Online Active Learning in Practice
Author(s)
Monteleoni, Claire; Kaariainen, Matti
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Other Contributors
Tommi's Machine Learning
Advisor
Tommi Jaakkola
Metadata
Show full item recordAbstract
We compare the practical performance of several recently proposed algorithms for active learning in the online setting. We consider two algorithms (and their combined variants) that are strongly online, in that they do not store any previously labeled examples, and for which formal guarantees have recently been proven under various assumptions. We perform an empirical evaluation on optical character recognition (OCR) data, an application that we argue to be appropriately served by online active learning. We compare the performance between the algorithm variants and show significant reductions in label-complexity over random sampling.
Date issued
2007-01-23Other identifiers
MIT-CSAIL-TR-2007-005
Series/Report no.
Massachusetts Institute of Technology Computer Science and Artificial Intelligence Laboratory
Keywords
online learning, active learning, selective sampling, optical character recognition, OCR