Abstract

This paper proposed a new perspective to study the evolution of regional collaborative innovation based on complex network theory. The two main conceptions of evolution, “graph with dynamic features” and “network evolution,” have been provided in advance. Afterwards, we illustrate the overall architecture and capability model of the regional collaborative innovation system, which contains several elements and participants. Therefore, we can definitely assume that the regional collaborative innovation system could be regarded as a complex network model. In the proposed evolutionary algorithm, we consider that each node in the network could only connect to less than a certain amount of neighbors, and the extreme value is determined by its importance. Through the derivation, we have created a probability density function as the most important constraint and supporting condition of our simulation experiments. Then, a case study was performed to explore the network topology and validate the effectiveness of our algorithm. All the raw datasets were obtained from the official website of the National Bureau of Statistic of China and some other open sources. Finally, some meaningful recommendations were presented to policy makers, especially based on the experimental results and some common conclusions of complex networks.

Highlights

  • As is illustrated in Melanie Mitchell’s famous book named “Complexity: A Guided Tour” [1], an accepted concept of complex networks refers to a graph with nontrivial topological features

  • We got most of raw dataset through the official website of the National Bureau of Statistic of China (NBS) and some other open sources: for example, (1) comprehensive statistical yearbook of the country, (2) comprehensive statistical yearbook issued by local governments, (3) professional statistical yearbooks of government departments, and (4) other kinds of publications

  • We mainly focused on a novel evolutionary algorithm of the regional collaborative innovation

Read more

Summary

Introduction

As is illustrated in Melanie Mitchell’s famous book named “Complexity: A Guided Tour” [1], an accepted concept of complex networks refers to a graph with nontrivial topological features. Randomness is considered to be the major features of complex networks in the traditional study, but it was overturned in last year of the twentieth century. It had exerted remarkable influence on understanding how the complex networks are constructed and worked [6]. Researching and revealing the evolution rules of the innovative organizations from complex network perspective can help government to understand their laws and characteristics better and foster new growth points of local economic development [13]. Our paper has proposed a novel method to analyze the regional collaborative innovation system by applying the evolutionary theory of complex network.

Related Works
Explanation for Complex Network Evolution
Case Study and Results Analyzing
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call