton Award Stephen Robertson MS and London City Univ Salton Award Susan Dumais MS Outstanding paper award chair Salton Award Paul B. Kantor Rutgers University Tutorial invited speaker Distinguished professor of Information Science  (Wikipedia)
IR 领域中知名的研究机构 ,[object Object],[object Object],[object Object],[object Object],Universities and Research Labs ,[object Object],[object Object]
目录 IR 领域的思考 1 IR 领域中知名学者与研究机构  2 会议本身的体验 3 由 SIGIR 想到的其他会议 4
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],知晓了会议的各个组成部分
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],英语的重要性 ,[object Object]
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],身体的重要性 ,[object Object]
目录 IR 领域的思考 1 IR 领域中知名学者与研究机构  2 会议本身的体验 3 由 SIGIR 想到的其他会议 4
[object Object],[object Object],[object Object],由 SIGIR 想到的其他会议 SIGKDD DM & IR ICDM ,[object Object],[object Object],[object Object]
[object Object],[object Object],[object Object],由 SIGIR 想到的其他会议 CIKM DM & IR WSDM ,[object Object],[object Object],[object Object]
[object Object],[object Object],[object Object],由 SIGIR 想到的其他会议 WWW DM & IR PAKDD ,[object Object],[object Object],[object Object],TREC?  ISWC MLDM  ICDE PKDD etc.
总结与展望 ,[object Object],[object Object],[object Object]

More Related Content

Similar to The Conclusion for sigir 2011

Simons orcid forum canberra 2018-PIDs in research
Simons orcid forum canberra 2018-PIDs in researchSimons orcid forum canberra 2018-PIDs in research
Simons orcid forum canberra 2018-PIDs in research
ARDC
 
Application and Methods of Deep Learning in IoT
Application and Methods of Deep Learning in IoTApplication and Methods of Deep Learning in IoT
Application and Methods of Deep Learning in IoT
IJAEMSJORNAL
 
Deep Learning for Recommender Systems
Deep Learning for Recommender SystemsDeep Learning for Recommender Systems
Deep Learning for Recommender Systems
Marcel Kurovski
 
Deep Learning for Recommender Systems
Deep Learning for Recommender SystemsDeep Learning for Recommender Systems
Deep Learning for Recommender Systems
inovex GmbH
 
Organisering av digitale prosjekt: Hva har IT-bransjen lært om store prosjekter?
Organisering av digitale prosjekt: Hva har IT-bransjen lært om store prosjekter?Organisering av digitale prosjekt: Hva har IT-bransjen lært om store prosjekter?
Organisering av digitale prosjekt: Hva har IT-bransjen lært om store prosjekter?
Torgeir Dingsøyr
 
Principles for proper data management and reuse--An RDA view
Principles for proper data management and reuse--An RDA viewPrinciples for proper data management and reuse--An RDA view
Principles for proper data management and reuse--An RDA view
Research Data Alliance
 
Machine Learned Relevance at A Large Scale Search Engine
Machine Learned Relevance at A Large Scale Search EngineMachine Learned Relevance at A Large Scale Search Engine
Machine Learned Relevance at A Large Scale Search EngineSalford Systems
 
OntoSoft: A Distributed Semantic Registry for Scientific Software
OntoSoft: A Distributed Semantic Registry for Scientific SoftwareOntoSoft: A Distributed Semantic Registry for Scientific Software
OntoSoft: A Distributed Semantic Registry for Scientific Software
dgarijo
 
Sistemas de Recomendação sem Enrolação
Sistemas de Recomendação sem Enrolação Sistemas de Recomendação sem Enrolação
Sistemas de Recomendação sem Enrolação
Gabriel Moreira
 
Slide 26 sept2017v2
Slide 26 sept2017v2Slide 26 sept2017v2
Slide 26 sept2017v2
Faizura Haneem
 
Deep learning nowpublishing-vol7-sig-039
Deep learning nowpublishing-vol7-sig-039Deep learning nowpublishing-vol7-sig-039
Deep learning nowpublishing-vol7-sig-039Hari Om Atul
 
Introduction to Data Analytics and data analytics life cycle
Introduction to Data Analytics and data analytics life cycleIntroduction to Data Analytics and data analytics life cycle
Introduction to Data Analytics and data analytics life cycle
Dr. Radhey Shyam
 
