EELTR

Efficient and Effective Learning to Rank for Information Retrieval

 Coordinatore KOC UNIVERSITY 

 Organization address address: RUMELI FENERI YOLU SARIYER
city: ISTANBUL
postcode: 34450

contact info
Titolo: Ms.
Nome: Sebnem
Cognome: Dogan
Email: send email
Telefono: +90 212 338 1065
Fax: +90 212 338 1205

 Nazionalità Coordinatore Turkey [TR]
 Totale costo 100˙000 €
 EC contributo 100˙000 €
 Programma FP7-PEOPLE
Specific programme "People" implementing the Seventh Framework Programme of the European Community for research, technological development and demonstration activities (2007 to 2013)
 Code Call FP7-PEOPLE-2012-CIG
 Funding Scheme MC-CIG
 Anno di inizio 2012
 Periodo (anno-mese-giorno) 2012-10-01   -   2016-09-30

 Partecipanti

# participant  country  role  EC contrib. [€] 
1    KOC UNIVERSITY

 Organization address address: RUMELI FENERI YOLU SARIYER
city: ISTANBUL
postcode: 34450

contact info
Titolo: Ms.
Nome: Sebnem
Cognome: Dogan
Email: send email
Telefono: +90 212 338 1065
Fax: +90 212 338 1205

TR (ISTANBUL) coordinator 100˙000.00

Mappa


 Word cloud

Esplora la "nuvola delle parole (Word Cloud) per avere un'idea di massima del progetto.

efficient    search    rank    hence    data    create    techniques    respect    collections    learning    documents    constructing    query    datasets    academic    document    training    relevance   

 Obiettivo del progetto (Objective)

'Ranking sits at the core of information retrieval. Given a query, a collection of documents have to be ranked based on their relevance with respect to the query. Most modern search are based on learning to rank: given a training set composed of query-document pairs judged in terms of relevance, learn to rank documents given a query. Constructing training data for learning to rank is very expensive as it requires a significant human effort for judging the relevance of each document for each query. Search engines are used with very different queries run on very large document collections. Hence, it is impossible to judge each document in terms of relevance with respect to each query. The expense of constructing training data for learning to rank,and the need for different training data for different document collections/tasks is a major problem both for commercial companies and academic researchers. Given that most academic researchers do not have access to millions of dollars to create large scale learning to rank datasets, creating training data in an efficient and effective manner is crucial for enhancing the academic research on learning to rank. Hence, the primary objectives of this proposal are to: (1) build efficient and effective training data for learning to rank (2) increase the efficiency and effectiveness of learning to rank algorithms by devising objective metrics that can utilize the training data better, (3) develop techniques that can be used to adopt existing training data sets to the characteristics of different environments. The proposed techniques will allow researchers and engineers to develop better search systems with the same training data. This will directly affect the end users, enabling them to reach relevant information faster. The proposed methods can be used to create training datasets for a variety of different document collections/tasks, affecting the search experience of a broad set of users, from patent officers to medical doctors.'

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