Logistic模型中的α-损失格局

Tyler Sypherd, Mario Díaz, L. Sankar, Gautam Dasarathy
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引用次数: 5

摘要

我们分析了logistic模型中最近引入的可调损失函数α-loss, α∈(0,∞)的优化情况。该系列包含指数损失(α = 1/2),对数损失(α = 1)和0-1损失(α =∞),并包含令人信服的特性,使从业者能够在与新兴学习方法相关的大量操作条件中进行辨别。具体来说,我们利用严格局部拟凸函数的研究工具和几何技术研究了α-损失相对于α的优化景观的演变。我们通过归一化梯度下降来解释这些结果的优化复杂度。
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On the α-loss Landscape in the Logistic Model
We analyze the optimization landscape of a recently introduced tunable class of loss functions called α-loss, α ∈ (0, ∞], in the logistic model. This family encapsulates the exponential loss (α = 1/2), the log-loss (α = 1), and the 0-1 loss (α = ∞) and contains compelling properties that enable the practitioner to discern among a host of operating conditions relevant to emerging learning methods. Specifically, we study the evolution of the optimization landscape of α-loss with respect to α using tools drawn from the study of strictly-locally-quasi-convex functions in addition to geometric techniques. We interpret these results in terms of optimization complexity via normalized gradient descent.
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