Learning Time in Static Classifiers

arXiv — cs.LGTuesday, November 18, 2025 at 5:00:00 AM
  • A novel framework has been introduced to enhance static classifiers by integrating temporal reasoning, addressing the limitations of conventional models that assume temporal independence. This framework employs the Support
  • This development is significant as it allows classifiers to adapt to the dynamic nature of real
  • The introduction of this framework reflects a broader trend in artificial intelligence towards improving model adaptability and performance in dynamic environments. As challenges in deep learning persist, such as transformation
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