A Review Study on Big Data Analysis Using R Studio
Keywords:
Huge StatisticsAbstract
Abstract:- During the last decade, large statistics evaluation has seen an exponential boom and will absolutely retain to witness outstanding tendencies due to the emergence of new interactive multimedia packages and extraordinarily incorporated systems driven via the speedy growth in statistics services and microelectronic gadgets. up to now, maximum of the modern mobile structures are especially centered to voice communications with low transmission fees. Inside the near destiny, however, huge information access at excessive transmission costs might be. that is a evaluate on available big-records systems that include a hard and fast of tools and approach to load, extract, and enhance distinct data whilst leveraging the immensely parallel processing strength to carry out complicated adjustments and evaluation. “massive-statistics†device faces a series of technical challenges.
References
- CL. Philip Chen, Chun-Yang Zhang, Data intensive applications, challenges, techniques and technologies: A survey on Big Data Information Science 0020-0255 (2014), PP 341-347, elsevier
- Han hu1At. Al. (Fellow, IEEE), Toward Scalable Systems for Big Data Analytics: A Technology Tutorial, IEEE 2169-3536(2014),PP 652-687
- Shweta Pandey, Dr.VrindaTokekar, Prominence of MapReduce in BIG DATA Processing, IEEE (Fourth International Conference on Communication Systems and Network Technologies)978-1-4799-3070-8/14, PP 555-560
- Katarina Grolinger At. Al.Challenges for MapReduce in Big Data, IEEE (10th World Congress on Services)978-1-4799-5069-0/14,PP 182-189
- Zhen Jia1 At. Al.Characterizing and Subsetting Big Data Workloads", IEEE 978-1-4799-6454-3/14, PP 191-201
- AvitaKatal, Mohammad Wazid, R H Goudar, Big Data: Issues, Challenges, Tools and Good Practices, IEEE 978-1-4799-0192-0/13,PP 404-409
- Du Zhang, Inconsistencies in Big Data, IEEE 978-1-4799-0783-0/13, PP 61-67
- ZibinZheng, Jieming Zhu, and Michael R. Lyu, Service-generated Big Data and Big Data-as-a-Service: An Overview, IEEE (International Congress on Big Data) 978-0-7695-5006-0/13, PP 403-410
- VigneshPrajapati, Big Data Analytics with R and RStudioPackt Publishing
- Lei Wang At. Al., BigDataBench: aBigDataBenchmarkSuitefromInternetServices,IEEE 978-1-4799-3097-5/14.
- AnirudhKadadi At. Al., Challenges of Data Integration and Interoperability in Big Data, IEEE (International Conference on Big Data)978-1-4799-5666-1/14, PP 38-40
- SAS, Five big data challenges and how to overcome them with visual analytics
- HajarMousanif At. Al., From Big Data to Big Projects: a Step-by-step Roadmap, IEEE (International Conference on Future Internet of Things and Cloud) 978-1-4799-4357-9/14, PP 373-378
- Tianbo Lu At. Al., Next Big Thing in Big Data: The Security of the ICT Supply Chain, IEEE (SocialCom/PASSAT/BigData/EconCom/BioMedCom) 978-0-7695-5137-1/13, PP 1066-1073
- Ganapathy Mani, NimaBarit, Duoduo Liao, Simon Berkovich, Organization of Knowledge Extraction from Big Data Systems, IEEE (4 Fifth International Conference on Computing for Geospatial Research and Application) 978-1-4799-4321-0/14, PP 63-69
- Joseph Rickert, Big Data Analysis with Revolution R Enterprise, 2011
- Carson Kai-Sang Leung, Richard Kyle MacKinnon, Fan Jiang, Reducing the Search Space for Big Data Mining for Interesting Patterns from Uncertain Data, IEEE 2014, PP 315-322
- Ajith Abraham1, Swagatam Das2, and Sandip Roy3, Swarm Intelligence Algorithms for Data Clustering, PP 280-313
- Swagatam Das, Ajith Abraham, Senior Member, IEEE, and Amit Konar, Automatic Clustering Using an Improved Differential Evolution Algorithm, IEEE 2008, PP 218-237
- KarthikKambatla, GiorgosKollias, Vipin Kumar, AnanthGrama, J. Parallel Distrib. Comput, Elsevier 2014, PP 2561-2573
- Yanchang Zhao, R and Data Mining: Examples and Case Studies, www.RDataMining.com,2014
- H. T. Kahraman, Sagiroglu, S., Colak,User Knowledge Modeling Data Set, UCI, vol. 37, pp. 283-295, 2013
- Mrigank Mridul, Akashdeep Khajuria, Snehasish Dutta, Kumar N, Analysis of Bidgata using Apache RStudio and Map , Volume 4, Issue 5, May 2014 Reduce, PP. 555-560.
- Sonja Pravilovic, R language in data mining techniques and statistics, 20130201.12,2013
- Vrushali Y Kulkarni, Random Forest Classifiers: A Survey and Future Research Directions, International Journal of Advanced Computing, ISSN: 2051-0845, Vol.36, Issue.1, April 2013
- Aditya Krishna Menon, Large-Scale Support Vector Machines: Algorithms and Theory.
Downloads
Published
Issue
Section
License
Copyright (c) IJSRCSEIT

This work is licensed under a Creative Commons Attribution 4.0 International License.