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Machine learning paradigms[electroni...
~
Lampropoulos, Aristomenis S.
Machine learning paradigms[electronic resource] :applications in recommender systems /
纪录类型:
书目-语言数据,印刷品 : Monograph/item
[NT 15000414] null:
005.56
[NT 47271] Title/Author:
Machine learning paradigms : applications in recommender systems // by Aristomenis S. Lampropoulos, George A. Tsihrintzis.
作者:
Lampropoulos, Aristomenis S.
[NT 51406] other author:
Tsihrintzis, George A.
出版者:
Cham : : Springer International Publishing :, 2015.
面页册数:
xv, 125 p. : : ill., digital ;; 24 cm.
Contained By:
Springer eBooks
标题:
Recommender systems (Information filtering)
标题:
Machine learning.
标题:
Engineering.
标题:
Computational Intelligence.
标题:
Artificial Intelligence (incl. Robotics)
标题:
Computer Imaging, Vision, Pattern Recognition and Graphics.
ISBN:
9783319191355 (electronic bk.)
ISBN:
9783319191348 (paper)
[NT 15000228] null:
Introduction -- Review of Previous Work Related to Recommender Systems -- The Learning Problem -- Content Description of Multimedia Data -- Similarity Measures for Recommendations based on Objective Feature Subset Selection -- Cascade Recommendation Methods -- Evaluation of Cascade Recommendation Methods -- Conclusions and Future Work.
[NT 15000229] null:
This timely book presents Applications in Recommender Systems which are making recommendations using machine learning algorithms trained via examples of content the user likes or dislikes. Recommender systems built on the assumption of availability of both positive and negative examples do not perform well when negative examples are rare. It is exactly this problem that the authors address in the monograph at hand. Specifically, the books approach is based on one-class classification methodologies that have been appearing in recent machine learning research. The blending of recommender systems and one-class classification provides a new very fertile field for research, innovation and development with potential applications in "big data" as well as "sparse data" problems. The book will be useful to researchers, practitioners and graduate students dealing with problems of extensive and complex data. It is intended for both the expert/researcher in the fields of Pattern Recognition, Machine Learning and Recommender Systems, as well as for the general reader in the fields of Applied and Computer Science who wishes to learn more about the emerging discipline of Recommender Systems and their applications. Finally, the book provides an extended list of bibliographic references which covers the relevant literature completely.
电子资源:
http://dx.doi.org/10.1007/978-3-319-19135-5
Machine learning paradigms[electronic resource] :applications in recommender systems /
Lampropoulos, Aristomenis S.
Machine learning paradigms
applications in recommender systems /[electronic resource] :by Aristomenis S. Lampropoulos, George A. Tsihrintzis. - Cham :Springer International Publishing :2015. - xv, 125 p. :ill., digital ;24 cm. - Intelligent systems reference library,v.921868-4394 ;. - Intelligent systems reference library ;v.24..
Introduction -- Review of Previous Work Related to Recommender Systems -- The Learning Problem -- Content Description of Multimedia Data -- Similarity Measures for Recommendations based on Objective Feature Subset Selection -- Cascade Recommendation Methods -- Evaluation of Cascade Recommendation Methods -- Conclusions and Future Work.
This timely book presents Applications in Recommender Systems which are making recommendations using machine learning algorithms trained via examples of content the user likes or dislikes. Recommender systems built on the assumption of availability of both positive and negative examples do not perform well when negative examples are rare. It is exactly this problem that the authors address in the monograph at hand. Specifically, the books approach is based on one-class classification methodologies that have been appearing in recent machine learning research. The blending of recommender systems and one-class classification provides a new very fertile field for research, innovation and development with potential applications in "big data" as well as "sparse data" problems. The book will be useful to researchers, practitioners and graduate students dealing with problems of extensive and complex data. It is intended for both the expert/researcher in the fields of Pattern Recognition, Machine Learning and Recommender Systems, as well as for the general reader in the fields of Applied and Computer Science who wishes to learn more about the emerging discipline of Recommender Systems and their applications. Finally, the book provides an extended list of bibliographic references which covers the relevant literature completely.
ISBN: 9783319191355 (electronic bk.)
Standard No.: 10.1007/978-3-319-19135-5doiSubjects--Topical Terms:
467318
Recommender systems (Information filtering)
LC Class. No.: QA76.9.I58
Dewey Class. No.: 005.56
Machine learning paradigms[electronic resource] :applications in recommender systems /
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Introduction -- Review of Previous Work Related to Recommender Systems -- The Learning Problem -- Content Description of Multimedia Data -- Similarity Measures for Recommendations based on Objective Feature Subset Selection -- Cascade Recommendation Methods -- Evaluation of Cascade Recommendation Methods -- Conclusions and Future Work.
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