首页|Leveraging Ethical Narratives to Enhance LLM-AutoML Generated Machine Learning Models

Leveraging Ethical Narratives to Enhance LLM-AutoML Generated Machine Learning Models

扫码查看
The growing popularity of generative AI and large language models (LLMs) has sparked innovation alongside debate, particularly around issues of plagiarism and intellectual property law. However, a less-discussed concern is the quality of code generated by these models, which often contains errors and encourages poor programming practices. This paper proposes a novel solution by integrating LLMs with automated machine learning (AutoML). By leveraging AutoML's strengths in hyperparameter tuning and model selection, we present a framework for generating robust and reliable machine learning (ML) algorithms. Our approach incorporates natural language processing (NLP) and natural language understanding (NLU) techniques to interpret chatbot prompts, enabling more accurate and customisable ML model generation through AutoML. To ensure ethical AI practices, we have also introduced a filtering mechanism to address potential biases and enhance accountability. The proposed methodology not only demonstrates practical implementation but also achieves high predictive accuracy, offering a viable solution to current challenges in LLM-based code generation. In summary, this paper introduces a new application of NLP and NLU to extract features from chatbot prompts, feeding them into an AutoML system to generate ML algorithms. This approach is framed within a rigorous ethical framework, addressing concerns of bias and accountability while enhancing the reliability of code generation.

artificial intelligenceAutoMLethical AIGoogle's Geminilarge language modelsmachine learningnatural language processingOpenAI's ChatGPT

Jordan Nelson、Michalis Pavlidis、Andrew Fish、Nikolaos Polatidis、Yannis Manolopoulos

展开 >

School of Architecture, Technology and Engineering, University of Brighton, Brighton, UK

Department of Computer Science, University of Liverpool, Liverpool, UK

Department of Informatics, University of Nicosia, Nicosia, Cyprus

2025

Expert systems: The international journal of knowledge engineering
  • 26