Title
An Asymptotic Ensemble Learning Framework for Big Data Analysis.
Abstract
In order to enable big data analysis when data volume goes beyond the available computing resources, we propose a new method for big data analysis. This method uses only a few random sample data blocks of a big data set to obtain approximate results for the entire data set. The random sample partition (RSP) distributed data model is used to represent a big data set as a set of non-overlapping random sample data blocks. Each block is saved as an RSP data block file that can be used directly to estimate the statistical properties of the entire data set. A subset of RSP data blocks is randomly selected and analyzed with existing sequential algorithms in parallel. Then, the results from these blocks are combined to obtain ensemble estimates and models which can be improved gradually by appending new results from the newly analyzed RSP data blocks. To this end, we propose a distributed data-parallel framework (Alpha framework) and develop a prototype of this framework using Microsoft R Server packages and Hadoop distributed file system. The experimental results of three real data sets show that a subset of RSP data blocks of a data set is sufficient to obtain estimates and models which are equivalent to those computed from the entire data set.
Year
DOI
Venue
2019
10.1109/ACCESS.2018.2889355
IEEE ACCESS
Keywords
Field
DocType
Big data analysis,cluster computing,random sample partition,block-level sampling,distributed and parallel computing,approximate computing,random sampling,ensemble methods
Computer science,Theoretical computer science,Big data,Ensemble learning,Distributed computing
Journal
Volume
ISSN
Citations 
7
2169-3536
1
PageRank 
References 
Authors
0.34
0
4
Name
Order
Citations
PageRank
Salman Salloum110.34
Joshua Zhexue Huang2136582.64
Yu-Lin He3153.65
Xiaojun Chen41298107.51