Pattern classification with missing data: a review
Pattern classification has been successfully applied in many problem domains, such as
biometric recognition, document classification or medical diagnosis. Missing or unknown …
biometric recognition, document classification or medical diagnosis. Missing or unknown …
Handling data irregularities in classification: Foundations, trends, and future challenges
Most of the traditional pattern classifiers assume their input data to be well-behaved in terms
of similar underlying class distributions, balanced size of classes, the presence of a full set of …
of similar underlying class distributions, balanced size of classes, the presence of a full set of …
Robustness and generalization
We derive generalization bounds for learning algorithms based on their robustness: the
property that if a testing sample is “similar” to a training sample, then the testing error is close …
property that if a testing sample is “similar” to a training sample, then the testing error is close …
[PDF][PDF] Robustness and Regularization of Support Vector Machines.
We consider regularized support vector machines (SVMs) and show that they are precisely
equivalent to a new robust optimization formulation. We show that this equivalence of robust …
equivalent to a new robust optimization formulation. We show that this equivalence of robust …
Robust twin support vector machine for pattern classification
In this paper, we proposed a new robust twin support vector machine (called R-TWSVM) via
second order cone programming formulations for classification, which can deal with data …
second order cone programming formulations for classification, which can deal with data …
A primal-dual algorithm with line search for general convex-concave saddle point problems
In this paper, we propose a primal-dual algorithm with a novel momentum term using the
partial gradients of the coupling function that can be viewed as a generalization of the …
partial gradients of the coupling function that can be viewed as a generalization of the …
Support vector classification with input data uncertainty
This paper investigates a new learning model in which the input data is corrupted with noise.
We present a general statistical framework to tackle this problem. Based on the statistical …
We present a general statistical framework to tackle this problem. Based on the statistical …
Robust classification
Motivated by the fact that there may be inaccuracies in features and labels of training data,
we apply robust optimization techniques to study in a principled way the uncertainty in data …
we apply robust optimization techniques to study in a principled way the uncertainty in data …
Learning from conditional distributions via dual embeddings
Many machine learning tasks, such as learning with invariance and policy evaluation in
reinforcement learning, can be characterized as problems of learning from conditional …
reinforcement learning, can be characterized as problems of learning from conditional …
[PDF][PDF] Second order cone programming approaches for handling missing and uncertain data
We propose a novel second order cone programming formulation for designing robust
classifiers which can handle uncertainty in observations. Similar formulations are also …
classifiers which can handle uncertainty in observations. Similar formulations are also …