Open Access Open Access  Restricted Access Subscription or Fee Access

Modelling the Growth of Chemistry Literature from 2005-2016: A Scientometric Study

Mahadevi R Nyamagoudar, Gavisiddappa Anandhalli

Abstract


Abstract

The present study demonstrates the growth of Chemistry literature for the period 2005-2016. A total of 24322 records were extracted from the Scopus Database for twelve years which is used as main source of primary data for the present study. The growth models were applied for the literature of Chemistry. The result of the study indicates that, the Relative Growth Rate (RGR) of Chemistry publication found to be decreasing trend and Doubling Time (Dt) found to be increasing trend. The growth of literature in the field of Chemistry does not follow either Polynomial or Power growth model. The study concluded that there has consistent trend in the growth of Chemistry literature. The study can be concluded that chemical literature follows the moderately follows Linear growth, Exponential growth and Logistic growth model.

 

Keywords: Scientometrics, Chemistry Literature, Relative Growth rate (RGR), Doubling Time (Dt), Growth Models

Cite this Article

Mahadevi R Nyamagoudar, Gavisiddappa Anandhalli. Modelling The Growth of Chemistry Literature from 2005-2016: A Scientometric Study. Journal of Advancements in Library Sciences. 2020; 7(1): 83–90p.



Full Text:

PDF

References


Gupta, B.M., Kumar, S., Sangam, S.L. and Karisiddappa, C.R., 2002. Modeling the growth of world social science literature. Scientometrics, 53(1), pp.161-164.

Meera & Sangam, S.L., 2010. Indian Chemical Literature 1907-2005: Activity and Growth. Webometrics, Informetrics and Scientometrics: Measuring Scientific and Technological Progress of India, pp.47-66.

Mahapatra, G., 1994. Correlation between growth of publications and citations: A study based on growth curves.

Seetharam, G. and Rao, I.R., 1999. Growth of food science and technology literature: A comparison of CFTRI, India and the world. Scientometrics, 44(1), pp.59-79.

Gupta, B.M. and Karisiddappa, C.R., 2000. Modelling the growth of literature in the area of theoretical population genetics. Scientometrics, 49(2), pp.321-355.

Neelamma, G. and Anandhalli, G., 2015. Research trends in Crystallography: A study of Scientometric analysis. International Journal of Information Sources and Services, 2(2), pp.71-83.

Hadagali, G.S. and Anandhalli, G., 2015. Modeling the growth of Neurology Literature. Journal of Information Science Theory and Practice, 3(3), pp.45-63.

Neelamma, G., 2016. Application of Bradford's Law in the Field of Crystallography: A Scientometric Study. International Journal of Information, 6(2), p.78.

Venkatesan, M., Gopalakrishnan, S. and Gnanasekaran, D., 2013. Growth of literature on climate change research: A scientometric study. Journal of Advances in Library and Information Science, 2(4), pp.236-242.

Gupta, B., Sharma, P. and Karisiddappa, C., 1997. Growth of research literature in scientific specialities. A modelling perspective. Scientometrics, 40(3), pp.507-528.

Sangam, S.L. and Arali, U., 2016. Growth versus scientific collaboration in the field of genetics: A scientometrics analysis. COLLNET Journal of Scientometrics and Information Management, 10(1), pp.9-19.

Sangam, S.L., Madalli, D. and Arali, U.B., 2015. Scientometrics profile of global genetics literature as seen through PubMed. Collnet Journal of Scientometrics and Information Management, 9(2), pp.175-192.




DOI: https://doi.org/10.37591/joals.v7i1.1868

Refbacks

  • There are currently no refbacks.