Title
Automatically Identifying Known Software Problems
Abstract
Re-occurrence of the same problem is very common in many large software products. By matching the symptoms of a new problem to those in a database of known problems, automated diagnosis and even self-healing for re-occurrences can be (partially) realized. This paper exploits function call stacks as highly structured symptoms of a certain class of problems, including crashes, hangs, and traps. We propose and evaluate algorithms for efficiently and accurately matching call stacks by a weighted metric of the similarity of their function names, after first removing redundant recursion and uninformative (poor discriminator) functions from those stacks. We also describe a new indexing scheme to speed queries to the repository of known problems, without compromising the quality of matches returned. Experiments conducted using call stacks from actual product problem reports demonstrate the improved accuracy (both precision and recall) resulting from our new stack-matching algorithms and removal of uninformative or redundant function names, as well as the performance and scalability improvements realized by indexing call stacks. We also discuss how call-stack matching can be used in both self-managing (or autonomic systems) and human "help desk" applications.
Year
DOI
Venue
2007
10.1109/ICDEW.2007.4401026
ICDE Workshops
Keywords
Field
DocType
actual product problem report,indexing call stack,redundant function name,known problem,call stack,new indexing scheme,new problem,function name,new stack-matching algorithm,call-stack matching,software problems,indexing,application software,algorithms,discriminant function,indexation,databases,scalability
Data mining,Discriminator,Subroutine,Computer science,Precision and recall,Search engine indexing,Software,Application software,Database,Recursion,Scalability
Conference
ISSN
ISBN
Citations 
1943-2895
978-1-4244-0832-0
18
PageRank 
References 
Authors
0.86
3
5
Name
Order
Citations
PageRank
Natwar Modani1718.46
Rajeev Gupta210210.97
Guy M. Lohman32846965.94
Tanveer Syeda-Mahmood418816.00
Laurent Mignet534529.41