Neural network trained on AST structural details repairs undeclared variable errors and infers types, reporting 81% success on location/identification and 80% on types for 1059 programs in the prutor dataset.
Automatic feature learning for vulnerability prediction
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Code flaws or vulnerabilities are prevalent in software systems and can potentially cause a variety of problems including deadlock, information loss, or system failure. A variety of approaches have been developed to try and detect the most likely locations of such code vulnerabilities in large code bases. Most of them rely on manually designing features (e.g. complexity metrics or frequencies of code tokens) that represent the characteristics of the code. However, all suffer from challenges in sufficiently capturing both semantic and syntactic representation of source code, an important capability for building accurate prediction models. In this paper, we describe a new approach, built upon the powerful deep learning Long Short Term Memory model, to automatically learn both semantic and syntactic features in code. Our evaluation on 18 Android applications demonstrates that the prediction power obtained from our learned features is equal or even superior to what is achieved by state of the art vulnerability prediction models: 3%--58% improvement for within-project prediction and 85% for cross-project prediction.
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cs.SE 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Automatic Repair and Type Binding of Undeclared Variables using Neural Networks
Neural network trained on AST structural details repairs undeclared variable errors and infers types, reporting 81% success on location/identification and 80% on types for 1059 programs in the prutor dataset.