Inverse Transform Sampling for Bibliometric Literature Analysis
Authors
Nikos Bakas, Dionisis Koutsantonis, Vagelis Plevris, Andreas Langousis, and Savvas Chatzichristofis
Abstract
Scientific literature is prosperously evolving, exhibiting exponential growth in the last decades. For a wide range of scientific thematic areas, it is hard or even impossible for individual researchers to analyze in detail the available published works. For this purpose, we utilize a robust multidimensional scaling procedure, to construct the bibliometric maps of the literature, for keywords, authors and references. Particularly, we propose a generic machine learning algorithm for multidimensional scaling and describe the algorithmic procedure for the generation of the bibliometric maps.