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关于莱斯利·瓦利安特的名人名言哲理格言警句语录 - 每日文摘
莱斯利·瓦利安特 计算学习理论的先驱

莱斯利·瓦利安特是计算学习理论的先驱,他的工作对机器学习和人工智能领域产生了深远影响,尤其是PAC学习理论和计算复杂性理论。

The concept of probably approximately correct (PAC) learning has been foundational in computational learning theory.
Understanding the computational complexity of learning problems is essential for developing efficient algorithms.
The PAC learning framework provides a formal way to analyze the efficiency and effectiveness of learning algorithms.
In machine learning, the trade-off between bias and variance is crucial for achieving good generalization.
在机器学习中,偏差和方差之间的权衡对于实现良好的泛化至关重要。
The complexity of a learning problem is often determined by the size and structure of the hypothesis space.
A good learning algorithm should be able to generalize from a limited set of examples to unseen data.
一个好的学习算法应该能够从有限的例子中推广到未见过的数据。
The challenge in computational learning theory is to understand the capabilities and limitations of learning algorithms.
The ultimate goal of machine learning is to make machines that can learn from experience and improve their performance over time.
机器学习的最终目标是让机器能够从经验中学习,并随着时间的推移提高其性能。
The development of robust learning algorithms requires a deep understanding of the underlying data distribution.
The ability to generalize from limited data is a hallmark of effective learning algorithms.
The trade-off between bias and variance is a fundamental concept in machine learning.