Article http://dx.doi.org/10.26855/dsbdt.2025.12.003

Discussion on Data Mining Technology of Software Engineering

TOTAL VIEWS: 328

Tianrui Xia*, Yue Liu, Li Wang

Wuhan Donghu College, Wuhan 430212, Hubei, China.

*Corresponding author: Tianrui Xia

Published: November 14,2025

Abstract

Based on the current software engineering data mining technology problems, this paper puts forward targeted measures to strengthen the data mining processing of software maintenance, so as to maximize the application effect of software engineering data mining technology. In the concept and practical application of software engineering, its own application status is relatively common, which can be regarded as a rich and scientific major measure. Therefore, in the new era, data mining technology in today has a very great significance in the current era.

Keywords

Software engineering; Data mining; Mining technology; Data source

References

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How to cite this paper

Discussion on Data Mining Technology of Software Engineering

How to cite this paper: Tianrui Xia, Yue Liu, Li Wang. (2025) Discussion on Data Mining Technology of Software Engineering. Data Science and Big Data Technology1(1), 10-13.

DOI: http://dx.doi.org/10.26855/dsbdt.2025.12.003