نتایج جستجو برای: risk minimization

تعداد نتایج: 973401  

Journal: :SIAM Journal on Financial Mathematics 2013

Journal: :Mathematical and Computer Modelling 1992

Journal: :The Pure and Applied Mathematics 2012

Journal: :Machine Learning 2021

The theoretical and empirical performance of Empirical Risk Minimization (ERM) often suffers when loss functions are poorly behaved with large Lipschitz moduli spurious sharp minimizers. We propose analyze a counterpart to ERM called Diametrical (DRM), which accounts for worst-case risks within neighborhoods in parameter space. DRM has generalization bounds that independent convex as well nonco...

2000
Olivier Chapelle Jason Weston Léon Bottou Vladimir Vapnik

The Vicinal Risk Minimization principle establishes a bridge between generative models and methods derived from the Structural Risk Minimization Principle such as Support Vector Machines or Statistical Regularization. We explain how VRM provides a framework which integrates a number of existing algorithms, such as Parzen windows, Support Vector Machines, Ridge Regression, Constrained Logistic C...

2015
Adith Swaminathan Thorsten Joachims

We develop a learning principle and an efficient algorithm for batch learning from logged bandit feedback. Unlike in supervised learning, where the algorithm receives training examples (xi, y ∗ i ) with annotated correct labels y ∗ i , bandit feedback merely provides a cardinal reward δi ∈ R for the prediction yi that the logging system made for context xi. Such bandit feedback is ubiquitous in...

2009
Wojciech Rejchel

The problem of ranking (rank regression) has become popular in the machine learning community. This theory relates to problems, in which one has to predict (guess) the order between objects on the basis of vectors describing their observed features. In many ranking algorithms a convex loss function is used instead of the 0−1 loss. It makes these procedures computationally efficient. Hence, conv...

2017
Di Wang Minwei Ye Jinhui Xu

In this paper we study the differentially private Empirical Risk Minimization (ERM) problem in different settings. For smooth (strongly) convex loss function with or without (non)-smooth regularization, we give algorithms that achieve either optimal or near optimal utility bounds with less gradient complexity compared with previous work. For ERM with smooth convex loss function in high-dimensio...

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