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EVALUATION OF THE IMPLEMENTATION EFFECT OF INTELLECTUAL PROPERTY POLICY BASED ON NAIVE BAYES ALGORITHM

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Volume 4, Issue 1, Pp 8-12, 2026

DOI: https://doi.org/10.61784/wjit3076

Author(s)

ShuTong Wei

Affiliation(s)

School of Arts Management, Qingdao Film Academy, Qingdao 266520, Shandong, China.

Corresponding Author

ShuTong Wei

ABSTRACT

As a core driving force for modern economic development, the scientific evaluation of the implementation effect of intellectual property policies has become an important topic for government decision-making and academic research. Traditional policy evaluation methods often rely on expert experience or simple statistical analysis, which are difficult to effectively handle the massive multidimensional data generated during the implementation of intellectual property policies. The Naive Bayes algorithm, as a machine learning method based on probability theory, can effectively identify key influencing factors in the implementation of intellectual property policies, providing a new technical path. This paper constructs an evaluation model for the implementation effect of intellectual property policies based on the Naive Bayes algorithm, integrating multi-source information such as policy text data, enterprise innovation data, and patent application data, and establishing a probabilistic mapping relationship between policy characteristics and implementation effects. Through analysis and verification of the model, the study shows that the algorithm demonstrates strong practical value in the evaluation of the effects of intellectual property policies, provides a scientific basis for policy optimization, and promotes the transformation of policy evaluation towards data-driven intelligentization. This research aims to provide methodological support for the scientific formulation and precise implementation of intellectual property policies, and to provide theoretical basis and practical guidance for the decision-making optimization of relevant government departments.

KEYWORDS

Naive Bayes algorithm; Intellectual property; Policy implementation effect; Policy evaluation; Data-drive

CITE THIS PAPER

ShuTong Wei. Evaluation of the implementation effect of intellectual property policy based on Naive Bayes algorithm. World Journal of Information Technology. 2026, 4(1): 8-12. DOI: https://doi.org/10.61784/wjit3076.

REFERENCES

[1] Xu Yangang. A Review of Data Mining Algorithm Research. Computer Knowledge and Technology, 2024.

[2] Zheng Shiqin. Application of Machine Learning Algorithms in Data Mining. Internet Weekly, 2024.

[3] Wang Ziqiang, Shang Zhihui, Shi Yonghua, et al. Heart Disease Prediction Scheme Based on Naive Bayes Algorithm under Hadoop Platform. Modern Computer, 2024.

[4] Li Ruiyu. Research on Software Defect Prediction Method Based on Machine Learning. Network Security and Informatization, 2024.

[5] Li Jin, Zhu Ruifang, Dai Shifang. Application of Clinical Decision Support System for Advantageous Diseases of Traditional Chinese Medicine in Quality Control of TCM Medical Records for "Mixed Hemorrhoids". Journal of Traditional Chinese Medicine, 2024.

[6] Wang Fayu, Yu Xiaowen, Chen Hongtao. Malicious Webpage Recognition Based on Undersampling and Multilayer Ensemble Learning. Computer Engineering and Design, 2024.

[7] Tan Hui, Huan Zhijian, Pu Yu. Machine Learning, Text Big Data and Nowcasting Real-Time Prediction. Financial Development Review, 2024.

[8] Wang Xinlian, Li Jie, Wan Jie, et al. Methodology for Optimization of Laser Powder Bed Melting Process Parameters, Process Monitoring and Service Life Prediction Based on Machine Learning. Foundry Technology, 2024.

[9] Hou Min, Zhang Shibin, Huang Xi. Quantum Fuzzy Naive Bayes Classification Algorithm. Journal of University of Electronic Science and Technology of China, 2024.

[10] Jiang Darui, Xu Shengchao. Data Classification Method for Student Employment Service Platform Based on Statistical Learning Algorithm. Modern Electronics Technology, 2024.

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