scholarly journals Mining API Usage Patterns by Applying Method Categorization to Improve Code Completion

2014 ◽  
Vol E97.D (5) ◽  
pp. 1069-1083
Author(s):  
Rizky Januar AKBAR ◽  
Takayuki OMORI ◽  
Katsuhisa MARUYAMA
2021 ◽  
Vol 28 (2) ◽  
Author(s):  
Sebastian Nielebock ◽  
Robert Heumüller ◽  
Kevin Michael Schott ◽  
Frank Ortmeier

AbstractLack of experience, inadequate documentation, and sub-optimal API design frequently cause developers to make mistakes when re-using third-party implementations. Such API misuses can result in unintended behavior, performance losses, or software crashes. Therefore, current research aims to automatically detect such misuses by comparing the way a developer used an API to previously inferred patterns of the correct API usage. While research has made significant progress, these techniques have not yet been adopted in practice. In part, this is due to the lack of a process capable of seamlessly integrating with software development processes. Particularly, existing approaches do not consider how to collect relevant source code samples from which to infer patterns. In fact, an inadequate collection can cause API usage pattern miners to infer irrelevant patterns which leads to false alarms instead of finding true API misuses. In this paper, we target this problem (a) by providing a method that increases the likelihood of finding relevant and true-positive patterns concerning a given set of code changes and agnostic to a concrete static, intra-procedural mining technique and (b) by introducing a concept for just-in-time API misuse detection which analyzes changes at the time of commit. Particularly, we introduce different, lightweight code search and filtering strategies and evaluate them on two real-world API misuse datasets to determine their usefulness in finding relevant intra-procedural API usage patterns. Our main results are (1) commit-based search with subsequent filtering effectively decreases the amount of code to be analyzed, (2) in particular method-level filtering is superior to file-level filtering, (3) project-internal and project-external code search find solutions for different types of misuses and thus are complementary, (4) incorporating prior knowledge of the misused API into the search has a negligible effect.


Author(s):  
Hao Zhong ◽  
Tao Xie ◽  
Lu Zhang ◽  
Jian Pei ◽  
Hong Mei
Keyword(s):  

2020 ◽  
Vol 10 (24) ◽  
pp. 9048
Author(s):  
Mingwan Kim ◽  
Neunghoe Kim

Application Programming Interface (API) usage mining is an approach used to extract the common API usage to help developers get used to the APIs. However, in Android applications, the usage can be hidden or fragmented due to class inheritance. Such hidden or fragmented usages could decrease the coverage and accuracy of the existing API mining approaches. Our method aims to resolve the problem of hidden and fragmented usages through API generalization. This generalized usage is expected to be applicable to every class that inherits a class in the usage. In the experiment, among 442,809 Android API usages, 104,839 usages either were hidden or fragmented. By revealing such usages, the accuracy of the code completion was improved by at most 6.66%. The usage generalization was efficient for extracting API usages in Android applications in which the APIs are used through class inheritance.


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