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Intensified Multidimensional Style for User Belief Mining from Social Media


Affiliations
1 J.R.N. Rajasthan Vidyapeeth, Udaipur, India
2 Govt. Engineering College, Bikaner, India
3 VC, J.R.N. Rajasthan Vidyapeeth, Udaipur, India
 

Big data analytics is used to examine large sets of data which may contain diversity of different types of data, it can be used to decrypt cryptic symbiology, correlating previously not known variables, finding the trends in the market, checking preferences of customers and finding out data about various businesses and institutions. The re-sult can be used to conduct informative market strategizing, checking out chances to generate higher income, to pro-vide effective consumer-oriented services, to improve effectiveness of operations and to provide competition-edge over competitors and other institutional profits. The main aim of Big data Analysis is to aid in better and informative decision making for the firms by taking advantage of capable data-scientists, genius model makers as well as other trained scientists to verify chunks of information that may be unused by the traditional programs. It may include ana-lyzing special log and internet based information, internet network data and social-analysis of reports. It can also be used to analyze network records, caller details and other information gathered and operated by IOT devices. It can be used to bind with big data and unstructured data as well as partially structured data.

Keywords

Big Data Analytics, Emotions Mining, Social Media Analytics, User Belief Mining.
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  • Intensified Multidimensional Style for User Belief Mining from Social Media

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Authors

Amit Singla
J.R.N. Rajasthan Vidyapeeth, Udaipur, India
Vishal Goar
Govt. Engineering College, Bikaner, India
S. S. Sarangdevot
VC, J.R.N. Rajasthan Vidyapeeth, Udaipur, India

Abstract


Big data analytics is used to examine large sets of data which may contain diversity of different types of data, it can be used to decrypt cryptic symbiology, correlating previously not known variables, finding the trends in the market, checking preferences of customers and finding out data about various businesses and institutions. The re-sult can be used to conduct informative market strategizing, checking out chances to generate higher income, to pro-vide effective consumer-oriented services, to improve effectiveness of operations and to provide competition-edge over competitors and other institutional profits. The main aim of Big data Analysis is to aid in better and informative decision making for the firms by taking advantage of capable data-scientists, genius model makers as well as other trained scientists to verify chunks of information that may be unused by the traditional programs. It may include ana-lyzing special log and internet based information, internet network data and social-analysis of reports. It can also be used to analyze network records, caller details and other information gathered and operated by IOT devices. It can be used to bind with big data and unstructured data as well as partially structured data.

Keywords


Big Data Analytics, Emotions Mining, Social Media Analytics, User Belief Mining.

References