# A model for meme popularity growth in social networking systems based on   biological principle and human interest dynamics

**Authors:** Le-Zhi Wang, Zhi-Dan Zhao, Jun-Jie Jiang, Bing-Hui Guo, Xiao Wang,, Zi-Gang Huang, and Ying-Cheng Lai

arXiv: 1902.00533 · 2019-03-27

## TL;DR

This paper introduces a universal hybrid model inspired by biological growth principles and human interest dynamics to accurately predict diverse meme popularity growth patterns across social networks.

## Contribution

It develops a novel hybrid model combining microbial growth dynamics with human interest factors, capable of explaining various empirical meme growth behaviors with few parameters.

## Key findings

- Model successfully predicts different growth patterns
- Parameters can be estimated from data
- Model offers insights into OSN system control

## Abstract

We analyze five big data sets from a variety of online social networking (OSN) systems and find that the growth dynamics of meme popularity exhibit characteristically different behaviors. For example, there is linear growth associated with online recommendation and sharing platforms, a plateaued (or an ``S''-shape) type of growth behavior in a web service devoted to helping users to collect bookmarks, and an exponential increase on the largest and most popular microblogging website in China. Does a universal mechanism with a common set of dynamical rules exist, which can explain these empirically observed, distinct growth behaviors? We provide an affirmative answer in this paper. In particular, inspired by biomimicry to take advantage of cell population growth dynamics in microbial ecology, we construct a base growth model for meme popularity in OSNs. We then take into account human factors by incorporating a general model of human interest dynamics into the base model. The final hybrid model contains a small number of free parameters that can be estimated purely from data. We demonstrate that our model is universal in the sense that, with a few parameters estimated from data, it can successfully predict the distinct meme growth dynamics. Our study represents a successful effort to exploit principles in biology to understand online social behaviors by incorporating the traditional microbial growth model into meme popularity. Our model can be used to gain insights into critical issues such as classification, robustness, optimization, and control of OSN systems.

## Full text

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## Figures

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## References

69 references — full list in the complete paper: https://tomesphere.com/paper/1902.00533/full.md

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Source: https://tomesphere.com/paper/1902.00533