8 minute intro to data science
8 minute intro to data science 8 minute intro to data science
8 minute intro to data science
Mahesh Kumar CV
 
Projection Multi Scale Hashing Keyword Search in Multidimensional Datasets
Projection Multi Scale Hashing Keyword Search in Multidimensional DatasetsProjection Multi Scale Hashing Keyword Search in Multidimensional Datasets
Projection Multi Scale Hashing Keyword Search in Multidimensional Datasets
IRJET Journal
 
Fundamentals of data mining and its applications
Fundamentals of data mining and its applicationsFundamentals of data mining and its applications
Fundamentals of data mining and its applicationsSubrat Swain
 
A Complete Analysis of Human Action Recognition Procedures
A Complete Analysis of Human Action Recognition ProceduresA Complete Analysis of Human Action Recognition Procedures
A Complete Analysis of Human Action Recognition Procedures
ijtsrd
 
ai_ml aicet internship report ppt 1.pptx
ai_ml aicet internship report ppt 1.pptxai_ml aicet internship report ppt 1.pptx
ai_ml aicet internship report ppt 1.pptx
SravyaSathi
 
MSc Dissertation 11058374 Final
MSc Dissertation 11058374 FinalMSc Dissertation 11058374 Final
MSc Dissertation 11058374 FinalJohn Dunne
 
KIT-601 Lecture Notes-UNIT-1.pdf
KIT-601 Lecture Notes-UNIT-1.pdfKIT-601 Lecture Notes-UNIT-1.pdf
KIT-601 Lecture Notes-UNIT-1.pdf
Dr. Radhey Shyam
 
KIT-601-L-UNIT-1 (Revised) Introduction to Data Analytcs.pdf
KIT-601-L-UNIT-1 (Revised) Introduction to Data Analytcs.pdfKIT-601-L-UNIT-1 (Revised) Introduction to Data Analytcs.pdf
KIT-601-L-UNIT-1 (Revised) Introduction to Data Analytcs.pdf
Dr. Radhey Shyam
 

Similar to The Conclusion for sigir 2011 (20)

Simons orcid forum canberra 2018-PIDs in research
Simons orcid forum canberra 2018-PIDs in researchSimons orcid forum canberra 2018-PIDs in research
Simons orcid forum canberra 2018-PIDs in research
 
Application and Methods of Deep Learning in IoT
Application and Methods of Deep Learning in IoTApplication and Methods of Deep Learning in IoT
Application and Methods of Deep Learning in IoT
 
Deep Learning for Recommender Systems
Deep Learning for Recommender SystemsDeep Learning for Recommender Systems
Deep Learning for Recommender Systems
 
Deep Learning for Recommender Systems
Deep Learning for Recommender SystemsDeep Learning for Recommender Systems
Deep Learning for Recommender Systems
 
Organisering av digitale prosjekt: Hva har IT-bransjen lært om store prosjekter?
Organisering av digitale prosjekt: Hva har IT-bransjen lært om store prosjekter?Organisering av digitale prosjekt: Hva har IT-bransjen lært om store prosjekter?
Organisering av digitale prosjekt: Hva har IT-bransjen lært om store prosjekter?
 
Principles for proper data management and reuse--An RDA view
Principles for proper data management and reuse--An RDA viewPrinciples for proper data management and reuse--An RDA view
Principles for proper data management and reuse--An RDA view
 
Machine Learned Relevance at A Large Scale Search Engine
Machine Learned Relevance at A Large Scale Search EngineMachine Learned Relevance at A Large Scale Search Engine
Machine Learned Relevance at A Large Scale Search Engine
 
OntoSoft: A Distributed Semantic Registry for Scientific Software
OntoSoft: A Distributed Semantic Registry for Scientific SoftwareOntoSoft: A Distributed Semantic Registry for Scientific Software
OntoSoft: A Distributed Semantic Registry for Scientific Software
 
Sistemas de Recomendação sem Enrolação
Sistemas de Recomendação sem Enrolação Sistemas de Recomendação sem Enrolação
Sistemas de Recomendação sem Enrolação
 
Slide 26 sept2017v2
Slide 26 sept2017v2Slide 26 sept2017v2
Slide 26 sept2017v2
 
Deep learning nowpublishing-vol7-sig-039
Deep learning nowpublishing-vol7-sig-039Deep learning nowpublishing-vol7-sig-039
Deep learning nowpublishing-vol7-sig-039
 
