As one of the most effective function mining algorithms, Gene Expression Programming (GEP) algorithm has been widely used in classification, pattern recognition, prediction, and other research fields. Based on the self-evolution, GEP is able to mine an optimal function for dealing with further complicated tasks. However, in big data researches, GEP encounters low efficiency issue due to its long time mining processes. To improve the efficiency of GEP in big data researches especially for processing large-scale classification tasks, this paper presents a parallelized GEP algorithm using MapReduce computing model. The experimental results show that the presented algorithm is scalable and efficient for processing large-scale classification tasks.
from #AlexandrosSfakianakis via Alexandros G.Sfakianakis on Inoreader http://ift.tt/2lyztfR
via IFTTT
Εγγραφή σε:
Σχόλια ανάρτησης (Atom)
Δημοφιλείς αναρτήσεις
-
Essay Thesaurus Generator eisenschiml thesis Short essay on great wall of china how to start a compare and contrast essay sample assessing c...
-
How to write a Scholarship Essay - Examples. Scholarship Essays should use this formatting unless specified otherwise: Two to three pages in...
-
The Notch signaling pathway is a very conserved system that controls embryonic cell fate decisions and the maintenance of adult stem cells t...
-
Through the Wormhole: Is There an Edge to... Science - 43 min - ★ It is commonly theorized that the universe began with the Big Bang... Thro...
-
Web version of a book about Subversion. Work in progress, however already very complete. The book should be published by O'Reilly and As...
-
http://ift.tt/2p7HgAl
-
Reported by Scientific American, this Week in World War I: March 24, 1917 -- Read more on ScientificAmerican.com from #Alexandro...
-
Zusammenfassung Hintergrund Der Einfluss des „hospital volume" und „surgeon volume" auf das Behandlungsergebnis wird anhand de...
-
Vol.6 from #AlexandrosSfakianakis via Alexandros G.Sfakianakis on Inoreader http://ift.tt/2kRz7Sf via IFTTT
Δεν υπάρχουν σχόλια:
Δημοσίευση σχολίου