Welcome to Francis Academic Press

Frontiers in Art Research, 2025, 7(2); doi: 10.25236/FAR.2025.070202.

Research on the Diversified Development of Art Design and Big Data Algorithms in the Digital Age

Author(s)

Liang Li

Corresponding Author:
Liang Li
Affiliation(s)

College of Art, Zhejiang Yuexiu University, Shaoxing, 312000, Zhejiang, China

Abstract

In the special historical period of Chinese contemporary art design, combined with the trend of cultural diversification, the development of art design under multicultural history and the different nature of art design have attracted the attention of artists from all over the world. This paper used large-scale data algorithms to analyze the development of art design in the digital age. It combined literature analysis, information consultation, field research and various interactive methods with the development of global art and design, as well as the contemporary Chinese art environment, to study the changes and development of contemporary art and design. This paper understood the subtle impact of art design on the lives of people in countries and different fields, and used MapReduce to match sensitive random forest algorithms. The triple parallel design is completed through the basic allocator modeling process, the attribute splitting process and the voting process, which speeds up the modeling efficiency of the algorithm. The results showed that the diversified development of art design is mainly carried out in the design direction, accounting for 65%; hand-painted accounts for 28%; the remaining 7% is the rest of the development direction. It demonstrated the reasons for contemporary art design behavior and its influence on contemporary society, and tried to explore new forms and new directions of Chinese contemporary art design art innovation.

Keywords

Art Design, Diversified Development, Big Data Algorithm, Digital Age

Cite This Paper

Liang Li. Research on the Diversified Development of Art Design and Big Data Algorithms in the Digital Age. Frontiers in Art Research (2025), Vol. 7, Issue 2: 8-19. https://doi.org/10.25236/FAR.2025.070202.

References

[1] Jia Q, Zhao K, Yu H. Art Design Education in the New Era Featured with the Integration of Arts and Motion Sensing Technology [J]. Eurasia Journal of Mathematics Science & Technology Education, 2017, 13(8):5883-5891. 

[2] Hui J, Yang S. Using Color Difference Compensation Method to Balance and Repair the Image of Art Design [J]. Complexity, 2021, 2021(2):1-10.

[3] Strimel G J, Bartholomew S R. evaluating freshman engineering design projects using adaptive compar- ative judgment evaluating freshman engineering design projects using adaptive comparative judgment [J]. Cognitive Science, 2018, 16(3):395-429.

[4] Xue J W, Xu X K, Zhang F. Big data dynamic compressive sensing system architecture and optimization algorithm for internet of things [J]. Discrete and Continuous Dynamical Systems - Series S, 2017, 8(6):1401-1414.

[5] Kuang L, Hao, Yang L T. A Tensor-Based Approach for Big Data Representation and Dimensionality Reduction [J]. IEEE Transactions on Emerging Topics in Computing, 2017, 2(3):280-291.

[6] Stergiou C, Psannis K E. Recent advances delivered by Mobile Cloud Computing and Internet of Things for Big Data applications: a survey [J]. International Journal of Network Management, 2017, 27(3):1-12.

[7] Hensher D A. Future bus transport contracts under a mobility as a service (MaaS) regime in the digital age: Are they likely to change? [J]. Transportation Research Part A Policy and Practice, 2017, 98(APR.): 86-96.

[8] Athey S. [Special Issue Perspective] Beyond prediction: Using big data for policy problems [J]. Science, 2017, 355(6324):483-485.

[9] Xu W, Zhou H, Cheng N. Internet of Vehicles in Big Data Era [J]. IEEE/CAA Journal of Automatica Sinica, 2018, 5(1):19-35.

[10] Xu L, Jiang C, Wang J. Information Security in Big Data: Privacy and Data Mining [J]. IEEE Access, 2017, 2(2):1149-1176. 

[11] Gao Z, & Braud T C. VR-driven museum opportunities: digitized archives in the age of the metaverse. Artnodes, 2023, (32), 1-14.