Introduction to Data Analytics and data analytics life cycle
Introduction to Data Analytics and data analytics life cycleIntroduction to Data Analytics and data analytics life cycle
Introduction to Data Analytics and data analytics life cycle
 
8 minute intro to data science
8 minute intro to data science 8 minute intro to data science
8 minute intro to data science
 
Projection Multi Scale Hashing Keyword Search in Multidimensional Datasets
Projection Multi Scale Hashing Keyword Search in Multidimensional DatasetsProjection Multi Scale Hashing Keyword Search in Multidimensional Datasets
Projection Multi Scale Hashing Keyword Search in Multidimensional Datasets
 
Fundamentals of data mining and its applications
Fundamentals of data mining and its applicationsFundamentals of data mining and its applications
Fundamentals of data mining and its applications
 
A Complete Analysis of Human Action Recognition Procedures
A Complete Analysis of Human Action Recognition ProceduresA Complete Analysis of Human Action Recognition Procedures
A Complete Analysis of Human Action Recognition Procedures
 
ai_ml aicet internship report ppt 1.pptx
ai_ml aicet internship report ppt 1.pptxai_ml aicet internship report ppt 1.pptx
ai_ml aicet internship report ppt 1.pptx
 
MSc Dissertation 11058374 Final
MSc Dissertation 11058374 FinalMSc Dissertation 11058374 Final
MSc Dissertation 11058374 Final
 
KIT-601 Lecture Notes-UNIT-1.pdf
KIT-601 Lecture Notes-UNIT-1.pdfKIT-601 Lecture Notes-UNIT-1.pdf
KIT-601 Lecture Notes-UNIT-1.pdf
 
KIT-601-L-UNIT-1 (Revised) Introduction to Data Analytcs.pdf
KIT-601-L-UNIT-1 (Revised) Introduction to Data Analytcs.pdfKIT-601-L-UNIT-1 (Revised) Introduction to Data Analytcs.pdf
KIT-601-L-UNIT-1 (Revised) Introduction to Data Analytcs.pdf
 

More from Yueshen Xu

Context aware service recommendation
Context aware service recommendationContext aware service recommendation
Context aware service recommendation
Yueshen Xu
 
Course review for ir class 本科课件
Course review for ir class 本科课件Course review for ir class 本科课件
Course review for ir class 本科课件
Yueshen Xu
 
Semantic web 本科课件
Semantic web 本科课件Semantic web 本科课件
Semantic web 本科课件
Yueshen Xu
 
Recommender system slides for undergraduate
Recommender system slides for undergraduateRecommender system slides for undergraduate
Recommender system slides for undergraduate
Yueshen Xu
 
推荐系统 本科课件
 推荐系统 本科课件 推荐系统 本科课件
推荐系统 本科课件
Yueshen Xu
 
Text classification 本科课件
Text classification 本科课件Text classification 本科课件
Text classification 本科课件
Yueshen Xu
 
Thinking in clustering yueshen xu
Thinking in clustering yueshen xuThinking in clustering yueshen xu
Thinking in clustering yueshen xu
Yueshen Xu
 
Text clustering (information retrieval, in chinese)
Text clustering (information retrieval, in chinese)Text clustering (information retrieval, in chinese)
Text clustering (information retrieval, in chinese)
Yueshen Xu
 
(Hierarchical) topic modeling
(Hierarchical) topic modeling (Hierarchical) topic modeling
(Hierarchical) topic modeling
Yueshen Xu
 
Non parametric bayesian learning in discrete data
Non parametric bayesian learning in discrete dataNon parametric bayesian learning in discrete data
Non parametric bayesian learning in discrete data
Yueshen Xu
 
聚类 (Clustering)
聚类 (Clustering)聚类 (Clustering)
聚类 (Clustering)
Yueshen Xu
 
Learning to recommend with user generated content
Learning to recommend with user generated contentLearning to recommend with user generated content
Learning to recommend with user generated content
Yueshen Xu
 
Social recommender system
Social recommender systemSocial recommender system
Social recommender system
Yueshen Xu
 
Summary on the Conference of WISE 2013
Summary on the Conference of WISE 2013Summary on the Conference of WISE 2013
Summary on the Conference of WISE 2013
Yueshen Xu
 
