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Predicting accurate and actionable static analysis warnings
2008
Proceedings of the 13th international conference on Software engineering - ICSE '08
Static analysis tools report software defects that may or may not be detected by other verification methods. Two challenges complicating the adoption of these tools are spurious false positive warnings and legitimate warnings that are not acted on. This paper reports automated support to help address these challenges using logistic regression models that predict the foregoing types of warnings from signals in the warnings and implicated code. Because examining many potential signaling factors
doi:10.1145/1368088.1368135
dblp:conf/icse/RuthruffPMER08
fatcat:rn3vpnuawfcyljoutykvabzgsq