Authors
Koby Crammer, Alex Kulesza, Mark Dredze
Publication date
2009
Conference
Advances in neural information processing systems
Pages
414-422
Description
We present AROW, a new online learning algorithm that combines several properties of successful: large margin training, confidence weighting, and the capacity to handle non-separable data. AROW performs adaptive regularization of the prediction function upon seeing each new instance, allowing it to perform especially well in the presence of label noise. We derive a mistake bound, similar in form to the second order perceptron bound, which does not assume separability. We also relate our algorithm to recent confidence-weighted online learning techniques and empirically show that AROW achieves state-of-the-art performance and notable robustness in the case of non-separable data.
Total citations
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Scholar articles
K Crammer, A Kulesza, M Dredze - Advances in neural information processing systems, 2009