Topic model an introduction
Topic model an introductionTopic model an introduction
Topic model an introduction
Yueshen Xu
 
Acoustic modeling using deep belief networks
Acoustic modeling using deep belief networksAcoustic modeling using deep belief networks
Acoustic modeling using deep belief networks
Yueshen Xu
 
Summarization for dragon star program
Summarization for dragon  star programSummarization for dragon  star program
Summarization for dragon star programYueshen Xu
 
Aggregation computation over distributed data streams
Aggregation computation over distributed data streamsAggregation computation over distributed data streams
Aggregation computation over distributed data streams
Yueshen Xu
 
Simple conclusion for sap tech ed 2011
Simple conclusion for sap tech ed 2011Simple conclusion for sap tech ed 2011
Simple conclusion for sap tech ed 2011
Yueshen Xu
 
Stream data mining & CluStream framework
Stream data mining & CluStream frameworkStream data mining & CluStream framework
Stream data mining & CluStream framework
Yueshen Xu
 

More from Yueshen Xu (20)

Context aware service recommendation
Context aware service recommendationContext aware service recommendation
Context aware service recommendation
 
Course review for ir class 本科课件
Course review for ir class 本科课件Course review for ir class 本科课件
Course review for ir class 本科课件
 
Semantic web 本科课件
Semantic web 本科课件Semantic web 本科课件
Semantic web 本科课件
 
Recommender system slides for undergraduate
Recommender system slides for undergraduateRecommender system slides for undergraduate
Recommender system slides for undergraduate
 
推荐系统 本科课件
 推荐系统 本科课件 推荐系统 本科课件
推荐系统 本科课件
 
Text classification 本科课件
Text classification 本科课件Text classification 本科课件
Text classification 本科课件
 
Thinking in clustering yueshen xu
Thinking in clustering yueshen xuThinking in clustering yueshen xu
Thinking in clustering yueshen xu
 
Text clustering (information retrieval, in chinese)
Text clustering (information retrieval, in chinese)Text clustering (information retrieval, in chinese)
Text clustering (information retrieval, in chinese)
 
(Hierarchical) topic modeling
(Hierarchical) topic modeling (Hierarchical) topic modeling
(Hierarchical) topic modeling
 
Non parametric bayesian learning in discrete data
Non parametric bayesian learning in discrete dataNon parametric bayesian learning in discrete data
Non parametric bayesian learning in discrete data
 
聚类 (Clustering)
聚类 (Clustering)聚类 (Clustering)
聚类 (Clustering)
 
Learning to recommend with user generated content
Learning to recommend with user generated contentLearning to recommend with user generated content
Learning to recommend with user generated content
 
Social recommender system
Social recommender systemSocial recommender system
Social recommender system
 
Summary on the Conference of WISE 2013
Summary on the Conference of WISE 2013Summary on the Conference of WISE 2013
Summary on the Conference of WISE 2013
 
Topic model an introduction
Topic model an introductionTopic model an introduction
Topic model an introduction
 
Acoustic modeling using deep belief networks
Acoustic modeling using deep belief networksAcoustic modeling using deep belief networks
Acoustic modeling using deep belief networks
 
Summarization for dragon star program
Summarization for dragon  star programSummarization for dragon  star program
Summarization for dragon star program
 
Aggregation computation over distributed data streams
Aggregation computation over distributed data streamsAggregation computation over distributed data streams
Aggregation computation over distributed data streams
 
Simple conclusion for sap tech ed 2011
Simple conclusion for sap tech ed 2011Simple conclusion for sap tech ed 2011
Simple conclusion for sap tech ed 2011
 
Stream data mining & CluStream framework
Stream data mining & CluStream frameworkStream data mining & CluStream framework
Stream data mining & CluStream framework
 

Recently uploaded

Thesis Statement for students diagnonsed withADHD.ppt
Thesis Statement for students diagnonsed withADHD.pptThesis Statement for students diagnonsed withADHD.ppt
Thesis Statement for students diagnonsed withADHD.ppt
EverAndrsGuerraGuerr
 
"Protectable subject matters, Protection in biotechnology, Protection of othe...
"Protectable subject matters, Protection in biotechnology, Protection of othe..."Protectable subject matters, Protection in biotechnology, Protection of othe...
"Protectable subject matters, Protection in biotechnology, Protection of othe...
SACHIN R KONDAGURI
 
