Damping effect in innovation processes: case studies from Twitter

Autor: Aletti, Giacomo, Crimaldi, Irene
Rok vydání: 2021
Předmět:
Zdroj: Sci Rep 11 (2021), 21243
Druh dokumentu: Working Paper
DOI: 10.1038/s41598-021-00378-4
Popis: Understanding the innovation process, that is the underlying mechanisms through which novelties emerge, diffuse and trigger further novelties is undoubtedly of fundamental importance in many areas (biology, linguistics, social science and others). The models introduced so far satisfy the Heaps' law, regarding the rate at which novelties appear, and the Zipf's law, that states a power law behavior for the frequency distribution of the elements. However, there are empirical cases far from showing a pure power law behavior and such a deviation is present for elements with high frequencies. We explain this phenomenon by means of a suitable "damping" effect in the probability of a repetition of an old element. While the proposed model is extremely general and may be also employed in other contexts, it has been tested on some Twitter data sets and demonstrated great performances with respect to Heaps' law and, above all, with respect to the fitting of the frequency-rank plots for low and high frequencies.
Databáze: arXiv