Source Code Author Attribution Using Author’s Programming Style and Code Smells
TL;DR: A machine learning based methodology is described not only to address the question of can code smells are useful for characterizing authors’ signatures but also for designing a system that can improves the authorship attribution.
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Abstract: Source code is an intellectual property and using it without author’s permission is a violation of property right. Source code authorship attribution is vital for dealing with software theft, copyright issues and piracies. Characterizing author’s signature for identifying their footprints is the core task of authorship attribution. Different aspects of source code have been considered for characterizing signatures including author’s coding style and programming structure, etc. The objective of this research is to explore another trait of authors’ coding behavior for personifying their footprints. The main question that we want to address is that “can code smells are useful for characterizing authors’ signatures? A machine learning based methodology is described not only to address the question but also for designing a system. Two different aspects of source code are considered for its representation into features: author’s style and code smells. The author’s style related feature representation is used as baseline. Results have shown that code smell can improves the authorship attribution.
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Citations
Code Authorship Attribution: Methods and Challenges
TL;DR: This article presents the first comprehensive review of research on code authorship attribution, and summarizes various methods of authorship attributions, and highlights challenges in the field.
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Source Code Authorship Identification Using Deep Neural Networks
TL;DR: The authors propose their technique based on a hybrid neural network and demonstrate its results both for simple cases of determining the authorship of the code and for those complicated by obfuscation and using of coding standards, showing that the author's technique successfully solves the essential problems of analogs and can be effective even in cases where there are no obvious signs indicating authorship.
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Identification Author of Source Code by Machine Learning Methods
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TL;DR: The authors suggest two new identification techniques based on machine learning algorithms: support vector machine, fast correlation filter and informative features; and the technique based on hybrid convolutional recurrent neural network, which is at the present time the best-known result.
Discovering software developer's coding expertise through deep learning
TL;DR: Criteria for novice and expert developers is formulated and criteria to discover the level of coding expertise of software developers using three different models of deep learning are carried out.
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Feasibility of deception in code attribution
Alina Matyukhina
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TL;DR: This thesis investigates the feasibility of deception of source code attribution techniques by exploring how data characteristics and feature selection influence both the accuracy and performance of attribution methods.
References
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Author Identification: An Approach based on Code Feature Metrics using Decision Trees
TL;DR: Author identification plays very important role in most of the cases such as plagiarism detection, masquerade detection, software maintainability and resolving authorship disputes
Support Vector Machines and the Bayes Rule in Classification
TL;DR: It is shown that the asymptotic target of SVMs are some interesting classification functions that are directly related to the Bayes rule, and helps understand the success of SVM in many classification studies, and makes it easier to compare SVMs and traditional statistical methods.
A taxonomy and an initial empirical study of bad smells in code
Mika V. Mäntylä,Jari Vanhanen,Casper Lassenius +2 more
- 22 Sep 2003
TL;DR: The findings indicate that the taxonomy for the smells could help explain the identified correlations between the subjective evaluations of the existence of the smells.
Software forensics: Can we track code to its authors?
TL;DR: In this article, the authors define the study of features of code remnants that might be analyzed to identify their authors and outline some of the difficulties involved in tracing an intruder by analyzing code.
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