Exploration of the Application of Artificial Intelligence Technology and CCRT Automobile Evaluation
DOI:
https://doi.org/10.54691/pfczm456Keywords:
Automotive Consumer Evaluation; CCRT Evaluation System; AI Technology Integration.Abstract
This study focuses on the integration and innovation of artificial intelligence technology and the China Car Consumer Research and Test (CCRT) system. It aims to address issues in the traditional manual analysis of the CCRT evaluation system, such as low efficiency, insufficient analysis accuracy, and limited data processing capabilities, by introducing AI technologies like machine learning and natural language processing. The goal is to improve evaluation efficiency and accuracy, provide more timely and reliable car purchase references for automotive consumers, and offer a scientific basis for automotive enterprises in product improvement and market promotion. The research systematically sorts out the development status and limitations of the CCRT evaluation system, deeply analyzes the application advantages of AI technology in the field of automotive evaluation, conducts research on subjective evaluation analysis using artificial intelligence technology, verifies the feasibility and effectiveness of combining AI with CCRT, and provides feasible ideas for the in-depth application of AI technology in CCRT automotive evaluation.
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