The geography of Taylor Swift - some ideas
The geography of Taylor Swift - some ideasThe geography of Taylor Swift - some ideas
The geography of Taylor Swift - some ideas
GeoBlogs
 
Overview on Edible Vaccine: Pros & Cons with Mechanism
Overview on Edible Vaccine: Pros & Cons with MechanismOverview on Edible Vaccine: Pros & Cons with Mechanism
Overview on Edible Vaccine: Pros & Cons with Mechanism
DeeptiGupta154
 
Guidance_and_Counselling.pdf B.Ed. 4th Semester
Guidance_and_Counselling.pdf B.Ed. 4th SemesterGuidance_and_Counselling.pdf B.Ed. 4th Semester
Guidance_and_Counselling.pdf B.Ed. 4th Semester
Atul Kumar Singh
 
Chapter 3 - Islamic Banking Products and Services.pptx
Chapter 3 - Islamic Banking Products and Services.pptxChapter 3 - Islamic Banking Products and Services.pptx
Chapter 3 - Islamic Banking Products and Services.pptx
Mohd Adib Abd Muin, Senior Lecturer at Universiti Utara Malaysia
 
Biological Screening of Herbal Drugs in detailed.
Biological Screening of Herbal Drugs in detailed.Biological Screening of Herbal Drugs in detailed.
Biological Screening of Herbal Drugs in detailed.
Ashokrao Mane college of Pharmacy Peth-Vadgaon
 
aaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaa
aaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaa
aaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaa
siemaillard
 
Introduction to AI for Nonprofits with Tapp Network
Introduction to AI for Nonprofits with Tapp NetworkIntroduction to AI for Nonprofits with Tapp Network
Introduction to AI for Nonprofits with Tapp Network
TechSoup
 
How to Make a Field invisible in Odoo 17
How to Make a Field invisible in Odoo 17How to Make a Field invisible in Odoo 17
How to Make a Field invisible in Odoo 17
Celine George
 
Instructions for Submissions thorugh G- Classroom.pptx
Instructions for Submissions thorugh G- Classroom.pptxInstructions for Submissions thorugh G- Classroom.pptx
Instructions for Submissions thorugh G- Classroom.pptx
Jheel Barad
 
Polish students' mobility in the Czech Republic
Polish students' mobility in the Czech RepublicPolish students' mobility in the Czech Republic
Polish students' mobility in the Czech Republic
Anna Sz.
 
Home assignment II on Spectroscopy 2024 Answers.pdf
Home assignment II on Spectroscopy 2024 Answers.pdfHome assignment II on Spectroscopy 2024 Answers.pdf
Home assignment II on Spectroscopy 2024 Answers.pdf
Tamralipta Mahavidyalaya
 
Phrasal Verbs.XXXXXXXXXXXXXXXXXXXXXXXXXX
Phrasal Verbs.XXXXXXXXXXXXXXXXXXXXXXXXXXPhrasal Verbs.XXXXXXXXXXXXXXXXXXXXXXXXXX
Phrasal Verbs.XXXXXXXXXXXXXXXXXXXXXXXXXX
MIRIAMSALINAS13
 
Supporting (UKRI) OA monographs at Salford.pptx
Supporting (UKRI) OA monographs at Salford.pptxSupporting (UKRI) OA monographs at Salford.pptx
Supporting (UKRI) OA monographs at Salford.pptx
Jisc
 
The Accursed House by Émile Gaboriau.pptx
The Accursed House by Émile Gaboriau.pptxThe Accursed House by Émile Gaboriau.pptx
The Accursed House by Émile Gaboriau.pptx
DhatriParmar
 
Synthetic Fiber Construction in lab .pptx
Synthetic Fiber Construction in lab .pptxSynthetic Fiber Construction in lab .pptx
Synthetic Fiber Construction in lab .pptx
Pavel ( NSTU)
 
The Challenger.pdf DNHS Official Publication
The Challenger.pdf DNHS Official PublicationThe Challenger.pdf DNHS Official Publication
The Challenger.pdf DNHS Official Publication
Delapenabediema
 
