Adaptive regularization of weight vectors

作者:Koby Crammer, Alex Kulesza, Mark Dredze

摘要

We present AROW, an online learning algorithm for binary and multiclass problems that combines 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 mistake bounds for the binary and multiclass settings that are similar in form to the second order perceptron bound. Our bounds do not assume separability. We also relate our algorithm to recent confidence-weighted online learning techniques. Empirical evaluations show that AROW achieves state-of-the-art performance on a wide range of binary and multiclass tasks, as well as robustness in the face of non-separable data.

论文关键词:Online learning, Supervised learning, Text classification, Adaptive regularization

论文评审过程:

论文官网地址:https://doi.org/10.1007/s10994-013-5327-x