
Theoretical Foundations of Active Learning
I study the informational complexity of active learning in a statistical learning theory framework. Specifically, I derive bounds on the rates of convergence achievable by active learning, under various noise models and under general conditions on the hypothesis class. I also study the theoretical advantages of active learning over passive learning, and develop procedures for transforming passive learning algorithms into active learning algorithms with asymptotically superior label complexity. Finally, I study generalizations of active learning to more general forms of interactive statistical learning.
- ISBN 13 : 1109214073
- ISBN 10 : 9781109214079
- Judul : Theoretical Foundations of Active Learning
- Pengarang : ,
- Penerbit : ProQuest
- Bahasa : en
- Tahun : 2009
- Halaman : 148
- Halaman : 148
- Google Book : http://books.google.co.id/books?id=u_N2SAgiiXEC&dq=intitle:active+learning&hl=&source=gbs_api
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Ketersediaan :
Chapter 3 Significance of the Verifiable/Unverifiable Distinction in Realizable
Active Learning This chapter describes and explores a new perspective on the
label complexity of active learning in the fixed-distribution realizable case. In
many ...