Inner Social Interactions Model of Big Data Impact on Economical Framework

Alatorre, A. (2019) Inner Social Interactions Model of Big Data Impact on Economical Framework. In: Current Perspective to Economics and Management Vol. 2. B P International, pp. 91-97. ISBN 978-93-89246-57-5

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Abstract

Introduction: An inclusive model of economical-social interactions and its repercussions on Big Data
analysis is presented. Many phenomenological topics are involved in this job, such as the idea of
complexity, statistical human behavior and market structures. Complexity on social interactions is a
polemic subject, and it is also a complicated phenomenon to deal with.
Aims / Objectives: This particular study is aimed to develop some proper mathematical model to
justify the big data consuming economical framework with the proper social interactions. So that it can
build some major key processes assessing several types of economical frames.
Study Design: Chain Phenomena Analysis.
Place and Duration of Study: University of Guadalajara, Physics Department, Data Science Group.
Results: Model exposition.
Conclusion: This study shows how, as long as time change currently, social interaction impact on
economical framework has become bigger. Big Data tools to manipulate high volume levels of
information from these interactions have been a strongest platform to analyse economical indicators,
such as those which repercussions affects financial stock markets. This process is modelled in this
article. A complete model could be a model that considers as social interactions more factors than just
trading. Although we are working to applied this model and test it with concrete data bases and real
examples. This set of scalar constants defined with κ might have empty entries waiting to be filled
with experimental data and empirical tuning. Stock Markets one have a better option about predictions
then a social interaction based model. We are not saying that this model puts aside regular methods
for stock market predictions, but, perhaps this new approach would helps to this purpose.

Item Type: Book Section
Subjects: EP Archives > Social Sciences and Humanities
Depositing User: Managing Editor
Date Deposited: 17 Nov 2023 08:17
Last Modified: 17 Nov 2023 08:17
URI: http://research.send4journal.com/id/eprint/3359

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