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  • 匿名
关注:1 2013-05-23 12:21

求翻译:LM算法是介于牛顿法和梯度下降法之间的一种非线性优化方法,对于过于参数化问题不敏感,能有效地处理冗余参数问题,使目标函数陷入局部最小值的机会大大减小是什么意思?

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LM算法是介于牛顿法和梯度下降法之间的一种非线性优化方法,对于过于参数化问题不敏感,能有效地处理冗余参数问题,使目标函数陷入局部最小值的机会大大减小
问题补充:

  • 匿名
2013-05-23 12:21:38
LM algorithm is between Newton and gradient descent between a nonlinear optimization method, the parameters of the problem is not too sensitive, and can effectively deal with the issue redundant parameters, the objective function into a local minimum of the opportunity to greatly reduce the small
  • 匿名
2013-05-23 12:23:18
LM algorithm is midway between Newton's law and the gradient between the decline of a non-linear optimization method, for being too parameterized problems, are not sensitive to effectively address issues redundant parameters in which the target function into a local minimum value significantly reduc
  • 匿名
2013-05-23 12:24:58
The LM algorithm is situated between between the Newton law and the gradient drop law one non-linear optimization method, is insensitive regarding the too parametrization question, can process the redundant parametric problem effectively, causes the objective function to fall into the local minimum
  • 匿名
2013-05-23 12:26:38
LM algorithm is between Newton and a nonlinear optimization method of gradient descent method, for being too insensitive parametric problems, can effectively handle redundant parameter problem that causes the target function to a local minimum of opportunity to significantly reduce
  • 匿名
2013-05-23 12:28:18
LM algorithm is a non-linear optimization method between Newton law and gradient descent method, as to overly parameter insensitivity of question, can deal with the redundant parameter problem effectively, the chance of making the goal function fall into some minimum is greatly reduced
 
 
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