Preference Learning: Unterschied zwischen den Versionen

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* Front Matter: http://link.springer.com/content/pdf/bfm%3A978-3-642-14125-6%2F6%2F1.pdf
 
* Front Matter: http://link.springer.com/content/pdf/bfm%3A978-3-642-14125-6%2F6%2F1.pdf
  
    Evaluating Search Engine Relevance with Click-Based Metrics
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*  Filip Radlinski, Madhu Kurup, Thorsten Joachims : [[Evaluating Search Engine Relevance with Click-Based Metrics]]. In: Fürnkranz, J. and Hüllermeier, E.: [[Preference Learning]], 2011, 337-361. http://link.springer.com/chapter/10.1007/978-3-642-14125-6_16
  
    Radlinski, Filip (et al.)
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* Robert Arens: [[Learning SVM Ranking Functions from User Feedback Using Document Metadata and Active Learning in the Biomedical Domain]]. In: Fürnkranz, J. and Hüllermeier, E.: [[Preference Learning]], 2011, 363-383. http://link.springer.com/chapter/10.1007/978-3-642-14125-6_17
  
    Seiten 337-361
 
  
    Learning SVM Ranking Functions from User Feedback Using Document Metadata and Active Learning in the Biomedical Domain
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'''Preferences in Recommender Systems'''
  
    Arens, Robert
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* Front Matter: http://link.springer.com/content/pdf/bfm%3A978-3-642-14125-6%2F7%2F1.pdf
  
    Seiten 363-383
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* Marco de Gemmis , Leo Iaquinta, Pasquale Lops, Cataldo Musto, Fedelucio Narducci, Giovanni Semeraro: [[Learning Preference Models in Recommender Systems]]. In: Fürnkranz, J. and Hüllermeier, E.: [[Preference Learning]], 2011, 387-407. http://link.springer.com/chapter/10.1007/978-3-642-14125-6_18
  
    Learning Preference Models in Recommender Systems
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* Alexandros Karatzoglou, Markus Weimer: [[Collaborative Preference Learning]]. In: Fürnkranz, J. and Hüllermeier, E.: [[Preference Learning]], 2011, 409-427. http://link.springer.com/chapter/10.1007/978-3-642-14125-6_19
  
    Gemmis, Marco de (et al.)
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*  Alejandro Bellogín, Iván Cantador, Pablo Castells, Álvaro Ortigosa: [[Discerning Relevant Model Features in a Content-based Collaborative Recommender System]]. In: Fürnkranz, J. and Hüllermeier, E.: [[Preference Learning]], 2011, 429-455. http://link.springer.com/chapter/10.1007/978-3-642-14125-6_20
  
    Seiten 387-407
 
 
    Collaborative Preference Learning
 
 
    Karatzoglou, Alexandros (et al.)
 
 
    Seiten 409-427
 
 
    Discerning Relevant Model Features in a Content-based Collaborative Recommender System
 
 
    Bellogín, Alejandro (et al.)
 
 
    Seiten 429-455
 
  
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* Back Matter: http://link.springer.com/content/pdf/bbm%3A978-3-642-14125-6%2F1.pdf
  
  

Version vom 28. November 2015, 15:30 Uhr

Reference

Johannes Fürnkranz, Eyke Hüllermeier (eds.): Preference Learning. Springer Berlin Heidelberg, 2011. ISBN: 978-3-642-14124-9 (Print) 978-3-642-14125-6 (Online)

DOI

http://dx.doi.org/10.1007/978-3-642-14125-6

Abstract

The topic of preferences is a new branch of machine learning and data mining, and it has attracted considerable attention in artificial intelligence research in recent years. Representing and processing knowledge in terms of preferences is appealing as it allows one to specify desires in a declarative way, to combine qualitative and quantitative modes of reasoning, and to deal with inconsistencies and exceptions in a flexible manner. Preference learning is concerned with the acquisition of preference models from data – it involves learning from observations that reveal information about the preferences of an individual or a class of individuals, and building models that generalize beyond such training data. This is the first book dedicated to this topic, and the treatment is comprehensive. The editors first offer a thorough introduction, including a systematic categorization according to learning task and learning technique, along with a unified notation. The remainder of the book is organized into parts that follow the developed framework, complementing survey articles with in-depth treatises of current research topics in this area. The book will be of interest to researchers and practitioners in artificial intelligence, in particular machine learning and data mining, and in fields such as multicriteria decision-making and operations research.

Extended Abstract

Reviews

"The book looks at three major types of preference learning: label ranking, instance ranking, and object ranking. … chapters contain case studies and actual experiments to illustrate the claims made within. … this is a useful book in an emerging and important area, and hence would be of interest to machine learning researchers. The book is quite readable to that audience, despite a heavy emphasis on formal treatment." M. Sasikumar, ACM Computing Reviews, September, 2011


Bibtex

@book{
year={2011},
isbn={978-3-642-14124-9 (Print), 978-3-642-14125-6 (Online)},
booktitle={Preference Learning},
editor={Fürnkranz, Johannes and Hüllermeier, Eyke},
doi={10.1007/978-3-642-14125-6},
url={http://dx.doi.org/10.1007/978-3-642-14125-6, http://de.evo-art.org/index.php?title=Preference_Learning },
publisher={Springer Berlin Heidelberg},
language={English}
}

Table of contents (20 chapters)


Label Ranking


Instance Ranking


Object Ranking


Preferences in Multi-Attribute Domains


Preferences in Information Retrieval


Preferences in Recommender Systems



Links

Full Text

intern file

Sonstige Links

http://link.springer.com/book/10.1007/978-3-642-14125-6