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Maximum Likelihood Estimation

It's an important principal in selecting the model and describing the math formula of a model's loss function. Let pmodel(x,θ)p_{model}(x,\theta) be a parametric family of possibility distribution over the same space indexed by θ\theta. The maximum likelihood estimator for θ\theta is then defuned as θML=argmaxθpmodel(X;θ)\theta_{ML} = argmax_{\theta}p_{model}(X;\theta)

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Updated 2026-05-03

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