Scalable dimensionality reduction methods for recommender systems

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79,90 

ISBN: 3659836753
ISBN 13: 9783659836756
Autor: Ciesielczyk, Michal
Verlag: SPS
Umfang: 208 S.
Erscheinungsdatum: 04.04.2016
Auflage: 1/2016
Format: 1.4 x 22 x 15
Gewicht: 328 g
Produktform: Kartoniert
Einband: KT
Artikelnummer: 9305519 Kategorie:

Beschreibung

In this monograph dimensionality reduction methods and reflective data processing are investigated from the perspective of the ability to produce high precision recommendations and to cope with high unpredictability of the data sparsity. The reported research is oriented on constructing a processing model enabling to provide higher quality recommendations than the state-of-the-art collaborative and content-based filtering methods, but at the same time is not more computationally complex. The results of the theoretical study have been evaluated, according to a well-established methodology, using publicly available data sets and following scenarios reflecting the so-called find-good-items task (rather than the low-error-of-ratings prediction). Based on the presented analysis and experimental results, the author states that vector-space recommendation techniques and dimensionality reduction methods may be combined in a way preserving the high quality of recommendations, regardless of the amount of processed heterogeneous data.

Autorenporträt

Michal Ciesielczyk received his PhD degree in computer science from Poznan University of Technology in 2015. Currently, he is an assistant professor at the Institute of Control and Information Engineering at the Poznan University of Technology. His research focuses on information retrieval, recommender systems, and statistical relational learning.

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