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Supervised papers classification on large-scale high-dimensional data with apache spark

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Autor
Akritidis L., Bozanis P., Fevgas A.
Fecha
2018
Language
en
DOI
10.1109/DASC/PiCom/DataCom/CyberSciTec.2018.00140
Materia
Artificial intelligence
Classification (of information)
Clustering algorithms
Data mining
Digital libraries
Learning systems
Search engines
Dimensionality reduction
Effective algorithms
Experimental evaluation
High dimensional data
Large amounts of data
Robust classification
Sparse random projections
Supervised learning approaches
Big data
Institute of Electrical and Electronics Engineers Inc.
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Resumen
The problem of classifying a research article into one or more fields of science is of particular importance for the academic search engines and digital libraries. A robust classification algorithm offers the users a wide variety of useful tools, such as the refinement of their search results, the browsing of articles by category, the recommendation of other similar articles, etc. In the current literature we encounter approaches which attempt to address this problem without taking into consideration important parameters such as the previous history of the authors and the categorization of the scientific journals which publish the articles. In addition, the existing works overlook the huge volume of the involved academic data. In this paper, we expand an existing effective algorithm for research articles classification, and we parallelize it on Apache Spark-A parallelization framework which is capable of sharing large amounts of data into the main memory of the nodes of a cluster-to enable the processing of large academic datasets. Furthermore, we present data manipulation methodologies which are useful not only for this particular problem, but also for most parallel machine learning approaches. In our experimental evaluation, we demonstrate that our proposed algorithm is considerably more accurate than the supervised learning approaches implemented within the machine learning library of Spark, whereas it outperforms them in terms of execution speed by a significant margin. © 2018 IEEE.
URI
http://hdl.handle.net/11615/70353
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