Big Data Research Productivity A Scientometric Study
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Abstract
Research is a scientific and technological growth, increasing productivity in daily
newlineactivities, and improving human life. All the scholarly research scientific works end up as
newlinepublications are usually contained in a report, articles, monographs, etc. The
newlinescientometrics discipline has emerged to constantly monitor these publications and their
newlineassociated bibliographic parameters. It studies the development of science through the
newlinestatistical processing of many measurements and bibliographic information. (The number
newlineof scholarly articles, their citation, the significance of the journals in which they are
newlinepublished, etc.) Using scientific data, one can determine the academic potential of the
newlineindividual scholar, a research team, a university, and even an entire country with varying
newlinedegrees of accuracy. Bibliometric, Scientometric, Informetrics, Mapping of subjects,
newlinequantitative analysis of publication, and citation analysis, have become a standard tools for
newlineresearch evaluation.
newlineThe term Scientometrics is a field that applies quantitative methods to the study of science
newlineas an information process. It is the science of measuring the quality of science. The
newlinechapter two will covers all concepts related to scientometrics and Big Data and their
newlineorigin. Thus Scientometrics involves studies like Sociology of science, History of science,
newlineGrowth of science and scientific institutions, Behavior of science and scientists, Science
newlinepolicy and decision-making.
newlineThe study adopted the three bibliometrics laws such as Bradford s Law of Scattering;
newlineLotka s Law of Scientific Productivity (Inverse Square Law); and Zipf s Law of Word
newlineOccurrence.
newlineThe characteristics of Big Data are explained with the enumeration of volume, variety,
newlinevelocity, variability, veracity, viscosity, value, visualization, volatility with challenges of
newlineBig Data. Huge data with massive growth, Generating vision from Big Data, integrating
newlinedata from different sources, data validation some challenges.
newlineToday, consumers are very smart before buying any product consumer checks