• Mathematics, Computer Science
  • Published in NIPS 2010

T-logistic Regression

@inproceedings{Ding2010TlogisticR,
  title={T-logistic Regression},
  author={Nan Ding and S. V. N. Vishwanathan},
  booktitle={NIPS},
  year={2010}
}
We extend logistic regression by using t-exponential families which were introduced recently in statistical physics. This gives rise to a regularized risk minimization problem with a non-convex loss function. An efficient block coordinate descent optimization scheme can be derived for estimating the parameters. Because of the nature of the loss function, our algorithm is tolerant to label noise. Furthermore, unlike other algorithms which employ non-convex loss functions, our algorithm is fairly… CONTINUE READING

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