Learning with online constraints: shifting concepts and active learning (2006)
| Venue: | PHD THESIS. MIT COMPUTER SCIENCE AND ARTIFICIAL INTELLIGENCE LAB |
| Citations: | 7 - 5 self |
BibTeX
@TECHREPORT{Monteleoni06learningwith,
author = {Claire E. Monteleoni},
title = {Learning with online constraints: shifting concepts and active learning},
institution = {PHD THESIS. MIT COMPUTER SCIENCE AND ARTIFICIAL INTELLIGENCE LAB},
year = {2006}
}
OpenURL
Abstract
Many practical problems such as forecasting, real-time decision making, streaming data applications, and resource-constrained learning, can be modeled as learning with online constraints. This thesis is concerned with analyzing and designing algorithms for learning under the following online constraints: i) The algorithm has only sequential, or one-at-time, access to data. ii) The time and space complexity of the algorithm must not scale with the number of observations. We analyze learning with online constraints in a variety of settings, including active learning. The active learning model is applicable to any domain in which unlabeled data is easy to come by and there exists a (potentially difficult or expensive) mechanism by which to attain labels. First, we







