Skip to the main content

Original scientific paper

https://doi.org/10.17559/TV-20250303002434

Research on Optimal Allocation of Regional Science and Technology Innovation Resources Based on Multi-Source Data Fusion Algorithm

Shuyu Sun ; Faculty of Humanities and Management, Xi'an Traffic Engineering University, China *
Xiaoyun Ren ; Faculty of Humanities and Management, Xi'an Traffic Engineering University, China

* Corresponding author.


Full text: english pdf 487 Kb

page 1398-1407

downloads: 105

cite


Abstract

This study addresses the suboptimal efficiency of regional science and technology innovation resource allocation by proposing a multi-source data fusion algorithm grounded in set pair analysis. Through a systematic review of theories and methodologies on science and technology innovation resource allocation, we design a theoretical framework integrating three modes: single-driven, joint-driven, and collaborative resource optimization. The proposed algorithm extracts opposition, uniformity, and difference degrees from sensor data using set pair analysis, constructs a connection matrix, and employs a signal-to-noise ratio weighting mechanism for weighted fusion. Simulation experiments demonstrate the algorithm’s superior accuracy and stability, with absolute errors reduced by 30–50% compared to traditional methods. An improved DEA model evaluates regional resource allocation efficiency, revealing nonlinear input-output relationships and Pareto optimization trends across 15 Chinese provinces. Results indicate that optimized resource allocation enhances multi-source data fusion capabilities, accelerates convergence by 37%, and improves regional innovation competitiveness. This work provides actionable insights for policymakers to harmonize government-market dynamics and foster sustainable innovation ecosystems.

Keywords

allocation of scientific and technological resources; comprehensive similarity; multi-source data fusion; optimize the configuration; regional scientific and technological innovation

Hrčak ID:

332854

URI

https://hrcak.srce.hr/332854

Publication date:

29.6.2025.

Visits: 266 *