文章目录
- 1. **正则化(Regularization)**
- 2. **正则表达式(Regular Expression)**
- 关键区别
- 为什么名字相近?
正则化(Regularization)和正则表达式(Regular Expression)不是同一个概念,它们是两个完全不同的术语,应用于不同的领域。
1. 正则化(Regularization)
- 领域:机器学习/统计学。
- 定义:正则化是一种用于防止模型过拟合(Overfitting)的技术。它通过在损失函数中添加一个惩罚项(如 L1 正则化、L2 正则化),限制模型参数的大小,从而降低模型复杂度。
- 例子:训练神经网络时,使用 L2 正则化(权重衰减)来约束权重值。
2. 正则表达式(Regular Expression)
- 领域:计算机科学/文本处理。
- 定义:正则表达式是一种用于描述字符串匹配模式的语法规则,常用于字符串搜索、替换或验证。
- 例子:用
\d{3}-\d{4}
匹配电话号码格式(如123-4567
)。
关键区别
- 目的:正则化是优化模型泛化能力;正则表达式是处理文本模式匹配。
- 应用场景:前者用于机器学习模型训练,后者用于字符串操作。
为什么名字相近?
两者英文名均源自数学中的“正则”(Regular),但中文翻译保留了相同前缀,导致字面混淆。实际应用中需注意区分。
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