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Author, Editor

Author(s):

Dietz, Laura
Dallmeier, Valentin
Zeller, Andreas
Scheffer, Tobias

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Not MPG Author(s):

Dallmeier, Valentin
Zeller, Andreas
Scheffer, Tobias

Editor(s):

Bengio, Yoshua
Schuurmans,Dale
Lafferty,John
Williams,Chris
Culotta,Aron

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Not MPII Editor(s):

Bengio, Yoshua
Schuurmans,Dale
Lafferty,John
Williams,Chris
Culotta,Aron

BibTeX cite key*:

Dietz2009

Title, Booktitle

Title*:

Localizing Bugs in Program Executions with Graphical Models


bernoulligraph-v1.4.pdf (375.97 KB)

Booktitle*:

Advances in Neural Information Processing Systems 22 : Proceedings of the 2009 Conference

Event, URLs

URL of the conference:

http://books.nips.cc/nips22.html

URL for downloading the paper:

http://books.nips.cc/papers/files/nips22/NIPS2009_0704.pdf

Event Address*:

Vancouver, Canada

Language:

English

Event Date*
(no longer used):


Organization:


Event Start Date:

7 December 2009

Event End Date:

10 December 2009

Publisher

Name*:

NIPS Foundation

URL:

http://www.cs.cmu.edu/Groups/NIPS/NIPS2000/nips-foundation-2000.html

Address*:

San Diego, CA

Type:


Vol, No, Year, pp.

Series:


Volume:


Number:


Month:


Pages:

468-477

Year*:

2009

VG Wort Pages:


ISBN/ISSN:


Sequence Number:


DOI:




Note, Abstract, ©


(LaTeX) Abstract:

We devise a graphical model that supports the process of debugging software by guiding developers to code that is likely to contain defects. The model is trained using execution traces of passing test runs; it reflects the distribution over transitional patterns of code positions. Given a failing test case, the model determines the least likely transitional pattern in the execution trace. The model is designed such that Bayesian inference has a closed-form solution. We evaluate the Bernoulli graph model on data of the software projects AspectJ and Rhino.

Keywords:

generative models, probabilistic models, defect localization



Download
Access Level:

Public

Correlation

MPG Unit:

Max-Planck-Institut für Informatik



MPG Subunit:

Databases and Information Systems Group

Appearance:

MPII WWW Server, MPII FTP Server, MPG publications list, university publications list, working group publication list, Fachbeirat, VG Wort



BibTeX Entry:

@INPROCEEDINGS{Dietz2009,
AUTHOR = {Dietz, Laura and Dallmeier, Valentin and Zeller, Andreas and Scheffer, Tobias},
EDITOR = {Bengio, Yoshua and Schuurmans,Dale and Lafferty,John and Williams,Chris and Culotta,Aron},
TITLE = {Localizing Bugs in Program Executions with Graphical Models},
BOOKTITLE = {Advances in Neural Information Processing Systems 22 : Proceedings of the 2009 Conference},
PUBLISHER = {NIPS Foundation},
YEAR = {2009},
PAGES = {468--477},
ADDRESS = {Vancouver, Canada},
}


Entry last modified by Manuel Lamotte-Schubert, 03/21/2011
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Editor(s)
[Library]
Created
02/04/2010 03:39:31 PM
Revisions
3.
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0.
Editor(s)
Manuel Lamotte-Schubert
Anja Becker
Laura Dietz
Laura Dietz
Edit Dates
21.03.2011 14:21:03
23.03.2010 10:30:34
04.02.2010 15:40:08
04.02.2010 15:39:31
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