Modeling and exploring the evolution of the mobile software ecosystem: How far are we?

Author:

Xiao Jianmao1,Xu Zhipeng2ORCID,Zhang Donghua2,Chen Shiping3,Liu Chenyu1,Feng Zhiyong4,Fan Guodong4,Ouyang Chuying5

Affiliation:

1. School of Software Jiangxi Normal University Nanchang China

2. School of Digital Industry Jiangxi Normal University Shangrao China

3. CSIRO Data61 Sydney New South Wales Australia

4. College of Intelligence and Computing Tianjin University Tianjin China

5. Department of Physics Jiangxi Normal University Nanchang China

Abstract

AbstractThe health of mobile software ecosystems is closely related to the interests of software developers, end‐users, and stakeholders. Therefore, it is crucial to maintain the mobile software ecosystem healthy and functioning. Researchers have done considerable research on mobile software ecosystems like Android and iOS. However, the evolution laws implicit in mobile software ecosystems have not attracted widespread attention. This paper proposes a research framework for investigating the evolution process and influencing factors of mobile software ecosystems based on community mining. Firstly, we mine the evolving ecosystem from many mobile software projects based on a community detection algorithm. Then we analyze the evolution process of the ecosystem by identifying evolution events in different periods. Furthermore, we utilize the multinomial logistics regression model to analyze the relevant indicators and summarize the crucial factors affecting the evolution. Meanwhile, by training the long short term memory (LSTM) model to predict evolution events, our prediction accuracy can reach 75%. This work can be used to maintain and improve the healthy operations of mobile software ecosystems.

Publisher

Wiley

Subject

Software

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