Analysis and Reduction of Errors in AI Models
Rinat Sharipov , Founder of UpLook AIAbstract
The issue of errors in artificial intelligence (AI) models is a critical aspect that requires systematic analysis and the application of effective methods for their reduction. Errors in AI models can occur at various stages of development and deployment, including data collection, model training, and operation phases. The key tasks in this field involve identifying error sources and applying approaches aimed at eliminating them. Methods such as cross-validation, regularization, and the use of ensemble models play a significant role in reducing errors and improving prediction accuracy. Therefore, for the successful use of AI technologies in various domains, continuous attention to model monitoring, parameter adjustment, and the implementation of innovative methods to minimize risks is necessary.
Keywords
artificial intelligence, AI model errors, cross-validation
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