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Autori principali: Liu, Jie, Zhang, Yiwei, Sheng, Yuan, Lou, Yujia, Wang, Haige, Yang, Bohuan
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2503.11125
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author Liu, Jie
Zhang, Yiwei
Sheng, Yuan
Lou, Yujia
Wang, Haige
Yang, Bohuan
author_facet Liu, Jie
Zhang, Yiwei
Sheng, Yuan
Lou, Yujia
Wang, Haige
Yang, Bohuan
contents This study proposes a dynamic rule data mining algorithm based on an improved Transformer architecture, aiming to improve the accuracy and efficiency of rule mining in a dynamic data environment. With the increase in data volume and complexity, traditional data mining methods are difficult to cope with dynamic data with strong temporal and variable characteristics, so new algorithms are needed to capture the temporal regularity in the data. By improving the Transformer architecture, and introducing a dynamic weight adjustment mechanism and a temporal dependency module, we enable the model to adapt to data changes and mine more accurate rules. Experimental results show that compared with traditional rule mining algorithms, the improved Transformer model has achieved significant improvements in rule mining accuracy, coverage, and stability. The contribution of each module in the algorithm performance is further verified by ablation experiments, proving the importance of temporal dependency and dynamic weight adjustment mechanisms in improving the model effect. In addition, although the improved model has certain challenges in computational efficiency, its advantages in accuracy and coverage enable it to perform well in processing complex dynamic data. Future research will focus on optimizing computational efficiency and combining more deep learning technologies to expand the application scope of the algorithm, especially in practical applications in the fields of finance, medical care, and intelligent recommendation.
format Preprint
id arxiv_https___arxiv_org_abs_2503_11125
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Context-Aware Rule Mining Using a Dynamic Transformer-Based Framework
Liu, Jie
Zhang, Yiwei
Sheng, Yuan
Lou, Yujia
Wang, Haige
Yang, Bohuan
Machine Learning
This study proposes a dynamic rule data mining algorithm based on an improved Transformer architecture, aiming to improve the accuracy and efficiency of rule mining in a dynamic data environment. With the increase in data volume and complexity, traditional data mining methods are difficult to cope with dynamic data with strong temporal and variable characteristics, so new algorithms are needed to capture the temporal regularity in the data. By improving the Transformer architecture, and introducing a dynamic weight adjustment mechanism and a temporal dependency module, we enable the model to adapt to data changes and mine more accurate rules. Experimental results show that compared with traditional rule mining algorithms, the improved Transformer model has achieved significant improvements in rule mining accuracy, coverage, and stability. The contribution of each module in the algorithm performance is further verified by ablation experiments, proving the importance of temporal dependency and dynamic weight adjustment mechanisms in improving the model effect. In addition, although the improved model has certain challenges in computational efficiency, its advantages in accuracy and coverage enable it to perform well in processing complex dynamic data. Future research will focus on optimizing computational efficiency and combining more deep learning technologies to expand the application scope of the algorithm, especially in practical applications in the fields of finance, medical care, and intelligent recommendation.
title Context-Aware Rule Mining Using a Dynamic Transformer-Based Framework
topic Machine Learning
url https://arxiv.org/abs/2503.11125