Online Learning for Distribution-Free Prediction
Zachariah, Dave, Stoica, Petre, Schön, Thomas B.
We develop an online learning method for prediction, which is important in problems with large and/or streaming data sets. We formulate the learning approach using a covariance-fitting methodology, and show that the resulting predictor has desirable computational and distribution-free properties: It is implemented online with a runtime that scales linearly in the number of samples; has a constant memory requirement; avoids local minima problems; and prunes away redundant feature dimensions without relying on restrictive assumptions on the data distribution. In conjunction with the split conformal approach, it also produces distribution-free prediction confidence intervals in a computationally efficient manner. The method is demonstrated on both real and synthetic datasets.
Mar-15-2017
- Country:
- North America > United States (0.28)
- Genre:
- Research Report (0.50)
- Industry:
- Education > Educational Setting > Online (0.62)