Chiudi

Aggiungi l'articolo in

Chiudi
Aggiunto

L’articolo è stato aggiunto alla lista dei desideri

Chiudi

Crea nuova lista

Offerta imperdibile
Learning to Rank for Information Retrieval and Natural Language Processing - Hang Li - cover
Learning to Rank for Information Retrieval and Natural Language Processing - Hang Li - cover
Dati e Statistiche
Wishlist Salvato in 0 liste dei desideri
Learning to Rank for Information Retrieval and Natural Language Processing
Attualmente non disponibile
53,40 €
53,40 €
Attualmente non disp.
Chiudi

Altre offerte vendute e spedite dai nostri venditori

Altri venditori
Prezzo e spese di spedizione
ibs
Spedizione Gratis
53,40 €
Altri venditori
Prezzo e spese di spedizione
ibs
Spedizione Gratis
53,40 €
Altri venditori
Prezzo e spese di spedizione
Chiudi
ibs
Chiudi

Tutti i formati ed edizioni

Chiudi
Learning to Rank for Information Retrieval and Natural Language Processing - Hang Li - cover
Chiudi

Promo attive (0)

Descrizione


Learning to rank refers to machine learning techniques for training a model in a ranking task. Learning to rank is useful for many applications in information retrieval, natural language processing, and data mining. Intensive studies have been conducted on its problems recently, and significant progress has been made. This lecture gives an introduction to the area including the fundamental problems, major approaches, theories, applications, and future work. The author begins by showing that various ranking problems in information retrieval and natural language processing can be formalized as two basic ranking tasks, namely ranking creation (or simply ranking) and ranking aggregation. In ranking creation, given a request, one wants to generate a ranking list of offerings based on the features derived from the request and the offerings. In ranking aggregation, given a request, as well as a number of ranking lists of offerings, one wants to generate a new ranking list of the offerings. Ranking creation (or ranking) is the major problem in learning to rank. It is usually formalized as a supervised learning task. The author gives detailed explanations on learning for ranking creation and ranking aggregation, including training and testing, evaluation, feature creation, and major approaches. Many methods have been proposed for ranking creation. The methods can be categorized as the pointwise, pairwise, and listwise approaches according to the loss functions they employ. They can also be categorized according to the techniques they employ, such as the SVM based, Boosting based, and Neural Network based approaches. The author also introduces some popular learning to rank methods in details. These include: PRank, OC SVM, McRank, Ranking SVM, IR SVM, GBRank, RankNet, ListNet & ListMLE, AdaRank, SVM MAP, SoftRank, LambdaRank, LambdaMART, Borda Count, Markov Chain, and CRanking. The author explains several example applications of learning to rank including web search, collaborative filtering, definition search, keyphrase extraction, query dependent summarization, and re-ranking in machine translation. A formulation of learning for ranking creation is given in the statistical learning framework. Ongoing and future research directions for learning to rank are also discussed.
Leggi di più Leggi di meno

Dettagli

Synthesis Lectures on Human Language Technologies
2014
Paperback / softback
121 p.
Testo in English
235 x 187 mm
9781627055840
Chiudi
Aggiunto

L'articolo è stato aggiunto al carrello

Chiudi

Aggiungi l'articolo in

Chiudi
Aggiunto

L’articolo è stato aggiunto alla lista dei desideri

Chiudi

Crea nuova lista

Chiudi

Chiudi

Siamo spiacenti si è verificato un errore imprevisto, la preghiamo di riprovare.

Chiudi

Verrai avvisato via email sulle novità di Nome Autore