See this document in CiteSeerX!

Efficient Noise-Tolerant Learning From Statistical Queries (1998)  (Make Corrections)  (107 citations)
Michael Kearns



  Home/Search   Context   Related

Links:   ACM   DBLP

 
View or download:
upenn.edu/~mkearns/pa...sqjournal.ps.Z
Cached:  PS.gz  PS  PDF   Image  Update  Help
Problem Downloading?
From:  upenn.edu/~mkearns/ (more)
(Enter author homepages)

Rate this article: (best)
  Comment on this article  
(Enter summary)

Abstract: this paper, we study the extension of Valiant's learning model [32] in which the positive or negative classification label provided with each random example may be corrupted by random noise. This extension was first examined in the learning theory literature by Angluin and Laird [1], who formalized the simplest type of white label noise and then sought algorithms tolerating the highest possible rate of noise. In addition to being the subject of a number of theoretical studies [1, 22, 31, 17],... (Update)

Cited by:   More
Journal of Machine Learning Research 3 (2003) 1307-1331.. - Amir Globerson Gamir   (Correct)
Journal of Machine Learning Research 7 (2006) 283--306.. - Paul Goldberg Pwg   (Correct)
Microchoice Bounds and Self Bounding Learning - Algorithms John Langford   (Correct)

Similar documents (at the sentence level):
70.5%:   Efficient Noise-Tolerant Learning From Statistical Queries - Kearns (1993)   (Correct)

Active bibliography (related documents):   More   All
0.3:   Rigorous Learning Curve Bounds from Statistical Mechanics - Haussler, Kearns, Seung.. (1996)   (Correct)
0.3:   Efficient Distribution-free Learning of Probabilistic Concepts - Kearns, Schapire (1993)   (Correct)
0.2:   Generativity and Systematicity in Neural Network Combinatorial.. - Brousse (1993)   (Correct)

Similar documents based on text:   More   All
0.3:   Specification and Simulation of Statistical Query Algorithms.. - Javed Aslam (1995)   (Correct)
0.1:   New Feature Interactions in Mobile and Multimedia.. - Zave, Jackson (2000)   (Correct)
0.1:   An Information-Theoretic Analysis of Hard and Soft.. - Kearns, Mansour, Ng (1997)   (Correct)

Related documents from co-citation:   More   All
38:   Communications of the ACM (context) - Valiant, of et al. - 1984
37:   Learning from noisy examples (context) - Angluin, Laird - 1988
33:   Learnability and the Vapnik Chervonenkis Dimension (context) - Blumer, Ehrenfeucht et al. - 1989

BibTeX entry:   (Update)

Kearns, M. (1993). Efficient noise-tolerant learning from statistical queries. In Proceedings of the Twenty-Fifth Annual ACM Symposium on Theory of Computing, pages 392--401. http://citeseer.ist.psu.edu/kearns98efficient.html   More

@inproceedings{ kearns93efficient,
    author = "Michael Kearns",
    title = "Efficient noise-tolerant learning from statistical queries",
    pages = "392--401",
    year = "1993",
    url = "citeseer.ist.psu.edu/kearns98efficient.html" }
Citations (may not include all citations):
493   Communications of the ACM (context) - Valiant, of et al. - 1984
465   Learnability and the Vapnik-Chervonenkis dimension (context) - Blumer, Ehrenfeucht et al. - 1989  ACM   DBLP
454   the uniform convergence of relative frequencies of events to.. (context) - Vapnik, Ya et al. - 1971
248   An Introduction to Computational Learning Theory (context) - Kearns, Vazirani - 1994  ACM
221   Perceptrons: An Introduction to Computational Geometry (context) - Minsky, Papert - 1988
215   Learning decision lists - Rivest - 1987
151   A general lower bound on the number of examples needed for l.. (context) - Ehrenfeucht, Haussler et al. - 1988
149   Quantifying inductive bias: AI learning algorithms and Valia.. (context) - Haussler - 1988  ACM   DBLP
144   Computational limitations on learning from examples (context) - Pitt, Valiant - 1988  ACM   DBLP
142   Learning from noisy examples (context) - Angluin, Laird - 1988
115   Efficient distribution-free learning of probabilistic concep.. - Kearns, Schapire - 1990  ACM   DBLP
94   Learning in the presence of malicious errors - Kearns, Li - 1988  ACM   DBLP
84   Learning disjunctions of conjunctions (context) - Valiant - 1985
78   the learnability of Boolean formulae - Kearns, Li et al. - 1987
66   Constant depth circuits (context) - Linial, Mansour et al. - 1989
63   Weakly learning DNF and characterizing statistical query lea.. - Blum, Furst et al. - 1994  ACM   DBLP
58   Statistical mechanics of learning from examples (context) - Seung, Sompolinsky et al. - 1992
52   The Computational Complexity of Machine Learning (context) - Kearns - 1990  ACM
52   Learning from Good and Bad Data (context) - Laird - 1988  ACM
40   Types of noise in data for concept learning (context) - Sloan - 1988  ACM   DBLP
36   A polynomial-time algorithm for learning k- variable pattern.. (context) - Kearns, Pitt - 1989
33   General bounds on statistical query learning and pac learnin.. - Aslam, Decatur - 1993  ACM   DBLP
27   Learning integer lattices (context) - Helmbold, Sloan et al. - 1992  ACM   DBLP
26   A polynomialtime algorithm for learning noisy linear thresho.. - Blum, Frieze et al. - 1996
22   DNF formulas on product distributions (context) - Hancock, Mansour - 1991
19   Improved learning of AC functions - Furst, Jackson et al. - 1991
19   Learning noisy perceptrons by a perceptron in polynomial tim.. (context) - Cohen - 1997  ACM   DBLP
17   Specification and simulation of statistical query algorithms.. - Aslam, Decatur - 1995  ACM   DBLP
15   On learning ring-sum expansions (context) - Fischer, Simon - 1992
12   Learning probabilistic read-once formulas on product distrib.. (context) - Schapire - 1991
11   The transition to perfect generalization in perceptrons (context) - Baum, Lyuu - 1991  ACM
8   The Design and Analysis of Efficient Learning Algorithms (context) - Schapire - 1992  ACM
4   Three unfinished works on the optimal storage capacity of ne.. (context) - Gardner, Derrida - 1983
4   Research Report IIAS-RR-91-22E (context) - Sakakibara, of et al. - 1991



The graph only includes citing articles where the year of publication is known.


Documents on the same site (http://www.cis.upenn.edu/~mkearns/):   More
Graphical Economics - Sham Kakade Michael   (Correct)
Efficient Algorithms for Learning to Play Repeated Games Against.. - al. (1995)   (Correct)
On the Boosting Ability of Top-Down Decision Tree Learning.. - Kearns (1996)   (Correct)

Online articles have much greater impact   More about CiteSeer.IST   Add search form to your site   Submit documents   Feedback  

CiteSeer.IST - Copyright Penn State and NEC