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Monotonic learning in the PAC framework: A new perspective

  • Ming Li
  • , Chenyi Zhang*
  • , Qin Li
  • *此作品的通讯作者
  • Jinan University
  • University of Canterbury

科研成果: 期刊稿件文章同行评审

摘要

Monotone learning describes learning processes in which expected error consistently decreases as the amount of training data increases. However, recent studies challenge this conventional wisdom, revealing significant gaps in the understanding of generalization in machine learning. Addressing these gaps is crucial for advancing the theoretical foundations of the field. In this work, we utilize Probably Approximately Correct (PAC) learning theory to construct a theoretical error distribution that approximates a learning algorithm's actual performance. We rigorously prove that this theoretical distribution exhibits monotonicity as sample sizes increase. We identify two scenarios under which deterministic algorithms based on Empirical Risk Minimization (ERM) are monotone: (1) the hypothesis space is finite, or (2) the hypothesis space has finite VC-dimension. Experiments on three classical learning problems validate our findings by demonstrating that the monotonicity of the algorithms’ generalization error is guaranteed, as its theoretical error upper bound monotonically converges to the minimum generalization error.

源语言英语
文章编号114504
期刊Knowledge-Based Systems
330
DOI
出版状态已出版 - 25 11月 2025

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