Research on Mobile Communication Big Data Mining Technology Based on Artificial Intelligence
Keywords:
Artificial intelligence, Mobile communication, Big data mining technologyAbstract
The research on artificial intelligence based mobile communication big data mining technology aims to explore how to efficiently and accurately extract valuable information from massive mobile communication data using artificial intelligence technology. This study integrates advanced algorithms such as machine learning and deep learning to deeply mine and analyze mobile communication data, revealing key information such as user behavior patterns and potential security risks. The research results not only provide decision support for telecommunications operators in network optimization, user profiling construction, and precision marketing, but also provide effective means to ensure user privacy and data security. This study is of great significance for promoting the intelligent transformation of the mobile communication industry.
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