Unit 8 - Information and Communication Technology (Paper I).pdf
Unit 8 - Information and Communication Technology (Paper I).pdfUnit 8 - Information and Communication Technology (Paper I).pdf
Unit 8 - Information and Communication Technology (Paper I).pdf
Thiyagu K
 
Digital Tools and AI for Teaching Learning and Research
Digital Tools and AI for Teaching Learning and ResearchDigital Tools and AI for Teaching Learning and Research
Digital Tools and AI for Teaching Learning and Research
Vikramjit Singh
 

Recently uploaded (20)

Thesis Statement for students diagnonsed withADHD.ppt
Thesis Statement for students diagnonsed withADHD.pptThesis Statement for students diagnonsed withADHD.ppt
Thesis Statement for students diagnonsed withADHD.ppt
 
"Protectable subject matters, Protection in biotechnology, Protection of othe...
"Protectable subject matters, Protection in biotechnology, Protection of othe..."Protectable subject matters, Protection in biotechnology, Protection of othe...
"Protectable subject matters, Protection in biotechnology, Protection of othe...
 
The geography of Taylor Swift - some ideas
The geography of Taylor Swift - some ideasThe geography of Taylor Swift - some ideas
The geography of Taylor Swift - some ideas
 
Overview on Edible Vaccine: Pros & Cons with Mechanism
Overview on Edible Vaccine: Pros & Cons with MechanismOverview on Edible Vaccine: Pros & Cons with Mechanism
Overview on Edible Vaccine: Pros & Cons with Mechanism
 
Guidance_and_Counselling.pdf B.Ed. 4th Semester
Guidance_and_Counselling.pdf B.Ed. 4th SemesterGuidance_and_Counselling.pdf B.Ed. 4th Semester
Guidance_and_Counselling.pdf B.Ed. 4th Semester
 
Chapter 3 - Islamic Banking Products and Services.pptx
Chapter 3 - Islamic Banking Products and Services.pptxChapter 3 - Islamic Banking Products and Services.pptx
Chapter 3 - Islamic Banking Products and Services.pptx
 
Biological Screening of Herbal Drugs in detailed.
Biological Screening of Herbal Drugs in detailed.Biological Screening of Herbal Drugs in detailed.
Biological Screening of Herbal Drugs in detailed.
 
aaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaa
aaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaa
aaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaa
 
Introduction to AI for Nonprofits with Tapp Network
Introduction to AI for Nonprofits with Tapp NetworkIntroduction to AI for Nonprofits with Tapp Network
Introduction to AI for Nonprofits with Tapp Network
 
How to Make a Field invisible in Odoo 17
How to Make a Field invisible in Odoo 17How to Make a Field invisible in Odoo 17
How to Make a Field invisible in Odoo 17
 
Instructions for Submissions thorugh G- Classroom.pptx
Instructions for Submissions thorugh G- Classroom.pptxInstructions for Submissions thorugh G- Classroom.pptx
Instructions for Submissions thorugh G- Classroom.pptx
 
Polish students' mobility in the Czech Republic
Polish students' mobility in the Czech RepublicPolish students' mobility in the Czech Republic
Polish students' mobility in the Czech Republic
 
Home assignment II on Spectroscopy 2024 Answers.pdf
Home assignment II on Spectroscopy 2024 Answers.pdfHome assignment II on Spectroscopy 2024 Answers.pdf
Home assignment II on Spectroscopy 2024 Answers.pdf
 
Phrasal Verbs.XXXXXXXXXXXXXXXXXXXXXXXXXX
Phrasal Verbs.XXXXXXXXXXXXXXXXXXXXXXXXXXPhrasal Verbs.XXXXXXXXXXXXXXXXXXXXXXXXXX
Phrasal Verbs.XXXXXXXXXXXXXXXXXXXXXXXXXX
 
Supporting (UKRI) OA monographs at Salford.pptx
Supporting (UKRI) OA monographs at Salford.pptxSupporting (UKRI) OA monographs at Salford.pptx
Supporting (UKRI) OA monographs at Salford.pptx
 
The Accursed House by Émile Gaboriau.pptx
The Accursed House by Émile Gaboriau.pptxThe Accursed House by Émile Gaboriau.pptx
The Accursed House by Émile Gaboriau.pptx
 
Synthetic Fiber Construction in lab .pptx
Synthetic Fiber Construction in lab .pptxSynthetic Fiber Construction in lab .pptx
Synthetic Fiber Construction in lab .pptx
 
