Automatic Structure Discovery for Large Source Code

Automatic Structure Discovery for Large Source Code

Hierarchical clustering of source code for nested decomposition of software systems into subsystems

LAP Lambert Academic Publishing ( 2017-10-10 )

€ 64,90

Buy at the MoreBooks! Shop

In this work we attempt to infer software architecture from source code automatically. We have studied and used unsupervised learning methods for this, namely clustering. The state of the art source code (structure) analysis methods and tools were explored, and the ongoing research in software reverse architecting was studied. Graph clustering based on minimum cut trees is a recent algorithm which satisfies strong theoretical criteria and performs well in practice, in terms of both speed and accuracy. Its successful applications in the domain of Web and citation graphs were reported. To our knowledge, however, there has been no application of this algorithm to the domain of reverse architecting. Moreover, most of existing software artifact clustering research addresses legacy systems in procedural languages or C++, while we aim at modern object-oriented languages and the implied character of relations between software engineering artifacts. We consider the research direction important because this clustering method allows substantially larger tasks to be solved, which particularly means that we can cluster software engineering artifacts at class-level granularity.

Book Details:

ISBN-13:

978-3-330-08649-4

ISBN-10:

3330086491

EAN:

9783330086494

Book language:

English

By (author) :

Sarge Rogatch

Number of pages:

164

Published on:

2017-10-10

Category:

Informatics, IT