
		<paper>
			<loc>https://jjcit.org/paper/72</loc>
			<title>A REVIEW ON THE SIGNIFICANCE OF MACHINE LEARNING FOR DATA ANALYSIS IN BIG DATA</title>
			<doi>10.5455/jjcit.71-1564729835</doi>
			<authors>Vishnu Vandana Kolisetty,Dharmendra Singh Rajput*</authors>
			<keywords>Big data,Machine learning,Data analysis,Big data implications,Big data challenges.</keywords>
			<citation>76</citation>
			<views>6411</views>
			<downloads>2066</downloads>
			<received_date>2-Aug-2019</received_date>
			<revised_date>26-Oct-2019</revised_date>
			<accepted_date>16-Nov-2019</accepted_date>
			<abstract>Big  data  revolution  is  changing  the  lifestyle  in  terms  of  working  and  thinking  environments through  facilitating 
improvement in vision finding and decision-making. But, big data science's technical dilemma is that there is no 
knowledge  that  can  administer  and  analyze  large  amounts  of  actively  increasing  data  and  pull  out  valuable 
information.  As  data  around  the  world  grows  rapidly  and  its  distribution with  real-time  processing  continues, 
traditional  tools  for  automated  machine  learning  have  become  inadequate.  However,  conventional  machine 
learning  (ML)  approaches  have  been  extended  to  meet  the  needs  of  other  applications,  but  with  increased 
information  or  large  data  knowledge  bases,  there  are  significant  challenges  for  ML  algorithms  for  big  data 
analysis.  This  paper  aims  to  facilitate  understanding the  importance  of  ML  in  the  analysis  of  large  data.  It 
contributes to understanding the implications and challenges in big data computational complexity, classification 
imperfection and data heterogeneity. It discusses the capability to mine value from large-scale data for decision-
making and predictive analysis through data transformation and knowledge extraction. It will suggest the impact 
of  big  data on  real-time  data analysis  and  discuss  the  extent  to  which  machine  learning  can be  used  to  analyze 
large data through machine learning in big data analysis. It will also suggest the meaning and opportunity from 
the point of view of encouraging feature research development in the field of ML using big data.</abstract>
		</paper>