The Challenger.pdf DNHS Official Publication
The Challenger.pdf DNHS Official PublicationThe Challenger.pdf DNHS Official Publication
The Challenger.pdf DNHS Official Publication
 
Unit 8 - Information and Communication Technology (Paper I).pdf
Unit 8 - Information and Communication Technology (Paper I).pdfUnit 8 - Information and Communication Technology (Paper I).pdf
Unit 8 - Information and Communication Technology (Paper I).pdf
 
Digital Tools and AI for Teaching Learning and Research
Digital Tools and AI for Teaching Learning and ResearchDigital Tools and AI for Teaching Learning and Research
Digital Tools and AI for Teaching Learning and Research
 

The Conclusion for sigir 2011

  • 1. The Conclusion for SIGIR 2011 Zhejiang Univ CCNT Yueshen XU
  • 2. 目录 IR 领域的思考 1 IR 领域中知名学者与研究机构 2 会议本身的体验 3 由 SIGIR 想到的其他会议 4
  • 3. 从 SIGIR 看当今 IR 领域的组成 Learning to Rank, Query Analysis Personalization, Retrieval Model Web IR, Image Search, Index Recommender System, Multimedia IR Vertical & Entity Research Communities, Social Media Offer Methods: CF, Classification, Clustering SIGIR/IR Traditional IR DM NLP&TM Common Latent Semantic Analysis Content Analysis, Sentiment Analysis Linguistic Analysis Multilingual IR Text Summarization Effectiveness, Efficiency
  • 4.
  • 5. 以后怎么找点,解决问题呢 IR Learning to Rank Ranking Adaption Gradient Boosted Tree IR Retrieval Model Pseudo -Relevance Feedback Boosting Approach Field Topic Point Method Field From Papers Field From Papers
  • 6.
  • 7. 由 SIGIR 形成对 IR 的基本认识 Application System Demo Deployment etc. Methodology Problem Relevance Feedback Ranking Adaption Active Query etc. Object of Research in IR Algorithm Mathematic Strategy what we should concern about what those companies are interested in obtain from those papers
  • 8. 对 IR 中方法论的认识 Method-logy Algorithm Mathe -matic Strategy Mathe -matic Data Structure ! Index etc. Text Semantic Analysis etc. Probability Model, CF, Clustering, Classification etc.------prevail Architecture, Procedure,-------informal method, associating with corporations and application
  • 9. 从 SIGIR 中的 session 看 problem Data Close to DM Medium Text, Image, Multimedia Inherence Data Structure is vital. Other deployment, linguistic etc. What should we model and research? Probability Model CF Clustering Classification Text Mining, Content Analysis Social Media Text Summarization Sentiment Analysis Ranking Query Index Retrieval Model Image Search Vertical & Entity Search Interested in by companies
  • 10.
  • 11.
  • 12. 目录 IR 领域的思考 1 IR 领域中知名学者与研究机构 2 会议本身的体验 3 由 SIGIR 想到的其他会议 4
  • 13. 本次会议中的知名华人学者 ( 部分 ) Rong Jin MSU Tutorials invited speaker Statistical learning etc. Luo Si Purdue Univ Tutorials invited speaker Intelligent tutoring, text mining for life science etc. Chengxiang Zhai UIUC Keynote invited speaker Text Mining, Machine Learning etc. Tie-Yan Liu MSRA Session Chair & Workshop chair Learning to rank, Large-scale graph learning etc.
  • 14. 本次会议中的知名国外学者 ( 部分 ) W.Bruce Croft UMA Program Co-chair Session chair Workshop chair Salton Award Stephen Robertson MS and London City Univ Salton Award Susan Dumais MS Outstanding paper award chair Salton Award Paul B. Kantor Rutgers University Tutorial invited speaker Distinguished professor of Information Science  (Wikipedia)
  • 15.
  • 16. 目录 IR 领域的思考 1 IR 领域中知名学者与研究机构 2 会议本身的体验 3 由 SIGIR 想到的其他会议 4
  • 17.
  • 18.
  • 19.
  • 20. 目录 IR 领域的思考 1 IR 领域中知名学者与研究机构 2 会议本身的体验 3 由 SIGIR 想到的其他会议 4
  • 21.
  • 22.
  • 23.
  • 24.