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Understanding 2016 Drought in India by Social Media Data Mining

Vaishali J. Shimpi, Roshani Raut (Ade). Published in Information Sciences.

Communications on Applied Electronics
Year of Publication: 2016
Publisher: Foundation of Computer Science (FCS), NY, USA
Authors: Vaishali J. Shimpi, Roshani Raut (Ade)
10.5120/cae2016652302

Vaishali J Shimpi and Roshani Raut (Ade). Understanding 2016 Drought in India by Social Media Data Mining. Communications on Applied Electronics 5(6):1-5, July 2016. BibTeX

@article{10.5120/cae2016652302,
	author = {Vaishali J. Shimpi and Roshani Raut (Ade)},
	title = {Understanding 2016 Drought in India by Social Media Data Mining},
	journal = {Communications on Applied Electronics},
	issue_date = {July 2016},
	volume = {5},
	number = {6},
	month = {Jul},
	year = {2016},
	issn = {2394-4714},
	pages = {1-5},
	numpages = {5},
	url = {http://www.caeaccess.org/archives/volume5/number6/622-2016652302},
	doi = {10.5120/cae2016652302},
	publisher = {Foundation of Computer Science (FCS), NY, USA},
	address = {New York, USA}
}

Abstract

Drought is natural Biohazard, which result due to deficiency of rainfall for consecutive years. It can last for a few months to a year. It produces short term to long term impact on human society. Understanding of impact of drought can provide great help for disaster management and rehabilitation, It can also provide a way to understanding society and it issue. Social media data mining can aid more effectively and faster study of drought. This paper puts focus on the impact of drought in India 2016.

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Keywords

Drought, Social media, Data mining, Classifier, Radiant6, Navies Bays, NodeXL.